基于改进多目标遗传算法(IMOGA)的物联网医疗创新最优路径选择模型

Jeejo K P, Bobby Mathews C
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摘要

医疗保健是使用最广泛的物联网应用之一,旨在通过连续数周全天监测患者的生命体征来减少住院治疗的需求。医疗保健系统中部署了许多传感器,包括重要和非结构化消息传感器以及环境监测传感器,以收集患者信息并降低患者成本。传输通道上的几个问题可能导致集成到医疗设备中的传感器收集的数据丢失。本文采用改进的多目标遗传算法(IMOGA)技术,为物联网医疗保健识别近最优路径,并建立一个前沿的最优路径选择模型。由于各种原因,集成到医疗设备中的传感器传输的数据可能会丢失。因此,在物联网网络中创建安全的通信方法对医疗保健行业至关重要。因此,在考虑能量、距离和延迟的情况下,选择医疗数据的最佳路径。然后对所采用作品的性能进行对比。根据实验结果,能量、距离和延迟分别提高了14%、2%和5.6%。
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Development of an Innovative Optimal Route Selection Model Based on an Improved Multi-Objective Genetic Algorithm (IMOGA) Method in IoT Healthcare
One of the most widely used IoT applications, healthcare aims to reduce the need for hospitalisation by monitoring patients' vital signs throughout the day for several weeks. Many sensors, including as vital and unstructured message sensors as well as environmental monitoring sensors, are deployed in healthcare systems to collect patient information and lower costs for the patients. Several issues along the transmission channel could result in the loss of data gathered by sensors integrated into medical equipment. In order to identify nearly optimal routes and create a cutting-edge optimal route selection model for IoT healthcare, this article employs the Improved Multi-Objective Genetic Algorithm (IMOGA) technique. For a variety of causes, data transmitted by sensors integrated into medical equipment may be lost. As a result, creating a safe communication method in IoT networks is crucial for the healthcare industry. As a result, the best path for medical data is chosen while taking energy, distance, and delay into account. The performances of the adopted work are then contrasted. According on experimental findings, Energy, distance, and delay have all been improved by the suggested strategy by 14%, 2%, and 5.6%, respectively.
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