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首页> 外文期刊>International journal of business data communications and networking >Optimization Driven Deep Learning Approach for Health Monitoring and Risk Assessment in Wireless Body Sensor Networks
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Optimization Driven Deep Learning Approach for Health Monitoring and Risk Assessment in Wireless Body Sensor Networks

机译:优化驱动的深度学习方法,用于无线人体传感器网络中的健康监测和风险评估

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摘要

Wireless body sensor networks (WBSNs) plays a vital role in monitoring health conditions of patients and is a low-cost solution for dealing with several healthcare applications. Processing large amounts of data and making feasible decisions in emergency cases are the major challenges for WBSNs. Thus, this article addresses these challenges by designing a deep learning approach for health risk assessment by proposing a Fractional Cat-based Salp Swarm Algorithm (FCSSA). At first, the WBSN nodes are utilized for sensing data from patient health records to acquire certain parameters for making the assessment. Based on the obtained parameters, WBSN nodes transmit the data to the target node. Here, the hybrid Harmony Search Algorithm and Particle Swarm Optimization (hybrid HSA-PSO) is used for determining the optimal cluster head. Then, the results produced by the hybrid HSA-PSO are given to the target node, in which the Deep Belief Network (DBN) is used for classifying the health records for the health risk assessment. Here, the DBN is trained using the proposed FCSSA, which is developed by integrating a Fractional Cat Swarm Optimization (FCSO) and Salp Swarm Algorithm (SSA) for initiating the classification. The proposed FCSSA shows better performance using metrics, namely accuracy, energy and throughput with values 94.604, 0.145, and 0.058, respectively.
机译:无线人体传感器网络(WBSN)在监视患者的健康状况方面起着至关重要的作用,并且是用于处理多种医疗保健应用程序的低成本解决方案。 WBSN面临的主要挑战是处理大量数据并在紧急情况下做出可行的决策。因此,本文通过提出一种基于分数级基于Cat的Salp Swarm算法(FCSSA),设计了一种用于健康风险评估的深度学习方法,从而解决了这些挑战。首先,WBSN节点用于从患者健康记录中感测数据,以获取某些参数以进行评估。基于获得的参数,WBSN节点将数据发送到目标节点。在这里,混合和声搜索算法和粒子群优化算法(混合HSA-PSO)用于确定最佳簇头。然后,将混合HSA-PSO产生的结果提供给目标节点,在该目标节点中,深度信仰网络(DBN)用于对健康记录进行分类以进行健康风险评估。在这里,使用建议的FCSSA对DBN进行训练,该FCSSA是通过结合分数猫群优化(FCSO)和Salp Swarm算法(SSA)来启动分类而开发的。所提出的FCSSA使用度量(即准确度,能量和吞吐量)分别具有94.604、0.145和0.058的值显示出更好的性能。

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