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Sparse identification of nonlinear dynamics for model predictive control in the low-data limit

机译:低数据限制模型预测控制的非线性动力学的稀疏识别

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摘要

Data-driven discovery of dynamics via machine learning is pushing the frontiers of modelling and control efforts, providing a tremendous opportunity to extend the reach ofmodel predictive control (MPC). However, many leadingmethods in machine learning, such as neural networks (NN), require large volumes of training data, may not be interpretable, do not easily include known constraints and symmetries, and may not generalize beyond the attractor where models are trained. These factors limit their use for the online identification of a model in the low-data limit, for example following an abrupt change to the system dynamics. In this work, we extend the recent sparse identification of nonlinear dynamics (SINDY) modelling procedure to include the effects of actuation and demonstrate the ability of these models to enhance the performance of MPC, based on limited, noisy data. SINDY models are parsimonious, identifying the fewest terms in the model needed to explain the data, making them interpretable and generalizable. We show that the resulting SINDY-MPC framework has higher performance, requires significantly less data, and is more computationally efficient and robust to noise than NN models, making it viable for online training and execution in response to rapid system changes. SINDY-MPC also shows improved performance over linear data-driven models, although linear models may provide a stopgap until enough data is available for SINDY. SINDY-MPC is demonstrated on a variety of dynamical systems with different challenges,including the chaotic Lorenz system, a simple model for flight control of an F8 aircraft, and an HIV model incorporating drug treatment.
机译:通过机器学习的数据驱动的动态发现正在推动建模和控制努力的前沿,为扩展MODEL预测控制(MPC)的覆盖范围提供了巨大的机会。然而,在机器学习中的许多领导方法,例如神经网络(NN)需要大量的训练数据,可能不可解释,不容易包括已知的约束和对称,并且可能不会概括在训练模型的吸引子之外。这些因素限制了它们在低数据限制中在线识别模型的用途,例如在系统动态的突然变化之后。在这项工作中,我们延长了近期非线性动力学(SINDY)建模程序的稀疏识别,包括致动的影响,并证明这些模型提高MPC性能的能力,基于有限的噪音数据。 SINDY模型是解放的,识别解释数据所需的模型中最少的术语,使其可解释和更广泛。我们表明,由此产生的Sindy-MPC框架具有更高的性能,需要显着更少的数据,并且比NN模型更加较低,并且对噪声更加有效和强大,使得在线培训和响应快速系统的执行而可行。 SINDY-MPC还显示出在线性数据驱动模型的改进性能,尽管线性模型可以提供停止图,直到足够的数据可用于SINDY。 SINDY-MPC在各种具有不同挑战的各种动态系统上证明,包括混沌洛伦茨系统,是F8飞机飞行控制的简单模型,以及包含药物治疗的HIV模型。

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