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Computationally Efficient Approximations Using Adaptive Weighting Coefficients for Solving Structural Optimization Problems

机译:使用自适应加权系数来解决结构优化问题的计算上有效近似

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With rapid development of advanced manufacturing technologies and high demands for innovative lightweight constructions to mitigate the environmental and economic impacts, design optimization has attracted increasing attention in many engineering subjects, such as civil, structural, aerospace, automotive, and energy engineering. For nonconvex nonlinear constrained optimization problems with continuous variables, evaluations of the fitness and constraint functions by means of finite element simulations can be extremely expensive. To address this problem by algorithms with sufficient accuracy as well as less computational cost, an extended multipoint approximation method (EMAM) and an adaptive weighting-coefficient strategy are proposed to efficiently seek the optimum by the integration of metamodels with sequential quadratic programming (SQP). The developed EMAM stems from the principle of the polynomial approximation and assimilates the advantages of Taylor’s expansion for improving the suboptimal continuous solution. Results demonstrate the superiority of the proposed EMAM over other evolutionary algorithms (e.g., particle swarm optimization technique, firefly algorithm, genetic algorithm, metaheuristic methods, and other metamodeling techniques) in terms of the computational efficiency and accuracy by four well-established engineering problems. The developed EMAM reduces the number of simulations during the design phase and provides wealth of information for designers to effectively tailor the parameters for optimal solutions with computational efficiency in the simulation-based engineering optimization problems.
机译:随着先进制造技术的快速发展和对创新的轻量级结构的高要求,以减轻环境和经济影响,设计优化在许多工程科目中引起了越来越多的关注,如民事,结构,航空航天,汽车和能源工程。对于非线性的非线性约束优化问题与连续变量,通过有限元模拟的健身和约束函数的评估可能非常昂贵。为了通过具有足够的准确度以及计算成本的算法来解决这个问题,提出了一种扩展的多点近似方法(EMAM)和自适应加权系数策略,以通过与顺序二次编程(SQP)的集成来有效地寻求最佳状态。开发的EMAM源于多项式近似的原理,并吸收泰勒的扩展的优势,以改善次优不连续溶液。结果证明了所提出的eMAM在其他进化算法上的优越性(例如,粒子群优化技术,萤火虫算法,遗传算法,常规算法和其他元形方法,以及四种熟悉的工程问题方面的准确性。开发的EMAM在设计阶段减少了模拟的数量,并为设计人员提供了丰富的信息,以有效地根据基于模拟的工程优化问题的计算效率来实现最佳解决方案的参数。

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