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A Real-Time Detection Method for Abnormal Data of Internet of Things Sensors Based on Mobile Edge Computing

机译:基于移动边缘计算的事物传感器异常数据的实时检测方法

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Aiming at the anomaly detection problem in sensor data, traditional algorithms usually only focus on the continuity of single-source data and ignore the spatiotemporal correlation between multisource data, which reduces detection accuracy to a certain extent. Besides, due to the rapid growth of sensor data, centralized cloud computing platforms cannot meet the real-time detection needs of large-scale abnormal data. In order to solve this problem, a real-time detection method for abnormal data of IoT sensors based on edge computing is proposed. Firstly, sensor data is represented as time series; K-nearest neighbor (KNN) algorithm is further used to detect outliers and isolated groups of the data stream in time series. Secondly, an improved DBSCAN (Density Based Spatial Clustering of Applications with Noise) algorithm is proposed by considering spatiotemporal correlation between multisource data. It can be set according to sample characteristics in the window and overcomes the slow convergence problem using global parameters and large samples, then makes full use of data correlation to complete anomaly detection. Moreover, this paper proposes a distributed anomaly detection model for sensor data based on edge computing. It performs data processing on computing resources close to the data source as much as possible, which improves the overall efficiency of data processing. Finally, simulation results show that the proposed method has higher computational efficiency and detection accuracy than traditional methods and has certain feasibility.
机译:针对在传感器数据的异常检测的问题,传统的算法通常仅集中在单源数据的连续性,并忽略多源数据之间的时空相关,这减少了检测精度在一定程度上。此外,由于传感器数据的快速增长,集中式云计算平台不能满足大规模异常数据的实时检测需求。为了解决这个问题,对于基于边缘计算的IoT传感器的异常的数据的实时检测方法,提出了首先,传感器数据被表示为时间序列; K近邻(KNN)算法被进一步用来检测在时间序列异常值和所述数据流的分离组。其次,一种改进的算法DBSCAN(密度基于空间的与噪声应用聚类)是通过考虑多源数据之间时空相关建议。它可以根据在窗口样本特征来设置和使用全局参数和大的样品克服了收敛速度慢的问题,那么充分利用数据相关性来完成异常检测。此外,本文提出了一种用于基于边缘计算传感器数据的异常分布检测模型。它执行在靠近数据源尽可能,提高数据处理的整体效率的计算资源的数据处理。最后,仿真结果表明,该方法比传统方法高计算效率和检测精度,具有一定的可行性。

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