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Nonlinear System Identification of Soft Robot Dynamics Using Koopman Operator Theory

机译:利用Koopman算子理论的软机器人动态的非线性系统识别

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Soft robots are challenging to model due in large part to the nonlinear properties of soft materials. Fortunately, this softness makes it possible to safely observe their behavior under random control inputs, making them amenable to large-scale data collection and system identification. This paper implements and evaluates a system identification method based on Koopman operator theory in which models of nonlinear dynamical systems are constructed via linear regression of observed data by exploiting the fact that every nonlinear system has a linear representation in the infinite-dimensional space of real-valued functions called observables. The approach does not suffer from some of the shortcomings of other nonlinear system identification methods, which typically require the manual tuning of training parameters and have limited convergence guarantees. A dynamic model of a pneumatic soft robot arm is constructed via this method, and used to predict the behavior of the real system. The total normalized-root-mean-square error (NRMSE) of its predictions is lower than that of several other identified models including a neural network, NLARX, nonlinear Hammerstein-Wiener, and linear state space model.
机译:在大部分到软材料的非线性特性,软机器对模型具有挑战性。幸运的是,这种柔软使得可以在随机控制输入下安全地观察它们的行为,使其适用于大规模的数据收集和系统识别。本文实现并评估基于Koopman操作员理论的系统识别方法,其中通过利用每个非线性系统在真实的无限空间中具有线性表示的事实,通过线性回归观察数据的线性回归构造非线性动力系统的模型。值函数称为可观察品。该方法不会遭受其他非线性系统识别方法的一些缺点,这通常需要手动调整训练参数并具有有限的收敛保证。通过该方法构建气动软机械臂的动态模型,并用于预测真实系统的行为。其预测的总标准化根均方误差(NRMSE)低于包括神经网络,NLARX,非线性Hammerstein-Wiener和线性状态空间模型的其他识别模型的总归一化 - 均方误差(NRMSE)。

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