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Fault diagnosis of pneumatic actuator using adaptive network-based fuzzy inference system models and a learning vector quantization neural network

机译:基于自适应网络模糊推理系统模型和学习矢量量化神经网络的气动执行器故障诊断

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Fault diagnosis in pneumatic actuators is a very difficult task due to the inherent high nonlinearity and uncertainty. Developing models of nonlinear systems with adaptive network-based fuzzy inference systems (ANFISs) has recently received attention. Models that are built upon ANFISs overcome the disadvantages of ordinary fuzzy modeling and can be very suitable for generalized modeling of nonlinear plants. We set up a group of ANFIS models which are relatively common in practice, corresponding to various situations of a pneumatic actuator, including normal, low and high supply pressure. Considering the advantage that a learning vector quantization (LVQ) neural network has a powerful ability to classification, we then utilize a LVQ neural network as a fault diagnosis scheme by abstracting the data of ANFIS models as the input vectors for nonlinear plants. The effectiveness is demonstrated via experiments on a pneumatic actuator.
机译:由于固有的高度非线性和不确定性,气动执行器的故障诊断是一项非常困难的任务。使用基于自适应网络的模糊推理系统(ANFIS)开发非线性系统的模型最近受到关注。基于ANFIS的模型克服了常规模糊建模的缺点,非常适合于非线性植物的广义建模。我们建立了一组ANFIS模型,它们在实践中相对普遍,对应于气动执行器的各种情况,包括正常,低和高供应压力。考虑到学习矢量量化(LVQ)神经网络具有强大的分类能力的优势,我们通过将ANFIS模型的数据抽象为非线性植物的输入矢量,从而将LVQ神经网络用作故障诊断方案。通过在气动执行器上进行的实验证明了其有效性。

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