Performance Analysis of Wireless Communications with Nonlinear Energy Harvesting under Hardware Impairment and κ-μ Shadowed Fading
Abstract
:1. Introduction
- Our work proposes WCwEH in Figure 1, wherein the power transmitter T employs an arbitrary quantity of antennas for ameliorating energy-harvesting efficiency, ultimately ameliorating communications reliability. To feature properly nonlinear circuit elements in energy harvesters, our work proposes the application of the extensively acknowledged NLEH paradigm in [18].
- To assess the reliability of the communication quickly, our work proposes the TP and the OP analyses for the recommended WCwEH under the consideration of EHNL, multi-antenna power transmitter, HWi, and divergent impairment degrees of shadowing, fading, and path loss in propagation conditions.
- Our work rate maximizes the reliability of communication in diverse realistic contexts. A plurality of results illustrates that EHNL, HWi, and propagation conditions drastically deteriorate system performance. Notwithstanding, EHNL influences the system performance more severely than HWi. In addition, the desired system performance is accomplished flexibly and possibly by choosing a cluster of specifications. Remarkably, the proposed transmission scheme obtains the optimal performance with the appropriate selection of the time-splitting factor.
2. Wireless Communications with Energy Harvesting
2.1. System Model
2.2. Channel Model
2.3. Signal Model
3. Performance Analysis of WCwEH
3.1. Exact Analysis
3.2. Asymptotic Analysis
3.3. Throughput
4. Extreme Scenarios
4.1. Hardware Perfection and Nonlinear Energy Harvesting (HWpNLEH)
4.2. Hardware Impairment and Linear Energy Harvesting (HWiLEH)
4.3. Hardware Perfection and Linear Energy Harvesting (HWpLEH)
4.4. Hardware Impairment and Nonlinear Energy Harvesting with (HWiNLEHw1)
5. Illustrative Results
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Notation | Interpretation |
---|---|
complex Gaussian random variable with mean 0 and variance c | |
Incomplete upper Gamma function | |
Binomial coefficient | |
complementary cumulative distribution function (CCDF) of N | |
Moment Generating Function (MGF) of N | |
cumulative distribution function (CDF) of N | |
Probability operator | |
Expectation operator | |
Complete Gamma function | |
Modified Bessel function [30] | |
probability density function (PDF) of N |
Parameter | Value |
---|---|
Location of T | m |
Location of S | m |
Location of D | m |
Noise power | dBm |
Path loss exponent | |
Fading power at the reference distance of 1 m | |
Shadowed fading parameters | (3, 4, 2) |
HWi | |
Power saturation threshold | dBm |
Energy conversion efficiency | |
Time-splitting factor | |
Transmit power of each antenna of T | dBW |
Target transmission rate | bps/Hz |
Quantity of antennas at T |
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Le-Thanh, T.; Ho-Van, K. Performance Analysis of Wireless Communications with Nonlinear Energy Harvesting under Hardware Impairment and κ-μ Shadowed Fading. Sensors 2023, 23, 3619. https://doi.org/10.3390/s23073619
Le-Thanh T, Ho-Van K. Performance Analysis of Wireless Communications with Nonlinear Energy Harvesting under Hardware Impairment and κ-μ Shadowed Fading. Sensors. 2023; 23(7):3619. https://doi.org/10.3390/s23073619
Chicago/Turabian StyleLe-Thanh, Toi, and Khuong Ho-Van. 2023. "Performance Analysis of Wireless Communications with Nonlinear Energy Harvesting under Hardware Impairment and κ-μ Shadowed Fading" Sensors 23, no. 7: 3619. https://doi.org/10.3390/s23073619
APA StyleLe-Thanh, T., & Ho-Van, K. (2023). Performance Analysis of Wireless Communications with Nonlinear Energy Harvesting under Hardware Impairment and κ-μ Shadowed Fading. Sensors, 23(7), 3619. https://doi.org/10.3390/s23073619