首页> 外文会议>International Work-Conference on Artificial Neural Networks(IWANN 2005); 20050608-10; Barcelona(ES) >Nonlinear Robust Identification with ε—GA: FPS Under Several Norms Simultaneously
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Nonlinear Robust Identification with ε—GA: FPS Under Several Norms Simultaneously

机译:同时采用多个准则的ε-GA:FPS非线性鲁棒辨识

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摘要

In nonlinear robust identification context, a process model is represented by a nominal model and possible deviations. With parametric models this process model can be expressed as the so-called Feasible Parameter Set (FPS), which derives from the minimization of identification error specific norms. In this work, several norms are used simultaneously to obtain the FPS. This fact improves the model quality but, as counterpart, it increases the optimization problem complexity resulting in a multimodal problem with an infinite number of minima with the same value which constitutes FPS contour. A special Evolutionary Algorithm (ε—GA) has been developed to find this contour. Finally, an application to a thermal process identification is presented.
机译:在非线性鲁棒识别上下文中,过程模型由标称模型和可能的偏差表示。对于参数模型,此过程模型可以表示为所谓的可行参数集(FPS),该参数集是由最小化特定于标识错误的规范得出的。在这项工作中,同时使用了几个规范来获取FPS。这一事实提高了模型的质量,但与此相反,它增加了优化问题的复杂性,从而导致了一个多模态问题,其中无限多个极小值具有相同的值,构成FPS轮廓。已经开发了一种特殊的进化算法(ε-GA)来找到该轮廓。最后,提出了一种在热过程识别中的应用。

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