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Development and correlation analysis of non-dominated sorting buffalo optimization NSBUF II using Taguchi's design coupled gray relational analysis and ANN

机译:使用Taguchi设计耦合灰色关系分析和ANN的非主导排序水牛优化NSBUF II的开发和相关分析

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African Buffalo Optimization (ABO) is a latest bio-inspired optimization technique in the domain of evolutionary optimization, which mimics the migratory behaviour of the buffalo foraging for food across the African plains and forests. The ABO is, by now, recognized as a single-objective optimization algorithm, comprising the ability to solve both, the continuous and discrete optimization problems. However, a multi-objective version of ABO could be more useful for industrial problems. An aim is made in this article to develop the multi-objective variant of ABO, namely NSBUF II, which incorporates Pareto search for non-dominated solutions in the state space and a local search module for faster convergence. Selection of parameters for the NSBUF II is extremely sensitive to the obtained Pareto fronts. Thus, a Grey Relational Analysis (GRA) coupled with Taguchi's L-16 orthogonal array is adopted, which efficiently obtains the best set of parameters for the NSBUF II. Initially the proposed NSBUF II is tested using utilization based bi-objective production cell design problem and compared with published Multi-Objective Particle Swarm Optimization (MOPSO), and Non-dominated Sorting Genetic Algorithm (NSGA II) successfully. To analyse the performance of the NSBUF II, Self-Organizing Map (SOM) is applied, which is a powerful tool for visualizing the high-dimensional data in low dimensional maps. Applied SOM visually reveals the hidden correlational structure among the design parameters and the objective space. The performance of the NSBUF II is validated statistically NSBUF II is further verified with a real-world case obtained based on the Abrasive Water Jet Machining (AWJM) process. Validation test proves the competence of the proposed NSBUF II for real-world problem solving. The contribution of this paper is threefold. First, a novel multi-objective NSBUF II algorithm is developed. Second, a SOM based visual analysis is proposed to visualize the correlation among design parameters and Pareto fronts. Third, the NSBUF II is employed to solve a combinatorial production cell design problem followed by a real-world industrial problem. (C) 2019 Elsevier B.V. All rights reserved.
机译:非洲水牛优化(ABO)是在进化优化领域的最新生物启发优化技术,模仿水牛觅食的迁徙行为,在非洲平原和森林中觅食。现在,ABO被认为是单人客观优化算法,包括解决两者,连续和离散优化问题的能力。然而,ABO的多目标版本对于工业问题可能更有用。本文中的目的是开发ABO的多目标变体,即NSBUF II,它包含帕累托搜索状态空间中的非主导解决方案,以及用于更快的收敛的本地搜索模块。 NSBUF II的参数选择对所获得的帕累托前线非常敏感。因此,采用与Taguchi的L-16正交阵列耦合的灰色关系分析(GRA),从而有效地获得NSBUF II的最佳参数集。最初使用基于利用的双目标生产细胞设计问题测试所提出的NSBUF II,并与已发表的多目标粒子群优化(MOPSO)进行比较,以及成功非主导的分类遗传算法(NSGA II)。为了分析NSBUF II的性能,应用了自组织地图(SOM),这是一种用于可视化低维地图中的高维数据的强大工具。应用SOM目视揭示了设计参数和客观空间之间的隐藏相关结构。 NSBUF II的性能被验证,统计学上NSBUF II进一步通过基于磨料水喷射加工(AWJM)工艺获得的真实案例进行了验证。验证测试证明了拟议的NSBUF II的能力,以实现现实问题解决。本文的贡献是三倍。首先,开发了一种新型多目标NSBUF II算法。其次,提出了基于SOM的视觉分析,以可视化设计参数和帕累托前线之间的相关性。第三,NSBUF II被用来解决组合生产细胞设计问题,然后解决一个真实的产业问题。 (c)2019年Elsevier B.V.保留所有权利。

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