人工神经网络
守恒定律
能量守恒
哈密顿量(控制论)
计算机科学
火车
哈密顿系统
节能
钟摆
哈密顿力学
人工智能
数学
经典力学
物理
数学优化
工程类
量子力学
数学分析
电气工程
相空间
地图学
地理
作者
Samuel Greydanus,Misko Dzamba,Jason Yosinski
出处
期刊:Cornell University - arXiv
日期:2019-06-04
卷期号:32: 15353-15363
被引量:158
摘要
Even though neural networks enjoy widespread use, they still struggle to learn the basic laws of physics. How might we endow them with better inductive biases? In this paper, we draw inspiration from Hamiltonian mechanics to train models that learn and respect exact conservation laws in an unsupervised manner. We evaluate our models on problems where conservation of energy is important, including the two-body problem and pixel observations of a pendulum. Our model trains faster and generalizes better than a regular neural network. An interesting side effect is that our model is perfectly reversible in time.
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