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Multi-material Compositional Pattern-Producing Networks for Form Optimisation

机译:用于表单优化的多材料合成图案生产网络

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CPPN-NEAT (Compositional Pattern Producing Networks and NeuroEvolution for Augmented Topologies) is a representation and optimisation approach that can generate and optimise complex forms without any pre-defined structure by using indirect, implicit representations. CPPN is based on an analogy to embryonic development; NEAT is based on an analogy to neural evolution. We present new developments that extend the approach to include multi-material objects, where the material distribution must be optimised in parallel with the form. Results are given for a simple problem concerning PV panels to validate the method. This approach is applicable to a large number of problems concerning the design of complex forms. There axe many such problems in the field of energy saving and generation, particularly those areas concerned with solar gain. This work forms a first step in exploring the potential of this approach.
机译:CPPN-NEAT(用于增强型拓扑的组合图案生成网络和NeuroEvolution)是一种表示和优化方法,可以通过使用间接隐式表示来生成和优化复杂形式,而无需任何预定义的结构。 CPPN基于类似于胚胎发育的理论。 NEAT是基于神经进化的类比。我们提出了一些新的开发方法,将方法扩展到包括多种材料的对象,其中必须与形式并行地优化材料的分布。给出了有关光伏面板的一个简单问题的结果,以验证该方法。此方法适用于涉及复杂表单设计的大量问题。在节能和发电领域,尤其是那些与太阳能获取有关的领域,存在许多此类问题。这项工作是探索这种方法潜力的第一步。

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