Clustered IoT Based Data Fusion model for Smart Healthcare Systems

A. Abdelaziz, A. N. Mahmoud
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引用次数: 1

Abstract

Futuristic sustainable computing solutions in e-healthcare applications were depends on the Internet of Things (IoT) and cloud computing (CC), has provided several features and realistic services. IoT-related medical devices gather the necessary data like recurrent transmissions in health limitations and upgrade the exactness of health limitations all inside a standard period. These data can be generated from different types of sensors in different formats. As a result, the data fusion is a big challenge to handle these IoT-based data. Moreover, IoT gadgets and medical parameters based on sensor readings are deployed for detecting diseases at the correct time beforehand attaining the rigorous state. Machine learning (ML) methods play a very significant task in determining decisions and managing a large volume of data. This manuscript offers a new Hyperparameter Tuned Deep learning Enabled Clustered IoT Based Smart Healthcare System (HPTDLEC-SHS) model. The presented HPTDLEC-SHS technique mainly focuses on the clustering of IoT devices using weighted clustering scheme and enables disease diagnosis process. At the beginning level, the HPTDLEC-SHS technique exploits min-max data normalization technique to convert the input data into compatible format. Besides, the gated recurrent unit (GRU) model is utilized to carry out the classification process. Finally, Jaya optimization algorithm (JOA) is exploited to fine tune the hyperparameters related to the GRU model. To demonstrate the enhanced performance of the HPTDLEC-SHS technique, an extensive comparative outcome highlighted its supremacy over other models.
基于集群物联网的智能医疗系统数据融合模型
电子医疗应用中的未来可持续计算解决方案依赖于物联网(IoT)和云计算(CC),提供了一些功能和实际服务。与物联网相关的医疗设备在一个标准周期内收集健康限制的重复传输等必要数据,并提升健康限制的准确性。这些数据可以由不同类型的传感器以不同的格式生成。因此,数据融合是处理这些基于物联网的数据的一大挑战。此外,部署基于传感器读数的物联网设备和医疗参数,以便在正确的时间提前检测疾病,从而达到严格的状态。机器学习(ML)方法在决定决策和管理大量数据方面发挥着非常重要的作用。本文提供了一种新的基于超参数调优深度学习的集群物联网智能医疗系统(hptdlece - shs)模型。提出的hptdlece - shs技术主要关注物联网设备的加权聚类方案,实现疾病诊断过程。在初始级,hptdlece - shs技术利用最小-最大数据规范化技术将输入数据转换为兼容格式。此外,采用门控循环单元(GRU)模型进行分类处理。最后,利用Jaya优化算法(JOA)对与GRU模型相关的超参数进行微调。为了证明hptdlecc - shs技术的增强性能,广泛的比较结果突出了其优于其他模型的优势。
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CiteScore
1.70
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