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High concurrency massive data collection algorithm for IoMT applications

机译:IOMT应用的高并发大规模数据收集算法

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The symbiotic development of machine learning (ML) and artificial intelligence (AI) is amplifying the value of the Internet of Medical Things (IoMT). Doctors are able to reach actionable conclusions faster and more reliably when dealing with large volumes of streaming data from networked medical devices. However the Internet of Things (IoT) or sensor network has a large number of base stations transmitting data to the data center server, the data center server will face challenges in collecting, parsing, and processing data. Based on the existing technical solutions, when the number of wireless sensor network base stations is large, the data collection of the IoMT system will have a concurrent bottleneck, which will cause the data collection failure and have a catastrophic impact on the application of the IoMT. This paper proposes a highly concurrent and massive data collect algorithm for IoMT applications. This algorithm uses the principle of separation of reception and processing, distributed parallel processing and multi-threading technology, and combines the highly concurrent data transmission channel provided by TCP/IP to provide a set of independent data receiving components. This component receives the data of the IoT base station, and then simply processes the data and puts it into the distributed message system to complete the sensor data receiving function. It also provides a data processing cluster. Each node of the cluster starts multiple data processing unit, each data processing unit separately obtains sensor data from the distributed message system, processes the data, and delivers the processing results to the application. The experimental results show that the algorithm proposed in this paper has a high ability of parallel collection of IoMT data.
机译:机器学习(ML)和人工智能(AI)的共生开发正在扩大医学互联网(IOMT)的价值。当处理来自网络医疗设备的大量流数据时,医生能够更快地达到可行的结论。然而,物联网(IoT)或传感器网络具有大量基站将数据发送到数据中心服务器,数据中心服务器将面临收集,解析和处理数据的挑战。基于现有技术解决方案,当无线传感器网络基站的数量大时,IOMT系统的数据收集将具有并发瓶颈,这将导致数据收集失败并对IOMT的应用具有灾难性的影响。本文提出了一种高度同时和大规模的数据收集算法,用于IOMT应用。该算法使用接收和处理分离的原理,分布式并行处理和多线程技术,并结合TCP / IP提供的高度并发数据传输信道,以提供一组独立的数据接收组件。该组件接收IOT基站的数据,然后简单地处理数据并将其放入分布式消息系统以完成传感器数据接收功能。它还提供数据处理群集。群集的每个节点开始多个数据处理单元,每个数据处理单元分别从分布式消息系统获得传感器数据,处理数据,并将处理结果传递给应用程序。实验结果表明,本文提出的算法具有高能力的IOMT数据集合。

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