文献翻译-对基于仿真神经网络的叉车液压系统故障诊断研究.doc
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- 文献 翻译 基于 仿真 神经网络 叉车 液压 系统故障 诊断 研究
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1、Research on Fault Diagnosis of Fork Lift Truck Hydraulic System Based on Artificial Neural Network AbstractThe structure and algorithm of BP neural net were described, therealization process of the fault diagnosis of hydraulic system based on BP neural net was discussed. According to the experiment
2、and test of fault of fork lift truck hydraulic system, the BP net has better learning function, high net convergence rate and high stability of learning and memory. The diagnosis results indicate that the presented diagnosis method has high reliability and can attain the expected results, which can
3、be applied to fault diagnosis of hydraulic system.Keywords-Bp algorithm;Neural network;hydraulic system; fault diagnosis I. INTRODUCTION Because of the very complex structure of fork lift truck hydraulic system, once some faults happen in using process, it will have direct effect on operation effici
4、ency. Therefore, the reliability and maintainability of the fork lift truck hydraulic system become increasingly high. At present, the traditional method of maintenance mainly depends on peoples experience, and it is very difficult to guarantee quality and efficiency of maintenance. Due to its self-
5、organizing and nonlinearly adaptive nature, an artificial neural network potentially offers a new parallel processing paradigm that could be more robust and user-friendly than the traditional approaches. In fault diagnosis of hydraulic system, diagnosis information is acquired more easily by an arti
6、ficial neural network than a single expert system based on regulation speculation. This paper describes application of BP neural network in fault diagnosis of the fork lift truck hydraulic system, and provides a newly solution methods. II. A MODEL STRUCTURE OF BP NEURAL NETWORK AND TRAINING ALGORITH
7、M A. A model structure of BP neural network A typical structure of a three layer forward neural network is shown in figure 1. It includes input layer, hidden layer and output layer. In figure 1, circles represent neurons. Connecting line having weight between circles represents interaction strength
8、between neurons, where is the connection weight between neuron i in the k-th layer and neuron j in the k-1-th layer. is the threshold of neuron, (i=0n) is the input of neurons, (j=0m) is the output of neurons, and F() is a transfer function from the (k-1)-th layer to the k-th layer. B. Learning algo
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