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A Neural Approach of Multimodel Representation of Complex Processes

机译:复杂过程的多模型表示的一种神经方法

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The multimodel approach was recently developed to deal with the issues of complex processes modeling and control. Despite its success in different fields, it still faced with some design problems, and in particular the determination of the models and of the adequate method of validities computation. In this paper, we propose a neural approach to derive different models describing the process in different operating conditions. The implementation of this approach requires two main steps. The first step consists in exciting the system with a rich (e.g. pseudo random) signal and collecting measurements. These measurements are classified by using an adequate Kohonen self-organizing neural network. The second step is a parametric identification of the base-models by using the classification results for order and parameters estimation. The suggested approach is implemented and tested with two processes and compared to the classical modeling approach. The obtained results turn out to be satisfactory and show a good precision. These also allow to draw some interpretations about the adequate validities’ calculation method based on classification results.
机译:最近开发了多模型方法来处理复杂过程建模和控制的问题。尽管在不同领域取得了成功,但它仍然面临一些设计问题,尤其是模型的确定以及有效性计算的适当方法。在本文中,我们提出了一种神经方法来导出描述在不同操作条件下的过程的不同模型。此方法的实施需要两个主要步骤。第一步在于用丰富的(例如伪随机)信号激励系统并收集测量值。通过使用适当的Kohonen自组织神经网络对这些测量进行分类。第二步是通过使用分类结果进行阶次和参数估计来对基本模型进行参数识别。建议的方法是通过两个过程实施和测试的,并与经典建模方法进行了比较。所获得的结果证明是令人满意的并且显示出良好的精度。这些还可以根据分类结果对适当有效性的计算方法做出一些解释。

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