1. Introduction
Currently, energy efficiency is an important objective in the analysis and design of wireless sensor networks, in addition to the traditional interest in higher rates and quality of service [
1,
2,
3,
4]. According to the technical report from Ericiss [
5], by 2020, there will be more than 50 billion connected devices, including sensors, smart phones, medical and wearable devices connected to the Internet. Clearly, in order to serve such a massive number of terminals, future networks will have to dramatically increase the energy consumption compared to the present network. More importantly, most sensors are powered by finite battery capacity. In order to address these issues, wireless power transfer (WPT) is a promising approach to harvest radio frequency (RF)-energy from wireless received signal and prolong the lifework time of wireless sensor networks. Accordingly, the WPT as the wireless charging technology enables an intentional RF power source to transmit electromagnetic energy to an electrical load across the air media without an interconnected line. Due to its convenience and better user experience, some researchers have begun to investigate wireless power transfer algorithms, technologies and applications in wireless sensor networks [
6,
7,
8,
9,
10,
11,
12,
13,
14,
15,
16,
17,
18,
19,
20]. In [
6], the network architecture for wireless rechargeable sensor networks (WRSNs) was introduced by describing the functionality of network components and their features. The perpetual operation condition for WRSNs was analyzed and derived. In [
7], the abstract model, algorithm design and networking principles about wireless power transfer in ad hoc communication network were introduced. Especially, several applications for wirelessly powered communication networks (WPCN) were presented and the relevant performance tradeoffs were characterized. In [
8,
9,
10,
11,
12], some works on joint mobile data gathering and energy provisioning in Wireless Rechargeable Sensor Networks (WRSN) were investigated to provide perpetual network operations by capturing renewable energy from external environments. Wireless power transfer provides a promising means of replenishing battery-powered devices and supports various applications [
13,
14,
15,
16,
17,
18,
19,
20].
On the other hand, since radio signals carry both information and RF energy at the same time, simultaneous wireless information and power transfer (SWIPT) has recently been proposed and attracted much attention from academia and industry [
21,
22,
23,
24]. However, it is not realizable that the receiver for SWIPT technology is required to be able to decode information and harvest energy from the same signal, which is due to the practical circuit designment limitations [
21]. Therefore, two receiver design schemes, namely power splitting (PS) and time switching (TS), were proposed in [
21,
23]. In addition, in [
21], optimal mode switching rule at the receiver to achieve the tradeoff between wireless information and energy harvesting was derived. In [
22], a unified study on SWIPT for a Multiple Input Multiple Output (MIMO) broadcast system was pursued to characterize their achievable rate-energy (R-E) regions for two practical designs, i.e., PS and TS mode. In addition, in [
23], a general receiver operation, namely, dymamic power splitting (DPS) was proposed to characterize R-E regions and derive different R-E tradeoffs. In [
24], based on the instantaneous channel condition and the proposed DPS scheme, an optimal power splitting rule at the receiver was derived to achieve the tradeoffs between the maximum ergodic capacity and the maximum average harvested energy. However, these works focus on how to achieve rate-energy tradeoff and increase R-E regions and/or maximize transmission rate subject to the harvested energy constraint. The tradeoff between energy efficiency (EE) and spectral efficiency (SE) and the EE optimization problem for SWIPT system have not been considered in detail. In particular, the increasingly strict environmental standard and rapidly rising energy cost have led to an emerging trend of addressing the energy efficiency of wireless networks. Moreover, EE optimization of transceiver design in the SWIPT system has also not been investigated in wireless sensor networks from a green communication perspective.
Recently, the EE optimization problem for the SWIPT system has been considered in [
19,
25,
26,
27,
28,
29,
30,
31,
32,
33]. In [
19], an energy-efficient cooperative transmission problem for SWIPT in clustered wireless sensor networks was formulated to develop a distributed iteration algorithm for power allocation, power splitting and relay selection. In [
25], a resource allocation algorithm for maximization of the energy efficiency of data transmission was investigated in orthogonal frequency division multiple access (OFDMA) systems with SWIPT. Furthermore, in [
26], a power splitting based multiuser multiple-input-single-output (MISO) downlink system with SWIPT was considered to maximize the system energy efficiency by joint beamforming and PS schemes. Similarly, in [
27], the main objective is to maximize the ratio of the achievable utility to the total power consumption subject to harvested energy requirements and power budget at the base station (BS). Moreover, in [
28], two user multiple access channels with SWIPT were studied to optimize resource allocation strategy for SWIPT focusing on the system energy efficiency. In [
29], an energy efficient resource allocation scheme for SWIPT with imperfect channel estimation was studied by determining the training interval. Furthermore, in [
30], an algorithm for EE optimization was proposed in the MISO system with SWIPT to reveal the influence of the searching interval, channel fading, maximum transmit power and the Quality of Service (QoS) requirement. In [
32], the user association and power allocation in the mmWave based ultra dense networks (UDNs) was considered with attention to load balance constraints, user QoS requirement, energy harvesting by base stations, energy efficiency and cross-tier interference limits. In [
33], the EE and SE in the SWIPT systems were investigated to achieve different EE–SE tradeoffs and optimal strategies for various constraint conditions. However, the static circuit power consumption and the harvested energy requirement have not been jointly considered in [
32,
33].
In this paper, firstly, we study the tradeoff between SE and EE from a green communication perspective. Moreover, we formulate two EE maximization problems subject to the constraints of minimum QoS requirements, minimum harvested energy and maximum transmit power for different practical design modes, which are two non-convex optimization problems. In particular, we aim to focus on the distributed iterative algorithm design for PS and TS modes at the receiver. To this end, the non-convex optimization problems are solved by the optimal iterative algorithms that jointly apply nonlinear fractional programming and Lagrangian dual decomposition. In addition, we consider the scenarios that the transmitter does not know or partially knows the channel state information (CSI) of the receiver to characterize the tradeoff between effective throughput (ET) and outage target rate with respect to PS and TS modes, respectively. Finally, simulation results illustrate various different interesting tradeoffs between EE and SE, between EE and the transmit power, and between EE and ET for SWIPT systems.
Compared to the previous work [
19,
25,
26,
27,
28,
29,
30,
31,
32,
33], the contributions of this paper are summarized as follows.
We analyze the tradeoff between EE and SE for PS and TS modes from a green wireless communication perspective, respectively.
We formulate the EE optimization problem as a nonlinear fractional programming problem, and propose the optimal iterative algorithms by using Dinkelbach’s method and Lagrangian dual decomposition to obtain the optimal transmit power and time switching slot.
We analyse outage probability and give closed-form analytic expression of effective throughput under the scenarios the transmitter does not know or partially knows the CSI of receiver. The tradeoff between energy-throughput efficiency and outage target rate is analyzed for PS and TS modes, respectively.
We characterize and analyse the corresponding performance of our proposed iterative algorithms for PS and TS modes in the SWIPT system by numerical simulations with respect to various scenarios and different condition constraints, such as minimum QoS, minimum harvested energy requirement and maximum transmit power constraint.
It is worth pointing out that energy queuing in the wireless rechargeable sensor network has been studied [
6]. However, these works mainly focused on the research of energy management policy optimization at the transmitter side with energy harvesting, which is subject to random arrival energy. Therefore, it is different from our work that mainly tackles EE optimization problem for SWIPT on the receiver side.
The remainder of this paper is organized as follows.
Section 2 introduces the channel model, presents the PS, TS mode for receiver architecture and gives the concept of energy efficiency of two receiver modes in the SWIPT system.
Section 3 investigates the tradeoff between EE and SE.
Section 4 formulates EE maximization optimization problem for the PS, TS receiver mode, respectively.
Section 5 investigates the quasi-concavity of energy efficiency objective function for the PS, TS mode.
Section 6 proposes distributed iterative algorithms to solve the corresponding nonlinear fractional program problem.
Section 7 analyzes the tradeoffs between energy-throughput efficiency and outage target rate for PS, TS mode, respectively.
Section 8 verifies the proposed iterative algorithms and the tradeoffs of SE-EE, energy throughput efficiency and outage target rate by numerical simulations. Finally,
Section 9 concludes this paper.
3. Spectral-Energy Efficiency Tradeoff
In this section, we propose a general framework of the tradeoffs between EE and SE in the SWIPT system for different receiver modes; furthermore, we derive the specific EE–SE relation for two modes as the closed-form expression function, which are based on the proposed framework.
Traditionally, wireless sensor network design mainly aims to improve spectral efficiency and effective throughput. The spectral efficiency (SE), defined as the system throughput per unit of bandwidth, is a widely accepted criterion for wireless network optimization. However, according to Shannon capacity formulation, it becomes urgent to maintain sustainable capacity growth by only increasing transmit power. Thus, the researchers and engineers have a paradigm shift from improving system capacity and throughput to energy efficiency oriented design. Unfortunately, SE and EE of communication systems are not always consistent and sometimes conflict with each other [
3]. The SE-EE tradeoff is to balance the achievable rate and energy consumption of the system for a given available bandwidth. Therefore, it is worth studying how to balance the two metrics in future systems from a green communication perspective.
In the following, we consider the static circuit power consumption in our proposed SWTPT system. On the other hand, energy harvesting terminal design is regarded as energy compensation for two modes. The significant impact on the tradeoff between SE and EE can be investigated to obtain energy-efficient transmission policies, which is crucial for environmental protection and sustainable development in WRSN.
3.1. Power Splitting Mode
For PS mode, let
denote power spectral efficiency; then we can obtain spectral efficiency expression as follows:
Moreover, we can obtain more insight on the fundamental tradeoff between energy efficiency and spectral efficiency. According to Equation (
3), the transmit power with respect to spectral efficiency is given by
Substituting Equation (
14) into Equation (
10), we can yield the EE as a function of the SE, i.e.,
The function relation in Equation (
15) is illustrated in
Figure 4, which shows that the EE
is quasi-concave (uni-modal) with respect to the SE
for PS mode, and provides more insights on the fundamental tradeoff between EE and SE in the SWIPT system.
3.2. Time Switching Mode
For TS mode, let
denote power spectral efficiency; then, the spectral efficiency for time slot
is formulated as
Moreover, we can obtain the transmit power as follows:
Substituting Equation (
17) into Equation (
12), we can derive the relation of the SE-EE tradeoff for TS mode as follows:
Similarly, the function relation in Equation (
18) is illustrated in
Figure 5, which shows that the EE
is quasi-concave (uni-modal) with respect to the SE
for TS model and provides more insights on the fundamental tradeoff between EE and SE in the SWIPT system.
7. Effective Throughput and Energy-Throughput Efficiency
In this section, we consider the scenario that the transmitter does not know or partly knows the channel state information (CSI) of the receiver. Therefore, we investigate the effective throughput of link between the transmitter and the receiver by using outage target rate and outage probability. Assume that and represent the critical value of reliable transmission outage occurrence for PS, TS mode, respectively. Moreover, we derive the close-form expression of effective throughput for two modes. Furthermore, we define energy-throughput efficiency and characterize the relationship between energy-throughput efficiency and the outage target rate. Finally, we derive the optimal value of outage target rate, which is regarded as a system parameter to maximize the energy-throughput efficiency.
We assume that the channel power gain
h satisfies the exponential distribution. The probability density function (PDF) of
h is given by
where
denotes the expectation of
h. Then, the cumulative density functions (CDF) of
h is given by
In the following, we derive the closed form expression of outage probability and effective throughput, and then give the definition of energy-throughput efficiency for two modes.
7.1. Power Splitting Mode
For PS mode, the outage probability of reliable transmission is defined as the probability that the reliable transmission rate is less than the outage target rate, which is obtained by
Moreover, the effective throughput of reliable transmission for PS mode is defined as the product between the outage target rate and the probability of success reliable transmission, which is given by
Finally, according to the previous definition, the energy-throughput efficiency of the SWIPT system for power splitting mode on effective throughput is defined as the ratio between the effective throughput and the total consumed energy, which can be expressed as
Next, for given
, we characterize the relationship between energy-throughput efficiency
and outage target rate
. We observe that the energy throughput efficiency with respect to outage target rate is quasi-concave. In fact, we can obtain the following expression by taking natural logarithm at both sides of Equation (
66):
We can observe that
is a strict concave function with respect to
from the right-hand side of the equality (
67). Thus,
is a strict log-concave function with respect to
. Furthermore, it is also a strict quasi-concave function with respect to
.
Then, for given
and
, the optimal value of outage target rate exists and can be regarded as a system parameter to maximize energy-throughput efficiency, i.e.,
7.2. Time Switch Mode
On the other hand, we can obtain the outage probability, effective throughput and energy throughput efficiency for time switching mode as follows:
Moreover, the effective throughput of reliable transmission for TS mode is given by
Similarly, the energy-throughput efficiency of the SWIPT system with time switching mode on effective throughput can be given by
For TS mode, similar to PS mode, we also can prove that the energy-throughput efficiency
with respect to outage target rate
is quasi-concave. Then, for given
and
, the optimal value of outage target rate exists and can be obtained by
8. Numerical Simulation Results and Discussion
In this section, we first verify the convergence of the proposed algorithm in
Section 5. Moreover, we compare and evaluate the performance of our optimal solution for different parameters, such as the transmit power
, power splitting ratio
and time switching slot
for PS,TS mode, respectively. In addition, we characterize the effects of minimum QoS and minimum harvested energy requirement on energy efficiency. Furthermore, we illustrate the tradeoffs between EE and SE and characterize the quasi-concavity of the EE with respect to SE for PS, TS mode, respectively. Finally, we illustrate the quasi-concavity of the energy-throughput efficiency with respect to the outage target rate and evaluate the optimal value of outage target rate, which maximizes the energy-throughput efficiency for two modes, respectively.
We consider a SISO SWIPT system with PS, TS mode and the used simulation parameter values for SWIPT system are presented in
Table 2. We assume that the total bandwidth of fading channel is 100 MHz. Moreover, the static circuit power consumption
is 10 mW, which is considered as a constant parameter. Furthermore, unless specified otherwise, we assume that the system satisfies a minimum rate requirement of
= 1 kbps, minimum harvested energy constraint of
0.1 J, and initial energy harvesting efficiency
, the power amplifier coefficient
. For the sake of fast convergence, we assume that the step size of Lagrangian multiplier update
,
,
, convergence tolerance of iterative algorithms
, maximum number of inner loop iterations
and maximum number of outer loop iterations
.
8.1. The Tradeoffs of Energy-Spectral Efficiency
In this subsection, we characterize the tradeoffs between energy efficiency and spectral efficiency for two modes in the SWIPT system, which are depicted in
Figure 4 and
Figure 5. If only transmit power is considered, we can see that the EE decreases as the SE increases and the EE-SE relation looks contradictory. However, in a practical communication system, in addition to the transmit power, there exist other kinds of power consumed to maintain the whole system, such as the static circuit power
. Then, the circuit power consumption is considered as a constant power for two transceivers in our proposed SWIPT system and more details can be found in
Section 3.
For the PS mode, the EE–SE relation presented in Equation (
15) is showed in
Figure 4. For comparison, the power splitting ratio
is set to 0.2, 0.5, 0.8, 1. In
Figure 4, we can see that an optimal peak value of the EE can be achieved in different levels of the power splitting ratio. In other words, the EE-SE relation does not conflict any more and the optimal tradeoff can be achieved. On the other hand,
Figure 4 shows that the EE decreases as the power splitting ratio increases. In particular,
means no energy harvesting, which indicates that the SWIPT system can enhance energy efficiency under the condition of the same spectral efficiency for PS mode.
For the TS mode, the EE-SE relation presented in Equation (
18) is showed in
Figure 5. For comparison, the time switching slot
is set to 0.2, 0.5, 0.8, 1. In
Figure 5, an optimal value of tradeoff between EE and SE can be obtained in different intervals of the time switching slot. Similarly, the EE–SE relation is not contradictory any more and the optimal tradeoff can be achieved. In addition,
Figure 5 illustrates that the EE increases as the time switching slot increases as well as the spectral efficiency, which shows that the SWIPT system can achieve different EE–SE tradeoff levels by adjusting time switching slot
for TS mode.
8.2. Convergence of Iterative Algorithms
In this subsection, we focus on the energy efficiency versus the number of iterations and the convergence speed of the our proposed iterative algorithms for PS, TS mode, which are depicted in
Figure 6,
Figure 7,
Figure 8 and
Figure 9. Specifically, for PS mode,
Figure 6 depicts the energy efficiency of the proposed iterative algorithms for different levels of transmit power versus the number of iterations.
Figure 6 reveals that the larger the transmit power is, the lower the energy efficiency of system is, when
mW.
Figure 7 shows the energy efficiency of the proposed algorithms for different power splitting ratios versus number of iterations.
Figure 7 illustrates that the higher the power splitting ratio is, the lower the energy efficiency of system is, when
0.2, 0.5, 0.8, 1, respectively.
On the other hand, for TS mode,
Figure 8 depicts the energy efficiency of the proposed algorithms for different transmit power versus the number of iterations.
Figure 8 reveals that the larger the transmit power is, the lower the energy efficiency of system is, when
mW, respectively.
Figure 9 shows the energy efficiency of the proposed algorithms for different time switching slots versus the number of iterations.
Figure 9 illustrates that the higher the time switching slot is, the lower the energy efficiency of system is, when
0.2, 0.5, 0.8, 1, respectively.
In addition, in
Figure 6,
Figure 7,
Figure 8 and
Figure 9, after only eight iterations, the proposed iterative algorithms achieve convergence for all considered scenarios. In addition, the convergence speed of the proposed algorithms is unchanged for different transmit power, power splitting ratio and time switching slots, which is expected for the practical SWIPT system.
8.3. Effects of Minimum QoS and Minimum Harvested Energy on Energy Efficiency for PS Mode
In this subsection, the effects of the minimum QoS and minimum harvested energy requirements on the energy efficiency are illustrated in
Figure 10,
Figure 11,
Figure 12 and
Figure 13, respectively. For PS mode,
Figure 10 and
Figure 11 show that the energy efficiency increases as the transmit power increases before achieving optimal peak value for different cases. Specifically,
Figure 10 reveals that the larger the minimum harvested energy requirement is, the lower energy efficiency is. Moreover,
Figure 13 shows that the larger minimum QoS is, the lower energy efficiency is. This is due to the fact that more power is allocated to guarantee reliable communication and harvested energy requirement. On the other hand, for PS mode,
Figure 12 and
Figure 13 show that the energy efficiency increases as the power splitting ratio increases when
is small. After energy efficiency achieves the peak value, it decreases as the power splitting ratio increases. In
Figure 12, the effect of minimum harvested energy requirement on energy efficiency is shown and the larger minimum harvested energy requirement is, the lower energy efficiency is, when
. In
Figure 13, for different levels of minimum QoS, the larger the minimum QoS is, the slower energy efficiency achieves optimal peak value at a time.
8.4. Effects of Minimum QoS and Minimum Harvested Energy on Energy Efficiency for TS Mode
In this subsection, for TS mode, the effects of minimum QoS and minimum harvested energy requirement on energy efficiency are illustrated in
Figure 14,
Figure 15,
Figure 16 and
Figure 17, respectively. Specifically, in
Figure 14 and
Figure 15, with the increasing of transmit power, energy efficiency increases before achieving the optimal solution. It is shown from
Figure 14 that the higher the minimum harvested energy requirement is, the lower energy efficiency is. In addition,
Figure 15 shows that the larger minimum QoS requirement is, the lower energy efficiency is. On the other hand, in
Figure 16 and
Figure 17, the energy efficiency increases as the time switching slot increases before obtaining optimal value. After achieving peak value, energy efficiency decreases as time switching slot increases. In addition,
Figure 16 shows that the larger the minimum harvested energy requirement is, the lower energy efficiency is as well as minimum QoS in
Figure 17. These observations predict that the optimal value of time switching slot can be obtained to maximize energy efficiency of the SWIPT system by using our proposed algorithms.
8.5. Energy-Throughput Efficiency versus Outage Target Rate
In this subsection, the relation between energy-throughput efficiency and outage target rate are illustrated for PS, TS mode in
Figure 18 and
Figure 19, respectively.
Figure 18 shows that the energy-throughput efficiency is quasi-concave and decreases as the power splitting ratio increases. It is worth noting that the maximum value of energy-throughput efficiency is lower than the other scenarios when
, which represents the scenario without energy harvesting. This observation implies that energy-throughput efficiency can be enhanced by designing different system parameters
. In addition, energy-throughput efficiency maximization can be achieved for different levels of outage target rate in the SWIPT system with PS mode.
Figure 19 illustrates energy-throughput efficiency versus outage target rate with different time switching slots for TS mode. It is observed from
Figure 19 that energy-throughput efficiency with respect to the outage target rate is quasi-concave. This observation means that the optimal value of outage target rate can be achieved to maximize energy-throughput efficiency for TS mode. In addition, the maximum of energy-throughput efficiency increases as the time switching slot increases. In a word, energy-throughput efficiency and outage target rate can achieve a tradeoff in the SWIPT system with PS, TS mode. From a green communication perspective, energy-throughput efficiency can be enhanced by designing a proper transceiver with different system parameters when the transmitter does not know or partially knows the CSI of the receiver.
9. Conclusions
In this paper, we have investigated the energy efficient transceiver design from different scenarios of green communication for WRSN with SWIPT. We have demonstrated the concavity of the energy efficiency function and quasi-concavity of the energy efficiency objective function. The energy efficient transceiver design problems for the SWIPT system with two modes are formulated as a fractional programming problem, in which the constraints of minimum QoS, minimum harvested energy requirement and maximum transmit power and circuit power consumption are taken into consideration. By exploiting the properties of nonlinear fractional programming, the proposed problems are transformed into the equivalent convex optimization with a tractable parameterized form. An efficient iterative algorithm for energy efficiency maximization is derived by Lagrangian dual decomposition. Finally, simulation results illustrate that the proposed algorithm converges to the optimal solution within a small number of iterations, which shows the achievable maximum energy efficiency in the SWIPT system for two receiver modes. Moreover, the tradeoffs between EE and SE, energy-throughput efficiency and outage target rate are observed from a green communication perspective. Our research results reflect the effects of the minimum harvesting energy requirement, minimum QoS, power splitting ratio, time switching slot and transmit power on the energy efficiency of SWIPT system. These results means that it is helpful for energy efficient transceiver design with SWIPT by optimally adjusting the system parameters in practical application. Our main contribution is to optimize the design of a smart terminal with SWIPT from an energy efficiency perspective.
From a green communication perspective, we can observe two research paradigm shifts: one is from energy saving to energy complement, and the other is from spectral efficiency to energy efficiency. Our work on the energy efficiency maximization for transceiver design of SWIPT system combines the two new research trends, i.e., energy harvesting and energy efficiency. Thus, our research work promotes a deeper understanding on SWIPT system transceiver design from a green communication perspective. Our future research can extend to the energy efficient smart terminal design with SWIPT in a massive MIMO system.