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Fault detection and isolation for PEM fuel cell stack with independent RBF model

机译:具有独立RBF模型的PEM燃料电池堆的故障检测和隔离

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Neural networks have been successfully used to model nonlinear dynamic systems. However, when a static neural network model is used in system fault detection and the model prediction error is used as the residual, the residual is insensitive to the fault if the neural network used is in dependent mode. This paper proposed the use of a radial basis function network in independent mode as the system model for fault detection, and it was found that the residual is sensitive to the fault. To enhance the signal to noise ratio of the detection the recursive orthogonal least squares algorithm is employed to train the network weights. Another radial basis function network is used to isolate fault using the information in the residual signal. The developed method is applied to a benchmark simulation model of the proton exchange membrane fuel cell stacks developed at the Michigan University. One component fault, one actuator fault and three sensor faults were simulated on the benchmark model. The simulation results show that the developed approach is able to detect and isolate the faults to a fault size of ±10% of nominal values. These results are promising and indicate the potential of the method to be applied to the real world of fuel cell stacks for dynamic monitoring and reliable operations.
机译:神经网络已成功用于建模非线性动力学系统。但是,当在系统故障检测中使用静态神经网络模型并将模型预测误差用作残差时,如果所使用的神经网络处于从属模式,则残差对故障不敏感。提出了以独立模式的径向基函数网络作为故障检测的系统模型,发现残差对故障很敏感。为了提高检测的信噪比,采用递归正交最小二乘算法来训练网络权重。另一个径向基函数网络用于使用残差信号中的信息来隔离故障。所开发的方法应用于密歇根大学开发的质子交换膜燃料电池堆的基准仿真模型。在基准模型上模拟了一个组件故障,一个执行器故障和三个传感器故障。仿真结果表明,所开发的方法能够检测并隔离故障,使故障大小达到标称值的±10%。这些结果是有希望的,并表明该方法在用于动态监测和可靠运行的燃料电池堆的现实世界中的潜力。

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