Lie Group Forced Variational Integrator Networks for Learning and Control of Robot Systems

Valentin Duruisseaux, T. Duong, M. Leok, Nikolay A. Atanasov
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引用次数: 4

Abstract

Incorporating prior knowledge of physics laws and structural properties of dynamical systems into the design of deep learning architectures has proven to be a powerful technique for improving their computational efficiency and generalization capacity. Learning accurate models of robot dynamics is critical for safe and stable control. Autonomous mobile robots, including wheeled, aerial, and underwater vehicles, can be modeled as controlled Lagrangian or Hamiltonian rigid-body systems evolving on matrix Lie groups. In this paper, we introduce a new structure-preserving deep learning architecture, the Lie group Forced Variational Integrator Network (LieFVIN), capable of learning controlled Lagrangian or Hamiltonian dynamics on Lie groups, either from position-velocity or position-only data. By design, LieFVINs preserve both the Lie group structure on which the dynamics evolve and the symplectic structure underlying the Hamiltonian or Lagrangian systems of interest. The proposed architecture learns surrogate discrete-time flow maps allowing accurate and fast prediction without numerical-integrator, neural-ODE, or adjoint techniques, which are needed for vector fields. Furthermore, the learnt discrete-time dynamics can be utilized with computationally scalable discrete-time (optimal) control strategies.
机器人系统学习与控制的李群强迫变分积分器网络
将物理定律和动力系统结构特性的先验知识纳入深度学习体系结构的设计已被证明是提高其计算效率和泛化能力的有力技术。学习准确的机器人动力学模型是安全稳定控制的关键。自主移动机器人,包括轮式、空中和水下机器人,可以建模为在矩阵李群上进化的可控拉格朗日或哈密顿刚体系统。在本文中,我们引入了一种新的保持结构的深度学习架构——李群强迫变分积分器网络(LieFVIN),它能够从位置-速度或位置-速度数据中学习李群上的可控拉格朗日或哈密顿动力学。通过设计,LieFVINs既保留了动力学演化的李群结构,又保留了相关的哈密顿或拉格朗日系统的辛结构。所提出的架构学习代理离散时间流图,允许准确和快速的预测,而不需要矢量场所需的数字积分器、神经ode或伴随技术。此外,学习到的离散时间动力学可以用于计算可扩展的离散时间(最优)控制策略。
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