发明名称 Method for detecting anomalies in multivariate time series data
摘要 A method detects anomalies in time series data, wherein the time series data is multivariate, by partitioning time series training data into partitions. A representation for each partition in each time window is determined to form a model of the time series training data, wherein the model includes representations of distributions of the time series training data. The representations obtained from partitions of time series test data are compared to the model to obtain anomaly scores.
申请公布号 US9075713(B2) 申请公布日期 2015.07.07
申请号 US201213480215 申请日期 2012.05.24
申请人 Mitsubishi Electric Research Laboratories, Inc. 发明人 Jones Michael Jeffrey;Nikovski Daniel Nikolaev
分类号 G06F11/07;G06K9/62;G06N99/00;G05B23/02 主分类号 G06F11/07
代理机构 代理人 Brinkman Dirk;Vinokur Gene
主权项 1. A method for detecting anomalies in time series data, wherein the time series data is multivariate, comprising the steps of: partitioning, based on time, time series training data into partitions, wherein each partition is treated as a separate and independent multivariate time series, and processing each partition using a sliding time window; determining a representation for each partition to form a model of the time series training data, wherein the model includes representations of distributions of the time series training data, wherein each distribution is a joint distribution over the time window of z(t), z(t+d) and an angle between the vectors (z(t), z(t+d)) and (z(t+d), z(t+2d)) for a single variable z(t) from the partition, where z is a variable of the partition and d is a delay; and comparing representations obtained from partitions of time series test data to the model to obtain anomaly scores, wherein the steps are performed in a processor.
地址 Cambridge MA US