Testing of Emerging Wireless Sensor Networks Using Radar Signals With Machine Learning Algorithms

Shitharth Selvarajan;Hariprasath Manoharan;Adil O. Khadidos;Alaa O. Khadidos
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Abstract

In this article, machine learning methods are used to assess how well wireless sensor networks transmit and receive radar signals. Measurements are done with labeled and unlabeled datasets where output functions are modified in relation to transmitted input in order to test the transceiver of radar signals. The main contribution in the proposed method is to focus on the possibility of choosing a free space model that transmits the radar signals in wireless sensor networks without any interruptions. Hence, for such type of transmissions, reference time period is selected in order to perform radar signal classification, and at the same time, separation of unnecessary interruptions is reduced using clustering procedures. Since the radar signals can be monitored with automatic transmission techniques, the outcomes are combined with supervised, unsupervised, and reinforcement learning models to increase the effect of transmissions. Therefore, the objective functions are designed with three scenarios where reinforcement learning proves to provide adequate connections for radar signals to all wireless sensor networks at reduced error of 0.3%. In addition, with reinforcement learning, the distance of radar signal transmission is maximized to a level greater than 75% at minimized noise ratio of 0.8%.
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用机器学习算法测试使用雷达信号的新兴无线传感器网络
本文采用机器学习方法来评估无线传感器网络发射和接收雷达信号的能力。测量使用了有标记和无标记的数据集,其中输出函数根据传输输入进行了修改,以测试雷达信号的收发情况。所提方法的主要贡献在于关注选择自由空间模型的可能性,该模型可在无线传感器网络中不间断地传输雷达信号。因此,对于这种类型的传输,可以选择参考时间段来执行雷达信号分类,同时利用聚类程序减少不必要的中断分离。由于雷达信号可通过自动传输技术进行监测,因此将监测结果与监督、非监督和强化学习模型相结合,以提高传输效果。因此,目标函数设计了三种情况,其中强化学习证明可将雷达信号充分连接到所有无线传感器网络,并将误差降低到 0.3%。此外,通过强化学习,雷达信号传输距离最大化,大于 75%,噪声比最小化,为 0.8%。
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