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A Grey-box Modelling and Its Application in Model-based Fault Detection

机译:灰箱建模及其在基于模型的故障检测中的应用

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In order to provide an accurate and robust model with model-based fault detection, this paper combines a mathematical model and neural networks to develop a grey-box model. In the grey-box model, the mathematical model represents the dominant behaviour of the system, leaving the mismatch part of the system to be approximated by neural networks. The output of the grey-box model is used for residual generation in the model-based fault detection approach. Because the neural network compensates the model error from the mathematical model, a high accuracy model can be obtained and the residual generated under normal conditions can also be minimised by the combination. On the other hand, because most of the mathematical model mismatches exist in transients, the working load of the neural network can be reduced and the network structure can be simplified by the combination. Moreover, the grey box model provides more robust residual than black-box model and it enables the residual signatures to be physically interpretable. The capability of this grey-box model-based approach is evaluated in model accuracy and sensitivity in detecting faults introduced on an electro-hydraulic control system.
机译:为了通过基于模型的故障检测提供准确而健壮的模型,本文将数学模型和神经网络相结合,以开发灰盒模型。在灰箱模型中,数学模型表示系统的主要行为,而系统的不匹配部分则由神经网络来近似。灰色框模型的输出用于基于模型的故障检测方法中的残差生成。由于神经网络可以补偿数学模型中的模型误差,因此可以得到高精度模型,并且通过组合可以将正常情况下产生的残差最小化。另一方面,由于大多数数学模型不匹配都存在于瞬变中,因此通过组合,可以减少神经网络的工作负载,并简化网络结构。此外,灰盒模型比黑盒模型提供了更强大的残差,并且残差签名在物理上可以解释。在检测电动液压控制系统中引入的故障的模型准确性和敏感性方面,评估了这种基于灰箱模型的方法的能力。

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