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Modified symbiotic organisms search for structural optimization

机译:改性共生生物寻找结构优化

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The structural dynamic response predominantly depends upon natural frequencies which fabricate these as a controlling parameter for dynamic response of the truss. However, truss optimization problems subjected to multiple fundamental frequency constraints with shape and size variables are more arduous due to its characteristics like non-convexity, non-linearity, and implicit with respect to design variables. In addition, mass minimization with frequency constraints are conflicting in nature which intricate optimization problem. Using meta-heuristic for such kind of problem requires harmony between exploration and exploitation to regulate the performance of the algorithm. This paper proposes a modification of a nature inspired Symbiotic Organisms Search (SOS) algorithm called a Modified SOS (MSOS) algorithm to enhance its efficacy of accuracy in search (exploitation) together with exploration by introducing an adaptive benefit factor and modified parasitism vector. These modifications improved search efficiency of the algorithm with a good balance between exploration and exploitation, which has been partially investigated so far. The feasibility and effectiveness of proposed algorithm is studied with six truss design problems. The results of benchmark planar/space trusses are compared with other meta-heuristics. Complementarily the feasibility and effectiveness of the proposed algorithms are investigated by three unimodal functions, thirteen multimodal functions, and six hybrid functions of the CEC2014 test suit. The experimental results show that MSOS is more reliable and efficient as compared to the basis SOS algorithm and other state-of-the-art algorithms. Moreover, the MSOS algorithm provides competitive results compared to the existing meta-heuristics in the literature.
机译:结构动力响应主要取决于固有频率,这些固有频率将其作为桁架动力响应的控制参数。但是,受其形状和尺寸变量影响的多个基本频率约束的桁架优化问题由于其特征(如非凸性,非线性和相对于设计变量的隐含性)而更加艰巨。另外,具有频率约束的质量最小化本质上是矛盾的,这使优化问题复杂化。对此类问题使用元启发式方法需要探索与开发之间的协调,以调节算法的性能。本文提出了一种对自然界启发的共生生物搜索(SOS)算法的改进,称为改进的SOS(MSOS)算法,以通过引入自适应受益因子和改进的寄生矢量来提高其搜索(开发)准确性的功效。这些修改提高了算法的搜索效率,并在探索和开发之间取得了良好的平衡,到目前为止,对此进行了部分研究。针对六个桁架设计问题,研究了该算法的可行性和有效性。将基准平面/空间桁架的结果与其他元启发法进行比较。通过CEC2014测试套件的三个单峰函数,十三个多峰函数和六个混合函数,对所提出算法的可行性和有效性进行了补充。实验结果表明,与基本SOS算法和其他最新算法相比,MSOS更加可靠和高效。此外,与文献中现有的元启发式算法相比,MSOS算法可提供有竞争力的结果。

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