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Machine Learning Algorithms and Fault Detection for Improved Belief Function Based Decision Fusion in Wireless Sensor Networks

机译:改进的基于信念函数的决策融合的机器学习算法和故障检测

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摘要

Decision fusion is used to fuse classification results and improve the classification accuracy in order to reduce the consumption of energy and bandwidth demand for data transmission. The decentralized classification fusion problem was the reason to use the belief function-based decision fusion approach in Wireless Sensor Networks (WSNs). With the consideration of improving the belief function fusion approach, we have proposed four classification techniques, namely Enhanced K-Nearest Neighbor (EKNN), Enhanced Extreme Learning Machine (EELM), Enhanced Support Vector Machine (ESVM), and Enhanced Recurrent Extreme Learning Machine (ERELM). In addition, WSNs are prone to errors and faults because of their different software, hardware failures, and their deployment in diverse fields. Because of these challenges, efficient fault detection methods must be used to detect faults in a WSN in a timely manner. We have induced four types of faults: offset fault, gain fault, stuck-at fault, and out of bounds fault, and used enhanced classification methods to solve the sensor failure issues. Experimental results show that ERELM gave the first best result for the improvement of the belief function fusion approach. The other three proposed techniques ESVM, EELM, and EKNN provided the second, third, and fourth best results, respectively. The proposed enhanced classifiers are used for fault detection and are evaluated using three performance metrics, i.e., Detection Accuracy (DA), True Positive Rate (TPR), and Error Rate (ER). Simulations show that the proposed methods outperform the existing techniques and give better results for the belief function and fault detection in WSNs.
机译:决策融合用于融合分类结果并提高分类精度,以减少能耗和数据传输带宽需求。分散的分类融合问题是在无线传感器网络(WSN)中使用基于信念函数的决策融合方法的原因。考虑到改进置信函数融合方法,我们提出了四种分类技术,即增强型K最近邻(EKNN),增强型极限学习机(EELM),增强型支持向量机(ESVM)和增强型递归极限学习机。 (ERELM)。另外,由于无线传感器网络的软件,硬件故障以及它们在不同领域中的部署,它们易于出错和出错。由于这些挑战,必须使用有效的故障检测方法来及时检测WSN中的故障。我们已经归纳出四种类型的故障:偏移故障,增益故障,卡在故障和越界故障,并使用了增强的分类方法来解决传感器故障问题。实验结果表明,ERELM在改进置信函数融合方法方面取得了最佳效果。提出的其他三种技术ESVM,EELM和EKNN分别提供了第二,第三和第四最佳结果。所提出的增强分类器用于故障检测,并使用三个性能指标进行评估,即检测准确度(DA),真正率(TPR)和错误率(ER)。仿真结果表明,所提出的方法优于现有技术,在无线传感器网络的置信函数和故障检测中具有较好的效果。

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