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Dynamical system learning using extreme learning machines with safety and stability guarantees

机译:使用极端学习机具有安全性和稳定性的动态系统学习

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This article presents a continuous dynamical system model learning methodology that can be used to generate reference trajectories for the autonomous systems to follow, such that these trajectories are invariant to a given closed set and uniformly ultimately bounded with respect to an equilibrium point inside the closed set. The autonomous system dynamics are approximated using extreme learning machines (ELM), the parameters of which are learned subject to the safety constraints expressed using a reciprocal barrier function, and the stability constraints derived using a Lyapunov analysis in the presence of the ELM reconstruction error. This formulation leads to solving a constrained quadratic program (QP) that includes a finite number of decision variables with an infinite number of constraints. Theorems are developed to relax the QP with infinite number of constraints to a QP with a finite number of constraints which can be practically implemented using a QP solver. In addition, an active sampling methodology is developed that further reduced the number of required constraints for the QP by only evaluating the constraints at a smaller subset of points. The proposed method is validated using a motion reproduction task on a seven degree-of-freedom Baxter robot, where the task space position and velocity dynamics are learned using the presented methodology.
机译:本文提出了一种连续的动态系统模型学习方法,可用于为自治系统生成参考轨迹,使得这些轨迹不变于给定的闭合集并均匀地界定在闭合装置内的平衡点均匀界定。使用极端学习机(ELM)来近似自主系统动态,其参数被学习到使用互易屏障函数表示的安全约束,以及在ELM重建误差的存在下使用Lyapunov分析导出的稳定约束。该配方导致求解受约束的二次程序(QP),其包括具有无限数量的约束的有限数量的判定变量。开发定理以通过有限数量的约束对QP进行无限数量的约束来放宽QP,这可以使用QP求解器实际实现。另外,开发了一种有源采样方法,其通过仅在较小的点子集处评估约束来进一步减少QP的所需约束的数量。使用在七个自由度的Baxter机器人上使用运动再现任务来验证所提出的方法,其中使用所呈现的方法学习任务空间位置和速度动态。

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