首页> 外文会议>Proceedings of 2007 8th International Conference on Electronic Measurement Instruments >Fault Diagnosis System with Natural Repair Function for Screw Oil Pump Based on Radial Basic Function Network
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Fault Diagnosis System with Natural Repair Function for Screw Oil Pump Based on Radial Basic Function Network

机译:基于径向基函数网络的螺杆机油泵自然修复功能故障诊断系统

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Considering the issues that the relationship between the fault of screw oil pump existent and fault information is a complicated and nonlinear system, and the radial basic function network (RBFNN) has the advantages of learning speed rapidly and fine ability of function approaching and model classify, a fault diagnosis system with natural repair function for screw oil pump based on RBFNN is presented in this paper. We construct the structure of radial basic function network that used for the fault diagnosis of screw oil pump, and adopt the K-Nearest Neighbor algorithm to train the network. With the ability of strong self-learning and function approach and fast convergence rate of radial basic function network, the diagnosis system can truly diagnosticate the fault of screw oil pump by learning the fault information. The real diagnosis results show that this system is feasible and effective.
机译:考虑到螺杆机油泵存在的故障与故障信息之间的关系是一个复杂的非线性系统,径向基函数网络(RBFNN)具有学习速度快,函数逼近和模型分类能力强的优点,提出了一种基于RBFNN的具有自然修复功能的螺杆机油泵故障诊断系统。我们构建了用于螺杆机油泵故障诊断的径向基函数网络结构,并采用K最近邻算法进行训练。该诊断系统具有较强的自学习和功能方法能力,以及径向基本功能网络的快速收敛速度,可以通过学习故障信息,对螺旋油泵的故障进行真正的诊断。实际诊断结果表明,该系统是可行,有效的。

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