Lattice piecewise affine approximation of explicit nonlinear model predictive control with application to trajectory tracking of mobile robot
Kangbo Wang, Kaijie Zhang, Yating Huang, Jun Xu

TL;DR
This paper introduces a lattice piecewise affine approximation method for explicit nonlinear model predictive control to improve computational efficiency in mobile robot trajectory tracking.
Contribution
It develops a lattice PWA approach to approximate nonlinear MPC, reducing online computation while maintaining tracking accuracy.
Findings
Higher online computing speed compared to explicit linear MPC
Reduced offline computation time
Maintains acceptable tracking error levels
Abstract
To promote the widespread use of mobile robots in diverse fields, the performance of trajectory tracking must be ensured. To address the constraints and nonlinear features associated with mobile robot systems, we apply nonlinear model predictive control (MPC) to realize the trajectory tracking of mobile robots. Specifically, to alleviate the online computational complexity of nonlinear MPC, this paper devises a lattice piecewise affine (PWA) approximation method that can approximate both the nonlinear system and control law of explicit nonlinear MPC. The kinematic model of the mobile robot is successively linearized along the trajectory to obtain a linear time-varying description of the system, which is then expressed using a lattice PWA model. Subsequently, the nonlinear MPC problem can be transformed into a series of linear MPC problems. Furthermore, to reduce the complexity of online…
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Taxonomy
TopicsAdvanced Control Systems Optimization · Adaptive Control of Nonlinear Systems
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