首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >A Hybrid Computational Method of Desirability, Fuzzy Logic, ANFIS, and LAPO Algorithm for Multiobjective Optimization Design of Scott Russell Compliant Mechanism
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A Hybrid Computational Method of Desirability, Fuzzy Logic, ANFIS, and LAPO Algorithm for Multiobjective Optimization Design of Scott Russell Compliant Mechanism

机译:斯科特罗素兼容机制多目标优化设计的杂交计算方法,模糊逻辑,ANFIS和LAPO算法

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摘要

Flexure-based compliant mechanisms are increasingly promising in precision engineering, robotics, and other applications, thanks to the excellent advantages of no friction, no backlash, no wear, and minimal assembly. However, their design and analysis are still challenging due to the coupling of kinematic-mechanical behaviors with large nonlinear deflections in comparison to their rigid-body counterparts. Optimal design is an important aspect in the field of compliant mechanisms and has attracted much attention during the last decades. Especially, when considering a multiobjective optimization design for compliant mechanisms, the problem is becoming more complicated. Thus, this article presents a new efficient hybrid computational method to resolve multiobjective optimization design of compliant mechanisms. A Scott Russell compliant mechanism is employed as the design example and to show the advantages of the proposed optimizing method. The proposed method is developed by hybridizing the desirability function approach, fuzzy logic system, adaptive neuro-fuzzy inference system (ANFIS), and lightning attachment procedure optimization (LAPO). First of all, a 3D finite element model is created and central composite design is employed to build a numerical matrix. First, design variables are refined by using analysis of variance and Taguchi approach in terms of considerably eliminating space of design variables. Subsequently, desirability values of two objective functions are determined and transferred into the fuzzy logic system. The output of the fuzzy logic system is considered as a single combined objective function. Next, modeling for fuzzy output is established via developing the ANFIS model. At last, the LAPO algorithm is adopted for solving the multiobjective optimization problem for the mechanism. Three numerical examples are investigated to validate the feasibility and the effectiveness of performance efficiency of the proposed methodology. The results find that the proposed methodology is more efficient than traditional Taguchi-based fuzzy logic. Besides, the performance efficiency of the proposed approach outperforms the Jaya algorithm and TLBO algorithm through the Wilcoxon signed rank test and Friedman test. The results of this article give a useful approach for complex optimization problems.
机译:由于无摩擦,无间隙,无磨损和最小的组装,柔性工程,机器人和其他应用中,基于柔性的柔性机制越来越承诺。然而,它们的设计和分析仍然是挑战,因为与它们的刚体对应物相比,运动行为与大型非线性偏转的耦合相比。最佳设计是兼容机制领域的一个重要方面,在过去的几十年中引起了很多关注。特别是,在考虑合规机制的多目标优化设计时,问题变得越来越复杂。因此,本文提出了一种解决符合机制的多目标优化设计的新高效的混合计算方法。斯科特罗素柔顺机构被用作设计示例,并展示了所提出的优化方法的优点。通过杂交期望功能方法,模糊逻辑系统,自适应神经模糊推理系统(ANFIS)和雷电附件优化(LAPO)来开发所提出的方法。首先,创建3D有限元模型,采用中央复合设计来构建数值矩阵。首先,在大大消除设计变量的空间方面,通过使用方差分析和塔布奇方法来改进设计变量。随后,确定两个目标函数的可归解性值并转移到模糊逻辑系统中。模糊逻辑系统的输出被认为是单个组合目标函数。接下来,通过开发ANFI模型建立模糊输出的建模。最后,采用LAPO算法来解决机制的多目标优化问题。研究了三个数值例子以验证所提出的方法的性能效率的可行性和有效性。结果发现,所提出的方法比基于传统的基于Taguchi的模糊逻辑更有效。此外,所提出的方法的性能效率优于Jaya算法和TLBO算法通过Wilcoxon签名等级测试和弗里德曼测试。本文的结果为复杂优化问题提供了一种有用的方法。

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