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A Modified Sine-Cosine Algorithm Based on Neighborhood Search and Greedy Levy Mutation

机译:一种基于邻域搜索和贪婪征税变异的正弦余弦算法

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摘要

For the deficiency of the basic sine-cosine algorithm in dealing with global optimization problems such as the low solution precision and the slow convergence speed, a new improved sine-cosine algorithm is proposed in this paper. The improvement involves three optimization strategies. Firstly, the method of exponential decreasing conversion parameter and linear decreasing inertia weight is adopted to balance the global exploration and local development ability of the algorithm. Secondly, it uses the random individuals near the optimal individuals to replace the optimal individuals in the primary algorithm, which allows the algorithm to easily jump out of the local optimum and increases the search range effectively. Finally, the greedy Levy mutation strategy is used for the optimal individuals to enhance the local development ability of the algorithm. The experimental results show that the proposed algorithm can effectively avoid falling into the local optimum, and it has faster convergence speed and higher optimization accuracy.
机译:针对基本正弦余弦算法在求解精度低,收敛速度慢等全局优化问题上的不足,提出了一种新的改进的正弦余弦算法。改进涉及三种优化策略。首先,采用指数递减的转换参数和线性递减的惯性权重的方法来平衡算法的全局探索能力和局部开发能力。其次,它使用最优个体附近的随机个体来代替主要算法中的最优个体,这使得算法可以轻松地跳出局部最优并有效地增加搜索范围。最后,将贪婪的Levy突变策略用于最优个体,以增强算法的局部开发能力。实验结果表明,该算法能有效避免陷入局部最优,收敛速度更快,优化精度更高。

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