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Modified differential evolution algorithm and its application in thermal process model identification

机译:改进的差分进化算法及其在热工过程模型辨识中的应用

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The mathematical model of the object in power plant is of extremely significance for the design and analysis of the thermal control system. There are many methods to identify the parameters of the desiring object. In this article, we adopt a modified form of a relatively effective yet simple algorithm called differential evolution algorithm (DE) which is a population based stochastic optimization approach. The differential evolution algorithm uses the difference of randomly sampled pairs of vectors in the population for its mutation operators and is applied mainly in real parameter optimization. Based on analysis of DE searching mechanism, the article proposed the improved differential evolution algorithm with self-adaptive parameters to promote its robust, optima searching capability and speed. In order to prove the effectiveness of the improved differential evolution algorithm, we work out relevant model identifying program on MATLAB and identify the mathematical models. Then we analyze the result using the method of comparing.
机译:电厂对象的数学模型对热控制系统的设计和分析具有极其重要的意义。有很多方法可以识别所需对象的参数。在本文中,我们采用一种相对有效但简单的算法的改进形式,称为差分进化算法(DE),这是一种基于总体的随机优化方法。差分进化算法将总体中随机抽取的矢量对的差异用作其变异算子,主要应用于真实参数优化。在对DE搜索机制进行分析的基础上,提出了一种具有自适应参数的改进的差分进化算法,以提高算法的鲁棒性,最优搜索能力和搜索速度。为了证明改进的差分进化算法的有效性,我们在MATLAB上设计了相关的模型辨识程序,并对数学模型进行辨识。然后,我们使用比较方法分析结果。

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