首页> 外文会议>International Symposium on Neural Networks(ISNN 2006) pt.3; 20060528-0601; Chengdu(CN) >Growing Structure Multiple Model System Based Anomaly Detection for Crankshaft Monitoring
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Growing Structure Multiple Model System Based Anomaly Detection for Crankshaft Monitoring

机译:基于生长结构多模型系统的曲轴监测异常检测

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While conventional approaches to diagnostics focus on detecting and identifying situations or behaviors which have previously been known to occur or can be anticipated, anomaly detection focuses on detecting and quantifying deviations away from learned "normal" behavior. A new anomaly detection scheme based on Growing Structure Multiple Model System(GSMMS) is utilized in this paper to detect and quantify the effects of slowly evolving anomalies on the crankshaft dynamics in a internal combustion engine. The Voronoi sets defined by the reference vectors of the growing Self-Organizing Networks(SONs), on which the GSMMS is based, naturally form a partition of the system operation space. Regionalization of system operation space using SONs makes it possible to model the system dynamics locally using simple models. In addition, the residual errors can be analyzed locally to accommodate unequally distributed residual errors in different regions.
机译:尽管常规的诊断方法侧重于检测和识别先前已知已经发生或可以预期的情况或行为,但是异常检测侧重于检测和量化偏离学习的“正常”行为的偏差。本文采用一种新的基于增长结构多模型系统(GSMMS)的异常检测方案来检测和量化缓慢发展的异常对内燃机曲轴动力学的影响。由不断增长的自组织网络(SON)的参考向量所定义的Voronoi集自然形成了系统操作空间的一部分,而GSMMS正是基于这些参考向量的。使用SON对系统操作空间进行区域划分可以使用简单的模型在本地对系统动力学进行建模。另外,可以局部分析残余误差,以适应不同区域中分布不均的残余误差。

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