首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Effective Hybrid Algorithm of Taguchi Method, FEM, RSM, and Teaching Learning-Based Optimization for Multiobjective Optimization Design of a Compliant Rotary Positioning Stage for Nanoindentation Tester
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Effective Hybrid Algorithm of Taguchi Method, FEM, RSM, and Teaching Learning-Based Optimization for Multiobjective Optimization Design of a Compliant Rotary Positioning Stage for Nanoindentation Tester

机译:坦率旋转定位级多目标优化设计的Taguchi方法,FEM,RSM和教学学习优化的有效混合算法

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This paper proposes an effective hybrid optimization algorithm for multiobjective optimization design of a compliant rotary positioning stage for indentation tester. The stage is created with respect to the Beetle’s profile. To meet practical demands of the stage, the geometric parameters are optimized so as to find the best performances. In the present work, the Taguchi method is employed to lay out the number of numerical experiments. Subsequently, the finite element method is built to retrieve the numerical data. The mathematical models are then established based on the response surface method. Before conducting the optimization implementation, the weight factor of each response is calculated exactly. Based on the well-established models, the multiple performances are simultaneously optimized utilizing the teaching learning-based optimization. The results found that the weight factors of safety factor and displacement are 0.5995 (59.95%) and 0.4005 (40.05%), respectively. The results revealed that the optimal safety factor is about 1.558 and the optimal displacement is 2.096 mm. The validations are in good agreement with the predicted results. Sensitivity analysis is carried out to identify the effects of variables on the responses. Using the Wilcoxon’s rank signed test and Friedman test, the effectiveness of the proposed hybrid approach is better than that of other evolutionary algorithms. It ensures a good effectiveness to solve a complex multiobjective optimization problem.
机译:本文提出了一种用于压痕测试仪柔顺旋转定位级的多目标优化设计有效的混合优化算法。舞台是关于甲虫的个人资料创建的。为了满足舞台的实际要求,几何参数被优化,以找到最佳性能。在本作工作中,使用Taguchi方法来布置数值实验的数量。随后,构建有限元方法以检索数值数据。然后基于响应面方法建立数学模型。在进行优化实现之前,确切地计算每个响应的权重因子。基于良好的型号,利用基于教学的优化同时优化多种性能。结果发现,安全因子和位移的重量因子分别为0.5995(59.95%)和0.4005(40.05%)。结果表明,最佳安全系数约为1.558,最佳位移为2.096毫米。验证与预测结果吻合良好。进行敏感性分析,以确定变量对响应的影响。使用Wilcoxon等级签名测试和弗里德曼测试,所提出的混合方法的有效性优于其他进化算法。它确保解决复杂的多目标优化问题的良好效果。

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