基于多层感知机的电液伺服阀故障诊断

Erchuan Su, Xiaojun Guo
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引用次数: 0

摘要

电液伺服阀是液压系统的核心部件,因此电液伺服阀是液压系统维护过程中的重点对象。因此,对电液伺服阀的故障进行研究具有十分重要的意义。搭建实验平台,测量3MP、3.5MP、4MP、4.5MP、5MP下的数据。经过分析权衡,最终决定采用Adam、Momentum和RAdam三种优化算法实现电液伺服阀的故障诊断。数据被组织成37维数组作为训练样本。前32个维数为电液伺服阀的特征参数,后5个维数对应5种故障模式。测试集为32维,诊断结果为5维,对应一种故障模式。诊断结果符合预期。
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Fault Diagnosis of Electro-Hydraulic Servo Valve Based on Multilayer Perceptron
The electro-hydraulic servo valve is the core component of the hydraulic system, so the electro-hydraulic servo valve is the key object in the maintenance process of the hydraulic system. Therefore, it is very important to study the fault of electro-hydraulic servo valve. Set up an experimental platform to measure the data under 3MP, 3.5MP, 4MP, 4.5MP and 5MP. After analysis and tradeoff, it was finally decided to use Adam, Momentum and RAdam optimization algorithms to realize the fault diagnosis of electro hydraulic servo valve. The data are organized into 37 dimensional arrays as samples for training. The first 32 dimensions are the characteristic parameters of the electro-hydraulic servo valve, and the last 5 dimensions correspond to five fault modes. The test set is 32 dimensions, and the diagnosis result is 5 dimensions corresponding to a fault mode. The diagnosis result is in line with expectations.
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