论文标题
带有自动对称性发现的离散拉格朗日神经网络
Discrete Lagrangian Neural Networks with Automatic Symmetry Discovery
论文作者
论文摘要
通过物理学中最基本的原则之一,动态系统将表现出极端的动作功能的动作。这导致了Euler-Lagrange方程的形成,这些方程是系统将在及时行为的模型。如果动力学表现出额外的对称性,则该运动将实现其他保护定律,例如能量保护(时间不变性),动量(翻译不变性)或角动量(旋转不变性)。要学习系统表示形式,可以学习离散的Euler-lagrange方程,或者可以学习定义它们的离散Lagrangian函数$ \ Mathcal {l} _d $。基于Lie Group理论的思想,在这项工作中,我们介绍了一个框架,以从分散观察到动作的观察结果,因此可以识别保守的数量,以学习离散的Lagrangian及其对称群体。学习过程不限制拉格朗日的形式,不需要速度或动量观察或预测,并包含了成本术语,该成本术语可以保护不需要的解决方案,并在远期模拟中抵抗潜在的数值问题。学到的离散量使用变异的向后误差分析与它们的连续类似物有关,数值结果表明,即使在存在噪声的情况下,这种模型也可以在定性和定量上具有质量和定量。
By one of the most fundamental principles in physics, a dynamical system will exhibit those motions which extremise an action functional. This leads to the formation of the Euler-Lagrange equations, which serve as a model of how the system will behave in time. If the dynamics exhibit additional symmetries, then the motion fulfils additional conservation laws, such as conservation of energy (time invariance), momentum (translation invariance), or angular momentum (rotational invariance). To learn a system representation, one could learn the discrete Euler-Lagrange equations, or alternatively, learn the discrete Lagrangian function $\mathcal{L}_d$ which defines them. Based on ideas from Lie group theory, in this work we introduce a framework to learn a discrete Lagrangian along with its symmetry group from discrete observations of motions and, therefore, identify conserved quantities. The learning process does not restrict the form of the Lagrangian, does not require velocity or momentum observations or predictions and incorporates a cost term which safeguards against unwanted solutions and against potential numerical issues in forward simulations. The learnt discrete quantities are related to their continuous analogues using variational backward error analysis and numerical results demonstrate the improvement such models can have both qualitatively and quantitatively even in the presence of noise.