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An improved differential-based harmony search algorithm with linear dynamic domain

机译:一种改进的基于线性动态域的基于差分的和声搜索算法

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As a relatively new optimization algorithm, Harmony Search (HS) has been widely used to solve global optimization tasks in various fields due to its simplicity of operation and good performance. However, the basic HS has low fine-tuning ability, easy trapping into local optimum and premature convergence. To overcome the drawbacks and further enhance the precision of calculation results, an improved differential-based harmony search algorithm with linear dynamic domain (ID-HS-LDD) is proposed. In the ID-HS-LDD, two main innovative strategies are adopted: Firstly, inspired by one mutation in the Differential Evolution (DE) algorithm, an improved differential-based method is used as a new pitch adjuster. Secondly, for the search domain of optimal values, introducing a linear dynamic change model is considered. In addition, a parameter is also introduced to modify the new vectors generation formula for updating the harmony memory (HM) in the process of computation. A series of comparative experiments is carried out to verify the performance of the ID-HS-LDD using twenty-four typical benchmark functions. The experimental results show that, for most cases, the ID-HS-LDD has superior performance compared with other HS variants and advanced nature-inspired optimizations. Therefore, the proposed ID-HS-LDD is successfully implemented as a novel optimization method. (C) 2019 Elsevier B.V. All rights reserved.
机译:作为一种相对较新的优化算法,和谐搜索(HS)由于其操作简单和性能良好而被广泛用于解决各个领域的全局优化任务。但是,基本HS的微调能力较低,容易陷入局部最优和过早收敛。为了克服上述缺点,进一步提高计算结果的精度,提出了一种改进的基于线性动态域的差分差分和声搜索算法(ID-HS-LDD)。在ID-HS-LDD中,采用了两种主要的创新策略:首先,受差分进化(DE)算法中一个突变的启发,一种改进的基于差分的方法被用作新的音高调节器。其次,对于最优值的搜索域,考虑引入线性动态变化模型。此外,还引入了一个参数来修改新的矢量生成公式,以便在计算过程中更新和声存储器(HM)。进行了一系列比较实验,以使用二十四个典型基准功能验证ID-HS-LDD的性能。实验结果表明,在大多数情况下,ID-HS-LDD与其他HS变体和先进的自然启发式优化方法相比,具有优越的性能。因此,提出的ID-HS-LDD被成功地实现为一种新颖的优化方法。 (C)2019 Elsevier B.V.保留所有权利。

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