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Capacity Analysis of an AF Relay Cooperative NOMA System Using MRC

  • Xie, Xianbin (Department of Big Data Engineering, Guizhou Institute of Technology) ;
  • Bi, Yan (Department of Mathematics and Physics, Guizhou Institute of Technology) ;
  • Nie, Xi (Department of Big Data Engineering, Guizhou Institute of Technology)
  • 투고 : 2020.06.10
  • 심사 : 2020.09.22
  • 발행 : 2020.10.31

초록

Non-orthogonal multiple access (NOMA) is widely studied in both academia and industry due to its high spectral efficiency over orthogonal multiple access (OMA). To effectively improve spectrum efficiency, an amplify-and-forward (AF) cooperative NOMA system is proposed as well as a novel detection scheme is proposed, in which we first perform successive interference cancellation (SIC) twice at U1 for the two signals received from two time slots to remove interference from symbol 2, then two new signals apply max ratio combining (MRC). In addition, a closed-form upper bound approximation for the ergodic capacity of our proposed system is derived. Monte-Carlo simulations and numerical analysis illustrate that our proposed system has better ergodic capacity performance than the conventional cooperative NOMA system with decode-forward (DF) relay, the conventional cooperative NOMA system with AF relay and the proposed AF cooperative NOMA system in [16]. In addition, we can see that ergodic capacity of all NOMA cooperative systems increase with the increase of transmit SNR. Finally, simulations display that power allocation coefficients have little effect on ergodic capacity of all NOMA cooperative systems. This is due to this fact that ergodic capacity of two symbols can be complementary with changing of power allocation coefficients.

키워드

1. Introduction

As a effective solution to obtain higher transmission rate, the non-orthogonal multiple access(NOMA) has attracted tremendous interests in both industry and academia [1]. The main idea of NOMA is to adopt the superposition coding at the transmitting terminal as well as utilize the successive interference cancellation (SIC) at the receiving terminal [2]. Especially recently, some novel research works have appeared on NOMA [3-5]. A new definition of fairness for uplink NOMA was proposed based on power domain by Gui et al. [3]. To effectively improve energy efficiency (EE) and spectrum efficiency (SE). Wang et al. [4] proposed a novel technology, which multiple unmanned aerial vehicles (UAVs) aided NOMA technology to enhance the EE and the SE of the uplink cellular systems. In addition, Gui et al. [5] look ahead a new development trend of NOMA technology in the future sixth generation (6G) wireless networks.

Cooperative communication is an effective scheme to overcome multipath propagation as well as enhance reception reliability of communication systems. Interplay between cooperative communication and NOMA constitute the cooperative NOMA systems which is widely studied in recent years [6-14,16]. According to the difference of selected relay node, the cooperative NOMA systems are mainly divided into two types: The first type of cooperative NOMA systems utilizes one NOMA user as the relay, while, the second type of cooperative NOMA systems mainly uses the dedicated relay as the relay.

There are many research works have been undertaken for the first type of cooperative NOMA systems. Ding and co-authors [6] proposed a cooperative NOMA system, where the user of strong channel gain as the relay forwards the decoded messages to the user of poor channel. Compared with the conventional NOMA system and the conventional cooperative OMA system, the proposed cooperative NOMA system obtains higher ergodic capacity as well as better fairness. Xu et al. [7] proposed using maximum ratio combining ( MRC) to improve the gain of spatial diversity for cooperative NOMA system. In addition, Ding et al. [8] proposed a two-phase relay selection operating mode to reduce the outage probability of the proposed cooperative NOMA system. To further make better the performance of system, the Full-duplex (FD) work mode also was applied to cooperative NOMA system [9-11].

Based on the second type of cooperative NOMA systems, the main works are as follows:Men et al. [12] analyzed the outage performance of the proposed cooperative NOMA system, where the system adopted a multi-antenna as the relay with AF transmission protocol. In addition, a novel two-way relay selection cooperative NOMA system was also proposed by Yue et al. [13]. Furthermore, considering the uplink situation, a uplink cooperative NOMA system was proposed with relay-aided for multi-cell circumstances [14].

The aforementioned works based on the second type of cooperative NOMA systems assume that dose not exist direct links between the base station (the source) and the downlink users (the destination). Namely, all users obtain information need through the dedicated relay forward information. However, in some typical small cells 5G scenarios [15], part users can directly communicates with the base station, while others can not directly communicates with the base station. Actually, based on the second type of cooperative NOMA scheme considering both direct and indirect links users is also addressed. In particular, a recent work addressed in [16], a cooperative NOMA system was proposed with an amplify-and-forward (AF) relay as well as considering the direct link user, where the system outage performance was analyzed. However, the ergodic capacity based on [16] system mode has not yet been investigated, which inspired the investigation of this paper. In addtion, the difference between our work and [16] also lies in the signal detection method. To eliminate interference from symbol 2, we first perform SIC twice at the user U1 to two signals received from two time slots in our proposed system, then we apply MRC to two new signals. Compared with [16], which first applies MRC next applies SIC, our proposed detection scheme obtains more received diversity gain for the symbol 1.

The preliminary results given in this paper including:

• Giving an AF relay cooperative NOMA system and a novel detection scheme is proposed, in which we first perform SIC two times for two signals received from two continuous time slots to remove interference from symbol 2. Then, using two signals after being eliminated symbol 2 by perform SIC to apply MRC.

• A closed-form upper bound approximation analytical expression for ergodic capacity of our proposed system is derived. In this procedure, we also provide four lemmas and five propositions.

• Simulations show that our proposed system has higher ergodic capacity than the conventional cooperative NOMA system with AF/DF relay and [16] proposed cooperative NOMA system.

The structure of this paper is as follows:

Section 2 gives the system model. Next, ergodic capacity performance is analyzed in Section 3. The numerical results are discussed in Section 4. Finally, the Section 5 is the conclusion.

2. System Model

We consider a downlink cooperative NOMA system including one base station (BS), two users(U1 and U2) and one relay in Fig. 1. We assume that U1 is closer to the base station than U2. Hence, U1 can directly communicate with the BS without needing help of relays. The BS and U2 does not exist a direct link because of the long distance or heavy shadowing, thus, communicates between the BS and U2 always need help of the relay. We also assume that, each node is equipped with a single-antenna and operates in half-duplex (HD) mode. In addition, the relay adopts an AF transmission protocol. Subscript S, R, 1 and 2 represents the BS (the source), the relay, U1, and U2. The channel coefficients for the link from the BS to the relay, the link from the BS to U1, the link from the relay to U1, and the link from the relay to U2 are denoted by hSR,hS1, hR1, respectively. Here, all channels are assumed for Rayleigh fading channels. Therefore, all channel power gain obey exponential distributed.The mean of the channel power gains |hSR|2,|hS1|2,|hR1|2,and |hR2|2 , are defined as \(λ^′_{SR}\) , \(λ^′_{S1}\) , \(λ^′_{R1}\)and \(λ^′_{R2}\), respectively.

E1KOBZ_2020_v14n10_4231_f0001.png 이미지

Fig. 1. System model

For the convenience of the following description, we assume that the time slot n represents the first slot time as well as the time slot n+1 represents the second time slot . At the first time slot, the BS broadcasts the superimposed signal \(x[n]=\sqrt{P \alpha_{1}} x_{1}[n]+\sqrt{P \alpha_{2}} x_{2}[n]\), where P denotes the transmission power at the BS. Without loss of generality, we also assume that the relay transmission power is the same as the BS transmission power. Let x1[n] and x2[n] denotes symbol 1 for U1 and symbol 2 for U2, respectively. 1α and 2α are power allocation coefficients, where satisfy α2> α1 and α12 =1 .

During the first time slot, the received signal yR[n] at the relay, and  y1[n] at U1 are given by

\(y_{R}[n]=h_{S R}[n]\left(\sqrt{P \alpha_{1}} x_{1}[n]+\sqrt{P \alpha_{2}} x_{2}[n]\right)+N_{R}[n]\)       (1)

\(y_{1}[n]=h_{S 1}[n]\left(\sqrt{P \alpha_{1}} x_{1}[n]+\sqrt{P \alpha_{2}} x_{2}[n]\right)+N_{1}[n]\)       (2)

where NR[n] and N1[n] denote the independent additive white Gaussian noises (AWGN) at the relay and U1, respectively, which satisfy normal distribution with zero mean and variance  σ2 =1.

At the second time slot, according to AF protocol in cooperative communications, the relay broadcasts pyR[n] to U1 and U2 by an amplifying gain \(\rho=\sqrt{\frac{P}{P\left|h_{S R}[n]\right|^{2}+\sigma^{2}}}\). Thus, the received signal at U1 and U2 are respectively given by

y1[n+1]=hR1[n+1]pyR[n]+N1[n+1]      (3)

y2[n+1]=hR2[n+1]pyR[n]+N2[n+1]       (4)

where N1[n+1] + and N2[n+1] also denote the independent AWGN, and also satisfy normal distribution with zero mean as well as variance σ2 =1, at U1 and U2, respectively.

For the convenience of the description, denotes \(\gamma=\frac{P|h|^{2}}{\sigma^{2}}\), e.g. \(\gamma_{S R}=\frac{P\left|h_{S R}\right|^{2}}{\sigma^{2}}\) . Also, by defining E[γ]=λ , where E[⋅] represents statistical expectation. Hence, there is \(\lambda=\frac{P}{\sigma^{2}} \lambda^{\prime}\), where variable γ is also exponential distributed, the mean of the variables γSR , γS1 , γR1 , and γR2 can be defined as λSR , λS1 , λR1 , and λR2 , respectively. To eliminate symbol 2 interference, we perform SIC twice at U1 to both of received signals y1[n] and y1[n+1]. Here, assuming the SIC is perfect. Thus, the corresponding two new signals, in which generated after perform SIC, can be written as

\(y_{1}^{\prime}[n]=h_{S 1}[n] \sqrt{P \alpha_{1}} x_{1}[n]+N_{1}[n]\)       (5)

\(y_{1}^{\prime}[n+1]=h_{R 1}[n+1] \rho h_{S R}[n] \sqrt{P \alpha_{1}} x_{1}[n]+h_{R 1}[n+1] \rho N_{R}[n]+N_{1}[n+1]\)       (6)

Next, applying MRC for \(y_1^′[n]\) and  \(y_1^′[n+1]\) at U1. Hence, the merged signal at U1 for decoding symbol 1 is given by

\(y_{1}=w_{1} y_{1}^{\prime}[n]+w_{2} y_{1}^{\prime}[n+1]\)       (7)

where w1 and w2 are the MRC weighting factors. According to the MRC criterion, the MRC weighting factors are configured as \(w_{1}=\frac{h_{S 1}^{H}[n] \sqrt{P \alpha_{1}}}{\sigma^{2}}\), and \(w_{2}=\frac{h_{R 1}^{H}[n+1] \rho h_{S R}^{H}[n] \sqrt{P \alpha_{1}}}{\left(\left|h_{R 1}[n+1]\right|^{2} \rho^{2}+1\right) \sigma^{2}}\). where ()H denotes the conjugate transpose. Hence, the signal-noise-ratio (SNR) for decoding symbol 1 by U1 can be expressed as

\(\gamma_{1}=\alpha_{1} \gamma_{S 1}+\frac{\alpha_{1} \gamma_{S R} \gamma_{R 1}}{\gamma_{S R}+\gamma_{R 1}+1}\)       (8)

U2 receives the AF signal y2[n+1] + by the relay. The SNR for decoding symbol 2 by U2 is given by

\(\gamma_{2}=\frac{\alpha_{2} \gamma_{S R} \gamma_{R 2}}{\alpha_{1} \gamma_{S R} \gamma_{R 2}+\gamma_{S R}+\gamma_{R 2}+1}\)       (9)

Hence, the ergodic capacity of our proposed system can be given by

\(C_{\text {proposed }}=\frac{1}{2} E\left[\log _{2}\left(1+\alpha_{1} \gamma_{S 1}+\frac{\alpha_{1} \gamma_{S R} \gamma_{R 1}}{\gamma_{S R}+\gamma_{R 1}+1}\right)+\frac{1}{2} \log _{2}\left(1+\frac{\alpha_{2} \gamma_{S R} \gamma_{R 2}}{\alpha_{1} \gamma_{S R} \gamma_{R 2}+\gamma_{S R}+\gamma_{R 2}+1}\right)\right]\)       (10)

As a comparative analysis, in [16], to deal with y1[n] and y1[n+1] + at the user U1, where first applies MRC next applies SIC to y1[n]  and y1[n+1] + . Thus, the ergodic capacity of [16] proposed system can be written as

\(\begin{aligned} C_{[16]}=& \frac{1}{2} E\left[\log _{2}\left(1+\frac{\alpha_{1} \gamma_{S 1}^{2}\left(\gamma_{S R}+1\right)^{2}+\alpha_{1} \gamma_{S R} \gamma_{R 1}\left(\gamma_{S R} \gamma_{R 1}+2 \gamma_{S R} \gamma_{S 1}+2 \gamma_{S 1}\right)}{\gamma_{S 1}\left(\gamma_{S R}+1\right)^{2}+\gamma_{S R} \gamma_{R 1}\left(\gamma_{S R}+\gamma_{R 1}+1\right)}\right)\right.\\ &\left.+\log _{2}\left(1+\frac{\alpha_{2} \gamma_{S R} \gamma_{R 2}}{\alpha_{1} \gamma_{S R} \gamma_{R 2}+\gamma_{S R}+\gamma_{R 2}+1}\right)\right] \end{aligned}\)        (11)

3. Ergodic Capacity Performance Analysis

In this part, we study the ergodic capacity, which is an important performance metric of our proposed cooperative NOMA system. However, as the closed-form expression of the precise ergodic capacity for the system is hard to get. we provide an approximation of the closed-form expression for the ergodic capacity. The asymptotic characteristics of the ergodic capacity in the high SNR regime are also investigated. 

In order to acquire the closed-form expression approximation of ergodic capacity for symbol 1 and symbol 2, the next four lemmas will be given first.

Lemma 1. Assuming the random variables S and T obey exponentially distributed and the mean are β1 and β2 , respectively. If x, y, z, w, and u are positive constant and x-yr > 0, the cumulative distribution function (CDF) of \(R=\frac{x S T}{y S T+z S+w T+u}\) is given by

\(F_{R}(r)=1-\frac{e^{-\frac{r}{x-y r}\left(\frac{w}{\beta_{1}}+\frac{z}{\beta_{2}}\right)}}{\beta_{2}(x-y r)} \sqrt{\frac{4 \beta_{2}}{\beta_{1}}\left(w z r^{2}+u r(x-y r)\right)} K_{1}\left(\sqrt{\frac{4}{\beta_{1} \beta_{2}}\left(\frac{w z r^{2}}{(x-y r)^{2}}+\frac{u r}{x-y r}\right)}\right)\)       (12)

where K1(x) represents the second kind modified bessel function.

Proof. According to the definition of random variable R , its CDF can be given by

\(\begin{aligned} F_{R}(r) &=P(R<r) \\ &=P\left(\frac{x S T}{y S T+z S+w T+u}<r\right) \\ &=P(S(x T-y r T-z r)<w T r+u r) \end{aligned}\)       (13)

If xT - yrT - zr< 0 , then

\(\begin{aligned} F_{R}(r) &=P(S(x T-y r T-z r)<w T r+u r) \\ &=P\left(S>\frac{w T r+u r}{x T-y r T-z r}\right) \\ &=1 \end{aligned}\)       (14)

else

\(\begin{aligned} F_{R}(r) &=P(S(x T-y r T-z r)<w T r+u r) \\ &=P\left(S<\frac{w T r+u r}{x T-y r T-z r}\right) \\ &=F_{S}\left(\frac{w T r+u r}{x T-y r T-z r}\right) \end{aligned}\)       (15)

From the discussion above, the CDF of the random variable R can be further given by

\(\begin{aligned} F_{R}(r) &=\int_{0}^{\frac{z r}{x-y r}} f_{T}(t) d t+\int_{\frac{z r}{x-y r}}^{+\infty}\left(1-e^{-\frac{w t r+u r}{\beta_{1}(x t-y r t-z r)}}\right) f_{T}(t) d t \quad(q=x t-y r t-z r) \\ &=1-\frac{e^{-\frac{r}{x-y r}\left(\frac{w}{\beta_{1}}+\frac{z}{\beta_{2}}\right)}}{\beta_{2}(x-y r)} \int_{0}^{+\infty} e^{-\frac{1}{q}\left(\frac{\frac{w z r^{2}}{x-y r}+u r}{\beta_{1}}\right)} e^{-q\left(\frac{1}{\beta_{2}(x-y r)}\right)} d q \end{aligned}\)       (16)

Giving equation (3.324−1) in [17]

\(\int_{0}^{\infty} \exp \left(-\frac{\beta}{4 x}-\gamma x\right) d x=\sqrt{\frac{\beta}{\gamma}} K_{1}(\sqrt{\beta \gamma}) \quad \operatorname{Re} \beta \geq 0, \operatorname{Re} \gamma \geq 0\)       (17)

By utilizing the equation (17), according to correspondence coefficient rule, the expression (12) can be acquired. 

Lemma 2. Based on the assumptions for Lemma 1, furthermore, if β1 → ∞+ and β2 → +∞ , the CDF of the random variable R is given by

\(F_{R}^{\infty}(r)=\frac{w r}{\beta_{1}(x-y r)}+\frac{z r}{\beta_{2}(x-y r)}\)       (18)

Proof. By utilizing the equation (9.7.2) in [18], we can have the following approximation

\(K_{1}\left(\frac{1}{x}\right)=x, x \rightarrow \infty\)         (19)

Then, by using the approximation (19), we can simplify the expression (12) as

\(F_{R}^{\infty}(r)=1-e^{-\frac{w r}{\beta_{1}(x-y r)}-\frac{z r}{\beta_{2}(x-y r)}}\)       (20)

Finally, by applying \(\lim _{x \rightarrow 0} \frac{1-e^{-x}}{x}=1\) , the equation (20) can be further expressed as (18) .

Thus, Lemma 2 is proved.

Lemma 3. Assuming the random variables X > 0 , the probability density function (PDF) and the CDF of X can be expressed as fx(x) and Fx(X) , respectively. the following expression exist

\(\int_{0}^{\infty} \log _{2}(1+x) f_{X}(x) d x=\frac{1}{\ln 2} \int_{0}^{\infty} \frac{1-F_{X}(x)}{1+x} d x\)       (21)

Proof. The proof process is as follows

\(\begin{aligned} \int_{0}^{\infty} \log _{2}(1+x) f_{X}(x) d x &=\int_{0}^{\infty} \log _{2}(1+x) d F_{X}(x) \\ &=\left.\log _{2}(1+x) F_{X}(x)\right|_{0} ^{\infty}-\int_{0}^{\infty} F_{X}(x) d \log _{2}(1+x) \\ &=\left.\log _{2}(1+x)\right|_{0} ^{\infty}-\int_{0}^{\infty} F_{X}(x) d \log _{2}(1+x) \\ &=\int_{0}^{\infty} d \log _{2}(1+x)-\int_{0}^{\infty} F_{X}(x) d \log _{2}(1+x) \\ &=\frac{1}{\ln 2} \int_{0}^{\infty} \frac{1-F_{X}(x)}{1+x} d x \end{aligned}\)       (22)

The proof is completed. 

Lemma 4. Assuming the random variables X obey exponentially distributed and the mean is λx . If a and b are positive constant, the CDF of \(Y=\frac{a X}{b X+1}\) is given by

\(F_{Y}(y)=1-e^{-\frac{y}{\lambda_{x}(a-b y)}}\left(\varepsilon(y)-\varepsilon\left(y-\frac{a}{b}\right)\right)\)       (23)

where ε(x) represents step function, \(\varepsilon(x)=\left\{\begin{array}{ll} 1, & x \geq 0 \\ 0, & \text { else } \end{array}\right.\).

Proof. According to the definition of random variable Y , its CDF can be expressed as

\(\begin{aligned} F_{Y}(y) &=P(Y<y) \\ &=P\left(\frac{a X}{b X+1}<y\right) \\ &=P(X(a-b y)<y) \end{aligned}\)       (24)

if a-by  > 0 , then

\(\begin{aligned} F_{Y}(y) &=P\left(X<\frac{y}{a-b y}\right) \\ &=F_{X}\left(\frac{y}{a-b y}\right) \\ &=1-e^{-\frac{y}{\lambda_{x}(a-b y)}} \end{aligned}\)       (25)

else

\(\begin{aligned} F_{Y}(y) &=P\left(X>\frac{y}{a-b y}\right) \\ &=1 . \end{aligned}\)       (26)

According to (25) and (26), the (23) is proved. 

Proposition 1. Based on high SNR regime, an upper bound approximation ergodic capacity for the symbol 1 of our proposed system is given by

\(E^{h i g h}\left[R_{1}\right]=\frac{1}{2 \ln 2}\left[m e^{\frac{1}{\alpha_{1} \lambda_{s 1}}} E i\left(-\frac{1}{\alpha_{1} \lambda_{S 1}}\right)-(m+1) e^{\frac{\lambda_{S R}+\lambda_{R 1}}{\alpha_{1} \lambda_{S R} \lambda_{R 1}}} E i\left(-\frac{\lambda_{S R}+\lambda_{R 1}}{\alpha_{1} \lambda_{S R} \lambda_{R 1}}\right)\right]\)       (27)

where \(m=\frac{\lambda_{S 1}\left(\lambda_{R 1}+\lambda_{S R}\right)}{\lambda_{S R} \lambda_{R 1}-\lambda_{S 1}\left(\lambda_{R 1}+\lambda_{S R}\right)}\), Ei(x)= \(\int_{-x}^{\infty} \frac{e^{-t}}{t} d t\). Ei(x) is exponential integral.

Proof. The ergodic capacity of the symbol 1 is expressed as

\(\begin{aligned} E\left[R_{1}\right] &=E\left[\frac{1}{2} \log _{2}\left(1+\alpha_{1} \gamma_{S 1}+\frac{\alpha_{1} \gamma_{S R} \gamma_{R 1}}{\gamma_{S R}+\gamma_{R 1}+1}\right)\right.\\ &=E\left[\frac{1}{2} \log _{2}\left(1+\alpha_{1} \gamma_{S 1}+\frac{\alpha_{1} \gamma_{S R} \gamma_{R 1}}{\gamma_{S R}+\gamma_{R 1}+1}\right)\right.\\ &=E\left[\frac{1}{2} \log _{2}(1+R)\right] \\ &=\int_{0}^{+\infty} \frac{1}{2} \log _{2}(1+R) f_{R}(r) d r \end{aligned}\)       (28)

we assumed that S=α1γS1 and \(T=\frac{\alpha_{1} \gamma_{S R} \gamma_{R 1}}{\gamma_{S R}+\gamma_{R 1}+1}\) , hence, existing \(f_{S}(s)=\frac{1}{\alpha_{1} \lambda_{S 1}} e^{-\frac{s}{\alpha_{1} \lambda_{s 1}}}\). By utilizing the (19) for the random variable T , we can obtain that \(F_{T}(t) \geq 1-e^{-\frac{t\left(\lambda_{S R}+\lambda_{R 1}\right)}{\alpha_{1} \lambda_{S R} \lambda_{R 1}}}\), thus

\(\begin{aligned} F_{R}(r) &=P(S+T<r) \\ &=P(T<r-S) \\ & \geq \int_{0}^{r}\left(1-e^{\frac{s-r}{\alpha_{1} \lambda_{s r}}+\frac{s-r}{\alpha_{1} \lambda_{r 1}}}\right) \frac{1}{\alpha_{1} \lambda_{s 1}} e^{-\frac{s}{\alpha_{1} \lambda_{s 1}}} d s \end{aligned}\)       (29)

The derivative of random variable r on both sides of the inequality becomes

\(f_{R}(r) \leq-m \frac{1}{\alpha_{1} \lambda_{S 1}} e^{-\frac{r}{\alpha_{1} \lambda_{S 1}}}+(m+1) \frac{\lambda_{R 1}+\lambda_{S R}}{\alpha_{1} \lambda_{S R} \lambda_{R 1}} e^{-\frac{\lambda_{R 1}+\lambda_{S R}}{\alpha_{1} \lambda_{S R} \lambda_{R 1}}}\)       (30)

where \(m=\frac{\lambda_{S 1}\left(\lambda_{R 1}+\lambda_{S R}\right)}{\lambda_{S R} \lambda_{R 1}-\lambda_{S 1}\left(\lambda_{R 1}+\lambda_{S R}\right)}\), next, giving equation (4.337−2) in [18]

\(\int_{0}^{\infty} e^{-\mu x} \ln (1+\beta x) d x=-\frac{1}{\mu} e^{\frac{\mu}{\beta}} E i\left(-\frac{\mu}{\beta}\right) \quad|\arg \beta|<\pi, \operatorname{Re} \mu>0\)       (31)

By utilizing the expression (31), according to correspondence coefficient rule, the expression (27) can be obtained. 

Proposition 2. Based on high SNR regime, an upper bound approximation ergodic capacity for the symbol 2 of the proposed system is given by

\(E^{\infty}\left[R_{2}\right]=\frac{1}{2} \log _{2}\left(1+\frac{\alpha_{2}}{\alpha_{1}}\right)\)       (32)

Proof. The ergodic capacity of the symbol 2 is expressed as

\(E\left[R_{2}\right]=\frac{1}{2} \log _{2}\left(1+\frac{\alpha_{2} \gamma_{S R} \gamma_{R 2}}{\alpha_{1} \gamma_{S R} \gamma_{R 2}+\gamma_{S R}+\gamma_{R 2}+1}\right)\)       (33)

when the symbol 2 in high SNR, equivalent to γSR → ∞ and γR2 → ∞ , the expression (32) can be obtained. 

Proposition 3. Based on high SNR regime, an upper bound approximation ergodic capacity for the proposed system is given by

\(E^{\infty}\left[R_{s u m}\right]=\frac{1}{2} \log _{2}\left(\lambda_{S 1}\right)+\frac{\lambda_{S R} \lambda_{R 1}}{2\left[\lambda_{S R} \lambda_{R 1}-\lambda_{S 1}\left(\lambda_{S R}+\lambda_{R 1}\right)\right]} \log _{2}\left(\frac{\lambda_{S R} \lambda_{R 1}}{\lambda_{S 1}\left(\lambda_{S R}+\lambda_{R 1}\right)}\right)-\frac{E c}{2 \ln 2}\)       (34)

where Ec ≈ 0.5772. 

Proof. If x → 0 , existing ex =1+ x and Ei(-x)=ln x+ Ec . Based on the symbol 1 in high SNR, equivalent to  γSR→∞ γR1 →∞ γs1→∞ ,thus, Ehigh[R1] is given by

\(\begin{aligned} E^{\text {high }}\left[R_{1}\right] &=\frac{1}{2 \ln 2}\left[m e^{\frac{1}{\alpha_{1} \lambda_{\text {si }}}} E i\left(-\frac{1}{\alpha_{1} \lambda_{S 1}}\right)-(m+1) e^{\frac{\lambda_{S R}+\lambda_{R 1}}{\alpha_{1} \lambda_{S R} \lambda_{R 1}}} E i\left(-\frac{\lambda_{S R}+\lambda_{R 1}}{\alpha_{1} \lambda_{S R} \lambda_{R 1}}\right)\right] \\ & \leq \frac{1}{2 \ln 2}\left[m E i\left(-\frac{1}{\alpha_{1} \lambda_{S 1}}\right)-(m+1) E i\left(-\frac{\lambda_{S R}+\lambda_{R 1}}{\alpha_{1} \lambda_{S R} \lambda_{R 1}}\right)\right] \\ &=\frac{1}{2 \ln 2}\left[m\left(-\ln \alpha_{1} \lambda_{S 1}+E c\right)-(m+1)\left(\ln \frac{\lambda_{S R}+\lambda_{R 1}}{\alpha_{1} \lambda_{S R} \lambda_{R 1}}+E c\right)\right] \\ &=\frac{1}{2} \log \alpha_{1} \lambda_{S 1}+\frac{\lambda_{S R} \lambda_{R 1}}{2\left[\lambda_{S R} \lambda_{R 1}-\lambda_{S 1}\left(\lambda_{S R}+\lambda_{R 1}\right)\right]} \log _{2}\left(\frac{\lambda_{S R} \lambda_{R 1}}{\lambda_{S 1}\left(\lambda_{S R}+\lambda_{R 1}\right)}\right)-\frac{E c}{2 \ln 2} \\ &=E^{\infty}\left[R_{1}\right] \end{aligned}\)       (35)

by performing addition operation on the (32) and (35), the proof is completed.

Based on the high SNR regime, some important intuitive conclusions are as follows, on the one hand, the ergodic capacity of symbol 2 for our proposed system is only determined by the power allocation coefficient ratio, namely, the ergodic capacity of symbol 2 increases as the power allocation coefficient α2 increases. On the other hand, we also can see that, the power allocation coefficient has little effect on the ergodic capacity of our proposed system. From the above two conclusions, we can infer that the ergodic rate of symbol 1 increases as the power allocation coefficient α1 increases. 

In order to effectively evaluate the ergodic capacity of performance between our proposed system and other two conventional cooperative NOMA systems. Here, the ergodic capacity of conventional cooperative NOMA system with DF relay and the conventional cooperative NOMA system with AF relay are respectively given by

\(C_{\text {con_DF }}=\frac{1}{2} E\left[\log _{2}\left(1+\alpha_{1} \gamma_{S 1}\right)+\frac{1}{2} \log _{2}\left(1+\min \left\{\frac{\alpha_{2} \gamma_{S R}}{\alpha_{1} \gamma_{S R}+1}, \gamma_{R 2}\right\}\right)\right]\)       (36)

\(C_{\text {con_AF }}=\frac{1}{2} E\left[\log _{2}\left(1+\alpha_{1} \gamma_{S 1}\right)+\frac{1}{2} \log _{2}\left(1+\frac{\alpha_{2} \gamma_{S R} \gamma_{R 2}}{\alpha_{1} \gamma_{S R} \gamma_{R 2}+\gamma_{S R}+\gamma_{R 2}+1}\right)\right]\)       (37)

In two conventional cooperative NOMA systems, symbol 1 has no chance to do MRC at the second time slot. Thus, the conventional cooperative NOMA systems can’t obtain diversity gain. 

Next, two propositions is also given to describe the ergodic capacity analysis expression for two symbols of the two conventional cooperative NOMA systems.

Proposition 4. the ergodic capacity for the symbol 1 of the conventional cooperative NOMA system with DF/AF relay is given by

\(E_{c o n}\left[R_{1}\right]=-\frac{1}{2 \ln 2} e^{\frac{1}{\alpha_{1} \lambda_{s 1}}} E i\left(-\frac{1}{\alpha_{1} \lambda_{S 1}}\right)\)       (38)

Proof. The ergodic rate of the symbol 1 for the conventional cooperative NOMA system with DF/AF relay is expressed as

\(E_{c o n}\left[R_{1}\right]=\frac{1}{2} E\left[\log _{2}\left(1+\alpha_{1} \gamma_{S 1}\right)\right]\)       (39)

where γS1 obey exponential distributed and its means is λS1 , and we define that X =α1 γS1 . The CDF of X is given by

\(F_{X}(x)=1-e^{-\frac{x}{\alpha_{1} \lambda_{S 1}}}\)       (40)

By utilizing Lemma 3, the E[R1] can be further expressed as

\(E_{\text {con }}\left[R_{1}\right]=\frac{1}{2 \ln 2} \int_{0}^{\infty} \frac{e^{-\frac{x}{\alpha_{1} \lambda_{S 1}}}}{1+x} d x\)       (41)

Giving equation (3.352−4) in [18]

\(\int_{0}^{\infty} \frac{e^{-\mu x}}{x+\beta} d x=-e^{\beta \mu} E i(-\mu \beta) \quad|\arg \beta|<\pi, \operatorname{Re} \mu>0\)       (42)

By utilizing the equation (42) and (41), according to correspondence coefficient rule, the expression (38) can be obtained, Proposition 4 is proved. 

Proposition 5. the ergodic capacity for the symbol 2 of the conventional cooperative NOMA system with DF relay is given by

\(E_{\text {con }}\left[R_{2}\right]=\frac{1}{2 \ln 2} \int_{0}^{\frac{\alpha_{2}}{\alpha_{1}}} e^{-x\left(\frac{1}{\lambda_{\text {SR }}\left(a_{2}-a_{1} x\right)}+\frac{1}{\lambda_{R 2}}\right)} \frac{1}{1+x} d x .\)       (43)

Proof. According to (36), we define that \(Z=\min \left\{\frac{\alpha_{2} \gamma_{S R}}{\alpha_{1} \gamma_{S R}+1}, \gamma_{R 2}\right\}\), the CDF of the variable Z is given by

\(\begin{aligned} F_{Z}(x) &=P\left(\min \left\{\frac{\alpha_{2} \gamma_{S R}}{\alpha_{1} \gamma_{S R}+1}, \gamma_{R 2}\right\}<x\right) \\ &=1-P\left(\frac{\alpha_{2} \gamma_{S R}}{\alpha_{1} \gamma_{S R}+1} \geq x\right) P\left(\gamma_{R 2} \geq x\right) \end{aligned}\)       (44)

By utilizing Lemma 4, the CDF of the variable Z can be further expressed as

\(\begin{aligned} F_{Z}(x) &=1-P\left(\frac{\alpha_{2} \gamma_{S R}}{\alpha_{1} \gamma_{S R}+1} \geq x\right) P\left(\gamma_{R 2} \geq x\right) \\ &=1-e^{-\frac{x}{\lambda_{S R}\left(a_{2}-a_{1} x\right)}} e^{-\frac{x}{\lambda_{R 2}}}\left(\varepsilon(x)-\varepsilon\left(x-\frac{a_{2}}{a_{1}}\right)\right) \end{aligned}\)       (45)

Bring (45) to Lemma 3, the proof is completed. 

The best knowledge of the authors, based on the conventional cooperative NOMA system with DF relay, the closed-form expression of ergodic capacity for symbol 2 was not obtained. However, the ergodic rate also can be effectively estimated via the definite integration (43). In addition, based on the conventional cooperative NOMA system with AF relay, we do not give the proposition to describe the analysis expression of the ergodic rate for symbol 2. This main because that the ergodic rate is identical for symbol 2 between our proposed system and the conventional cooperative NOMA system with AF relay. The proposition 2 has given an upper bound approximation for ergodic capacity based on symbol 2.

4. Numerical Results 

In this section, the ergodic capacity of all cooperative NOMA systems are evaluated by Monte-Carlo simulations, based on 10,000 independent random channel realizations. For all simulations, we set λSR=14,λS1=5,λR1=10,λR2=10,σ2=1 .

In Fig. 2, we compare the ergodic capacity among our proposed system, conventional cooperative NOMA systems with AF/DF relay and [16] proposed cooperative NOMA system. In simulations, we further set power allocation coefficients α1=0.4, α2 =0.6. As we can see from this figure, our proposed system has better ergodic capacity than the other three systems. This is due to two reasons. First of all, our proposed cooperative NOMA system utilizes MRC for symbol 1, so the symbol 1 obtain two signals ergodic capacity gain from two time slots. However, two conventional cooperative NOMA systems can't obtain diversity gain for symbol 1 due to not applying MRC at U1. On the other hand, at the second time slot, comparing the strategy in [16] of performing MRC before SIC, our detection scheme for symbol 1 can obtain better diversity gain. Hence, our proposed system achieves the best ergodic capacity performance. In addition, we also see that ergodic capacity increases with increasing transmit SNR for all compared system. Besides, we see approximated ergodic capacity of our proposed system given by (34) which is an upper bound for simulation ergodic capacity. 

E1KOBZ_2020_v14n10_4231_f0002.png 이미지

Fig. 2. Ergodic capacity versus transmit SNR for all compared cooperative NOMA systems

Fig. 3 presents the ergodic capacity versus power allocation coefficient for our proposed system, two conventional cooperative NOMA systems and [16] proposed cooperative NOMA system. As can be seen from the figure, under fixed transmit SNR, approximated ergodic capacity upper bound of our proposed system is changeless with the increase of power allocation coefficient. This is due to that approximated ergodic capacity upper bound is only determined by transmit SNR and channel power gains, as expression (34). Also, ergodic capacity of all compared systems are improved by increasing transmit SNR. In addition, from this figure, we also find that power allocation coefficients have little impact on ergodic capacity of all cooperative NOMA systems.

E1KOBZ_2020_v14n10_4231_f0003.png 이미지

Fig. 3. Ergodic capacity versus power allocation coefficient for all compared cooperative NOMA systems

Fig. 4 depicts the ergodic capacity versus transmit SNR and power allocation coefficient 1 for our proposed cooperative NOMA system, using Monte-Carlo simulations. From this figure we can see that ergodic capacity of our proposed system significantly increases with the increase of transmit SNR. However, we also see that power allocation coefficients have little impact on ergodic capacity of our proposed cooperative NOMA system. The corresponding reason will be explained in the analysis part of Fig. 5.

E1KOBZ_2020_v14n10_4231_f0004.png 이미지

Fig. 4. Ergodic capacity versus power allocation coefficient and transmit SNR for the proposed cooperative NOMA system

E1KOBZ_2020_v14n10_4231_f0005.png 이미지

Fig. 5. Ergodic capacity versus power allocation coefficient for the proposed cooperative NOMA system

Fig. 5 shows the ergodic capacity versus power allocation coefficient 1 for our proposed cooperative NOMA system. In simulations, we further set transmit SNR ρ = 30dB . From the figure we can see that the ergodic capacity of each symbol increases with the increase of its own power allocation coefficient, in which satisfy α2  > α1and α12 =1 . In other words, the ergodic capacity of symbol 1 increases with the increase of power allocation coefficient 1. However, the ergodic capacity of symbol 2 decreases with the increase of power allocation coefficient 1. Hence, we can understand that power allocation coefficients have little impact on ergodic capacity of our proposed cooperative NOMA system and the other three cooperative NOMA systems. This is because the ergodic capacity of two symbols can be complementary with changing of power allocation coefficients.

5. Conclusion 

This paper proposes an improved NOMA system with the help of an AF relay. A closed-form upper bound approximation is derived for the ergodic capacity of our proposed system. A novel detection scheme is applied at U1. Monte-Carlo simulations and numerical analysis show that our proposed system can obtains higher ergodic capacity than the conventional cooperative NOMA systems with DF/AF relay system and [16] proposed cooperative NOMA system. In addition, the ergodic capacity of our proposed system increases as transmit SNR increases. Finally, simulations also indicate that power allocation coefficients have little impact on ergodic capacity of all cooperative NOMA systems. This is because ergodic capacity of two symbols can be complementary with changing of power allocation coefficients. 

Acknowledgement

This work has been supported by the Joint Foundation of Guizhou Province (QianKeHeLHZi[2016]7106), XJGC20150702 and the Nature Science Foundation of Guizhou Province (QianKeHeJiChu[2017]1070).

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