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Data set preprocessing methods for the artificial intelligence-based diagnostic module

机译:基于人工智能的诊断模块的数据集预处理方法

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The paper presents the application of statistical (econometrics-originated) methods to process learning and testing data sets used by the artificial intelligence (AI) methods in the diagnostics of analog systems. Before the training and evaluation of the intelligent module is performed, the measurement data are analysed to minimize the number of attributes (symptoms) required to distinguish between different states of the System Under Test (SUT). This way the knowledge extracted from the set is simplified, increasing the operation speed and minimizing the threat of overlearning. Also, elimination of unnecessary symptoms from the set allows for decreasing the set of test points where measurements are taken (which is economically desirable). Preprocessing operations include elimination of constant or quasi-stationary symptoms and finding their minimal set, allowing for the efficient fault detection or parameter identification. The paper focuses on the Hellwig and Multiple Correlation Coefficient methods adjusted to the technical diagnostics applications. They are implemented to optimize data sets obtained from simulation of the fifth order lowpass filter. Their usefulness is tested using the artificial neural network (ANN) and Rough Sets (RS) classifiers responsible for detection, and identification of parametric faults.
机译:本文介绍了统计(起源于计量经济学)方法在处理学习和测试人工智能(AI)方法在模拟系统诊断中使用的数据集的应用。在执行智能模块的训练和评估之前,分析测量数据以最小化区分被测系统(SUT)的不同状态所需的属性(症状)数量。这样简化了从集合中提取的知识,从而提高了运算速度并最大程度地减少了过度学习的威胁。而且,从该组中消除不必要的症状允许减​​少进行测量的测试点的组(这在经济上是合乎需要的)。预处理操作包括消除恒定或准平稳的症状并找到它们的最小集合,从而实现有效的故障检测或参数识别。本文重点介绍了针对技术诊断应用调整的Hellwig和多重相关系数方法。实现它们是为了优化从五阶低通滤波器的仿真获得的数据集。使用人工神经网络(ANN)和粗糙集(RS)分类器对参数故障进行检测和识别,以测试其有效性。

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