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Identification of LTV Dynamical Models with Smooth or Discontinuous Time Evolution by means of Convex Optimization

机译:通过凸优化识别具有平稳或不连续时间演化的LTV动力学模型

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We establish a connection between trend filtering and system identification which results in a family of new identification methods for linear, time-varying (LTV) dynamical models based on convex optimization. We demonstrate how the design of the cost function promotes a model with either a continuous change in dynamics over time, or causes discontinuous changes in model coefficients occurring at a finite (sparse) set of time instances. We further discuss the introduction of priors on the model parameters for situations where excitation is insufficient for identification. The identification problems are cast as convex optimization problems and are applicable to, e.g., ARX models and state-space models with time-varying parameters. We illustrate usage of the methods in simulations of jump-linear systems, a nonlinear robot arm with non-smooth friction and stiff contacts as well as in model-based, trajectory centric reinforcement learning on a smooth nonlinear system.
机译:我们在趋势过滤和系统识别之间建立了联系,从而为基于凸优化的线性时变(LTV)动力学模型提供了一系列新的识别方法。我们演示了成本函数的设计如何通过动态的随时间的连续变化来促进模型的发展,或者在有限的(稀疏)时间实例集上引起模型系数的不连续变化。我们进一步讨论了在激励不足以识别的情况下模型参数的先验引入。识别问题被视为凸优化问题,并且适用于例如具有时变参数的ARX模型和状态空间模型。我们说明了该方法在跳跃线性系统,具有非光滑摩擦和刚性接触的非线性机械臂的仿真以及在基于模型的平滑非线性系统中以轨迹为中心的强化学习中的用法。

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