Visible to the public Prediction of Optimal Power Allocation for Enhancing Security-Reliability Tradeoff with the Application of Artificial Neural Networks

TitlePrediction of Optimal Power Allocation for Enhancing Security-Reliability Tradeoff with the Application of Artificial Neural Networks
Publication TypeConference Paper
Year of Publication2020
AuthorsWang, Xiaoyu, Gao, Yuanyuan, Zhang, Guangna, Guo, Mingxi
Conference Name2020 2nd International Conference on Advances in Computer Technology, Information Science and Communications (CTISC)
KeywordsArtificial neural networks, cyber physical systems, Manganese, Metrics, physical layer security, policy-based governance, power allocation weight, power system reliability, probability, pubcrawl, Relays, reliability, Resiliency, security, security-reliability tradeoff, Signal to noise ratio, threshold-selection relay
AbstractIn this paper, we propose a power allocation scheme in order to improve both secure and reliable performance in the wireless two-hop threshold-selection decode-and-forward (DF) relaying networks, which is so crucial to set a threshold value related the signal-to-noise ratio (SNR) of the source signal at relay nodes for perfect decoding. We adapt the maximal-ratio combining (MRC) receiving SNR from the direct and relaying paths both at the destination and at the eavesdropper. Particularly worth mentioning is that the closed expression form of outage probability and intercept probability is driven, which can quantify the security and reliability, respectively. We also make endeavors to utilize a metric to tradeoff the security and the reliability (SRT) and find out the relevance between them in the balanced case. But beyond that, in the pursuit of tradeoff performance, power allocation tends to depend on the threshold value. In other words, it provides a new method optimizing total power to the source and the relay by the threshold value. The results are obtained from analysis, confirmed by simulation, and predicted by artificial neural networks (ANNs), which is trained with back propagation (BP) algorithm, and thus the feasibility of the proposed method is verified.
DOI10.1109/CTISC49998.2020.00013
Citation Keywang_prediction_2020