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Trust aware routing using sunflower sine cosine-based stacked autoencoder approach for EEG signal classification in WSN

机译:信任使用向日葵正弦余弦类堆叠的AutoEncoder方法的信任路由,用于WSN中的EEG信号分类

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摘要

Trust-aware routing is the significant direction for designing the secure routing protocol in Wireless Sensor Network (WSN). However, the trust-aware routing mechanism is implemented to evaluate the trustworthiness of the neighboring nodes based on the set of trust factors. Various trust-aware routing protocols are developed to route the data with minimum delay, but detecting the route with good quality poses a challenging issue in the research community. Therefore, an effective method named Sunflower Sine Cosine (SFSC)-based stacked autoencoder is designed to perform Electroencephalogram (EEG) signal classification using trust-aware routing in WSN. Moreover, the proposed SFSC algorithm incorporates Sunflower Optimization (SFO) and Sine Cosine Algorithm (SCA) that reveals an optimal solution, which is the optimal route used to transmit the EEG signal. Initially, the trust factors are computed from the nodes simulated in the network environment, and thereby, the trust-based routing is performed to achieve EEG signal classification. The proposed SFSC-based stacked autoencoder attained better performance by selecting the optimal path based on the fitness parameters, like energy, trust, and distance. The performance of the proposed approach is analyzed using the metrics, such as sensitivity, accuracy, and specificity. The proposed approach acquires 94.708%, 94.431%, and 95.780% sensitivity, accuracy, and specificity, respectively, with 150 nodes.
机译:信任感知路由是在无线传感器网络(WSN)中设计安全路由协议的重要方向。然而,实现信任感知的路由机制以基于信任因子集评估相邻节点的可信度。开发了各种信任感知路由协议以将数据路由最小延迟,但在研究界中检测到具有良好质量的路由在挑战性问题上提出了一个具有挑战性的问题。因此,基于WSN中的信任感知路由,设计了一种名为Dumflower Sine余弦(SFSC)的有效方法,用于执行脑电图(EEG)信号分类。此外,所提出的SFSC算法包含了向日葵优化(SFO)和正弦余弦算法(SCA),其揭示了最佳解决方案,这是用于传输EEG信号的最佳路径。最初,从网络环境中模拟的节点计算信任因子,从而执行基于信任的路由以实现EEG信号分类。所提出的基于SFSC的堆叠AutoEncoder通过基于健身参数选择最佳路径,如能量,信任和距离选择最佳路径。使用度量,例如灵敏度,准确性和特异性,分析所提出的方法的性能。拟议的方法分别获得94.708%,94.431%和95.780%的灵敏度,准确性和特异性,具有150个节点。

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