Application of the Machine Learning Tools in the Problem of Classifying Failures in the Work of the Complex Technical Systems

L. Demidova, M. Ivkina, D. Marchev
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引用次数: 4

Abstract

The problem of classifying equipment failures in the complex technical systems using the machine learning tools has been considered. The aim of the study is to develop the intelligent classifier which will allow to classify efficiently and quickly the probable class of error in the work of equipment of the complex technical systems in the context of proactive maintenance activities. The prospects of applying the random forest algorithm and the algorithms based on the artificial neural networks to solve the set problem have been analyzed. The intelligent classifiers based on the recurrent neural networks of the LSTM and GRU type have been developed. The training has been performed with the experimental dataset containing information about the work of aircraft engines and hosted by NASA Ames Research Center in the public domain. Based on the learning results, the most effective classifier has been highlighted, in addition, the recommendations on its further modification to improve the quality of classification have been made.
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机器学习工具在复杂技术系统工作故障分类中的应用
研究了利用机器学习工具对复杂技术系统中设备故障进行分类的问题。本研究的目的是开发智能分类器,使其能够在主动维护活动的背景下,有效、快速地对复杂技术系统设备工作中可能出现的错误进行分类。分析了随机森林算法和基于人工神经网络的算法在求解集合问题中的应用前景。基于LSTM和GRU型递归神经网络的智能分类器得到了发展。训练是在包含飞机发动机工作信息的实验数据集上进行的,该数据集由美国宇航局艾姆斯研究中心在公共领域托管。在学习结果的基础上,突出了最有效的分类器,并提出了进一步改进分类器以提高分类质量的建议。
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