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基于贝叶斯神经网络模型的站台门故障识别技术研究

Fault identification technology of platform door based on Bayesian neural network model

  • 摘要: 针对城市轨道交通站台门系统面临的维护效率低下、运行数据缺失、严重依赖运营维护(简称:运维)人员技术水平等问题,提出一种基于贝叶斯神经网络模型的站台门故障识别方法。通过多维数据的采集和预处理,并采用Adam优化器对该模型进行训练和优化,在站台门运行状态实时监控的基础上,实现关键部件故障识别和智能运维。通过详细的测试与验证,结果表明,该模型在站台门故障模式识别方面具有优越的性能,可减少站台门系统平均维护时间,提升其可用性和可靠性,为城市轨道交通的安全运营提供强有力的支撑。

     

    Abstract: This paper proposed a fault identification method of platform door based on Bayesian neural network model to address the problems faced by the platform door system of urban rail transit, such as low maintenance efficiency, missing operation data, and heavy reliance on the technical level of operation and maintenance personnel. The paper collected and preprocesses multidimensional data, and used Adam optimizer to train and optimize the model. Based on real-time monitoring of platform door operation status, it implemented key component fault identification and intelligent operation and maintenance. Through detailed testing and verification, the results show that the model has superior performance in platform door fault mode recognition, can reduce the average maintenance time of the platform door system, improve its availability and reliability, and provide strong support for the safe operation of urban rail transit.

     

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