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A novel hybrid metaheuristic algorithm for model order reduction in the delta domain: a unified approach

机译:一种新型混合成膜算法,用于减少三角洲域的模型顺序:统一方法

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摘要

Delta operator parameterization provides a unified framework in modeling, analysis and design of discrete-time systems, in which the resultant model converges to its continuous-time counterpart at high sampling limit. Capitalizing this unique property of delta operator, a new hybrid algorithm combining gray wolf optimizer and firefly algorithm has been proposed for model order reduction of high-dimensional linear discrete-time system. It has been shown that the reduced discrete-time model inherits all the dominant characteristics of the higher-order discrete-time model and with the increase in sampling frequency it converges to the continuous-time reduced model. The effectiveness of the proposed method is illustrated with the help of an example.
机译:Delta操作员参数化提供了分立时间系统的建模,分析和设计的统一框架,其中所得模型在高采样限制下收敛于其连续时间对应。 利用三角洲操作员的独特性,提出了一种结合灰狼优化器和萤火虫算法的新型混合算法,用于高维线性离散时间系统的模型顺序减少。 已经表明,降低的离散时间模型继承了高阶离散时间模型的所有主导特性,并且随着采样频率的增加,它会收敛到连续时间减少模型。 借助于示例的帮助说明了所提出的方法的有效性。

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