Physics-infused Machine Learning for Crowd Simulation

被引:11
|
作者
Zhang, Guozhen [1 ,2 ]
Yu, Zihan [1 ,2 ]
Jin, Depeng [1 ]
Li, Yong [1 ]
机构
[1] Tsinghua Univ, Dept Elect Engn, Beijing, Peoples R China
[2] TsingRoc, Beijing, Peoples R China
基金
中国国家自然科学基金;
关键词
Physics-infused machine learning; crowd simulation; symbolic regression;
D O I
10.1145/3534678.3539440
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Crowd simulation acts as the basic component in traffic management, urban planning, and emergency management. Most existing approaches use physics-based models due to their robustness and strong generalizability, yet they fall short in fidelity since human behaviors are too complex and heterogeneous for a universal physical model to describe. Recent research tries to solve this problem by deep learning methods. However, they are still unable to generalize well beyond training distributions. In this work, we propose to jointly leverage the strength of the physical and neural network models for crowd simulation by a Physics-Infused Machine Learning (PIML) framework. The key idea is to let the two models learn from each other by iteratively going through a physics-informed machine learning process and a machine-learning-aided physics discovery process. We present our realization of the framework with a novel neural network model, Physics-informed Crowd Simulator (PCS), and tailored interaction mechanisms enabling the two models to facilitate each other. Specifically, our designs enable the neural network model to identify generalizable signals from real-world data better and yield physically consistent simulations with the physical model's form and simulation results as a prior. Further, by performing symbolic regression on the well-trained neural network, we obtain improved physical models that better describe crowd dynamics. Extensive experiments on two publicly available large-scale real-world datasets show that, with the framework, we successfully obtain a neural network model with strong generalizability and a new physical model with valid physical meanings at the same time. Both models outperform existing state-of-the-art simulation methods in accuracy, fidelity, and generalizability, which demonstrates the effectiveness of the PIML framework for improving simulation performance and its capability for facilitating scientific discovery and deepening our understandings of crowd dynamics. We release the codes at https://github.com/tsinghua-fib-lab/PIML.
引用
收藏
页码:2439 / 2449
页数:11
相关论文
共 50 条
  • [31] Machine learning and statistical physics: preface
    Agliari, Elena
    Barra, Adriano
    Sollich, Peter
    Zdeborova, Lenka
    [J]. JOURNAL OF PHYSICS A-MATHEMATICAL AND THEORETICAL, 2020, 53 (50)
  • [32] Machine learning meets chemical physics
    Ceriotti, Michele
    Clementi, Cecilia
    Anatole von Lilienfeld, O.
    [J]. JOURNAL OF CHEMICAL PHYSICS, 2021, 154 (16):
  • [33] Machine learning applications in nuclear physics
    He WanBing
    He JunJie
    Wang Rui
    Ma YuGang
    [J]. SCIENTIA SINICA-PHYSICA MECHANICA & ASTRONOMICA, 2022, 52 (05)
  • [34] Machine learning for condensed matter physics
    Bedolla, Edwin
    Padierna, Luis Carlos
    Castaneda-Priego, Ramon
    [J]. JOURNAL OF PHYSICS-CONDENSED MATTER, 2021, 33 (05)
  • [35] MACHINE LEARNING meets QUANTUM PHYSICS
    Das Sarma, Sankar
    Deng, Dong-Ling
    Duan, Lu-Ming
    [J]. PHYSICS TODAY, 2019, 72 (03) : 48 - 54
  • [36] Colloquium: Machine learning in nuclear physics
    Boehnlein, Amber
    Diefenthaler, Markus
    Sato, Nobuo
    Schram, Malachi
    Ziegler, Veronique
    Fanelli, Cristiano
    Hjorth-Jensen, Morten
    Horn, Tanja
    Kuchera, Michelle P.
    Lee, Dean
    Nazarewicz, Witold
    Ostroumov, Peter
    Orginos, Kostas
    Poon, Alan
    Wang, Xin-Nian
    Scheinker, Alexander
    Smith, Michael S.
    Pang, Long-Gang
    [J]. REVIEWS OF MODERN PHYSICS, 2022, 94 (03)
  • [37] Learning new physics from a machine
    D'Agnolo, Raffaele Tito
    Wulzer, Andrea
    [J]. PHYSICAL REVIEW D, 2019, 99 (01)
  • [38] Machine learning in physics: A short guide
    Rodrigues, Francisco A.
    [J]. EPL, 2023, 144 (02)
  • [39] Exploring the Consequences of Crowd Compression Through Physics-Based Simulation
    Sun, Libo
    Badler, Norman I.
    [J]. SENSORS, 2018, 18 (12)
  • [40] The application of machine learning in solar physics
    Liu Hui
    Ji KaiFan
    Jin ZhenYu
    [J]. SCIENTIA SINICA-PHYSICA MECHANICA & ASTRONOMICA, 2019, 49 (10)