APPLICATION OF ARTIFICIAL NEURON NETWORKS AND FUZZY LOGIC IN DIAGNOSTIC AND FORECASTING THE TECHNICAL CONDITION OF TRACTION MOTORS

Piretc Pub Date : 2023-08-25 DOI:10.36962/piretc27062023-233
Elshan Manafov, Farid Huseynov Elshan Manafov, Farid Huseynov
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Abstract

The article is devoted to the application of artificial intelligence in diagnosing and predicting the technical condition of electric motors. Currently, a number of traditional and modern methods are used to perform diagnostic monitoring of electric motors, and research is being conducted in this field. The application of traditional diagnostic monitoring systems in the diagnosis of motors faces problems in determining the normal and threshold values of the diagnostic parameters that cannot be measured in the working condition due to the lack of uncertain information. Various traditional methods are applied to partially overcome these problems and increase the effectiveness of diagnostic control in working conditions. The development of computer technology and its application in technology paved the way for the creation of more modern diagnostic monitoring systems. Modern diagnostic monitoring methods based on Soft Computing play an important role in optimizing the working condition of motors and increasing their stability. As a result of the research, it was found that the application of artificial neural networks and fuzzy logic-based diagnostic systems, which are pioneers of these methods, together with traditional methods in monitoring the technical condition of motors, will lead to the creation of new hybrid and complex systems. Keywords: Traction motor, fuzzy logic, neural networks, diagnostic monitoring.
人工神经元网络与模糊逻辑在牵引电机技术状态诊断与预测中的应用
本文研究了人工智能在电动机技术状态诊断和预测中的应用。目前,许多传统的和现代的方法被用来对电动机进行诊断监测,这一领域的研究正在进行中。传统的诊断监测系统在电机诊断中的应用面临着诊断参数的正常值和阈值的确定问题,由于缺乏不确定性信息,这些诊断参数在工作状态下无法测量。应用各种传统方法部分克服了这些问题,提高了工况诊断控制的有效性。计算机技术的发展及其在技术上的应用为建立更现代的诊断监测系统铺平了道路。基于软计算的现代诊断监测方法在优化电机工作状态、提高电机稳定性方面发挥着重要作用。研究结果表明,作为这些方法的先驱,人工神经网络和基于模糊逻辑的诊断系统的应用,与传统的电机技术状态监测方法一起,将导致新的混合和复杂系统的创建。关键词:牵引电机,模糊逻辑,神经网络,诊断监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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