首页> 外文会议>Design automation conference;ASME international design engineering technical conferences and computers and information in engineering conference >BAYESIAN NETWORK CLASSIFIERS AND DESIGN FLEXIBILITY METRICS FOR SET- BASED. MULTISCALE DESIGN WITH MATERIALS DESIGN APPLICATIONS
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BAYESIAN NETWORK CLASSIFIERS AND DESIGN FLEXIBILITY METRICS FOR SET- BASED. MULTISCALE DESIGN WITH MATERIALS DESIGN APPLICATIONS

机译:贝叶斯网络分类器和基于集合的设计灵活性指标。具有材料设计应用程序的多尺度设计

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A set-based approach is presented for solving multi-scale or multi-level design problems. The approach incorporates Bayesian network classifiers (BNC) for mapping design spaces at each level and flexibility metrics for intelligently narrowing the design space as the design process progresses. The approach is applied to a hierarchical composite materials design problem, specifically, the design of composite materials with macroscopic mechanical stiffness and loss properties surpassing those of conventional composites. This macroscopic performance is achieved by embedding small volume fractions of negative stiffness (NS) inclusions in a host material. To design these materials, the set-based, multilevel design approach is coupled with a hierarchical modeling strategy that spans several scales, from the behavior of microscale NS inclusions to the effective properties of a composite material containing those inclusions and finally to the macroscopic performance of components. The approach is shown to increase the efficiency of multi-level design space exploration, and it is particularly appropriate for top-down, performance-driven design, as opposed to bottom-up, trial-and-error modeling. The design space mappings also build intuitive knowledge of the problem and promising regions of the design space, such that it is almost trivial to identify designs that yield preferred system-level performance.
机译:提出了一种基于集合的方法来解决多尺度或多层次的设计问题。该方法结合了用于在每个级别映射设计空间的贝叶斯网络分类器(BNC)和用于随着设计过程的进行而智能地缩小设计空间的灵活性指标。该方法适用于分层的复合材料设计问题,特别是具有宏观机械刚度和损耗特性超过常规复合材料的复合材料的设计。通过在主体材料中嵌入少量的负刚度(NS)夹杂物,可以实现这种宏观性能。为了设计这些材料,基于集合的多级设计方法与跨越多个尺度的分层建模策略相结合,从微观尺度的NS夹杂物的行为到包含这些夹杂物的复合材料的有效特性,再到纳米材料的宏观性能。成分。事实证明,该方法可提高多层设计空间探索的效率,特别适用于自上而下,性能驱动的设计,而不是自下而上的反复试验模型。设计空间映射还建立了有关问题和设计空间中有希望的区域的直观知识,因此,识别产生最佳系统级性能的设计几乎是微不足道的。

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