A range of complicated real-world problems have inspired the development of several optimization methods. Here, a novel hybrid version of the Ant colony optimization (ACO) method is developed using the sample space reduction technique of the Cohort Intelligence (CI) Algorithm. The algorithm is developed, and accuracy is tested by solving 35 standard benchmark test functions. Furthermore, the constrained version of the algorithm is used to solve two mechanical design problems involving stepped cantilever beams and I-section beams. The effectiveness of the proposed technique of solution is evaluated relative to contemporary algorithmic approaches that are already in use. The results show that our proposed hybrid ACO-CI algorithm will take lesser number of iterations to produce the desired output which means lesser computational time. For the minimization of weight of stepped cantilever beam and deflection in I-section beam a proposed hybrid ACO-CI algorithm yielded best results when compared to other existing algorithms. The proposed work could be investigate for variegated real world applications encompassing domains of engineering, combinatorial and health care problems.
翻译:一系列复杂的现实问题启发了多种优化方法的发展。在本文中,我们使用队伍智能算法的样本空间缩减技术开发了一种新型的混合版本的蚁群算法(ACO)。该算法的准确性通过解决35个标准基准测试函数进行测试。此外,该算法的约束版本被用于解决涉及梯形悬臂梁和I形梁的两个机械设计问题。将我们提出的解决方案的有效性与已经在使用中的现代算法方法进行了评估。结果表明,我们提出的混合ACO-CI算法将需要更少的迭代次数才能产生所需的输出结果,这意味着更短的计算时间。对于最小化梯形悬臂梁的重量和I形梁的挠度,所提出的混合ACO-CI算法在与其他现有算法进行比较时取得了最好的结果。所提出的工作可以用于调查涵盖工程、组合和医疗保健问题领域的各种实际应用。