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LSHADE with semi-parameter adaptation hybrid with CMA-ES for solving CEC 2017 benchmark problems

机译:具有CMA-ES的半参数自适应混合的LSHADE解决了CEC 2017基准问题

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To improve the optimization performance of LSHADE algorithm, an alternative adaptation approach for the selection of control parameters is proposed. The proposed algorithm, named LSHADE-SPA, uses a new semi-parameter adaptation approach to effectively adapt the values of the scaling factor of the Differential evolution algorithm. The proposed approach consists of two different settings for two control parameters F and Cr. The benefit of this approach is to prove that the semi-adaptive algorithm is better than pure random algorithm or fully adaptive or self-adaptive algorithm. To enhance the performance of our algorithm, we also introduced a hybridization framework named LSHADE-SPACMA between LSHADE-SPA and a modified version of CMA-ES. The modified version of CMA-ES undergoes the crossover operation to improve the exploration capability of the proposed framework. In LSHADE-SPACMA both algorithms will work simultaneously on the same population, but more populations will be assigned gradually to the better performance algorithm. In order to verify and analyze the performance of both LSHADE-SPA and LSHADE-SPACMA, Numerical experiments on a set of 30 test problems from the CEC2017 benchmark for 10, 30, 50 and 100 dimensions, including a comparison with LSHADE algorithm are executed. Experimental results indicate that in terms of robustness, stability, and quality of the solution obtained, of both LSHADE-SPA and LSHADE-SPACMA are better than LSHADE algorithm, especially as the dimension increases.
机译:为了提高LSHADE算法的优化性能,提出了一种选择控制参数的自适应方法。所提出的算法名为LSHADE-SPA,它使用一种新的半参数自适应方法来有效地适应差分演化算法的比例因子的值。所提出的方法包括两个控制参数F和Cr的两个不同设置。这种方法的好处是证明了半自适应算法优于纯随机算法或完全自适应或自适应算法。为了提高算法的性能,我们还在LSHADE-SPA和CMA-ES的修改版本之间引入了一个名为LSHADE-SPACMA的混合框架。修改后的CMA-ES版本经过交叉操作以提高所提出框架的探索能力。在LSHADE-SPACMA中,两种算法将在相同的总体上同时工作,但是更多的总体将逐渐分配给性能更好的算法。为了验证和分析LSHADE-SPA和LSHADE-SPACMA的性能,对来自CEC2017基准的10个,30个,50个和100个尺寸的30个测试问题进行了数值实验,包括与LSHADE算法的比较。实验结果表明,就鲁棒性,稳定性和所获得解决方案的质量而言,LSHADE-SPA和LSHADE-SPACMA均优于LSHADE算法,尤其是随着尺寸的增加。

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