Desai Shaan A, Mattheakis Marios, Sondak David, Protopapas Pavlos, Roberts Stephen J
Machine Learning Research Group, University of Oxford Eagle House, Oxford OX26ED, United Kingdom.
John A. Paulson School of Engineering and Applied Sciences, Harvard University Cambridge, Massachusetts 02138, USA.
Phys Rev E. 2021 Sep;104(3-1):034312. doi: 10.1103/PhysRevE.104.034312.
Accurately learning the temporal behavior of dynamical systems requires models with well-chosen learning biases. Recent innovations embed the Hamiltonian and Lagrangian formalisms into neural networks and demonstrate a significant improvement over other approaches in predicting trajectories of physical systems. These methods generally tackle autonomous systems that depend implicitly on time or systems for which a control signal is known a priori. Despite this success, many real world dynamical systems are nonautonomous, driven by time-dependent forces and experience energy dissipation. In this study, we address the challenge of learning from such nonautonomous systems by embedding the port-Hamiltonian formalism into neural networks, a versatile framework that can capture energy dissipation and time-dependent control forces. We show that the proposed port-Hamiltonian neural network can efficiently learn the dynamics of nonlinear physical systems of practical interest and accurately recover the underlying stationary Hamiltonian, time-dependent force, and dissipative coefficient. A promising outcome of our network is its ability to learn and predict chaotic systems such as the Duffing equation, for which the trajectories are typically hard to learn.
准确学习动态系统的时间行为需要具有精心选择学习偏差的模型。最近的创新将哈密顿和拉格朗日形式主义嵌入神经网络,并在预测物理系统轨迹方面比其他方法有显著改进。这些方法通常处理隐式依赖时间的自治系统或先验已知控制信号的系统。尽管取得了这一成功,但许多现实世界的动态系统是非自治的,由随时间变化的力驱动并经历能量耗散。在本研究中,我们通过将端口哈密顿形式主义嵌入神经网络来应对从此类非自治系统学习的挑战,这是一个能够捕捉能量耗散和随时间变化控制力的通用框架。我们表明,所提出的端口哈密顿神经网络可以有效地学习具有实际意义的非线性物理系统的动力学,并准确恢复潜在的静态哈密顿量、随时间变化的力和耗散系数。我们网络的一个有前景的结果是它能够学习和预测诸如杜芬方程之类的混沌系统,其轨迹通常很难学习。