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Learning virtual sensors for estimating the scheduling signal of parameter-varying systems

机译:学习虚拟传感器以估计参数变化系统的调度信号

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We propose a novel data-driven virtual sensor architecture to reconstruct an unmeasurable scheduling signal of a parameter-varying system from input/output measurements. The key idea is to train and feed an Artificial Neural Network (ANN) with input/output measurements and with data generated by processing such measurements through a bank of linear observers. Special attention is paid to the design of both the ANN and the feature extraction mechanism to keep the architecture as lightweight as possible, so that the resulting virtual sensor can be easily implemented in embedded hardware platforms. As a special case, the proposed virtual sensor can be used for hidden mode reconstruction of switched linear systems. Applications of the proposed approach are geared towards fault detection and isolation, predictive maintenance, and gain-scheduling control.
机译:我们提出了一种新颖的数据驱动的虚拟传感器体系结构,以从输入/输出测量值重建参数可变系统的不可测量的调度信号。关键思想是用输入/输出测量值以及通过一组线性观测器处理此类测量值生成的数据来训练和馈送人工神经网络(ANN)。要特别注意ANN和特征提取机制的设计,以保持体系结构尽可能轻巧,以便可以在嵌入式硬件平台中轻松实现最终的虚拟传感器。作为一种特殊情况,提出的虚拟传感器可用于开关线性系统的隐藏模式重建。提出的方法的应用面向故障检测和隔离,预测性维护以及增益调度控制。

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