A technique to aggregate classes of analog fault diagnostic data based on association rule mining

Ruslan Dautov, S. Mosin
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引用次数: 4

Abstract

Analog circuits are widely used in different fields such as medicine, military, aviation and are critical for the development of reliable electronic systems. Testing and diagnosis are important tasks which detect and localize defects in the circuit under test as well as improve quality of the final product. Output responses of fault-free and faulty behavior of analog circuit can be represented by infinite set of values due to tolerances of internal components. The data mining methods may improve quality of fault diagnosis in the case of big data processing. The technique of aggregation the classes of fault diagnostic responses, based on association rule mining, is proposed. The technique corresponds to the simulation before test concept: a fault dictionary is generated by collecting the coefficients of wavelet transformation for fault-free and faulty conditions as the preprocessing of output signals. Classificator is based on k-nearest neighbors method (k-NN) and association rule mining algorithm. The fault diagnostic technique was trained and tested using data obtained after simulation of fault-free and faulty behavior of the analog filter. In result the accuracy in classifying faulty conditions and fault coverage have consisted of more than 99,09% and more than 99,08% correspondingly. The proposed technique is completely automated and can be extended.
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基于关联规则挖掘的模拟故障诊断数据分类聚合技术
模拟电路广泛应用于医学、军事、航空等不同领域,对开发可靠的电子系统至关重要。测试和诊断是检测和定位被测电路缺陷,提高最终产品质量的重要任务。模拟电路的无故障和故障行为的输出响应由于内部元件的容差可以用无限的值集来表示。在大数据处理的情况下,数据挖掘方法可以提高故障诊断的质量。提出了一种基于关联规则挖掘的故障诊断响应分类聚合技术。该技术对应于测试前仿真的概念:通过采集无故障和故障情况下的小波变换系数,生成故障字典作为输出信号的预处理。分类器基于k近邻方法(k-NN)和关联规则挖掘算法。利用模拟滤波器的无故障和故障行为仿真得到的数据对故障诊断技术进行了训练和测试。结果表明,该方法对故障状态和故障覆盖率的分类准确率分别大于99.9%和99.8%。所提出的技术是完全自动化的,并且可以扩展。
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