超参数
消息传递
计算机科学
图形
物理系统
航程(航空)
多样性(控制论)
理论计算机科学
机器学习
人工智能
分布式计算
物理
量子力学
复合材料
材料科学
作者
Álvaro Sánchez‐González,Jonathan Godwin,Tobias Pfaff,Rex Ying,Jure Leskovec,Peter Battaglia
出处
期刊:Cornell University - arXiv
日期:2020-01-01
被引量:329
标识
DOI:10.48550/arxiv.2002.09405
摘要
Here we present a machine learning framework and model implementation that can learn to simulate a wide variety of challenging physical domains, involving fluids, rigid solids, and deformable materials interacting with one another. Our framework---which we term "Graph Network-based Simulators" (GNS)---represents the state of a physical system with particles, expressed as nodes in a graph, and computes dynamics via learned message-passing. Our results show that our model can generalize from single-timestep predictions with thousands of particles during training, to different initial conditions, thousands of timesteps, and at least an order of magnitude more particles at test time. Our model was robust to hyperparameter choices across various evaluation metrics: the main determinants of long-term performance were the number of message-passing steps, and mitigating the accumulation of error by corrupting the training data with noise. Our GNS framework advances the state-of-the-art in learned physical simulation, and holds promise for solving a wide range of complex forward and inverse problems.
科研通智能强力驱动
Strongly Powered by AbleSci AI