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Probability-Density-Based Deep Learning Paradigm for the Fuzzy Design of Functional Metastructures

机译:基于概率密度的函数性多模糊设计的深度学习范例

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摘要

In quantum mechanics, a norm-squared wave function can be interpreted as the probability density that describes the likelihood of a particle to be measured in a given position or momentum. This statistical property is at the core of the fuzzy structure of microcosmos. Recently, hybrid neural structures raised intense attention, resulting in various intelligent systems with far-reaching influence. Here, we propose a probability-density-based deep learning paradigm for the fuzzy design of functional metastructures. In contrast to other inverse design methods, our probability-density-based neural network can efficiently evaluate and accurately capture all plausible metastructures in a high-dimensional parameter space. Local maxima in probability density distribution correspond to the most likely candidates to meet the desired performances. We verify this universally adaptive approach in but not limited to acoustics by designing multiple metastructures for each targeted transmission spectrum, with experiments unequivocally demonstrating the effectiveness and generalization of the inverse design.
机译:在量子力学中,可以将常规波浪函数解释为描述在给定位置或动量中测量颗粒的可能性的概率密度。这种统计属性处于微观微观结构的模糊结构的核心。最近,混合神经结构提高了强烈的关注,导致各种智能系统具有深远的影响。在这里,我们提出了一种基于概率的密度的深度学习范例,用于功能性多模糊设计。与其他逆设计方法相比,我们的概率密度基神经网络可以有效地评估和准确地捕获高维参数空间中的所有合理的衡量标准。概率密度分布中的局部最大值对应于最有可能的候选者以满足所需的性能。我们通过为每个目标传输频谱设计多个代码来验证这种普遍的自适应方法,但不限于声学,实验明确地证明了逆设计的有效性和泛化。

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