The invention relates in general to wireless communications and in particular to channel sensing in wireless receivers.
Internet of Things (IoT) devices have typically low capacity batteries, as disclosed in “J. Suh and M. Horton, Powering sensor networks, IEEE Potentials, vol. 23, no. 3, pp. 35-38, 2004”, and require low energy consumption notably for communication, which is the most energy consuming task performed by IoT devices.
One specificity of device-to-device communication is that it is typically asynchronous and sparse. The events that trigger communication occur once in a long while, at random times, and related data needs to be sent to the receiver within a short delay from the time instant of the event. For example, as disclosed in “Smart Lock Reference Design with Extended Flash Memory Enabling More Than Five Years of Life on Four AA Batteries, 2018, Texas Instruments”, a typical smart-lock is opened, on average, once every hour, and the lock needs to respond within 500 ms of every opening request.
Such sparse and asynchronous communication scenarios raise the question “how to distinguish information transmission from noise efficiently?”. Efficiency here is in terms of energy consumption and reliability (false-alarm and miss-detection error probabilities). To aid the receiver in distinguishing information from channel noise, the transmitter is required to precede each message with a predefined sequence of symbols (e.g., a string of binary values), referred to hereafter as the preamble, for example, as described in “J. Polastre, J. Hill, and D. Culler, Versatile low power media access for wireless sensor networks, in Proc. of the 2nd Int. Conf. on Embedded Networked Sensor Systems, 2004, pp. 95-107”. The receiver probes the channel from time to time and performs a binary hypothesis test, referred to as channel sensing, to decide if a preamble is present or not.
Efficient channel sensing consists of observing a sequence of samples from the channel, referred to hereafter as the ‘channel sensing sequence’, and determining if a preamble is present with a given level of reliability while consuming low energy.
In device-to-device communication, the channel noise is primarily due to the receiver noise. The receiver noise, in turn, is a decreasing function of the power consumption, as disclosed in “T. H. Lee, The Design of CMOS Radio-Frequency Integrated Circuits. Cambridge University Press, 2004”. Therefore, a cleaner channel requires greater receiver power consumption. On the other hand, a cleaner channel reduces the number of samples needed to perform the hypothesis test with a given accuracy. This tradeoff between number of samples and power consumption can be suitably exploited to minimize the overall energy consumption for a given level of reliability.
The simplest channel sensing scheme makes a non-sequential decision after observing a fixed number of samples, and by using a power consumption that would ensure the desired reliability. Hence, this scheme consumes the same amount of energy for every possible sequence of observed samples. Sequential channel sensing schemes can potentially reduce the average energy consumption, by choosing to stop whenever a reliable decision can be made from the so-far observed samples. The existing sequential channel sensing schemes, for example, the channel sensing scheme in Berkeley Media Access Control (BMAC) as disclosed “J. Polastre, J. Hill, and D. Culler, Versatile low power media access for wireless sensor networks, in Proc. of the 2nd Int. Conf. on Embedded Networked Sensor Systems, 2004, pp. 95-107”, or the multiphase scheme as disclosed in “V. Chandar and A. Tchamkerten, Sampling constrained asynchronous communication: How to sleep efficiently, IEEE Trans. on Inf. Theory, vol. 64, no. 3, pp. 1867-1878, 2018”, use a fixed power consumption, and adaptively choose the number of samples to be observed before a reliable decision can be made.
Recall that the quality of an observed sample is a non-decreasing function of the power consumption, and fewer high quality samples are needed to make a decision meeting a desired reliability. Allowing sequential channel sensing schemes to adapt the power consumption based on the already observed samples can therefore further reduce the overall energy consumption. There is thus a need for sequential channel sensing schemes that adaptively chooses the both the power consumption and the number of samples to be observed.
There is provided an adaptively reconfigurable channel sensing device for detecting preamble transmission by observing a channel sensing sequence of a length smaller than or equal to a maximum given length, the channel sensing device being implemented in a receiver, the channel sensing sequence comprising one or more samples, the channel sensing device being configured to:
a subsequent channel sensing phase comprising:
According to some embodiments, a decision in a channel sensing phase may comprise:
According to some embodiments, the reliability metric may be chosen in a group comprising a probability of false alarm and a probability of missed detection.
According to some embodiments, the channel sensing device may be configured to previously determine the receiver noise profile as a non-negative and non-increasing function relating the receiver power consumption with the variance of the receiver noise.
According to some embodiments, the variance of the receiver noise may be tunable.
According to some embodiments, the channel sensing device may be configured to previously determine the probability of there being a preamble depending on an application of the receiver.
According to some embodiments, the hypothesis test may be a likelihood test, the value being a log-likelihood ratio.
According to some embodiments, the channel sensing device may be configured to previously determine the maximum given length depending on the application of the channel sensing device.
There is also provided a wake-up receiver for waking-up a component in a wireless device, the wake-up receiver comprising a channel sensing device for detecting preamble transmission according to any preceding feature, the component being a main receiver, an actuator, or a transmitter.
There is also provided a channel sensing method for detecting preamble transmission by observing a channel sensing sequence of a length smaller than or equal to a maximum given length, the channel sensing method being implemented in a receiver, the channel sensing sequence comprising one or more samples, the channel sensing method comprising the steps consisting in:
a subsequent channel sensing phase comprising:
Advantageously, the embodiments of the invention provide low-energy channel sensing devices and methods that are capable of exploiting the tradeoff between the channel sensing parameters comprising the receiver power consumption and the number of sensed samples, while reducing the overall average energy consumed in channel sensing for wireless receivers in general and for low-power wireless receivers in particular.
The embodiments of the invention thereby provide energy efficient channel sensing techniques outperforming state-of-the-art channel sensing techniques in terms of the average energy consumption for a targeted reliability of preamble detection by adaptively switching the receiver power consumption between batches of samples and making accurate decisions on batches of samples rather than on individual samples.
Advantageously, the channel sensing techniques according to the various embodiments of the invention are adaptive in both the receiver power consumption and the number of samples observed to accurately detect preamble transmission.
Advantageously, the embodiments of the invention provide channel sensing devices and methods optimizing the tradeoff between target reliability metrics given by a target probability of false alarm and a target probability of miss-detection, and the average energy consumed for channel sensing.
Advantageously, the embodiments of the invention provide channel sensing devices and methods based on optimal binary hypothesis testing for an efficient detection of preamble transmission.
Further advantages of the present invention will become clear to the skilled person upon examination of the drawings and the detailed description.
The accompanying drawings, which are incorporated in and constitute a part of this specification, illustrate various embodiments of the invention and, together with the general description of the invention given above, and the detailed description of the embodiments given below, serve to explain the embodiments of the invention.
Embodiments of the invention provide channel sensing devices and methods for low-energy sensing in wireless receivers. More specifically, the embodiments of the invention provide devices and methods that enable efficient channel sensing at wireless receivers for detecting preamble transmission over a wireless system by exploiting the tradeoff between the receiver power consumption and the number of sensed samples to reduce the overall average energy consumed in channel sensing for given target reliability metric(s).
The channel sensing devices and methods according to the embodiments of the invention may be implemented in any wireless transceiver operating in a wireless system.
The wireless system may be a communication system, a data processing system, or a storage system comprising at least one wireless transmitter device (hereinafter referred to as a “wireless transmitter”) and at least one wireless receiver device (hereinafter referred to as a “wireless receiver”). At least one wireless transmitter is configured to transmit information to at least one wireless receiver, the information being preceded with a preamble.
Referring to
In preferred embodiments, the wireless system 100 may be any low-power machine-to-machine (M2M) communication system used in consumer, commercial, industrial, or infrastructure applications.
Exemplary consumer applications comprise connected vehicles (Internet of Vehicles loV), home automation/smart home, smart cities, wearable technology, and connected health.
Exemplary commercial applications comprise medical, healthcare and transportation. In medicine, a digitized healthcare system connecting medical resources and healthcare services may be used in which special monitors and sensors may be used to enable remote health monitoring and emergency notification. In transportation systems, IoT using for example wireless sensors can provide interaction between the vehicles and the infrastructure as well as inter and intra vehicular communications, smart traffic control, smart parking, safety, and road assistance. Exemplary industrial applications comprise applications in agriculture for example in farming using sensors to collect data on temperature, rainfall, humidity, wind speed, and soil content. Exemplary infrastructure applications comprise the use of IoT devices to perform monitoring and controlling operations of urban and rural infrastructures such as bridges and railway tracks.
The wireless transmitter 101 and the wireless receiver 105 may be any physical device/object provided with required hardware and/or software technologies enabling wireless communications.
In preferred embodiments, the wireless transmitter 101 and the wireless receiver 105 may be any IoT or M2M device operating in an IoT or M2M network such as medical devices, temperature and weather monitors, connected cards, smart meters, game consoles, personal digital assistants, health and fitness monitors, lights, thermostats, garage doors, security devices, drones, smart clothes, e-Health devices, robots, and smart outlets. An IoT/M2M device may be any physical device, vehicle, home appliances, or any object embedded with electronics, software, sensors, actuators, and connectivity enabling remote connection for data collection and exchange with an IoT/M2M platform for example. A sensor may be any sensory object/device (e.g. a transducer) that can measure temperature, humidity/moisture, acoustic/sound/vibration, chemical/Gas, force/load/strain/pressure, electric/magnetic, machine vision/optical/ambient light, or position/presence/proximity.
The wireless transmitter 101 and/or the wireless receiver 105 may be fixed or mobile and/or may be remotely monitored and/or controlled. The wireless receiver 105 may be equipped with power sources that provide power to the different components ensuring the functioning of this device (e.g. dry cell batteries, solar cells, and fuel cells).
The wireless transmission channel 103 may represent any wireless network enabling wireless communications in licensed or license-free spectrum. Exemplary wireless networks comprise low-power short range networks (e.g. Bluetooth mesh networking, light-Fidelity, Wi-Fi, and Near-Field communications) and low-power wide area networks (LPWAN). LPWANs are wireless networks designed to allow long-range communications at a low data rate, reducing power and cost for transmission. LPWANs are constrained networks that have challenging constraints to offer connectivity to constrained devices, such as IoT devices, that require low bandwidth, low power consumption, and low data rates. Exemplary LPWAN technologies comprise LoRaWAN (Long Range Radio Wide Area Network), Sigfox, LTE-NB1 (Long Term Evolution-Machine to Machine, Narrow Band), NB-loT (NarrowBand IoT), and Weightless.
With reference to
For example, in some embodiments, the wireless receiver 105 may stay awake to receive the message if the wireless receiver 105 is equipped with reception means enabling message reception.
In other embodiments, the wireless receiver 105 may be configured to transmit data or operational signals (e.g. synchronization signals) or messages to one or more devices in the wireless system 100 in response to the detection of preamble transmission. For example, in application to wireless sensor networks, the wireless receiver 105 may be implemented at a wireless sensor device that is configured to send information/data to neighbor nodes or to a processing center in response to the detection of preamble transmission.
In some embodiments in application to wake-up receivers, the channel sensing device 10 may be implemented as a part of a first receiver (not illustrated in
In such embodiments, the channel sensing device 10 may be configured to sense the channel to detect preamble transmission and then wake up the component.
According to some embodiments, the component may be chosen in a group comprising a main receiver, an actuator, and a transmitter.
In embodiments in which the component is a main receiver, the channel sensing device 10 may be configured to wake up the main receiver for the reception of transmitted messages.
According to some embodiments, the channel sensing device 10 may be used to detect preamble transmission in duty-cycled receivers.
The channel sensing device 10 according to the embodiments of the invention implements a channel sensing scheme that is adaptive in both the number of samples observed to detect preamble transmission and the receiver power consumption. The key idea behind the scheme is described as follows. The channel sensing device 10 begins by observing a batch of samples with a low power consumption. After observing the first batch, the channel sensing device 10 performs a test based on the observed samples to check if a preamble is present. If the decision is negative, then the channel sensing device 10 stops and declares no preamble is present. However, if the decision is positive, the channel sensing device 10 chooses to observe a next batch of samples with a higher power consumption to confirm the decision. More generally, the channel sensing device 10 can take additional batches of samples with different power consumption to confirm the presence of a preamble, but declares the absence of a preamble and stops, as soon as the test after one of these batches decides negatively. To facilitate the understanding of the description of some embodiments of the invention, there follows some notations and definitions.
According to the embodiments of the invention, the channel sensing device 10 is configured to observe 1≤N≤n samples Y1, Y2, . . . , YN of a channel sensing sequence of a length N≤n, the length N being smaller than or equal to the maximum given length n.
According to some embodiments, the channel sensing device 10 may be configured to previously determine the maximum given length n depending on the application of the channel sensing device 10 in the wireless system 100.
Each sample Yi may be modeled as the output of a coherent receiver that receives a signal Xi corrupted by a random noise Zi such that Yi=Xi+Zi, the signal Xi being dependent on a binary message M∈{0,1}.
Without loss of generality and for illustration purposes only, the following description of some embodiments of the invention will be made with reference to a binary message M modulated such that the signal Xi is given by Xi=M√{square root over (P)}, with P designating the received power.
In some embodiments, the noise Zi may be modeled as an additive white Gaussian noise of zero-mean and variance σi2. In such embodiments, each sample Yi may be given by:
Y
i
=X
i
+Z
i=√{square root over (P)}M+Zi (1)
The noise variance UL of the noise Zi corrupting the ith sample may be decomposed as the addition of a first term σt2 and a second term σr,i2 such that:
σi2=σt2+σr,i2 (2)
The first term σt2 models the variance of the thermal noise and the second term σr,i2 models the variance of the receiver noise corresponding to the noise originating from the internal circuitry of the channel sensing device 10. The variance σr,i2 of the receiver noise (also referred to as a ‘receiver noise figure’) depends on the receiver power consumption Pr,i. More specifically, the variance σr,i2 of the receiver noise is related to the receiver power consumption Pr,i by the receiver noise profile f(·) which is a non-negative and non-increasing function that depends on the circuitry of the channel sensing device 10 and more particularly on the low noise amplifier used in the circuitry of the channel sensing device 10.
According to some embodiments, the channel sensing device 10 may be configured to previously estimate or approximate the receiver noise profile f(·) offline.
According to some embodiments, the receiver noise profile f(·) may be accurately estimated using electrical simulations.
According to some embodiments, the receiver noise figure may be tunable.
The channel sensing device 10 observes (or equivalently senses) the samples Y1, Y2, . . . , YN and applies a binary hypothesis test (also referred to as a ‘preamble detection test’) based on the observed samples in order to decide whether a preamble transmission is detected or not. The binary hypothesis test based on the observed samples considers a first hypothesis H0 and a second hypothesis H1. The first hypothesis H0 corresponds to the hypothesis for there not being a preamble and the second hypothesis H1 corresponds to the hypothesis for there being a preamble. Accordingly, the preamble detection decision made based on the binary hypothesis test consists in attributing an estimate value M to the modulated binary message M such that the estimate value M is set to a first value equal to ‘0’ if the channel sensing device 10 decides against a preamble transmission and the estimate value M is set to a second value equal to ‘1’ if the channel sensing device 10 decides for a preamble transmission detection.
Accordingly, the first and second hypotheses correspond to:
H
0
: M=0, no preamble transmission is detected (3)
H
1
: M=1, a preamble transmission is detected (4)
The probability of there being a preamble p1=Pr(H1)=1−Pr(H0) is designated as the rarety of the preamble.
According to some embodiments, the channel sensing device 10 may be configured to previously determine the probability of there being a preamble depending on the application of the wireless receiver 105 in the wireless system 100. For example, in application to temperature sensors that need to be monitored every few minutes, the probability of there being a preamble may be set to p1=10−6. For other applications, for example fire alarms, p1 can be much lower.
According to the model given in equation (1), the samples Yi for i=1, . . . , N may be modeled as independent and identically distributed random variables having Gaussian distributions under the first hypothesis and the second hypothesis given by:
Channel sensing according to the embodiments of the invention adapts the receiver power consumption Pr,i causally as a function of the past sensed (or equivalently observed) samples and uses a random number of samples N≤n depending on the past observed samples.
According to the embodiments of the invention, channel sensing is adaptive comprising one or more channel sensing phases, each channel sensing phase being allowed to use a different number of samples and a different receiver power consumption value in a way that the overall energy consumption is minimized for a target reliability level specified by a target reliability metric. The channel sensing scheme according to the embodiments of the invention is called ‘AdaSense’.
According to some embodiments, a target reliability metric may be chosen in a group comprising a probability of false alarm denoted PFA and a probability of missed detection denoted PMiss expressed respectively as:
P
FA
=Pr({circumflex over (M)}=1|H0) (6)
P
Miss
=Pr=({circumflex over (M)}=0|H1) (7)
For input parameters {n, P, Ptarget, f(·), pi} comprising the maximum given length n of the channel sensing sequence, the received power P, a target reliability metric Ptarget=α, the receiver noise profile f(·), and the probability p1 of there being a preamble, the channel sensing device 10 may be configured to determine channel sensing parameters according to the minimization of the average energy consumption Ē per given length, the channel sensing parameters {L*; lj,j=1, . . . , L**; Pr,j,j=1, . . . L**; tj,j=1, . . . L**} comprising:
The set {lj*; Pr,j*; tj*} designates the set of channel sensing parameters corresponding to the jth channel sensing phase. The channel sensing device 10 may be configured to determine the channel sensing parameters according to the optimization problem expressed as:
Once the channel sensing parameters determined, the channel sensing device 10 may be configured to perform a first channel sensing phase comprising:
More specifically, the decision performed at the first channel sensing phase may comprise:
The jth channel sensing phase for j=2, . . . , L* may comprise:
More specifically, a decision performed at the jth channel sensing phase, with j=2, . . . , L* may comprise:
Advantageously, as compared to the state-of-the-art channel sensing schemes, the channel sensing scheme according to the embodiments of the invention also adapts the receiver power consumption taking into consideration the past by making the decision on all of the so far sensed samples.
In preferred embodiments, the binary hypothesis test may be the likelihood test that provides optimal performance. In such embodiments, the value vj determined at the jth channel sensing phase may be the log-likelihood ratio value of all of the so far sensed samples Yi with i=1, . . . , Σk=1jlk* given by:
Advantageously, the likelihood test enables efficient hypothesis testing taking into account the sensing quality and the receiver noise figure.
For illustration purposes, the channel sensing scheme according to the embodiments of the invention is detailed in the following for channel sensing parameters given by {L*=2, l1*; l2*, Pr,1*, Pr,2*, t1*, t2*} corresponding to a two-phase AdaSense channel sensing scheme.
Given the channel sensing parameters {L*=2, l1*, l2*, Pr,1*, Pr,2*, t1*, t2*}, the channel sensing device 10 may be configured to perform a first channel sensing phase to observe a first batch of samples comprising l1*>0 samples by consuming a receiver power consumption value Pr,1*. Then the channel sensing device 10 may be configured to determine a value v1 from the observed l1* samples Y1, Y2, . . . , Yl
In embodiments in which the hypothesis test is the likelihood test, the channel sensing device 10 may be configured to determine the value v1 as:
The channel sensing device 10 may be then configured to perform a hypothesis test by comparing the value v1 to the first preamble detection threshold t1*. The first channel sensing phase may comprise:
in embodiments using the likelihood test, or
If the channel sensing device 10 performs a second channel sensing phase using a set of channel sensing parameters {l2*; Pr,2≠Pr,1*; t2*}, the second channel sensing phase may comprise:
The channel sensing device 10 may be configured to determine the value v2 from the l1*+l2* samples Y1, Y2, . . . , Yl
According to some embodiments in which the target reliability is specified by a first target reliability metric corresponding to a target probability of false alarm PFA=a and a second target reliability metric corresponding to a target probability of missed detection PMiss=β, it is shown by the inventors that, using the likelihood test for a two-phase channel sensing scheme with channel sensing parameters L*=2, l1*, l2*, Pr,1*,Pr,2*>Pr,1*, t1*, t
In equations (12) and (13), Q(·) designates the Q-function defined as defined as
The probability ps of stopping at the first channel sensing phase is shown to be expressed as:
The average energy consumption E can then be expressed in terms of ps as:
Ē=p
s
l
1
*P
r,1*+(1−ps)(l1*Pr,1*+l2*Pr,2*) (15)
The probability ps may be approximated by
when the probability p1 of there being a preamble is significantly lower than one, i.e., if p1<<1.
Referring to
Without loss of generality, the description of the channel sensing method will be made with reference to binary messages modulated according to equation (1).
At step 201, input parameters may be received, comprising a target reliability metric Ptarget, the receiver noise profile f(·), the maximum given length n of the channel sensing sequence, a received power P, and the probability p1 of there being a preamble.
According to some embodiments, step 201 may comprise determining the probability of there being a preamble depending on the application of the receiver implementing the channel sensing method.
According to some embodiments, step 201 may comprise determining the maximum given length n depending on the application of the receiver.
According to some embodiments, step 201 may comprise determining or estimating or approximating the receiver noise profile offline.
According to some embodiments, step 201 may comprise estimating the receiver noise profile f(·) using electrical simulations.
According to some embodiments, a target reliability metric may be chosen in a group comprising a target probability of false alarm and a target probability of missed detection.
At step 203, channel sensing parameters may be determined given the input parameters {n, P, Ptarget, f(·), p1} and according to the minimization of the average energy consumption Ē per given length as given in the optimization problem in equation (8). The channel sensing parameters may comprise:
At step 205, a first channel sensing phase may be performed and a decision on the presence of a preamble or on performing a subsequent channel sensing phase may be taken based on a comparison performed at the first channel sensing phase and/or whether the number of channel sensing phases is greater than one. The first channel sensing phase may comprise:
More specifically, a decision performed at the first channel sensing phase may comprise:
Accordingly, at step 301, a batch of 1; samples YΣ
At step 303, a hypothesis test (a binary hypothesis test) may be performed comprising the comparison between a value v1 derived from all of the so far observed samples Yi for i=1, . . . , Σk=1jlk* with the preamble detection threshold t; corresponding to the jth channel sensing phase.
At step 305, a decision on the presence of a preamble or on performing a subsequent channel sensing phase may be taken based on the comparison between the value v1 and the preamble detection threshold tj* and/or on a condition related to the number of the performed channel sensing phases compared with the number of channel sensing phases L*.
More specifically, a decision taken at step 305 in the jth channel sensing phase may comprise:
According to some embodiments, the hypothesis test may be the optimal likelihood test. In such embodiments, step 303 may comprise determining the value vj as the likelihood ratio value of all of the so far observed samples Yi with i=1, . . . , Σk=1jlk* as expressed in equation (9).
According to this embodiment, the channel sensing method comprises two phases, meaning that a preamble transmission detection decision is delivered at the first channel sensing phase or at the second channel sensing phase, no further channel sensing phase being performed.
Based on the determined channel sensing parameters, at step 401, a first batch of samples comprising l1*>0 may be sensed by consuming a receiver power consumption value Pr,1*.
At step 403, a hypothesis test may be performed to compare a value v1 with the preamble detection threshold t1*, the value v1 being derived from the l1* samples Y1, Y2, . . . , Yl
In embodiments in which the hypothesis test is the likelihood test, the value v1 may be given by equation (10).
If it is determined at step 403 that the value v1 is smaller than or equal to the preamble detection threshold t1*, step 405 is performed to decide against a preamble transmission.
If it is determined at step 403 that the value v1 is larger than the preamble detection threshold t1*, a second channel sensing phase is performed in steps 407 to 413 using the set of channel sensing parameters {l2*; Pr,2*≠Pr,1*; t2*}.
At step 407, a batch of l2* samples Yl
At step 409, a hypothesis test may be performed to compare a value v2 derived from all of the so far sensed samples Yi with i=1, l1*+l2* with the second preamble detection threshold t2*. According to some embodiments in which the hypothesis test is the likelihood test, the value v2 may be given by equation (11).
If it is determined at step 409 that the value v2 is smaller than or equal to the preamble detection threshold t2*, a decision against a preamble transmission is performed in step 411. Alternatively, a preamble transmission is declared at step 413.
For this two-phase channel sensing scheme, it is shown that the probability of false detection and the probability of false alarm can be expressed respectively as in equations (12) and (13).
The performance of the two-phase AdaSense channel sensing method has been compared to the performance of two state-of-the-art channel sensing schemes respectively referred to as ‘single phase channel sensing scheme’ and a channel sensing scheme used in BMAC (referred to as ‘BMAC scheme’). In the single phase scheme, channel sensing is performed using constant receiver power consumption and a number of samples equal to the maximum number of samples that can be sensed before detecting a preamble transmission, that is N=n. In the BMAC scheme, constant receiver power consumption is used and preamble detection testing is based on individual samples, i.e., by comparing each sample with a same threshold. Performance of the three channel sensing schemes has been evaluated in the context of wake-up receivers considering: a maximum given length of the channel sensing sequence equal to n=30 and n=50, a target probability of false alarm PFA=10−3 and PFA=10−5, a received power P=−80 dBm and P=−60 dBm, a receiver noise profile given by
and neglecting the thermal noise by assuming σi2=σr,i2. Performance has been evaluated in terms of the average energy consumption Ē as a function of the probability of missed detection PMiss for different parameters n∈{30,50}, PFA∈{10−3,10−5},P∈{−60 dBm, −80 dBm} and assuming p1<<10−4.
While the invention has been illustrated by a description of various embodiments and while these embodiments have been described in considerable detail, it is not the intention of the Applicant to restrict or in any way limit the scope of the appended claims to such detail. Additional advantages and modifications will readily appear to those skilled in the art.
Further, in certain alternative embodiments, the functions, acts, and/or operations specified in the flow charts, sequence diagrams, and/or block diagrams may be re-ordered, processed serially, and/or processed concurrently consistent with embodiments of the invention. Moreover, any of the flow charts, sequence diagrams, and/or block diagrams may include more or fewer blocks than those illustrated consistent with embodiments of the invention.
Number | Date | Country | Kind |
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19306766.7 | Dec 2019 | EP | regional |
Filing Document | Filing Date | Country | Kind |
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PCT/EP2020/085695 | 12/11/2020 | WO |