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A Novel Fitness Evaluation Method for Evolutionary Algorithms

机译:进化算法的适应度评估新方法

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Fitness evaluation is a crucial task in evolutionary algorithms because it can affect the convergence speed and also the quality of the final solution. But these algorithms may require huge computation power for solving nonlinear programming problems. This paper proposes a novel fitness evaluation approach which employs similarity-base learning embedded in a classical differential evolution (SDE) to evaluate all new individuals. Each individual consists of three elements: parameter vector (v), a fitness value (f), and a reliability value(r). The f is calculated using NFEA, and only when the r is below a threshold is the f calculated using true fitness function. Moreover, applying error compensation system to the proposed algorithm further enhances the performance of the algorithm to make r much closer to true fitness value for each new child. Simulation results over a comprehensive set of benchmark functions show that the convergence rate of the proposed algorithm is much faster than much that of the compared algorithms.
机译:适应性评估是进化算法中的一项关键任务,因为它会影响收敛速度以及最终解决方案的质量。但是这些算法可能需要巨大的计算能力才能解决非线性编程问题。本文提出了一种新颖的适应性评估方法,该方法采用嵌入经典差分进化(SDE)中的基于相似度的学习来评估所有新个体。每个人都由三个元素组成:参数向量(v),适应性值(f)和可靠性值(r)。 f是使用NFEA计算的,只有当r低于阈值时,才使用真正的适应度函数计算f。此外,将误差补偿系统应用于所提出的算法进一步提高了算法的性能,以使r对于每个新孩子更接近真实适应度值。在一组全面的基准函数上的仿真结果表明,所提算法的收敛速度远快于所比较算法的收敛速度。

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