基于BP神经网络的通信故障诊断算法

Shuying Shao
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引用次数: 0

摘要

随着信息技术的发展,我们从古代的飞鸽传输、信标传输,发展到民国的有线电报、无线电波,再到三大通信网络运营商的5G时代。通信设施的发展无疑给我们的交流带来了极大的便利。然而,由于通信设备在高清军事领域的应用和在日常生活中的频繁使用,其结构的复杂性、设备的多样化、大规模业务的发展给诊断带来了很多麻烦。因此,及时诊断和修复通信故障是一项重要的任务。基于此,本文从BP神经网络(BNN)入手,研究了通信故障诊断算法。本文主要采用实验分析法、个人访谈法、问卷调查法以及定性和定量分析方法,对基于BNN的通信故障诊断算法进行了研究。实验研究结果表明,基于神经网络的通信故障诊断能够有效、快速地处理通信故障,提高了故障处理效率。根据问卷调查,62%的人支持使用BP算法进行故障诊断,32%的人认为该算法需要改进。一般来说,通信故障的诊断必须利用现代技术对数据进行处理和分析,然后确定故障的原因,从而提供解决方案或智能地解决问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Communication Fault Diagnosis Algorithm Based on BP Neural Network
With the development of information technology, we have developed from the ancient flying pigeon transmission and the beacon transmission to the wired telegraph and radio wave in the Republic of China to the 5G era of the three major communication network operators. The development of communication facilities has undoubtedly brought great convenience to our communication. However, due to the application of communication equipment in the high-definition military field and the frequent use in daily life, the complexity of its structure, the diversification of equipment, and the development of large-scale services have caused a lot of troubles for diagnosis. Therefore, the timely diagnosis and repair of communication failures is an important task. Based on this, this article starts from the BP neural network(BNN) and studies the communication fault diagnosis algorithm. This article mainly uses experimental analysis method, personal interview method, questionnaire survey method and qualitative and quantitative analysis method to study the communication fault diagnosis algorithm based on BNN. The experimental research results show that the communication fault diagnosis based on BNN can deal with it effectively and quickly, and speed up the efficiency of fault handling. According to the questionnaire survey, 62% of people support the use of the BP algorithm for fault diagnosis, and 32% believe that the algorithm needs to be improved. Generally speaking, the diagnosis of communication failures must use modern technology for data processing and analysis, and then determine the cause of the failure, so as to provide solutions or intelligently solve the problem.
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