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Complex System Diagnosis through Adaptive Recognition

机译:通过自适应识别复杂的系统诊断

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摘要

In this work, the applications of an approach that is based on establishment of class membership to diagnosis of complex system faults are reported. The adaptive recognition to achieve the classification is based on discovery of pattern features that make them distinct from objects belonging to different classes. In contrast to most systems for fault identification and diagnosis, which depend on heuristic rules, this approach does not resort to any heuristic rule. Consequently, it is more appropriate for diagnosis of faults in large and complex systems. To facilitate the evaluation of the ensuing scheme, results of diagnosis for a large power system, based on data provided by its protection simulator, are also reported. Those results clearly demonstrate that, after proper training, with minimal supervision, fast and successful diagnosis of all faults can be achieved.
机译:在这项工作中,报告了一种基于建立课程成员诊断复杂系统故障的方法的应用。实现分类的自适应识别基于对模式特征的发现,使它们与属于不同类别的对象不同。与大多数用于故障识别和诊断的系统相比,这取决于启发式规则,这种方法并不诉诸任何启发式规则。因此,更适合于大型和复杂系统中的故障诊断。为了便于评估随后的方案,还报告了基于其保护模拟器提供的数据的大型电力系统的诊断结果。这些结果清楚地证明,在适当的训练后,可以实现所有故障的最小监督,快速和成功的诊断。

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