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首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >Design of particle-reinforced polyurethane mould materials for soft tooling process using evolutionary multi-objective optimization algorithms
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Design of particle-reinforced polyurethane mould materials for soft tooling process using evolutionary multi-objective optimization algorithms

机译:基于进化多目标优化算法的软加工颗粒增强聚氨酯模具材料设计

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摘要

Polyurethane is used for making mould in soft tooling (ST) process for producing wax/plastic components. These wax components are later used as pattern in investment casting process. Due to low thermal conductivity of polyurethane, cooling time in ST process is long. To reduce the cooling time, thermal conductive fillers are incorporated into polyurethane to make composite mould material. However, addition of fillers affects various properties of the ST process, such as stiffness of the mould box, rendering flow-ability of melt mould material, etc. In the present work, multi-objective optimization of various conflicting objectives (namely maximization of equivalent thermal conductivity, minimization of effective modulus of elasticity, and minimization of equivalent viscosity) of composite material are conducted using evolutionary algorithms (EAs) in order to design particle-reinforced polyurethane composites by finding the optimal values of design parameters. The design parameters include volume fraction of filler content, size and shape factor of filler particle, etc. The Pareto-optimal front is targeted by solving the corresponding multi-objective problem using the NSGA-II procedure. Then, suitable multi-criterion decision-making techniques are employed to select one or a small set of the optimal solution(s) of design parameter(s) based on the higher level information of the ST process for industrial applications. Finally, the experimental study with a typical real industrial application demonstrates that the obtained optimal design parameters significantly reduce the cooling time in soft tooling process keeping other processing advantages.
机译:聚氨酯用于在软模(ST)工艺中制造模具,以生产蜡/塑料组件。这些蜡组分随后在熔模铸造工艺中用作图案。由于聚氨酯的导热系数低,ST工艺中的冷却时间较长。为了减少冷却时间,将导热填料掺入聚氨酯中以制成复合模具材料。但是,添加填料会影响ST工艺的各种属性,例如模具盒的刚度,使熔融模具材料具有流动性等。在当前工作中,对各种相互冲突的目标进行多目标优化(即最大等效量)。使用进化算法(EA)进行复合材料的热导率,有效弹性模量的最小化和等效粘度的最小化,以便通过找到设计参数的最佳值来设计颗粒增强聚氨酯复合材料。设计参数包括填料含量的体积分数,填料颗粒的尺寸和形状因子等。通过使用NSGA-II程序解决相应的多目标问题,可以实现帕累托最优前沿。然后,基于工业应用的ST过程的较高级别的信息,采用合适的多准则决策技术来选择设计参数的一个或多个最佳解决方案。最后,在典型的实际工业应用中进行的实验研究表明,获得的最佳设计参数显着减少了软加工过程中的冷却时间,并保持了其他加工优势。

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