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Data Driven Anomaly detection via Symbolic Identification of Complex Dynamical Systems

机译:通过复杂动态系统的符号识别数据驱动的异常检测

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Some of the critical and practical issues regarding the problem of health monitoring of multi-component human-engineered systems have been discussed, and a syntactic method has been proposed. The method involves abstraction of a qualitative description from a general dynamical system structure, using state space embedding of the output data-stream and discretization of the resultant pseudo state and input spaces. The system identification is achieved through grammatical inference techniques, and the deviation of the plant output from the nominal estimated language gives a measure of anomaly in the system. The technique is validated on an experimental test-bed of a permanent magnet synchronous motor undergoing a gradual degradation of the encoder orientation feedback.
机译:已经讨论了关于多组分人工工程系统健康监测问题的一些关键和实际问题,提出了一种句法方法。该方法涉及从一般动态系统结构中的定性描述抽象,使用状态空间嵌入输出数据流和所得伪状态和输入空间的离散化。通过语法推理技术实现系统识别,并且植物输出从标称估计语言的偏差给出了系统中异常的量度。该技术在经历逐渐降解的永磁体同步电动机的实验试验床上验证了编码器取向反馈的逐渐降低。

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