Method and device in a communication network

Information

  • Patent Grant
  • 8862076
  • Patent Number
    8,862,076
  • Date Filed
    Friday, February 22, 2013
    11 years ago
  • Date Issued
    Tuesday, October 14, 2014
    10 years ago
Abstract
There is provided a method of method of estimating a quality of a signal, the method in a first device comprising measuring a signal transmitted from a second device to a third device; determining a value of a metric from an autocorrelation function of the measured signal; and determining an estimate of the quality of the signal from the determined metric.
Description
FIELD OF THE INVENTION

The invention relates to communication networks, and in particular to a method in a first device for estimating the quality of a signal transmitted from a second device to a third device.


BACKGROUND TO THE INVENTION

Femtocell base stations in a Long Term Evolution (LTE) communication network (otherwise known as Home evolved Node Bs—HeNBs—or Enterprise evolved Node Bs—EeNBs) are small, low-power, indoor cellular base stations for residential or business use. They provide better network coverage and capacity than that available in such environments from the overlying macrocellular LTE network. In addition, femtocell base stations use a broadband connection to receive data from and send data back to the operator's network (known as “backhaul”).


As femtocell base stations can make use of the same frequencies as macrocell base stations in the macrocellular network, and as they are located within the coverage area of one or more macrocell base stations in the macrocellular network, it is necessary to ensure that downlink transmissions from the femtocell base station to mobile devices (otherwise known as User Equipments—UEs) using the femtocell base station do not interfere substantially with downlink transmissions from macrocell base stations to mobile devices using the macrocell base stations.


Typically, this interference is mitigated by placing a cap on the power that the femtocell base station can use to transmit signals to mobile devices. The cap on the power can be set such that, at a specified pathloss from the femtocell base station (for example 80 dB), a signal received by a mobile device from a macrocell base station would meet a specified quality level (for example a target signal to interference plus noise ratio—SINR). The determination of the cap is subject to a minimum and maximum power restriction on the transmission power of the femtocell base station, for example 0.001 W and 0.1 W respectively.


However, this approach has limitations in that the transmission power of the femtocell base station will be capped regardless of whether there are any mobile devices near to the femtocell base station that are communicating with a macrocell base station and that need protecting. This cap can lead to the data throughput for mobile devices communicating with the femtocell base station being unnecessarily restricted.


In providing an approach for setting the maximum permitted transmission power for downlink transmissions from femtocell base stations, it is necessary for the femtocell base station to determine if there are nearby mobile devices that need protecting.


Therefore, there is a need for a method in which the femtocell base station can determine the quality of signals being transmitted from a mobile device to another base station.


SUMMARY OF THE INVENTION

Therefore, according to a first aspect of the invention, there is provided a method of estimating a quality of a signal, the method in a first device comprising measuring a signal transmitted from a second device to a third device; determining a value of a metric from an autocorrelation function of the measured signal; and determining an estimate of the quality of the signal from the determined metric.


Preferably, the step of measuring comprises measuring the signal in the time domain, and the step of determining a value of a metric comprises determining the autocorrelation function of the time domain signal and noise.


Preferably, the step of determining a value of a metric comprises determining the autocorrelation function comprises normalising the measured signal to give a sequence r; taking the fast Fourier transform of this sequence to give f; determining the squared magnitude of each sample in f; and taking the inverse fast Fourier transform of the sequence resulting from the step of determining the squared magnitude to give an autocorrelation sequence a.


In a preferred embodiment, the step of determining a value of a metric from an autocorrelation function of the measured signal comprises calculating the magnitude or squared magnitude of the autocorrelation function.


Preferably, the step of determining a value of a metric further comprises adjusting or zeroing the central tap in the output of the step of calculating.


In a further embodiment, the step of determining a value of a metric further comprises adjusting or zeroing the tap adjacent the central tap in the output of the step of calculating.


In one embodiment, the step of determining a value of a metric comprises identifying the tap with the largest magnitude or squared magnitude in the taps remaining in the output of the step of calculating; and setting the metric to the value of said magnitude or said squared magnitude of the identified tap.


In one embodiment, the step of determining a value of a metric further comprises adjusting the value of the metric based on the distance of the identified tap from the central tap.


In another embodiment the step of determining a value of a metric further comprises adjusting the value of the metric based on a function of a peak to average power ratio of the measured signal.


In this embodiment, the step of adjusting the value of the metric based on a function of a peak to average power ratio of the measured signal preferably comprises, in the event that the peak to average power ratio of the measured signal is below a threshold value, adjusting the value of the metric to a minimum value.


In one embodiment, the step of determining an estimate of the quality of the signal from the determined metric comprises comparing the determined metric to a look-up table.


In an alternative embodiment, the step of determining an estimate of the quality of the signal from the determined metric comprises using a curve-fitting technique to match the determined metric to a predetermined relationship between values for the metric and the quality of the signal.


Preferably, the step of measuring comprises measuring a Zadoff-Chu reference signal transmitted from the second device to the third device, and the quality of the signal is a signal to noise ratio.


Preferably, the step of measuring a Zadoff-Chu reference signal comprises estimating the position of the Zadoff-Chu reference signal in time.


Preferably, the step of measuring comprises measuring a portion of the Zadoff-Chu reference signal.


In one embodiment, the method further comprises the step of using a scheduler to ensure that no signals will be transmitted to the first device from other devices associated therewith that might interfere with the execution of the step of measuring.


According to a second aspect of the invention, there is provided a network element for use in a communication network, the network element being configured to perform the method described above.





BRIEF DESCRIPTION OF THE DRAWINGS

The invention will now be described in detail, by way of example only, with reference to the following drawings, in which:



FIG. 1 shows an exemplary communication network;



FIG. 2 is a flow chart illustrating a method of setting a maximum permitted transmission power for a femtocell base station;



FIG. 3 is a flow chart illustrating the method of FIG. 2 in more detail;



FIGS. 4(
a) and 4(b) are graphs illustrating the autocorrelation function for time domain reference signals with low and high signal to noise ratios respectively;



FIG. 5 is a graph illustrating a plot of autocorrelation function peaks against signal to noise ratio;



FIG. 6 is a graph illustrating a plot of peak to average power ratios against signal to noise ratio;



FIG. 7 is a graph illustrating a plot of autocorrelation function peaks against signal to noise ratio in which the scatter has been reduced;



FIG. 8 is a flow chart illustrating a method of estimating a signal quality of a reference signal in an uplink in accordance with an exemplary embodiment of the invention;



FIG. 9 is a graph illustrating the change in throughput on a macrocell downlink against femtocell base station density in a macrocell sector;



FIG. 10 is a graph illustrating the change in throughput on a macrocell downlink against femtocell base station density for a user equipment at the edge of the macrocell;



FIG. 11 is a graph illustrating the change in throughput on a femtocell downlink against femtocell base station density; and



FIG. 12 is a graph illustrating the change in throughput on a femtocell downlink against femtocell base station density for a user equipment at the edge of the femtocell.





DETAILED DESCRIPTION OF THE PREFERRED EMBODIMENTS

Although the invention will be described below with reference to an LTE communication network and femtocell base stations or HeNBs, it will be appreciated that the invention is applicable to other types of third or subsequent generation network in which femtocell base stations (whether for home or business use), or their equivalents in those networks, can be deployed. Moreover, although in the embodiments below the femtocell base stations and macrocell base stations use the same air interface (LTE), it will be appreciated that the invention can be used in a situation in which the macrocell and femtocell base stations use the same or corresponding frequencies but different air interface schemes (for example the macrocell base stations could use WCDMA while the femtocell base stations use LTE).



FIG. 1 shows part of an exemplary communication network 2 in which the invention can be implemented. The communication network 2 includes a plurality of macrocell base stations 4 (only one of which is shown in FIG. 1) that each define a respective coverage area—indicated by macrocell 6. In an LTE communication network, the macrocell base stations 4 are referred to as evolved Node Bs (eNBs).


One or more femtocell base stations 8 (Home eNBs—HeNBs) can be located within the coverage area 6 of the macrocell base station 4 (although only one femtocell base station 8 is shown in FIG. 1), with each femtocell base station 8 defining a respective coverage area—indicated by femtocell 10.


It will be appreciated that FIG. 1 has not been drawn to scale, and that in most real-world implementations the coverage area 10 of the femtocell base station 8 will be significantly smaller than the coverage area 6 of the macrocell base station 4.


A number of mobile devices (UEs) 12 are also located in the communication network 2 within the coverage area 6 of the macrocell base station 4.


Four mobile devices 12a, 12b, 12c and 12d are each associated with the macrocell base station 4, meaning that they transmit and/or receive control signalling and/or data using the macrocell base station 4. It will be noted that although the mobile device 12d is also within the coverage area 10 of the femtocell base station 8, it is associated with the macrocell base station 4 (this could be due to the signal strength of the macrocell base station 4 being significantly better for mobile device 12d than the signal strength of the femtocell base station 8 or the femtocell base station 8 could be restricted to specific subscribers that don't include mobile device 12d, etc.). Mobile devices 12a, 12b, 12c and 12d are referred to collectively herein as “macro-UEs”, as they are the mobile devices/user equipments (UEs) associated with the macrocell base station 4.


Two further mobile devices, 12e and 12f, are located within the coverage area 10 of the femtocell base station 8 and are currently associated with the femtocell base station 8, meaning that they transmit and/or receive control signalling and/or data using the femtocell base station 8. Mobile devices 12e and 12f are referred to collectively herein as “femto-UEs”, as they are the mobile devices/user equipments (UEs) associated with the femtocell base station 8.


As described above, it is necessary to ensure that the downlink transmissions from the femtocell base station 8 to the femto-UEs 12e and 12f do not prevent nearby macro-UEs (such as macro-UE 12d) from being able to successfully receive downlink transmissions from the macrocell base station 4. A similar requirement exists for a mobile device that is associated with another femtocell base station, in that the downlink transmissions from the femtocell base station 8 to the femto-UEs 12e and 12f should not prevent those mobile devices from successfully receiving the downlink transmissions from their femtocell base station.


As described above, this problem is addressed in conventional networks by applying a cap to the transmission power used by femtocell base stations 8 to transmit signals to femto-UEs. This cap is set to a value that prevents these downlink signals from causing an undesirable level of interference to mobile devices that are not associated with the femtocell base station 8 that are in or near the coverage area 10 of the femtocell base station 8 (such as mobile device 12d in FIG. 1). This cap is applied to the transmission power regardless of whether there are any mobile devices in or near the coverage area 10 of the femtocell base station 8 (so it would be applied, for example, even if mobile device 12d was not present).


However, as illustrated in FIG. 2, it is determined whether there are any mobile devices that are not associated with the femtocell base station 8 that require protection from interference caused by downlink transmissions of the femtocell base station 8 (step 101), and the transmission power cap for the femtocell base station 8 is set accordingly (step 103).


A more detailed method of operating a femtocell base station 8 is illustrated in FIG. 3. In FIG. 3, steps 111, 113, 117 and 119 correspond to the step of determining (step 101) in FIG. 2.


In the following, although the method will be described with reference to protecting mobile device 12d (i.e. a macro-UE) that is associated with macrocell base station 4 from downlink transmissions from the femtocell base station 8, it will be appreciated that a similar method can be used to protect a mobile device that is associated with another femtocell base station.


In step 111, the femtocell base station 8 attempts to identify if there are any macro-UEs 12 that are receiving downlink transmissions from a macrocell base station 4.


In LTE, macro-UEs 12 transmit information to the macrocell base station 4 before, during or after the receipt of a downlink transmission from the macrocell base station 4, for example an acknowledgement (ACK/NACK) signal, a channel quality indicator (CQI), sounding signals, data signals, etc. Therefore, the femtocell base station 8 can monitor uplink channel(s) used by the macro-UEs for these transmissions to determine if there are any mobile devices nearby that might need protecting from its downlink transmissions.


In step 113, it is determined whether any signals detected in step 111 originate from mobile devices that are not being served by (or associated with) the femtocell base station 8.


If the femtocell base station 8 does not detect any signals from macro-UEs 12, then the femtocell base station 8 can assume that there are no macro-UEs nearby that need protecting from its downlink transmissions. In this case, in step 115, the maximum permitted transmission power for the femtocell base station 8 can be set to a high or relatively high value, for example an upper limit for the transmission power (such as 0.1 W in LTE). The method then returns to step 111 and repeats periodically.


If the femtocell base station 8 does detect signals from macro-UEs 12, then the method moves to step 117 in which the femtocell base station 8 estimates a quality of a detected signal. This quality can be a signal to noise ratio (SNR), a signal to noise plus interference ratio (SNIR), a signal strength, or any other measure of the quality of a transmitted signal. In some implementations, depending on the way in which the femtocell base station 8 detects signals in the uplink, the femtocell base station 8 may be able to distinguish signals from multiple macro-UEs 12 and can estimate the quality of each of the signals. However, in alternative implementations, the femtocell base station 8 may not be able to distinguish the signals and therefore performs the estimation on the signal with the highest quality.


In a preferred embodiment of the invention, the femtocell base station 8 identifies characteristics of the Zadoff-Chu reference signal and estimates the signal to noise ratio (SNR) of this signal. This embodiment is described in more detail below with reference to FIG. 4. It will be noted that in this embodiment the femtocell base station 8 does not distinguish between signals from multiple macro-UEs 12 and therefore estimates the SNR for the signal with the highest quality.


In an alternative implementation, the femtocell base station 8 detects and decodes the data in the uplink and determines a quality of the data signals. It will be appreciated by those skilled in the art that alternative techniques can be used by the femtocell base station 8 to determine a quality of the signals in the uplink.


The femtocell base station 8 then compares the estimated quality (or the highest estimated quality if the femtocell base station 8 can estimate the quality for multiple signals) with a threshold value (step 119). In a preferred implementation where the quality is a signal to noise ratio, the threshold can be a value in the range of 10 dB to 30 dB.


It will be noted that a macro-UE 12 will need most protection from the downlink transmissions of the femtocell base station 8 when it is near to the edge of the coverage area 6 of the macrocell base station 4, as the downlink signals received at the macro-UE 12 from the macrocell base station 4 will be relatively weak. In this situation, the macro-UE 12 will need to be transmitting its uplink signals at a relatively high power (due to its distance from the macrocell base station 4). By estimating a quality of the uplink signal (which will be affected by the transmission power of the macro-UE 12d and its proximity to the femtocell base station 8), the femtocell base station 8 can determine whether, and/or the extent to which, the macro-UE 12d needs protecting from the downlink transmissions of the femtocell base station 8.


Therefore, if the estimated quality exceeds the threshold value then the femtocell base station 8 assumes that the macro-UE 12d that originated the signal needs significant protection from the downlink transmissions of the femtocell base station 8, and the maximum permitted transmission power for the femtocell base station 8 should be set at a low or relatively low value (step 121). For example, the maximum permitted transmission power can be set to a lower limit for the transmission power (such as 0.001 W in LTE).


In one implementation, the femtocell base station 8 sets the maximum permitted transmission power such that, at a specified pathloss from the femtocell base station 8 (for example 80 dB), a signal received by the macro-UE 12d from the macrocell base station 4 meets or is estimated to meet a specified quality level (for example a target signal to interference plus noise ratio—SINR), as in a conventional network.


The method then returns to step 111 and repeats periodically.


If the estimated quality does not exceed the threshold value then the femtocell base station 8 sets the maximum permitted transmission power to an intermediate value that lies between an upper and lower limit for the transmission power (step 123). Thus, the femtocell base station 8 provides some protection for the macro-UE 12d, while allowing downlink transmissions from the femtocell base station 8 to be transmitted at a higher power than conventional techniques permit. In this way, the data throughput for femto-UEs 12e and 12f can be improved over the conventional technique.


In a preferred implementation, the intermediate value for the maximum permitted transmission power is selected based on the difference between the estimated quality of the signal and the threshold value. In particular, the value for the maximum permitted transmission power can increase in proportion to the difference between the estimated quality of the signal and the threshold value (up to an upper limit, if applicable). In a preferred embodiment where the quality is a signal to noise ratio, if the estimated SNR is 5 dB below the threshold value, then the maximum permitted transmit power can be set to be 5 dB above the low or relatively low value, subject to the upper limit on the maximum permitted transmit power.


Again, the method returns to step 111 and repeats periodically.


In one implementation of the invention, steps 113 and 117 can be combined, in that the femtocell base station 8 estimates a quality (such as the SNR) of a signal in the uplink and if the estimated quality is above a particular threshold, then a detection of a macro-UE 12 is assumed to have been made. This threshold could be the same or different to the threshold used in step 119.


It will be appreciated that a macro-UE 12d may move into the vicinity of the femtocell base station 8 (i.e. into or near to the coverage area 10 of the femtocell base station 8) without needing to transmit anything to its associated macrocell base station 4 (for example if the macro-UE 12d is not receiving any downlink transmissions from the macrocell base station 4), which means that the femtocell base station 8 will not be able to detect the macro-UE 12d in step 111.


However, as the macro-UE 12d may need to monitor downlink control channels from the macrocell base station 4 (for example a broadcast channel—BCH, or a physical downlink control channel—PDCCH), it is necessary to make sure that the macro-UE 12d is able to receive these downlink transmissions. Although these channels are designed to be relatively robust against interference, the femtocell base station 8 may still interfere with these channels if the transmission power is sufficiently high.


Therefore, in one implementation, the femtocell base station 8 periodically or intermittently sets the maximum permitted transmission power to the lower limit, in order to provide the maximum protection for any macro-UEs 12d in its vicinity, irrespective of whether the femtocell base station 8 detects any signals in steps 111 and 113. For example, the femtocell base station 8 can set the maximum permitted transmission power to the lower limit for 100 milliseconds every 1 second. This will provide opportunities for any macro-UEs 12d that are not transmitting any uplink signals to listen for downlink transmissions from the macrocell base station 4.


In an alternative implementation, the femtocell base station 8 can set the maximum permitted transmission power to the lower limit whenever the femtocell base station 8 is transmitting signals at the same time that the macrocell base station 4 is transmitting control channel signals. In particular, the femtocell base station 8 will typically be synchronised with the macrocell base station 4 and the control channel signals will be sent at predetermined times and on predetermined resource blocks (RBs), so the femtocell base station will know when the macrocell base station 4 will be transmitting the control channel signals. For example, in LTE, some control channel signals are transmitted once every lms (e.g. PFICH, PDCCH), with the first four of fourteen symbols transmitted per lms carrying control channel signals. Other control channels (e.g. PBCH, PSCH) are sent less frequently and use approximately seven symbols out of every 140 symbols and a subset of the available resource blocks.


Estimation of the Quality of an Uplink Reference Signal


As described above, in a preferred embodiment of the invention, the femtocell base station 8 identifies characteristics of the Zadoff-Chu reference signal and estimates the signal to noise ratio (SNR) of this signal.


Unlike WCDMA networks, in LTE the characteristics of uplink reference signals are significantly different to the characteristics of both data transmissions and thermal noise. This method exploits differences in the autocorrelation function between a portion of the time domain reference signal and (filtered) Gaussian noise.


For an uplink reference signal occupying a small number of frequency domain resource blocks, it would be expected that the autocorrelation function with high SNR would deviate from that due to (filtered) Gaussian noise. However, even with a wideband spectrally flat reference signal, such as 50 resource blocks (the maximum for a 10 MHz system), the autocorrelation function of a portion of the time domain reference signal deviates from the filtered Gaussian noise case.


This is true for all the Zadoff-Chu basis sequences, although the nature of the autocorrelation function does depend on the particular Zadoff-Chu basis sequence. An example of the autocorrelation function for low and high SNR cases with 50 resource blocks is shown in FIGS. 4(a) and 4(b) respectively.


It can be seen in FIG. 4 that the low SNR case is dominated by the autocorrelation function of the filtered Gaussian noise, while the high SNR case is dominated by the autocorrelation function of the reference signal.



FIG. 5 shows the results of a simulation in which the autocorrelation peaks from a single reference signal, excluding the central tap, is plotted against the SNR. This plot was obtained over a range of different reference signal parameters, numbers of resource blocks, numbers of macro-UEs, SNRs from each macro-UE and frequency resource assignments. The simulation also included fading effects.


Thus, it can be seen from FIG. 5 that this metric, based on the autocorrelation function, can be used to estimate or predict the SNR in many cases. However, there are a number of points in the plot where although the SNR is high, the metric remains low. This scatter to the right hand side of the plot is potentially problematic, since in these cases nearby macro-UEs might not be protected by the femtocell base station 8. This scatter can be due to fading as well as differences between the autocorrelation functions of the different Zadoff-Chu basis sequences.


An alternative class of metric for the estimation of the SNR can be based on the statistics of the time domain waveform. One simple metric is the peak to average power ratio (PAPR). High SNR reference signals should have low PAPR, whereas Gaussian noise has a relatively high PAPR.


Results for this metric (in linear units) are shown in FIG. 6 and it can be seen that there is an even larger scatter apparent in the PAPR metric than the autocorrelation metric, and as such the PAPR metric (and other metrics based on statistics of the power) are less attractive for estimating the SNR of the uplink reference signal.


However, it has been observed that the scattering between the autocorrelation and PAPR metrics is independent, i.e. for the problematic points with high SNR but abnormally low autocorrelation metric, the PAPR tends to remain low (as expected for high SNR signals). For such points, the autocorrelation metric can be adjusted (upwards). This approach can be used to reduce the scatter in the autocorrelation metric, and therefore improve the estimation of the SNR. For example, if the PAPR p (in linear units) is less than 3, then a minimum value can be applied to the metric, this minimum value being given by 400+(3-p)*50.


Two additional approaches for further reducing the scatter in the autocorrelation metric have been identified.


Firstly, as the autocorrelation peaks of the reference signals tend to reduce in magnitude with distance from the main central peak, then some shaping of the autocorrelation function can be applied. To avoid an increase in the “false detection” rate, it is important that this is only done for samples in the autocorrelation function which are already significantly above the noise level—and so a threshold is applied prior to applying this shaping. For example, if the metric is greater than 120 and the offset from the centre tap is n then the metric can be increased by 0.6n.


Secondly, the scatter can be reduced by obtaining results over multiple measurements, for example by taking the maximum metric obtained from a set of four or eight measurements.


By using all of these techniques, the scatter in the autocorrelation metric is significantly reduced. FIG. 7 illustrates the resulting relationship between the autocorrelation metric and the SNR.


The femtocell base station 8 can make use of the relationship between the autocorrelation function and the SNR to determine the SNR of an uplink signal. A method of estimating the SNR of the Zadoff-Chu reference signal in accordance with an embodiment of the invention is shown in more detail in FIG. 8.


Firstly, the femtocell base station 8 obtains a “rough” synchronization to the macrocell (via a network monitor mode, or, if the standards allow, via macrocell timing measurement reports included in mobile device measurements, or via the X2 interface).


This rough synchronization allows the femtocell base station 8 to estimate roughly where in time the uplink reference signals from macro-UEs are likely to be. In nearly all cases, this is the centre symbol in the 0.5 ms uplink sub-frame.


It will be appreciated that this estimation will be subject to some error due to propagation delay from the macrocell base station 4 and the timing advance used by macro-UEs 12. In the case of over-the-air synchronization, which is assumed hereafter, the error will be up to one macrocell round-trip propagation delay, which for a cell of 5 km is 33 us which is roughly half the duration of an orthogonal frequency division multiplexing (OFDM) symbol. The error means that signals received from macro-UEs 12 may arrive earlier than expected at the femtocell base station 8.


Therefore, in step 201 of FIG. 8, the femtocell base station 8 measures or captures a portion of the uplink reference symbol to give a time domain reference signal. For example, the femtocell base station 8 obtains the time domain reference signal from the first 512 samples of the reference symbol (assuming a 10 MHz bandwidth with 1024 samples plus a cyclic prefix per OFDM symbol). Despite the timing uncertainty for over-the-air synchronization, this captured portion of the reference symbol should only contain reference signal samples from macro-UEs 12 that are near to the femtocell base station 8 (i.e. there shouldn't be any samples of data symbols).


In this step, a scheduler in the femtocell base station 8 may be used to ensure that there will be no uplink transmissions from femto-UEs 12 to the femtocell base station 8 that might interfere with this measurement.


In step 203, the femtocell base station 8 determines the autocorrelation function for the time domain reference signal and (filtered) Gaussian noise.


In one implementation, the femtocell base station 8 does this by normalizing the captured time domain signal to give unit power, with the resulting sequence being denoted r, taking the fast Fourier transform (FFT) of this sequence to give f, calculating the squared magnitude (I2+Q2) for each sample of f and taking the inverse FFT of the resulting sequence to give the autocorrelation sequence a.


As the autocorrelation sequence a determined in step 203 is symmetrical (see FIG. 4), only half of the samples in a need to be retained by the femtocell base station 8 for further processing.


In step 205, the femtocell base station 8 takes the magnitude (or, in alternative implementations, the squared magnitude) of sequence a and then, in step 207, adjusts or zeros the central tap (corresponding to zero time lag in the autocorrelation function).


It may also be necessary to adjust or zero the tap adjacent to the central tap if this tap is significantly influenced by filtering in the receive path. Such filtering has a fixed characteristic so the decision as to adjust or zero this tap is a design decision.


Then, in step 209, the femtocell base station 8 finds the tap with the largest magnitude (or squared magnitude) in the remaining taps, and sets the value of a metric m to this magnitude (or squared magnitude).


The femtocell base station 8 can then determine the signal to noise ratio of the uplink reference signal using this metric (step 211). The value of the SNR for the determined metric m can be determined from the relationship shown in FIG. 5 or FIG. 7, for example using a curve-fitting technique or a look-up table.


As described above, the accuracy of the SNR estimation can be improved by considering the PAPR of the signal, shaping the autocorrelation function based on the distance of the peak used to determine the metric from the central tap and/or the metric may be estimated from signals received in multiple time slots.


Therefore, the metric m may be adjusted as a function of distance from the central tap for example by applying a simple linear function to the metric m determined in step 209. This linear function can be as described above.


Additionally or alternatively, the metric m may be adjusted as a function of the peak to average power ratio of the captured portion of the uplink reference symbol. Specifically if the PAPR is below a threshold (for example 3 in linear units) then a minimum value can be imposed on the metric (again this can be a simple linear function of PAPR). Again, this linear function can be as described above.


Again, additionally or alternatively, the metric m or SNR may be estimated from uplink reference signals captured in multiple time slots and, for example, the highest value of the SNR obtained from these measurements can be used by the femtocell base station 8 to adjust its maximum permitted transmission power.



FIGS. 9 to 12 illustrate the performance benefits of the approach described above.



FIG. 9 illustrates how the data throughput on a downlink from a macrocell base station is affected by an increasing number of active femtocell base stations within the coverage area of the macrocell base station for both a conventional fixed power cap and the scheme described above. In particular, it can be seen that there is a negligible difference in the data throughput between the conventional scheme and the scheme described above.



FIG. 10 illustrates how the data throughput on a downlink from a macrocell base station to cell edge (5 percentile) macro-UEs is affected by an increasing number of active femtocell base stations within the coverage area of the macrocell base station for a conventional scheme and a scheme as described above. Again, there is almost a negligible difference between the two schemes.



FIG. 11 plots the data throughput on a downlink from a femtocell base station against the number of active femtocell base stations within the coverage area of the macrocell base station for both a conventional fixed power cap and the scheme according to the invention. It can be seen that the scheme described above provides an approximate increase in data throughput of 5 Mb/s regardless of the number of active femtocell base stations, which is roughly equivalent to an improvement of 25% in the data throughput.



FIG. 12 plots the data throughput on a downlink from a femtocell base station to cell edge (5 percentile) femto-UEs against the number of active femtocell base stations within the coverage area of the macrocell base station for a conventional scheme and a scheme as described above. It can be seen that for cell edge (5 percentile) femto-UEs the scheme described above provides an approximate increase in data throughput of 190 kb/s regardless of the number of active femtocell base stations, which translates to an eight-fold increase in the data throughput.


Therefore, these graphs indicate that the adaptation of the maximum permitted transmission power according to the invention provides performance benefits for femto-UEs over the conventional fixed maximum permitted transmission power scheme, while offering the same protection to the macrocell base station downlink.


Although the invention has been described in terms of a method of estimating a signal quality, it will be appreciated that the invention can be embodied in a femtocell base station that comprises a processor and transceiver circuitry configured to perform the described method.


Furthermore, while the invention has been presented as a method in a femtocell base station of estimating a quality of a signal transmitted from a macro-UE to a macrocell base station (or from a femto-UE to another femtocell base station) that allows the femtocell base station to control its maximum permitted transmission power, it will be appreciated that the signal quality estimated using the method according to the invention can be used for other purposes, and can be performed by elements in a communication network other than femtocell base stations, such as macrocell base stations (eNBs) or mobile devices.


While the invention has been illustrated and described in detail in the drawings and foregoing description, such illustration and description are to be considered illustrative or exemplary and not restrictive; the invention is not limited to the disclosed embodiments.


Variations to the disclosed embodiments can be understood and effected by those skilled in the art in practicing the claimed invention, from a study of the drawings, the disclosure, and the appended claims. In the claims, the word “comprising” does not exclude other elements or steps, and the indefinite article “a” or “an” does not exclude a plurality. A single processor or other unit may fulfil the functions of several items recited in the claims. The mere fact that certain measures are recited in mutually different dependent claims does not indicate that a combination of these measures cannot be used to advantage. A computer program may be stored/distributed on a suitable medium, such as an optical storage medium or a solid-state medium supplied together with or as part of other hardware, but may also be distributed in other forms, such as via the Internet or other wired or wireless telecommunication systems. Any reference signs in the claims should not be construed as limiting the scope.

Claims
  • 1. A method of estimating a quality of a signal, the method in a first device comprising: measuring a signal transmitted from a second device to a third device, such that the first device is not serving the second device or the third device at the time of the measuring;determining a value of a metric from an autocorrelation function of the measured signal and adjusting the value of the metric, to create an adjusted metric, based on a function of a peak to average power ratio of the measured signal; anddetermining an estimate of the quality of the signal from the adjusted metric.
  • 2. A method as claimed in claim 1 wherein the step of measuring comprises measuring the signal in the time domain, and the step of determining a value of a metric comprises determining the autocorrelation function of the time domain signal and noise.
  • 3. A method as claimed in claim 1 wherein the step of determining a value of a metric comprises determining the autocorrelation function comprises: normalizing the measured signal to give a sequence r;taking the fast Fourier transform of this sequence to give f;determining the squared magnitude of each sample in f; andtaking the inverse fast Fourier transform of the sequence resulting from the step of determining the squared magnitude to give an autocorrelation sequence a.
  • 4. A method as claimed in claim 1 wherein the step of determining a value of a metric from an autocorrelation function of the measured signal comprises calculating the magnitude or squared magnitude of the autocorrelation function.
  • 5. A method as claimed in claim 4 wherein the step of determining a value of a metric further comprises adjusting or zeroing the central tap in the output of the step of calculating.
  • 6. A method as claimed in claim 5 wherein the step of determining a value of a metric further comprises adjusting or zeroing the tap adjacent the central tap in the output of the step of calculating.
  • 7. A method as claimed in claim 5 with the step of determining a value of a metric from an autocorrelation function of the measured signal comprising calculating the magnitude of the autocorrelation function, and the step of determining a value of a metric comprises: identifying the tap with the largest magnitude in the taps remaining in the output of the step of calculating; andsetting the metric to the value of the magnitude of the identified tap.
  • 8. A method as claimed in claim 5 with the step of determining a value of a metric from an autocorrelation function of the measured signal comprising calculating the squared magnitude of the autocorrelation function, and the step of determining a value of a metric comprises: identifying the tap with the largest squared magnitude in the taps remaining in the output of the step of calculating; andsetting the metric to the value of the squared magnitude of the identified tap.
  • 9. A method as claimed in claim 7 wherein the step of determining a value of a metric further comprises adjusting the value of the metric based on the distance of the identified tap from the central tap.
  • 10. A method as claimed in claim 7 wherein the step of determining a value of a metric further comprises adjusting the value of the metric based on a function of a peak to average power ratio of the measured signal.
  • 11. A method as claimed in claim 1 wherein the step of adjusting the value of the metric based on a function of a peak to average power ratio of the measured signal comprises in the event that the peak to average power ratio of the measured signal is below a threshold value, adjusting the value of the metric to a minimum value.
  • 12. A method as claimed in claim 1 wherein the step of determining an estimate of the quality of the signal from the determined metric comprises comparing the determined metric to a look-up table.
  • 13. A method as claimed in claim 1 wherein the step of determining an estimate of the quality of the signal from the determined metric comprises using a curve-fitting technique to match the determined metric to a predetermined relationship between values for the metric and the quality of the signal.
  • 14. A method as claimed in claim 1 wherein the step of measuring comprises measuring a Zadoff-Chu reference signal transmitted from the second device to the third device.
  • 15. A method as claimed in claim 14 wherein the step of measuring a Zadoff-Chu reference signal comprises estimating the position of the Zadoff-Chu reference signal in time.
  • 16. A method as claimed in claim 14 wherein the step of measuring comprises measuring a portion of the Zadoff-Chu reference signal.
  • 17. A method as claimed in claim 1 further comprising the step of using a scheduler to ensure that no signals will be transmitted to the first device from other devices associated therewith that might interfere with the execution of the step of measuring.
  • 18. A method as claimed in claim 1 wherein the quality of the signal is a signal to noise ratio.
  • 19. A method as claimed in claim 1 wherein the first device is monitoring one or more uplink channels to determine if any devices need protecting from other transmissions.
  • 20. A network element for use in a communication network, the network element comprising a first device configured to: measure a signal transmitted from a second device to a third device;determine a value of a metric from an autocorrelation function of the measured signal;adjust the value of the metric based on a function of a peak to average power ratio of the measured signal to create an adjusted metric; anddetermine an estimate of the quality of the signal from the adjusted metric.
  • 21. A network element as claimed in claim 20 wherein the network element comprises a femtocell base station.
  • 22. A method of estimating a quality of a signal, the method in a first base station comprising: measuring a signal transmitted from a mobile device to a second base station that is serving the mobile device, such that the mobile device is not being served by the first base station;determining a value of a metric from an autocorrelation function of the measured signal;adjusting the value of the metric based on a function of a peak to average power ratio of the measured signal to create an adjusted metric anddetermining an estimate of the quality of the signal from the adjusted metric.
  • 23. The network element of claim 20, wherein the first device is also configured to, in the event that the peak to average power ratio of the measured signal is below a threshold value, upwardly adjust the value of the metric determined by the autocorrection function.
  • 24. The method of claim 22, wherein adjusting the value of the metric includes, in the event that the peak to average power ratio of the measured signal is below a threshold value, adjusting upward the value of the metric determined by the autocorrection function.
Priority Claims (1)
Number Date Country Kind
0909650.4 Jun 2009 GB national
PRIORITY CLAIM

This application is a continuation of and claims priority to and U.S. patent application Ser. No. 12/794,254 filed on Jun. 4, 2010 which claims priority to and the benefit of Great Britain Application No. 0909650.4 filed on Jun. 5, 2009.

US Referenced Citations (186)
Number Name Date Kind
4380046 Frosch et al. Apr 1983 A
4574345 Konesky Mar 1986 A
4589066 Lam et al. May 1986 A
4601031 Walker et al. Jul 1986 A
4603404 Yamauchi et al. Jul 1986 A
4622632 Tanimoto et al. Nov 1986 A
4698746 Goldstein Oct 1987 A
4720780 Dolecek Jan 1988 A
4736291 Jennings et al. Apr 1988 A
4814970 Barbagelata et al. Mar 1989 A
4825359 Ohkami et al. Apr 1989 A
4858233 Dyson et al. Aug 1989 A
4890279 Lubarsky Dec 1989 A
4914653 Bishop et al. Apr 1990 A
4937741 Harper et al. Jun 1990 A
4943912 Aoyama et al. Jul 1990 A
4967326 May Oct 1990 A
4974146 Works et al. Nov 1990 A
4974190 Curtis Nov 1990 A
4992933 Taylor Feb 1991 A
5036453 Renner et al. Jul 1991 A
5038386 Li Aug 1991 A
5065308 Evans Nov 1991 A
5109329 Strelioff Apr 1992 A
5152000 Hillis Sep 1992 A
5193175 Cutts et al. Mar 1993 A
5233615 Goetz Aug 1993 A
5239641 Horst Aug 1993 A
5241491 Carlstedt Aug 1993 A
5247694 Dahl Sep 1993 A
5253308 Johnson Oct 1993 A
5265207 Zak et al. Nov 1993 A
5280584 Caesar et al. Jan 1994 A
5384697 Pascucci Jan 1995 A
5386495 Wong et al. Jan 1995 A
5408676 Mori Apr 1995 A
5410723 Schmidt et al. Apr 1995 A
5410727 Jaffe et al. Apr 1995 A
5473731 Seligson Dec 1995 A
5555548 Iwai et al. Sep 1996 A
5557751 Banman et al. Sep 1996 A
5570045 Erdal et al. Oct 1996 A
5600784 Bissett et al. Feb 1997 A
5649303 Hess et al. Jul 1997 A
5692139 Slavenburg et al. Nov 1997 A
5719445 McClure Feb 1998 A
5734921 Dapp et al. Mar 1998 A
5752067 Wilkinson et al. May 1998 A
5761514 Aizikowitz et al. Jun 1998 A
5790879 Wu Aug 1998 A
5795797 Chester et al. Aug 1998 A
5796937 Kizuka Aug 1998 A
5802561 Fava et al. Sep 1998 A
5805839 Singahl Sep 1998 A
5826033 Hayashi et al. Oct 1998 A
5826049 Ogata et al. Oct 1998 A
5826054 Jacobs et al. Oct 1998 A
5845060 Vrba et al. Dec 1998 A
5860008 Bradley Jan 1999 A
5861761 Kean Jan 1999 A
5864706 Kurokawa et al. Jan 1999 A
5923615 Leach et al. Jul 1999 A
5926640 Mason et al. Jul 1999 A
5946484 Brandes Aug 1999 A
5951664 Lambrecht et al. Sep 1999 A
5959995 Wicki et al. Sep 1999 A
5963609 Huang Oct 1999 A
6023757 Nishimoto et al. Feb 2000 A
6044451 Slavenburg Mar 2000 A
6052752 Kwon Apr 2000 A
6055285 Alston Apr 2000 A
6069490 Ochotta et al. May 2000 A
6101599 Wright et al. Aug 2000 A
6122677 Porterfield Sep 2000 A
6167502 Pechanek et al. Dec 2000 A
6173386 Key et al. Jan 2001 B1
6175665 Sawada Jan 2001 B1
6199093 Yokoya Mar 2001 B1
6317820 Shiell et al. Nov 2001 B1
6345046 Tanaka Feb 2002 B1
6360259 Bradley Mar 2002 B1
6381293 Lee et al. Apr 2002 B1
6381461 Besson et al. Apr 2002 B1
6393026 Irwin May 2002 B1
6408402 Norman Jun 2002 B1
6424870 Maeda et al. Jul 2002 B1
6448910 Lu Sep 2002 B1
6499096 Suzuki Dec 2002 B1
6499097 Tremblay et al. Dec 2002 B2
6567417 Kalkunte et al. May 2003 B2
6615339 Ito et al. Sep 2003 B1
6631439 Saulsbury et al. Oct 2003 B2
6681341 Fredenburg et al. Jan 2004 B1
6775766 Revilla et al. Aug 2004 B2
6795422 Ohsuge Sep 2004 B2
6829296 Troulis et al. Dec 2004 B1
6892293 Sachs et al. May 2005 B2
6928500 Ramanujan et al. Aug 2005 B1
6952181 Karr et al. Oct 2005 B2
6961782 Denneau et al. Nov 2005 B1
6996157 Ohsuge Feb 2006 B2
7103008 Greenblat et al. Sep 2006 B2
7161978 Lu et al. Jan 2007 B2
7237055 Rupp Jun 2007 B1
7302552 Guffens et al. Nov 2007 B2
7340017 Banerjee Mar 2008 B1
7342414 DeHon Mar 2008 B2
7383422 Kageyama et al. Jun 2008 B2
7428721 Rohe et al. Sep 2008 B2
7549081 Robbins et al. Jun 2009 B2
7672836 Lee et al. Mar 2010 B2
7712067 Fung et al. May 2010 B1
7801029 Wrenn et al. Sep 2010 B2
7804719 Chirania et al. Sep 2010 B1
8032142 Carter et al. Oct 2011 B2
8385836 Whinnett Feb 2013 B2
8442165 Ahn et al. May 2013 B2
20020045433 Vihriala Apr 2002 A1
20020069345 Mohamed et al. Jun 2002 A1
20020174318 Stuttard et al. Nov 2002 A1
20020198606 Satou Dec 2002 A1
20030154358 Seong Aug 2003 A1
20030235241 Tamura Dec 2003 A1
20040078548 Claydon et al. Apr 2004 A1
20040083409 Rozenblit et al. Apr 2004 A1
20040139466 Sharma et al. Jul 2004 A1
20040150422 Wong et al. Aug 2004 A1
20040198386 Dupray Oct 2004 A1
20050083840 Wilson Apr 2005 A1
20050114565 Gonzalez et al. May 2005 A1
20050124344 Laroia et al. Jun 2005 A1
20050163248 Berangi et al. Jul 2005 A1
20050195924 Chen et al. Sep 2005 A1
20050250502 Laroia et al. Nov 2005 A1
20050282500 Wang et al. Dec 2005 A1
20060087323 Furse et al. Apr 2006 A1
20060089154 Laroia et al. Apr 2006 A1
20060251046 Fujiwara Nov 2006 A1
20060268962 Cairns et al. Nov 2006 A1
20070036251 Jelonnek et al. Feb 2007 A1
20070127556 Sato Jun 2007 A1
20070173255 Tebbit et al. Jul 2007 A1
20070183427 Nylander et al. Aug 2007 A1
20070220522 Coene et al. Sep 2007 A1
20070220586 Salazar Sep 2007 A1
20070248191 Pettersson Oct 2007 A1
20070254620 Lindqvist et al. Nov 2007 A1
20070263544 Yamanaka et al. Nov 2007 A1
20080146154 Claussen et al. Jun 2008 A1
20080151832 Iwasaki Jun 2008 A1
20080153497 Kalhan Jun 2008 A1
20090003263 Foster et al. Jan 2009 A1
20090042593 Yavuz et al. Feb 2009 A1
20090046665 Robson et al. Feb 2009 A1
20090080550 Kushioka Mar 2009 A1
20090092122 Czaja et al. Apr 2009 A1
20090097452 Gogic Apr 2009 A1
20090098871 Gogic Apr 2009 A1
20090111503 Pedersen et al. Apr 2009 A1
20090150420 Towner Jun 2009 A1
20090163216 Hoang et al. Jun 2009 A1
20090168907 Mohanty et al. Jul 2009 A1
20090190634 Bauch et al. Jul 2009 A1
20090196253 Semper Aug 2009 A1
20090215390 Ku et al. Aug 2009 A1
20090252200 Dohler et al. Oct 2009 A1
20090264077 Damnjanovic Oct 2009 A1
20090296635 Hui et al. Dec 2009 A1
20100035556 Cai et al. Feb 2010 A1
20100046455 Wentink et al. Feb 2010 A1
20100054237 Han et al. Mar 2010 A1
20100087148 Srinivasan et al. Apr 2010 A1
20100105345 Thampi et al. Apr 2010 A1
20100105354 Huang Apr 2010 A1
20100111070 Hsu May 2010 A1
20100157906 Yang et al. Jun 2010 A1
20100195525 Eerolainen Aug 2010 A1
20100215032 Jalloul et al. Aug 2010 A1
20100222068 Gaal et al. Sep 2010 A1
20100234061 Khandekar et al. Sep 2010 A1
20100248646 Yamazaki et al. Sep 2010 A1
20100279689 Tinnakornsrisuphap et al. Nov 2010 A1
20110002426 Muirhead Jan 2011 A1
20110122834 Walker et al. May 2011 A1
20110130143 Mori et al. Jun 2011 A1
20110170494 Kim et al. Jul 2011 A1
Foreign Referenced Citations (61)
Number Date Country
1823485 Aug 2006 CN
101754351 Jun 2010 CN
101873688 Oct 2010 CN
0 180 212 May 1986 EP
492174 Jul 1992 EP
0 877 533 Nov 1998 EP
0 973 099 Jan 2000 EP
0 977 355 Feb 2000 EP
1054523 Nov 2000 EP
1 134 908 Sep 2001 EP
1418776 May 2004 EP
1 691 515 Aug 2006 EP
1 946 506 Jul 2008 EP
1876854 Sep 2008 EP
2 071 738 Jun 2009 EP
2 217 011 Aug 2010 EP
2 326 118 May 2011 EP
2 286 623 Dec 2011 EP
2 304 495 Mar 1997 GB
2 370 380 Jun 2002 GB
2398651 Aug 2004 GB
2 414 896 Dec 2005 GB
2391083 Mar 2006 GB
2463074 Mar 2010 GB
61123968 Jun 1986 JP
884365 Mar 1996 JP
A-8-297652 Nov 1996 JP
11272645 Oct 1999 JP
2001-034471 Feb 2001 JP
2004-525439 Aug 2004 JP
2006-500673 Jan 2006 JP
2006-222665 Aug 2006 JP
9004235 Apr 1990 WO
9111770 Aug 1991 WO
9726593 Jul 1997 WO
9850854 Nov 1998 WO
0102960 Jan 2001 WO
0250624 Jun 2002 WO
0250700 Jun 2002 WO
03001697 Jan 2003 WO
2004029796 Apr 2004 WO
2004034251 Apr 2004 WO
2004102989 Nov 2004 WO
WO-2004104530 Dec 2004 WO
2005048491 May 2005 WO
2006059172 Jun 2006 WO
2007021139 Feb 2007 WO
2007054127 May 2007 WO
2007056733 May 2007 WO
2007126351 Nov 2007 WO
2008030934 Mar 2008 WO
2008090154 Jul 2008 WO
2008093100 Aug 2008 WO
2008099340 Aug 2008 WO
2008155732 Dec 2008 WO
2009054058 Apr 2009 WO
2009054205 Apr 2009 WO
2009140312 Nov 2009 WO
2010072127 Jul 2010 WO
2010122512 Oct 2010 WO
2010126155 Nov 2010 WO
Non-Patent Literature Citations (40)
Entry
Panesar, G. et al., “Deterministic Parallel Processing”, Proceedings of the 1st Microgrid Workshop, Jul. 2005.
Towner, D. et al., “Debugging and Verification of Parallel Systems—the picoChip way”, 2004.
PicoChip, “PC7203 Development Platform Preliminary Product Brief”, Jul. 2007.
Ennals, R. et al., “Task Partitioning for Multi-core Network Processors”, 2005.
Rabideau, Daniel J., et al., “Simulated Annealing for Mapping DSP Algorithms on to Multiprocessors,” Signals, Systems and Computers, 1993 Conference Record of the Twenty-Seventh Asilomar Conference, Nov. 1-3, 1993, IEEE, pp. 668-672.
Nanda, Ashwini K., et al., “Mapping Applications onto a Cache Coherent Multiprocessor,” Conference on High Performance Networking and Computing, Proceedings of the 1992 ACM/IEEE Conference on Supercomputing, 1992, IEEE, pp. 368-377.
Lin, Lian-Yu, et al., Communication-driven Task Binding for Multiprocessor with Latency Insensitive Network-on-Chip, Design Automation Conference, 2005 Proceedings of th ASP-DAC, Jan. 18-21, 2005, IEEE, pp. 39-44.
Holger Claussen, Bell Laboratories, Alcatel-Lucent; “Performance of Macro and Co-Channel Femtocells in a Hierarchical Cell Structure”; The 18th Annual IEEE Internation Symposium on Personal, Indoor and Mobile Radio Communications (PIMRC'07); Sep. 1, 2007; pp. 1-5, XP031168593, ISBN: 978-1-4244-1143-6; Swindon, United Kingdom.
Shiroshita, T., et al.: “Reliable data distribution middleware for large-scale massive data replication” Parallel and Distributed Information Systems, 1993, Fourth International Conference on Miami Beach, FL, USA Dec. 18-20, 1996, Los Alamitos, CA, USA IEEE Comput. Soc, US, Dec. 18, 1996, pp. 196-205m XP010213188 ISBN: 0-8186-7475-X.
Levine B. N. et al.: “A comparison of known classes of reliable multicast protocols” Netowrk Protocols, 1996 International Conference on Columbus, OH, USA Oct. 29-Nov. 1, 1996, Los Alamitos, CA, USA IEEE Comput. Soc. US Oct. 29, 1996, pp. 112-121, XP010204425 ISBN: 0-8186-7453-9.
Ishijima, et al., A Semi-Synchronous Circuit Design Method by Clock Tree Modification IEEE Trans. Fundamentals, vol. E85-A, No. Dec. 12, 2002.
Greenstreet, et al., Implementing a STARI Chip, IEEE 1995.
Hierarchical multiprocessor organizations; J. Archer Harris; David R. Smith; International Symposium on computer Architecture; Proceedings of the 4th annual symposium on Computer architecture pp. 41-48 Year of Publication 1977.
“Hierarchical Interconnection Networks for Multicomputer systems” Sivarama P. Dandamudi, et al. IEEE Transactions on Computers archive vol. 39, Issue 6 (Jun. 1990) pp. 786-797 Year of Publication: 1990.
A Cluster Structure as an Interconnection Network for Large Multimicrocomputer Systems Wu, S.B. Liu, M.T. This paper appears in: Transactions on Computers Publication Date: Apr. 1981 vol. C-30, Issue: 4 on pp. 254-264.
Performance Analysis of Multilevel Bus Networks for Hierarchichal Multiprocessors S.M. Mahmud IEEE Transactions on Computers archive vol. 43, Issue 7 (Jul. 1994) pp. 789-805 Year of Publication: 1994.
Performance Analysis of a Generalized Class of M-Level Hierarchical Multiprocessor Systems I.O. Mahgoub A.K. Elmagarmid Mar. 1992 (vol. 3, No. 2) pp. 129-138.
Kober, Rudolf, “The Multiprocessor System SMS 201—Combining 128 Microprocessors to a Powerful Computer,” Sep. 1977, Compcon '77, pp. 225-230.
Knight, Thomas and Wu, Henry, “A Method for Skew-free Distribution of Digital Signals using Matched Variable Delay Lines,” VLSI Circuits, 1993. Digest of Technicial Papers. 1993 Symposium on, May 1993, pp. 19-21.
Popli, S.P., et al., “A Reconfigurable VLSI Array for Reliability and Yield Enhancement,” Proceedings of the International Conference on Systolic Arrays, 1988, pp. 631-642.
John, L.K., et al., “A Dynamically Reconfigurable Interconnect for Array Processors,” IEE Transactions on Very Large Scale Integration (lvsi) Systems, vol. 6, No. 1, Mar. 1998, pp. 150-157.
Schmidt, U., et al., “Datawave: A Single-Chip Multiprocessor for Video Applications,” IEEE Micro, vol. 11, No. 3, Jun. 1991, pp. 22-25, 88-94.
Chean, M., et al., “A Taxonomy of Reconfiguration Techniques for Fault-Tolerant Processor Arrays,” Computer, IEEE Computer Society, vol. 23, No. 1, Jan. 1990, pp. 55-69.
Kamiura, N., et al., “A Repairable and Diagnosable Cellular Array on Multiple-Valued Logic,” Proceedings of the 23rd International Symposium on Multiple-Valued Logic, 1993, pp. 92-97.
LaForge, 1., “Extremally Fault Tolerant Arrays,” Proceedings: International Conference on Wafer Scale Integration, 1989, pp. 365-378.
Reiner Hartenstein, et al., On Reconfigurable Co-Processing Units, Proceedings of Reconfigurable Architectures Workshop (RAW98), Mar. 30, 1998.
Schmidt, U., et al., “Data-Driven Array Processor for Video Signal Processing”, IEEE—1990 (USA).
Muhammad Ali Mazidi, “The80×86 IBM PC and Compatible Computers”, 2003, Prentice Hall, 4th edition, pp. 513-515.
Shigei, N., et al., “On Efficient Spare Arrangements and an Algorithm with Relocating Spares for Reconfiguring Processor Arrays,” IEICE Transactions on Fundamentals of Electronics, communications and Computer Sciences, vol. E80-A, No. 6, Jun. 1997, pp. 988-995.
“Interference Management in Femto Cell Deployment”, Mingxi Fan, Mehmet Yavuz, Sonny Nanda, Yeliz Tokgoz, Farhad Meshkati, Raul Dangui, Qualcomm Incorporated, QUALCOMM 3GPP2 Femto Workshop, Boston, MA, Oct. 15, 2007.
“Details on specification aspects for UL ICIC”, Qualcomm Europe, May 5-May 9, 2008, 2 pages.
3GPP TS 36.331 v9.2.0 3RD Generation Partnership Project: Technical Specification Group Radio Access Network; Evolved Universal Terrestrial Radio Acces (E-UTRA); Radio Resource Control (RRC) Protocol specification (Release 9) Mar. 2010, pp. 1-248.
Alcatel-Lucent, et al., “Congested H(e)NB Hybrid Access Mode cell”, 2009, 3GPP Draft; R3091053-Congested H(e)NB, 3rd Generation Partnership Project (3GPP), Apr. 29, 2009, 4 pages.
Motorola, “Text proposal for TR 36.9xx: Reducing HeNB interference by dynamically changing HeNB access mode”, 2009, 3GPP Draft: R4-094688, Apr. 29, 2009, 2 pages.
MIPS, MIPS32 Architecture for Programmers, 2001, MIPS Technologies, vol. 2, pp. 1-253.
Pechanek, et al. ManArray Processor Interconnection Network: An Introduction, Euro-Par'99, LNCS 1685, pp. 761-765, 1999.
Waddington, T., Decompilation of “hello world” on Pentium and SPARC, 4 pages, [retrieved on Aug, 3, 2012]. Retrieved from the Internet<URL: http://web.archive.org/web/20050311141936/http://boomerang.sourceforge.net/helloworld.html>.
Balakrishnan, et al., CodeSurfer/x86—A Platform for Analyzing x86 Executables, Springer-Verlag Berlin Heidelber, 2005, [retrieved on Dec. 30, 2011], retrieved from the internet<URL:http://www.springerlink.com/content/uneu2a95u9nvb20v/>.
Miecznikowski, J., et al., “Decompiling Java Using Stage Encapsulation”, Proceedings of the Eighth Working Conference on Reverse Engineering, Oct. 2-5, 2001.
Office Action dated Mar. 11, 2013 for Chinese Patent Application No. 201010204499.X (with English translation).
Related Publications (1)
Number Date Country
20130165105 A1 Jun 2013 US
Continuations (1)
Number Date Country
Parent 12794254 Jun 2010 US
Child 13774980 US