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Lion algorithm for standard and large scale bilinear system identification: A global optimization based on Lion#039;s social behavior

机译:用于标准和大规模双线性系统识别的Lion算法:基于Lion社会行为的全局优化

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Nonlinear system identification process, especially bilinear system identification process exploits global optimization algorithms for betterment of identification precision. This paper attempts to introduce a new optimization algorithm called as Lion algorithm to accomplish the system characteristics precisely. Our algorithm is a simulation model of the lion's unique characteristics such as territorial defense, territorial takeover, laggardness exploitation and pride. Experiments are conducted by identifying a nonlinear rationale digital benchmark system using standard bilinear model and comparisons are made with prominent genetic algorithm and differential evolution. Subsequently, curse of dimensionality is also experimented by defining a large scale bilinear model, i.e. bilinear system with 1023 bilinear kernel models, to identify the same digital benchmark system. Lion algorithm dominates when using standard bilinear model, whereas it is equivalent to differential evolution and better than genetic algorithm when using large scale bilinear model.
机译:非线性系统识别过程,尤其是双线性系统识别过程利用全局优化算法来提高识别精度。本文尝试介绍一种称为Lion算法的新的优化算法,以精确地实现系统特性。我们的算法是狮子独特特征的仿真模型,例如领土防御,领土接管,落后发展和自尊心。通过使用标准双线性模型识别非线性理论数字基准系统来进行实验,并与著名的遗传算法和差分进化进行比较。随后,还通过定义大型双线性模型(即具有1023个双线性核模型的双线性系统)来实验维数诅咒,以识别相同的数字基准系统。在使用标准双线性模型时,Lion算法占主导地位,而在使用大规模双线性模型时,它等同于差分进化,并且优于遗传算法。

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