首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >An Efficient Hybrid Approach of Finite Element Method, Artificial Neural Network-Based Multiobjective Genetic Algorithm for Computational Optimization of a Linear Compliant Mechanism of Nanoindentation Tester
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An Efficient Hybrid Approach of Finite Element Method, Artificial Neural Network-Based Multiobjective Genetic Algorithm for Computational Optimization of a Linear Compliant Mechanism of Nanoindentation Tester

机译:基于有限元方法的高效混合方法,基于人工神经网络的多目标遗传算法,用于纳米压痕测试仪线性顺应机构的计算优化

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This paper proposes a new evolutionary multiobjective optimization technique for a linear compliant mechanism of nanoindentation tester. The mechanism design is inspired by the elastic deformation of flexure hinge. To improve overall static performances, a multiobjective optimization design was carried out. An efficient hybrid optimization approach of central composite design (CDD), finite element method (FEM), artificial neural network (ANN), and multiobjective genetic algorithm (MOGA) is developed to solve the optimization problem. In this procedure, the CDD is used to lay out the experimental data. The FEM is developed to retrieve the quality performances. And then, the ANN is developed as black box to call the pseudo-objective functions. Unlike previous studies on multiobjective evolutionary algorithms, most of which generating only one Pareto-optimal solution, this proposed approach can generate more than three Pareto-optimal solutions. Based on the user’s real-work problem, one of the best optimal solutions is chosen. The results showed that the optimal results were found at the displacement of 330.68 μm, stress of 140.65 MPa, and safety factor of 3.6. The statistical analysis is conducted to investigate the behavior of the MOGA. The sensitivity analysis was carried out to determine the significant contribution of each factor. The results revealed that the lengths and thickness almost significantly affect both responses. It confirms that the proposed hybrid optimization approach gains high robustness and effectiveness with flexible decision maker rules to solve complex optimization engineering problems.
机译:本文针对纳米压痕测试仪的线性顺应机构提出了一种新的进化多目标优化技术。该机构的设计灵感来自挠性铰链的弹性变形。为了提高整体静态性能,进行了多目标优化设计。为了解决该优化问题,提出了一种有效的混合优化方法:中央复合设计(CDD),有限元方法(FEM),人工神经网络(ANN)和多目标遗传算法(MOGA)。在此过程中,CDD用于布置实验数据。开发了FEM以检索质量性能。然后,将人工神经网络开发为黑盒,以调用伪目标函数。与先前关于多目标进化算法的研究不同,大多数研究仅生成一个Pareto最优解,而该方法可以生成三个以上的Pareto最优解。根据用户的实际问题,选择最佳的最佳解决方案之一。结果表明,在位移为330.68μm,应力为140.65 MPa,安全系数为3.6时可获得最佳结果。进行统计分析以调查MOGA的行为。进行了敏感性分析,以确定每个因素的显着贡献。结果表明,长度和厚度几乎显着影响两种响应。它证实了所提出的混合优化方法通过灵活的决策者规则解决复杂的优化工程问题而获得了很高的鲁棒性和有效性。

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