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Sensors Anomaly Detection of Industrial Internet of Things Based on Isolated Forest Algorithm and Data Compression

机译:基于孤立的森林算法和数据压缩的传感器异常检测工业互联网

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Aiming at solving network delay caused by large chunks of data in industrial Internet of Things, a data compression algorithm based on edge computing is creatively put forward in this paper. The data collected by sensors need to be handled in advance and are then processed by different single packet quantity K and error threshold e for multiple groups of comparative experiments, which greatly reduces the amount of data transmission under the premise of ensuring the instantaneity and effectiveness of data. On the basis of compression processing, an outlier detection algorithm based on isolated forest is proposed, which can accurately identify the anomaly caused by gradual change and sudden change and control and adjust the action of equipment, in order to meet the control requirement. As is shown by experimental simulation, the isolated forest algorithm based on partition outperforms box graph and K-means clustering algorithm based on distance in anomaly detection, which verifies the feasibility and advantages of the former in data compression and detection accuracy.
机译:旨在解决由事物的工业互联网中的大量数据引起的网络延迟,本文创造性地提出了一种基于边缘计算的数据压缩算法。由传感器收集的数据需要预先处理,然后通过不同的单个分组量k和误差阈值E处理,用于多组比较实验,这大大减少了确保瞬时和有效性的前提下的数据传输量数据。在压缩处理的基础上,提出了一种基于孤立森林的异常检测算法,可以准确地识别逐渐变化和突然变化和控制和调整设备动作引起的异常,以满足控制要求。如实验模拟所示,基于分区的分离的森林算法优于基于异常检测的距离的箱图和k均值聚类算法,其验证了前者的数据压缩和检测精度的可行性和优点。

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