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An Investigation on the Performance of Hydrostatic Pumps Using Artificial Neural Network

机译:基于人工神经网络的静压泵性能研究。

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In this paper, an analysis of volumetric efficiency of hydrostatic pumps in a variety conditions is investigated by using a proposed neural network. The effects of the parameters, such as the number of revolution, hydraulic oil temperature and exit pressures, which act on performances of hydrostatic pumps like gear pumps, vane pumps, and axial reciprocal pumps with swash plate, on the volumetric efficiency have been examined. The revolution number of the pumps, exit pressure of the system and the hydraulic oil temperatures are greatly affected by the leakage flowrate. The neural network structure is very suitable for this kind of system. The network is capable of predicting the leakage flowrate of the experimental system. The network has a parallel structure and fast learning capacity. As it can be seen from the results for both approaches, neural network could be modeled hydrostatic pump systems in real time applications.
机译:在本文中,通过使用拟议的神经网络,对静液压泵在各种条件下的容积效率进行了分析。研究了参数(例如转数,液压油温度和出口压力)对容积泵的静液压泵(如齿轮泵,叶片泵和带斜盘的轴向往复泵)的性能的影响。泵的转数,系统的出口压力和液压油温度受泄漏流量的影响很大。神经网络结构非常适合这种系统。该网络能够预测实验系统的泄漏流量。该网络具有并行结构和快速学习能力。从两种方法的结果可以看出,神经网络可以在实时应用中为静液压泵系统建模。

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