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Research on Rosenbrock Function Optimization Problem Based on Improved Differential Evolution Algorithm

机译:基于改进差分进化算法的Rosenbrock函数优化问题研究

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The Rosenbrock function optimization belongs to unconstrained optimization problems, and its global minimum value is located at the bottom of a smooth and narrow valley of the parabolic shape. It is very difficult to find the global minimum value of the function because of the little information provided for the optimization algorithm. According to the characteristics of the Rosenbrock function, this paper specifically proposed an improved differential evolution algorithm that adopts the self-adaptive scaling factor F and crossover rate CR with elimination mechanism, which can effectively avoid premature convergence of the algorithm and local optimum. This algorithm can also expand the search range at an early stage to find the global minimum of the Rosenbrock function. Many experimental results show that the algorithm has good performance of function optimization and provides a new idea for optimization problems similar to the Rosenbrock function for some problems of special fields.
机译:Rosenbrock函数优化属于无约束优化问题,其全局最小值位于抛物线形状的平滑且狭窄的谷底。由于为优化算法提供的信息很少,因此很难找到函数的全局最小值。根据Rosenbrock函数的特点,专门提出了一种改进的差分进化算法,该算法采用自适应缩放因子 F和交叉速率 CR并带有消除机制,可以有效避免算法的过早收敛。和局部最优。该算法还可以在早期扩展搜索范围,以找到Rosenbrock函数的全局最小值。实验结果表明,该算法具有较好的函数优化性能,为某些特殊领域的问题提供了类似于Rosenbrock函数的优化问题的新思路。

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