In the binary search space, GSA framework encounters the shortcomings of stagnation, diversity loss, premature convergence and high time complexity. To address these issues, a novel binary variant of GSA called `A novel neighbourhood archives embedded gravitational constant in GSA for binary search space (BNAGGSA)' is proposed in this paper. In BNAGGSA, the novel fitness-distance based social interaction strategy produces a self-adaptive step size mechanism through which the agent moves towards the optimal direction with the optimal step size, as per its current search requirement. The performance of the proposed algorithm is compared with the two binary variants of GSA over 23 well-known benchmark test problems. The experimental results and statistical analyses prove the supremacy of BNAGGSA over the compared algorithms. Furthermore, to check the applicability of the proposed algorithm in solving real-world applications, a windfarm layout optimization problem is considered. Two case studies with two different wind data sets of two different wind sites is considered for experiments.
翻译:在二进制搜索空间,GSA框架遇到了停滞、多样性损失、过早趋同和高时复杂性的缺点。为了解决这些问题,本文件提出了GSA的新二进制变式,称为“全球安全A中用于二进制搜索空间的新居邻里档案嵌入引力常数(BANAGGSA)”,在BNAGGSA中,基于健身远的新型社会互动战略产生了一个自适应的步数机制,根据目前的搜索要求,代理商通过这一机制以最佳步数向最佳方向移动。拟议算法的性能与GSA的两种二进制变式相比,超过23个众所周知的基准测试问题。实验结果和统计分析证明BNAGSA高于比较算法的优势。此外,为了检查拟议的算法在解决现实世界应用中的适用性,还考虑了风力农场布局优化问题。两个不同风力数据组的案例研究被考虑进行实验。