Construction of online monitoring and fault diagnosis system for mechanical equipment based on BP neural network

Yulin He
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Abstract

In view of the problems of ambiguous symptoms of faults and data and overlapping fault features in the process of mechanical equipment fault diagnosis, this paper will take the deep learning model as the core, adopt the method of BP neural network and information fusion, and complete the construction and training of mechanical equipment fault diagnosis model with the help of class libraries such as Numpy and Matplotlib in Python environment, so as to form an intelligent module that can support the call of Web server. At the same time, this paper will also combine Django framework, use Pycharm tool to complete the development of Web server, improve the definition and deployment of functions and data interfaces, and generate a Web-based online monitoring and fault diagnosis system for mechanical equipment. The overall design of the system chooses B/S architecture, which supports users to remotely operate and visit the Web server to monitor the operation of mechanical equipment, and can classify the historical data of mechanical equipment with the characteristic values of fault frequency domain, and make corresponding predictions to realize the diagnosis of mechanical equipment faults. The construction of the system not only effectively improves the accuracy of mechanical equipment fault diagnosis, but also makes a beneficial attempt for the intelligent reform of the overall operation mode.
基于BP神经网络的机械设备在线监测与故障诊断系统的构建
针对机械设备故障诊断过程中存在故障症状与数据模糊、故障特征重叠等问题,本文将以深度学习模型为核心,采用BP神经网络和信息融合的方法,借助于Python环境下Numpy、Matplotlib等类库,完成机械设备故障诊断模型的构建和训练。从而形成一个能够支持Web服务器调用的智能模块。同时,本文还将结合Django框架,使用Pycharm工具完成Web服务器的开发,完善功能和数据接口的定义与部署,生成基于Web的机械设备在线监测与故障诊断系统。系统总体设计采用B/S架构,支持用户远程操作和访问Web服务器监控机械设备的运行情况,并能将机械设备的历史数据用故障频域特征值进行分类,并做出相应的预测,实现机械设备故障的诊断。该系统的构建不仅有效地提高了机械设备故障诊断的准确性,而且为整体运行模式的智能化改革做出了有益的尝试。
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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