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Fault Diagnosis Method of the Construction Machinery Hydraulic System Based on Artificial Intelligence Dynamic Monitoring

机译:基于人工智能动态监测的工程机械液压系统故障诊断方法

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This paper aims to study the fault diagnosis method of the mechanical hydraulic system based on artificial intelligence dynamic monitoring. According to the characteristics of functional principal component analysis (FPCA) and neural network in the fault diagnosis method in the feature extraction process, the fault diagnosis method combining functional principal component analysis and BP neural network is studied and it is applied to the fault of the coordinator hydraulic system diagnosis. This article mainly completed the following tasks: analyzing the structure and working principle of the mechanical hydraulic system, studying the failure mechanism and failure mode of the mechanical hydraulic system, summarizing the common failures of the hydraulic system and the individual failures of the mechanical hydraulic system, and establishing the mechanical hydraulic system. Description of failure mode and effects analysis (FMEA): then, a joint simulation model of the mechanical hydraulic system was established in ADAMS and AMESim, and the fault detection signal of the hydraulic system was determined and compared with the experimental data. At the same time, the simulation data of the cosimulation model were compared with the simulation data of the hydraulic model in MATLAB to further verify the correctness of the model. The functional principal component analysis is used to perform functional processing on sample data, feature parameters are extracted, and the BP neural network is used to train the mapping relationship between feature parameters and fault parameters. The consistency is verified, and the fault diagnosis method is finally completed. The experimental results show that the diagnostic accuracy rates are 0.9848 and 0.9927, respectively, the reliability is significantly improved, close to 100%, and the uncertainty is basically 0, which significantly improves the accuracy of fault diagnosis.
机译:本文旨在研究基于人工智能动态监测的机械液压系统故障诊断方法。根据功能提取过程故障诊断方法功能主成分分析(FPCA)和神经网络的特点,研究了功能主成分分析和BP神经网络的故障诊断方法,应用于故障协调器液压系统诊断。本文主要完成以下任务:分析机械液压系统的结构和工作原理,研究机械液压系统的故障机理和故障模式,总结了液压系统的常见故障和机械液压系统的单个故障并建立机械液压系统。故障模式和效果分析(FMEA)描述:然后,在ADAMS和Amesim中建立了机械液压系统的联合仿真模型,并确定了液压系统的故障检测信号并与实验数据进行比较。同时,将Cosimulation模型的仿真数据与Matlab中的液压模型的仿真数据进行了比较,以进一步验证模型的正确性。功能主成分分析用于对样本数据执行功能处理,提取特征参数,BP神经网络用于培训特征参数和故障参数之间的映射关系。验证了一致性,最终完成了故障诊断方法。实验结果表明,诊断准确率分别为0.9848和0.9927,可靠性显着提高,接近100%,不确定性基本上为0,显着提高了故障诊断的准确性。

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