This paper proposes a novel nature-inspired meta-heuristic algorithm called the Golden Tortoise Beetle Optimizer (GTBO) to solve optimization problems. It mimics golden tortoise beetle's behavior of changing colors to attract opposite sex for mating and its protective strategy that uses a kind of anal fork to deter predators. The algorithm is modeled based on the beetle's dual attractiveness and survival strategy to generate new solutions for optimization problems. To measure its performance, the proposed GTBO is compared with five other nature-inspired evolutionary algorithms on 24 well-known benchmark functions investigating the trade-off between exploration and exploitation, local optima avoidance, and convergence towards the global optima is statistically significant. We particularly applied GTBO to two well-known engineering problems including the welded beam design problem and the gear train design problem. The results demonstrate that the new algorithm is more efficient than the five baseline algorithms for both problems. A sensitivity analysis is also performed to reveal different impacts of the algorithm's key control parameters and operators on GTBO's performance.
翻译:本文提出了一种由大自然启发的新颖的超湿性算法,称为金龟甲虫优化法(GTBO),以解决优化问题。它模仿金龟甲虫改变颜色的行为,以吸引异性交配及其保护策略,使用一种肛门叉来阻止捕食者。该算法以甲虫的双重吸引力和生存战略为模型,为优化问题创造新的解决办法。为衡量其性能,拟议的GTBO与调查勘探与开发之间的交易、当地选择避免和与全球选择的趋同的24个众所周知的基准函数的其他5个自然激励进化算法进行了比较,这在统计上意义重大。我们特别将GTBO应用于两个众所周知的工程问题,包括焊接的波束设计问题和齿轮设计问题。结果显示,新的算法比两个问题的5个基线算法效率更高。还进行了敏感性分析,以揭示算算法的关键控制参数和操作者对GTBO的性能的不同影响。