Applied Sciences (Feb 2020)

Adaptive Cruise Control Based on Model Predictive Control with Constraints Softening

  • Lie Guo,
  • Pingshu Ge,
  • Dachuan Sun,
  • Yanfu Qiao

DOI
https://doi.org/10.3390/app10051635
Journal volume & issue
Vol. 10, no. 5
p. 1635

Abstract

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In this paper, with the aim of meeting the requirements of car following, safety, comfort, and economy for adaptive cruise control (ACC) system, an ACC algorithm based on model predictive control (MPC) using constraints softening is proposed. A higher-order kinematics model is established based on the mutual longitudinal kinematics between the host vehicle and the preceding vehicle that considers the changing characteristics of the inter-distance, relative velocity, acceleration, and jerk of the host vehicle. Performance indexes are adopted to represent the multi-objective demands and constraints of the ACC system. To avoid the solution becoming unfeasible because of the overlarge feedback correction, the constraint softening method was introduced to improve robustness. Finally, the proposed ACC method is verified in typical car-following scenarios. Through comparisons and case studies, the proposed method can improve the robustness and control precision of the ACC system, while satisfying the demands of safety, comfort, and economy.

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