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Robust low cost meta-modeling optimization algorithm based on meta-heuristic and knowledge databases approach: Application to polymer extrusion die design

机译:基于元启发式和知识数据库的鲁棒低成本元建模优化算法方法:适用于聚合物挤出模具设计

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The new method presented in this paper falls into the category of sampling methods and model management in the optimization process of surrogate related methods. This method was introduced in order to reach the global optimum with a limited number of computer experiments. During these developments, the Particle Swarm Optimization (PSO) was used as a smart sampling tool to construct the metamodel. These methods with their stochastic nature can also overcome the problems of local minima.In order to improve the efficiency and accuracy of the metamodel (Kriging), a knowledge database with smart sampling methods has been integrated into the optimization model management, to avoid unnecessary finite elements calculations and enrich the collection (sampling) in each optimization iteration. This method makes it possible to reduce the sampling size and at the same time increases the accuracy of the metamodel.For validation of the developed method, different benchmark functions were chosen in terms of features and has successfully then minimized. Finally, a practical engineering optimization problem for polymer extrusion was implemented with suggested Kriging Swarm Optimization algorithm (KSO). In this procedure, the Finite Element Analysis (FEA) was combined for simulation procedures to resolve non-isothermal non-Newtonian flow. Polymer extrusion results were applied for gathering information from design space samples and Kriging.
机译:本文提出的新方法涉及代理相关方法优化过程中采样方法和模型管理的类别。引入了该方法,以便通过有限数量的计算机实验达到全球最佳。在这些开发期间,将粒子群优化(PSO)用作智能采样工具以构建元模型。这些方法还可以克服当地最小值的问题。为了提高元模型(Kriging)的效率和准确性,具有智能采样方法的知识数据库已集成到优化模型管理中,以避免不必要的有限元素计算并在每个优化迭代中丰富集合(采样)。该方法使得可以减少采样尺寸,同时增加元模型的精度。对于开发方法的验证,在特征方面选择了不同的基准功能,并已成功地选择。最后,用建议的Kriging Swarm优化算法(KSO)实施了用于聚合物挤出的实际工程优化问题。在此过程中,将有限元分析(FEA)组合用于仿真程序,以解决非等温非牛顿流量。应用聚合物挤出结果用于从设计空间样本和克里格采集信息。

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