The present invention generally relates to wireless OFDMA (Orthogonal Frequency Division Multiple Access) communication systems, and especially to planning allocation of time-frequency resources in such systems.
Energy consumption in wireless cellular systems can be handled in many ways:
Reference [1] considers energy consumption for a packet over a single communication link, where the energy consumption is minimized by tuning transmit power and transmit rate.
Although many advances have been made to handle energy consumption issues in communication systems, there is still a general need for even more energy-efficient solutions to the resource management problem.
An object of the present invention is planning allocation of time-frequency resources in a wireless OFDMA communication system to at least approximately minimize transmitter energy consumption.
This object is achieved in accordance with the attached claims.
According to one aspect the present invention involves a method for planning allocation of time-frequency resources to sustain communication links from a common transmitter to multiple receivers in a wireless OFDMA communication system. This method includes the following steps:
According to another aspect the present invention involves a time-frequency resource allocation planner for planning allocation of time-frequency resources to sustain communication links from a common transmitter to multiple receivers in a wireless OFDMA communication system, wherein the planner includes:
According to still another aspect the present invention involves a network node for a wireless OFDMA communication system, where the network node includes such a time-frequency resource allocation planner.
The present invention gives several advantages:
The invention, together with further objects and advantages thereof, may best be understood by making reference to the following description taken together with the accompanying drawings, in which:
Given the scenario of
Based on practical experience from real-world base station power consumption, it is possible to model the dependence of the transmit power POUT on the power PIN consumed by the transmitter. Four such models are illustrated in
where η is an efficiency factor.
In general the solution to the resource management problem will be functions of measures of gain-to-interference-plus-noise-ratios on the K communication links (G1, G2, . . . , GK in
The described procedure may be repeated for each new batch of packets to be transmitted on the communication links. An alternative is to repeat it for each scheduling instance. For instance, a batch of packets is to be sent, requiring a time period T. The next scheduling instance is after, say T/2, and the number of packets that have not yet been sent and any new packets then form a new batch of packets.
where
Step S5 then rounds the initial estimates P*k and R*k to nearest permissible values, where necessary (some initial estimates P*k and R*k may already be equal to permissible values).
The gain-to-interference-plus-noise-ratio measures Gk are, for example, based on (complex) channel estimates Hk, interference estimates Ik and noise estimates σk2, typically in accordance with
These gain-to-interference-plus-noise-ratio measures Gk or their separate components are typically reported by the mobile stations (for example user equipments (UEs) in LTE) that contain the receivers. The measurements are typically performed in the mobile stations by comparing reference or pilot signals transmitted by the transmitter to the corresponding signals actually received by the receivers.
The gain-to-interference-plus-noise-ratio measures Gk are ideally be represented by the full gain-to-interference-plus-noise-ratios in equations (2), but if only some of the components are available, they could be represented by the gain-to-interference ratios |Hk|2/Ik, the gain-to-noise ratios |Hk|2/σ2 or simply the (channel) gains |Hk|2. Furthermore, if the channel transfer function is not known instantaneously, one may instead consider, and replace, |Hk|2 with E{|Hk|2} where E{ . . . } is the expectation value.
The expressions above for the estimates P*k and R*k are based on sums that include all gain-to-interference-plus-noise-ratio measures Gk. However, an alternative is to neglect terms below a corresponding predetermined threshold in one or both of the estimates P*k and R*k.
The resource block set RBS may be selected by summing up the total number of bits (Σk=1KLk) to be sent in the current batch of packets. This sum may then be used to look up a suitable resource block set, represented by the time duration T, from a resource block set table.
So far it has been assumed that the selected resource block set is the final set on which the packets will be transmitted. However, it is also possible to consider this set as a first set, and to perform the same procedure on one or more further sets, to find the set that gives the least expected transmitter power consumption. This is illustrated in
It is also possible to select a smaller resource block set instead of a larger set as in
Still another possibility is to select both a smaller and a larger set and to determine in which direction there is a decrease (if any) in expected transmitter energy consumption. For example, if one finds that a larger resource block set gave a lowest expected transmitter energy consumption, one may try an even larger set to determine whether this gives an even lower expected transmitter energy consumption. This procedure may be repeated until the expected transmitter energy consumption no longer decreases.
The network node in
In
In
The functions described above may be implemented in hardware using any conventional hardware technology, such as Integrated Circuit (IC) technology. Alternatively, at least some of the functions may be implemented in software for execution on suitable processing hardware, such as a microprocessor and/or digital signal processor, including the possibility of using the general processing capabilities already present in the base station or radio relay station.
It will be understood by those skilled in the art that various modifications and changes may be made to the present invention without departure from the scope thereof, which is defined by the appended claims.
This appendix starts by considering the case where transmit power, transmit rate, and time-frequency resources are assumed to be continuous. The purpose of this idealization is to illustrate that there exists an optimization problem and give insight into heuristics for power and rate settings based on communication link gain-to-interference-plus-noise-ratios. Subsequently, somewhat more realistic constraints are introduced, where discrete values or ranges of the transmit parameters are considered. Nonetheless, the analysis based on continuous parameters is considered to be a good approximation of the discrete cases, as transmit power is often semi-continuous and MCSs (Modulation and Coding Schemes) often include many available rates.
First, the number Nk of time-frequency resources for communication link k is
where
In (3) it has been assumed that the number Nk of required time-frequency resources is continuous rather than discrete.
Assuming Shannon capacity achieving coding and modulation, i.e. a complex Gaussian distributed signal in AWGN (Additive White Gaussian Noise), the transmit rate Rk for communication link k is
Rk=lg2(1+GkPk) (4)
where
For more realistic MCSs, the dependency of the transmit rate Rk on the gain-to-interference-plus-noise-ratio Gk and the transmit power Pk looks different but is upper bounded by (4). However, since the MCSs used today are quite close to Shannon capacity, equation (4) will be used as a good approximation.
The total time T(c) for the transmission of all K communication links is
where B is the total available bandwidth.
As noted in connection with the description of
Based on this model, the expected transmitter energy consumption E(c) for all K communication links is
where m=B/BR.
It is now possible to determine the (at least approximately) optimal transmit power and transmit rate allocation by solving the following optimization problem
where s.t. is an abbreviation for “such that”,
When the problem is formulation as in (7), the resources are constrained. This means that in general it is not possible to just minimize the expected total energy consumption E(c). The solution to (7) may instead be found by minimizing a Lagrangian L based on (7) and defined as
where λ is a Lagrange parameter. This is achieved by taking the partial derivative with respect to Pk and equating the resulting equations to zero (one equation for each k), i.e.
which gives
which after performing the partial differentiation gives
(1+GkPk)ln(1+GkPk)−GkPk=ηm−1Gk(λ+P0),k=1, . . . K (11)
where “ln” denotes the natural logarithm to the base e. Equation (11) has to be solved for all K communication links, and λ has to be adjusted to accommodate all transmissions within the given resources/time duration.
Now, the transmissions on the communication links having a low gain-to-interference-plus-noise ratio Gk will require the highest transmitter energy consumption. These communication links are the ones that one may primarily strive to optimize for. Mostly, these communication links will have a low SINR. Thus, in order to find an approximate solution to (11) it is convenient to assume low SINRs (up to 0 dB). One can then find an approximate closed form solution for the transmit rate and transmit power allocation. The transmit powers Pk are approximated as follows
ln(1+GkP4)≈GkPk−(GkPk)2/2+ . . . (12)
Using (11) and neglecting terms in GkPk of orders higher than 2 implies that
(GkPk)2/2≈ηm−1Gk(λ+P0) (13)
which gives the approximated transmit powers
Based on (4) and (14) the corresponding transmit rates are
Rk=lg2(1+GkPk)≈lg2(1+√{square root over (2ηm−1Gk(λ+P0))}) (15)
The Lagrangian parameter λ may now be calculated by using equations (5), (15) and the constraint in (7). This leads to
Assuming a small argument for the rate, since we have small SINRs, the rate expression in the denominator can be Taylor expanded (ln(1+x)=x+ . . . ). This makes it possible to obtain an approximate closed form solution for λ, i.e.
Since λ>−P0 equation (17) may be used to simplify equation (14) into
This approximate transmit power P*k gives in turn the approximate transmit rate R*k (by using the Taylor expansion ln(1+x)=x+ . . . )
Inserting equation (19) into equation (16) gives
which indicates that the constraint in (7) is fulfilled with the approximate transmit rate for low SINRs. The radiated energy per communication link k is then approximately
The total consumed energy is then approximately
In summary, for the continuous case and low SINR values the optimization problem
is approximately solved by the transmit powers
and the transmit rates
For the discrete case the number of time-frequency resources Nk used for communication link k is an integer. Furthermore, the transmit rate Rk for communication link k now is restricted to a set of discrete transmit rates given by the available MCSs. The transmit powers Pk may still be considered as a continuous variable defined in an interval
Pk(min)≦Pk≦Pk(max) (26)
where Pk(min)≧0 is the minimum transmit power, and Pk(max) is the maximum permitted transmit power. This interval may be considered as a continuous set of power values. As an alternative the transmit powers Pk may be restricted to a discrete set
of power values.
In the discrete case the optimization problem (23) is, for low SINR values, approximately solved by the powers P*k from (24) and the rates R*k from (25), rounded to nearest permissible values, where necessary.
By inspection of equation (10) it is appreciated that the power consumption model may be written more generally as an arbitrary polynomial parameterized in some constants ct. Further, the transmit rate or throughput may be also be written as a polynomial parameterized in constants bi which are dependent on the gain-to-interference-plus-noise-ratios. Calculating the derivative of the Lagrange function, after simplification, is then equivalent to calculating
Let a0=c0+λ and ai=ci, ∀i>0. This gives
which implies that
As can be seen, equations (29) are non-linear but can, together with the resource constraint, be solved with standard numerical equation solvers like Newton-Raphson or alike (the sums are typically truncated after a few terms, for example 2-5 terms).
Solving equations (29) gives the optimal transmit powers, which in turn are used to calculate the corresponding transmit rates.
AWGN Additive White Gaussian Noise
LTE Long-Term Evolution
MCS Modulation and Coding Scheme
OFDM Orthogonal Frequency Division Multiplexing
OFDMA Orthogonal Frequency Division Multiple Access
RRM Radio Resource Management
SINR Signal to Interference Noise Ratio
SNR Signal to Noise Ratio
UE User Equipment
Filing Document | Filing Date | Country | Kind | 371c Date |
---|---|---|---|---|
PCT/SE2010/050488 | 5/4/2010 | WO | 00 | 10/30/2012 |
Publishing Document | Publishing Date | Country | Kind |
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WO2011/139190 | 11/10/2011 | WO | A |
Number | Name | Date | Kind |
---|---|---|---|
6400773 | Krongold et al. | Jun 2002 | B1 |
20070184853 | Hottinen et al. | Aug 2007 | A1 |
20070248048 | Zhu et al. | Oct 2007 | A1 |
20080026782 | Kwon et al. | Jan 2008 | A1 |
20080039129 | Li et al. | Feb 2008 | A1 |
20090061774 | Larsson et al. | Mar 2009 | A1 |
20090186648 | Larsson | Jul 2009 | A1 |
20100041409 | Kim et al. | Feb 2010 | A1 |
Entry |
---|
Lin, et al. Optimal and Near-Optimal Resource Allocation Algorithms for OFDMA Networks. IEEE Transactions on Wireless Communications. vol. 8 No. 8. Aug. 1, 2009. |
Moretti, M et al. A Resource Allocator for the Uplink of Multi-Cell OFDMA Systems. IEEE Transactions on Wireless Communications. vol. 6 No. 8, Aug. 1, 2007. |
Abrardo, et al. Optimum Channel Allocation in OFDMA Multi-Cell Systems. Network Control and Optimization. Sep. 8, 2008. |
Abrardo, et al. Radio Resource Allocation Problems for OFDMA Cellular Systems. Computers and Operation Research. vol. 36 No. 5, May 1, 2009. |
Sung, et al. Power Control and Rate Management for Wireless Multimedia CDMA Systems. IEEE Transactions on Wireless Communications. vol. 49 No. 7. Jul. 1, 2001. |
Chiang, et al. Geometric Programming for Communication Systems. Foundations and Trends in Communications and Information Theory. vol. 2. Aug. 1, 2005. |
Chu, et al. Power Control and Rate Management for Wireless Multimedia CDMA Systems. IEEE Transactions on Wireless Communications. vol. 49 No. 7. Jul. 1, 2007. |
Zhang, et al. Energy-Efficient MAC-PHY Resource Management with Guaranteed QoS in Wireless OFDM Networks. 2005 IEEE International Conference, vol. 5, pp. 3127-3131 vol. 5, May 16-20, 2005. |
Lee, et al. Resource Allocation for Multiclass Services in Multiuser OFDM Systems. Consumer Communications and Networking Conference, 2008. CCNC 2008. 5th IEEE , vol., No., pp. 907-911, Jan. 10-12, 2008. |
Xiaoyu, et al. A Joint Power and Rate Control Algorithm and Fairness Enhancement for Mulituser ORDM System. Vehicular Technology Conference, 2008. |
Number | Date | Country | |
---|---|---|---|
20130051273 A1 | Feb 2013 | US |