The present disclosure relates to a communication method; in particular, to a communication method by using an energy harvesting-enabled relay system for mitigating the interference.
In some relaying communication applications, the loop interference (LI) is the main performance-limiting factor. The higher the LI is, the lower the power of the signal can be transmitted to the destination. Therefore, the ability of loop interference resistance of a relaying communication system becomes an important characteristic in this field.
Some embodiments of the present disclosure provide a method which includes the following operations: determining a first statistics of a first signal and a second statistics of a second signal according to a power split ratio and a noise level of a relay node; relaying, by the relay node, the first signal according to the power split ratio, the first statistics and the second statistics to generate the second signal; and receiving, by a destination node, the second signal.
Some embodiments of the present disclosure provide a system which includes a source node, a relay node, and a destination node. The relay node is configured to split a first signal having a first statistics according to a power split ratio, and generate a second signal having a second statistics according to the first signal. The source node is configured to determine the first statistics and the second statistics according to the power split ratio.
The present communication method and system are able to amplify the loop interference resistance in relaying communication system.
Aspects of the present disclosure are best understood from the following detailed description when read with the accompanying figures. It should be noted that, in accordance with the standard practice in the field, various features are not drawn to scale. In fact, the dimensions of the various features may be arbitrarily increased or reduced for clarity of discussion.
Reference is made to
The source node 140 encodes information to generate the signal S1, and the destination node 160 decodes the received signal S2. The performance of the system 100 is associated with a ratio of a power P2 of the signal S2 to a power P1 of the signal S1. The more the ratio of P2 to P1 increases, the better performance the system 100 has. In this embodiment, the relay node 120 is not powered by an external power source. Thus, the total power of the signal S2 and noise Ir are constant due to the conversation of energy. The relay node 120 consumes a portion of the power P1 to generate the signal S2. However, the relay node 120 is also able to reuse a portion of the power of the noise Ir which returns to relay node 120. Under such condition, the system 100 of present disclosure is configured to optimize the power distributed to the signal S2 and the noise Ir in order to achieve a desired performance of the signal communication.
In the system 100, the signals are communicated wirelessly via antennae 182, 184, 186 and 188 between nodes 140, 120 and 160. Therefore, loss exists when the signals are transmitted, in which hsr, hrd, and hrr denote channel coefficients from the source node 140 to the relay node 120, from the relay node 120 to the destination node 160, and from the relay node 120 returning to the relay node 120, respectively. A coupling loss hrr2 (the channel gain of the path from the antenna 186 to the antenna 184) is also referred to as loop interference (LI).
Reference is made to
Referring to
A noise np is incorporated into the information portion at a node N2 to model the processing noise occurred within the relay node 120. The information portion with the noise np, denoted as a signal Yr, is decoded by the ID device 126 and then amplified by the amplifier 128.
In another path outwards the power split device 122, energy of the EH portion is harvested by the EH device 124. To put it more specifically, the EH device 124 receives the EH portion and uses it to produce an EH power, and supplies the EH power to the amplifier 128. The EH power is the power consumed by the amplifier 128 when performing amplification on the decoded information portion to generate a signal Sr. The signal Sr is then transmitted through the antenna 186 as the signal S2 to the destination node 160 with the accompanying noise Ir back to the relay node 120 via the antenna 184. The ratio of the noise Ir to the signal Sr is associated with an attenuation factor μ ranged from 0 to 1. More specifically, the attenuation factor μ equals a ratio of the power of the noise Ir to the power of the signal Sr.
In the system 100, the signal S1 and the signal S2 may be modeled as complex random variables, and have variances CS1, CS2 and pseudo-variances . In this embodiment, the signal S1 and the signal S2 are represented as improper Gaussian signals (IGS), and the pseudo-variances and are not equal to zero. In addition, for example of the signal S1, a variable CS1 is represented as follow:
and the variable CS1 follows a condition that there exists a signal S1 having the variance CS1 and pseudo-variance , if and only if the variable CS1 is a positive semidefinite (PSD). Therefore, when a pair of the variance and the pseudo-variance is found, the corresponded complex random variable must exist and can be obtained.
An achievable rate Re2e is defined as a throughput of the system 100 from the source node 140 to the destination node 160, and can be expressed associated with the pseudo-variance an the pseudo-variance . Based on the Eq. 1 and the condition which Eq. 1 follows, the signal S1 and signal S2 can be obtained by obtaining the variance CS1, variance CS2, pseudo-variance , and pseudo-variance .
In the present disclosure, the achievable rate Re2e indicates the performance of the system 100. Furthermore, the signal S1 and the signal S2 are IGS, so as to make the achievable rate Re2e become a closed form and solvable. Therefore, an optimum of the achievable rate Re2e is able to be obtained. In order to obtain the optimum of the achievable rate Re2e, the pseudo-variance and the pseudo-variance are optimized to realize the optimization of the achievable rate Re2e, and the corresponded signals S1 and S2 can be generated. Please see the following description for details.
Reference is made to
Please refer to
Yr=√{square root over ((1−ρ)P1)}hsrS1+√{square root over ((1−ρ)Prμ)}hrrSr+nr (Eq. 2)
in which the Pr indicates the power of the signal Yr. In some embodiments, the noise nr is an independent and identically distributed (i.i.d.) circular symmetric complex Gaussian (CGCS) noise. The noise nr includes the noise na and the noise np, and can be expressed as following equation:
nr=√{square root over (1−ρ)}na+np (Eq. 3)
in which the noise nr has a noise level σr2. Furthermore, an interference-plus noise Ir′ can be given by:
Ir′=√{square root over ((1−ρ)Prμ)}hrrSr+nr=√{square root over ((1−ρ)Pr)}hrrIr+nr (Eq. 4).
The noise Ir′ is contributed by the returned noise Ir, and the noise Ir′ is a noise portion in the signal Yr.
An achievable rate Rsr from the source node 140 to the relay node 120 is associated with a ratio of the signal Yr to the signal Ir, and can be expressed as follow:
According to the coupling loss hrd, the signal S2 can be expressed as the following equation:
S2=√{square root over (Pr)}hrdSr+nd (Eq. 6)
in which the nd indicates the noise at the destination node 160. Similarly, an achievable rate Rrd from the relay node 120 to the destination node 160 is associated with a ratio of the signal S2 to the noise nd.
The achievable rate Re2e can be obtained by selecting the minimum of the achievable rate Rsr and the achievable rate Rrd, and can be expressed as follow:
Re2e=min(Rsr,Rrd) (Eq. 8).
Eq. 8 includes the parameters of the power split ratio ρ, thus the achievable rate Re2e has a constraint which can be expressed as follow.
0≤ρ≤ρmax (Eq. 9).
The power split ratio ρ indicates the ratio divided from the power P1, therefore, the ρmax is equal to or less than 1.
According to Eq. 1, Eq. 8, and Eq. 9, an alternating optimization (AO) algorithm is performed to solve the solution of the Eq. 8. Based on the condition of Eq. 1 and the constraint of Eq. 9, the Eq. 8 can be divided to three subproblems which correspond to the parameters of ρ, {,}, and σr, respectively. The Eq. 8 is solved by solving each subproblem individually. When the three subproblems are solved, the parameters of {,} in each subproblem are compared to determine whether the solution is obtained.
Please refer to
Before solving the subproblems, an initial value of the pseudo-variance , an initial value of the pseudo-variance , and an initial value of the noise level σr2 are set as constants (S410). For example, the initial values of the pseudo-variance , the pseudo-variance , and the noise level σr2 are set as 0.
After the pseudo-variance , the pseudo-variance , and the noise level σr2 are set as constants, the power split ratio ρ can be obtained by solving the Eq. 8 (S420). Next, the pseudo-variance and the pseudo-variance are updated according to the power split ratio ρ and the noise level σr2 (S430). More specifically, the power split ratio ρ and the noise level σr2 are treated as constants, and the pseudo-variance and the pseudo-variance are obtained by solving the Eq. 8. After that, the noise level σr2 is updated according to the pseudo-variance , the pseudo-variance , and the power split ratio ρ (S440). Similarly, the pseudo-variance , the pseudo-variance , and the power split ratio ρ are treated as constants; the noise level σr2 is obtained by solving the Eq. 8.
After performing the first iteration of the operations S420-S440, the updated pseudo-variance and the pseudo-variance are compared to the pseudo-variance and the pseudo-variance before updating, respectively (S450). When the updated pseudo-variance is not equal to the pseudo-variance before updating or when the updated pseudo-variance is not equal to the pseudo-variance before updating, the method 400 goes back to the operation S420, and a next iteration of the operations S420-S440 is performed.
When the updated pseudo-variance is equal to the pseudo-variance before updating and when the updated pseudo-variance is equal to the pseudo-variance before updating, the signal S1 and the signal S2 are determined to have the latest pseudo-variance and the latest pseudo-variance , respectively (S460).
In some embodiments, the system 100 has a maximum number limiting the iteration number of the method 400. When the iteration number reaches the maximum number, whether the operation S450 is “TRUE” or “FALSE”, the method 400 goes to operation S460.
In other embodiments, when performing the operations S410-S440, the parameters of ρ, {, }, and σr2 are switchable. For example, in the operation S410, the initial value of ρ and {,} are set as constants, and the noise level σr2 is obtained according to ρ and {,} in the operation S420. The initial values of {,} are set as 0, and the power split ratio ρ is set as 0.5. Next, ρ and {,} are updated in the following operations S430-S440.
After the pseudo-variance and the pseudo-variance are determined, the signal S1 and the signal S2 can be determined according the condition which Eq. 1 follows. The source node 140 generates the signal S1 having the determined pseudo-variance , and the relay node 120 relays the signal S1 to generate the signal S2 having the determined pseudo-variance .
In conclusion, under the premise of the attenuation factor μ being a constant, the method 400 is applied to calculate the second order statistics (,), of the signal S1 and the signal S2, the power split ratio ρ, and the noise level σr2. Then, the system 100 manipulates the source node 140 and the relay node 120 to have the signal S1 and the signal S2 as desired IGS according to the calculated parameters , , ρ, and σr2, in order to obtain the highest achievable rate Re2e. As known in the art, the achievable rate Re2e is an important indicator for evaluating the system 100. Therefore, the performance of the system 100 improves, and the LI resistance increases as well.
The foregoing outlines features of several embodiments so that those skilled in the art may better understand various aspects of the present disclosure. Those skilled in the art should appreciate that they may readily use the present disclosure as a basis for designing or modifying other processes and structures for carrying out the same purposes and/or achieving the same advantages of the embodiments introduced herein. Those skilled in the art should also realize that such equivalent embodiments still fall within the spirit and scope of the present disclosure, and they may make various changes, substitutions, and alterations thereto without departing from the spirit and scope of the present disclosure.
This application claims the benefit of prior-filed provisional application with application No. 62/964,129, filed Jan. 22, 2020, which is incorporated by reference in its entirety.
Number | Name | Date | Kind |
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10361596 | Al-Habob | Jul 2019 | B1 |
11114899 | Prakriya | Sep 2021 | B2 |
20170310380 | Kim | Oct 2017 | A1 |
Number | Date | Country |
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103117835 | May 2013 | CN |
102983878 | Dec 2015 | CN |
105610485 | May 2016 | CN |
105848245 | Aug 2016 | CN |
106656379 | May 2017 | CN |
107317618 | Nov 2017 | CN |
Entry |
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Number | Date | Country | |
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20210226690 A1 | Jul 2021 | US |
Number | Date | Country | |
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62964129 | Jan 2020 | US |