基于改进Dempster-Shafer (DS)方法的多神经网络组合非线性过程建模

Z. Ahmad, I. Baharuddin, R. A. Mat Noor
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引用次数: 0

摘要

本文采用改进的Demspter-Shafer (DS)作为多神经网络(MNN)组合的方法。将改进的DS - MNN组合应用于非线性过程。“最佳”单网络条件在某种程度上是一个难以实现的条件,特别是在非线性过程建模中;因此,在这项工作中应用了多个神经网络。在此基础上,将MNN与一种非线性组合方法—DS方法相结合,进一步改进MNN模型。在这种情况下,采用锥形水箱作为非线性系统。结果表明,改进的DS - MNN在非线性圆锥水箱系统中的实现具有较强的说服力,表明了MNN作为建模工具的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nonlinear process modeling using multiple neural network (MNN) combination based on modified Dempster-Shafer (DS) approach
In this work, modified Demspter-Shafer (DS) is employed as the method for multiple neural networks (MNN) combination. The modified DS - MNN combination was employed to a nonlinear process. The `best' single network condition is somehow a difficult condition to achieve especially in nonlinear process modeling; therefore, multiple neural networks were applied in this work. Furthermore, MNN was combined with a nonlinear combination method - DS method to further improved the MNN model. In this case, a conical water tank was used as the nonlinear system. Based on the results, the modified DS - MNN implementation in the nonlinear conic water tank system was convincing and showed the reliability of MNN as a modeling tool.
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