4.5 Article

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

出版社

ROYAL SOC
DOI: 10.1098/rspa.2018.0335

关键词

model predictive control; nonlinear dynamics; sparse identification of nonlinear dynamics; system identification; control theory; machine learning

资金

  1. Washington Research Foundation
  2. Gordon and Betty Moore Foundation [2013-10-29]
  3. Alfred P. Sloan Foundation [3835]
  4. University of Washington eScience Institute
  5. Defense Advanced Research Projects Agency (DARPA) [HR011-16-C-0016, PA-18-01-FP-125]
  6. Army Research Office [W911NF-17-1-0306, W911NF-17-1-0422]
  7. Air Force Office of Scientific Research [FA9550-17-1-0329]

向作者/读者索取更多资源

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.

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