Pattern analysis in real time with smart power sensor

B. Kim, C. Lynn, Neil Kunst, Tom Dudgeon
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引用次数: 6

Abstract

The current state of the art in electronic prognostic health management systems does not fully support detection, collection, and remediation of real-time faults. As a result, knowledge has not been captured from an actual platform failure mechanism. Thus, point-of-failure feedback cannot be applied by system designers or operators to improve lifecycle weak links in replacement platforms, or to strengthen effectiveness of mission-critical platforms. Our innovation makes it possible to extract and analyze the power system's eigenvalues, which are related to the intrinsic frequencies of the power system that determine correlations between extracted features and state of health (SoH). In-situ electronic prognostics for power systems are crucial for attaining a sound theoretical basis of health status. To provide correlation information such as state of health (SOH) using pattern analysis with real-time data from a non-intrusive smart power sensor, Ridgetop researched using data-driven modeling with a proposed health distance and Support Vector Machines (SVMs) with signatures in a standard IEEE 1451-enabled smart power sensor. Results of this study indicate that a fault pattern analysis methodology overcomes certain disadvantages of the standard failure modes and effects analysis (FMEA) approach, which does not account for the contribution of unobserved failure to a degradation trajectory. The efficacy of the proposed pattern analysis approach is illustrated with test results showing critical distinction in pattern analysis and test data acquired from a real-time IEEE 1451-enabled smart power sensor testbed, and monitored via a testbed with appropriate instrumentation. 1 2
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利用智能功率传感器进行实时模式分析
电子预后健康管理系统目前的技术水平并不能完全支持实时故障的检测、收集和修复。因此,没有从实际的平台故障机制中获取知识。因此,故障点反馈不能被系统设计者或操作人员用于改进替换平台的生命周期薄弱环节,也不能用于增强关键任务平台的有效性。我们的创新使提取和分析电力系统的特征值成为可能,这些特征值与电力系统的固有频率有关,这些固有频率决定了提取的特征与健康状态(SoH)之间的相关性。电力系统的现场电子预测对于获得良好的健康状态理论基础至关重要。为了利用模式分析和非侵入式智能功率传感器的实时数据提供健康状态(SOH)等相关信息,Ridgetop研究了使用数据驱动建模,提出了健康距离和支持向量机(svm),并在标准的IEEE 1451智能功率传感器中启用了签名。本研究结果表明,故障模式分析方法克服了标准失效模式和影响分析(FMEA)方法的某些缺点,即不能考虑未观察到的故障对退化轨迹的贡献。本文提出的模式分析方法的有效性通过测试结果证明了模式分析和测试数据的关键区别,这些数据来自实时启用IEEE 1451的智能功率传感器测试平台,并通过带有适当仪器的测试平台进行监控。1 2
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