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Automatic asset anomaly detection in a multi-sensor network

机译:多传感器网络中的自动资产异常检测

摘要

Embodiments determine anomalies in sensor data generated by a plurality of sensors that correspond to a single asset. Embodiments receive a first time window of clean sensor input data generated by the sensors, the clean sensor data including anomaly free data comprised of clean data points. Embodiments divide the clean data points into training data points and evaluation data points, and divide the training data points into a pre-defined number of plurality of segments of equal length. Embodiments convert each of the plurality of segments into corresponding segment curves using Kernel Density Estimation (“KDE”) and determine a Jensen-Shannon (“JS”) divergence value for each of the plurality of segments using the segment curves to generate a plurality of JS divergence values. Embodiments then assign the maximum value of the plurality of JS divergence values as a threshold value and validate the threshold value using the evaluation data points.
机译:实施例确定由对应于单个资产的多个传感器生成的传感器数据中的异常。 实施例接收由传感器生成的清洁传感器输入数据的第一次窗口,包括由干净数据点组成的异常自由数据的清洁传感器数据。 实施例将清洁数据点划分为训练数据点和评估数据点,并将训练数据点划分为相等长度的预定数量的多个段。 实施例使用核浓度估计(“kde”)将多个段中的每一个转换为相应的段曲线,并使用段曲线生成多个段中的每一个的jensen-shannon(“js”)发散值以产生多个段 JS分歧值。 实施例然后将多个JS发散值的最大值作为阈值分配,并使用评估数据点验证阈值。

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