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ANOMALY AND MODE INFERENCE FROM TIME SERIES DATA

机译:时间序列数据的异常和模式推断

摘要

Methods, systems, and computer program products for anomaly and mode inference from time series data are provided herein. A computer-implemented method includes receiving time-series sensor data for each one of a group of devices; extracting a set of states for each device in the group from the time-series sensor data; constructing a state-transition graph for each of the devices, wherein each of the state-transition graphs comprises nodes corresponding to each state in the set and edges corresponding to a probability of transition between the extracted states over time; identifying, for each set, a given state as one of: a mode, a normal state and an anomalous state based on the state-transition graph; and detecting one or more anomalous devices in the group by computing similarities between different devices in the group, based at least in part on the determined state-transition graphs.
机译:本文提供了用于根据时间序列数据进行异常和模式推断的方法,系统和计算机程序产品。一种计算机实现的方法,包括:接收一组设备中的每个设备的时间序列传感器数据;从时间序列传感器数据中为组中的每个设备提取一组状态;为每个设备构造一个状态转换图,其中每个状态转换图包括对应于集合中每个状态的节点和对应于所提取的状态随时间变化的概率的边缘;对于每个集合,基于状态转变图将给定状态标识为以下之一:模式,正常状态和异常状态;以及至少部分地基于所确定的状态转变图,通过计算组中不同设备之间的相似度来检测组中的一个或多个异常设备。

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