论文标题
神经网络层用于预测正定弹性刚度张量
Neural Network Layers for Prediction of Positive Definite Elastic Stiffness Tensors
论文作者
论文摘要
机器学习模型可用于预测诸如均质弹性刚度张量之类的物理量,基于保护参数,必须始终是对称的正定确定性(SPD)。将两个同质膜弹性张量的数据集显示为示例,希望获得将单位细胞几何和材料参数映射到其同质刚度的模型。将模型拟合到SPD数据并不能保证模型的预测将保持SPD。现有的Cholsesky分解和特征成分方案在这项工作中被抽象为强制SPD条件的转换层。这些层可以包含在许多流行的机器学习模型中,以实施SPD行为。这项工作研究了不同阳性函数对层的影响以及它们的包容性如何影响模型的准确性。考虑了常用的模型,包括多项式,径向基函数和神经网络。最终表明,单个SPD层提高了模型的平均预测准确性。
Machine learning models can be used to predict physical quantities like homogenized elasticity stiffness tensors, which must always be symmetric positive definite (SPD) based on conservation arguments. Two datasets of homogenized elasticity tensors of lattice materials are presented as examples, where it is desired to obtain models that map unit cell geometric and material parameters to their homogenized stiffness. Fitting a model to SPD data does not guarantee the model's predictions will remain SPD. Existing Cholsesky factorization and Eigendecomposition schemes are abstracted in this work as transformation layers which enforce the SPD condition. These layers can be included in many popular machine learning models to enforce SPD behavior. This work investigates the effects that different positivity functions have on the layers and how their inclusion affects model accuracy. Commonly used models are considered, including polynomials, radial basis functions, and neural networks. Ultimately it is shown that a single SPD layer improves the model's average prediction accuracy.