Model Predictive Control For Autonomous Driving Based On Time Scaled Collision Cone

2018 EUROPEAN CONTROL CONFERENCE (ECC)(2018)

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摘要
In this paper, we present a Model Predictive Control (MPC) framework based on path velocity decomposition paradigm for autonomous driving. The optimization underlying the MPC has a two layer structure wherein first, an appropriate path is computed for the vehicle followed by the computation of optimal forward velocity along it. The very nature of the proposed path velocity decomposition allows for seamless compatibility between the two layers of the optimization.A key feature of the proposed work is that it offloads most of the responsibility of collision avoidance to velocity optimization layer for which computationally efficient formulations can be derived. In particular, we extend our previously developed concept of time scaled collision cone (TSCC) constraints and formulate the forward velocity optimization layer as a convex quadratic programming problem. We perform validation on autonomous driving scenarios wherein proposed MPC repeatedly solves both the optimization layers in receding horizon manner to compute lane change, overtaking and merging maneuvers among multiple dynamic obstacles.
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关键词
path velocity decomposition paradigm,layer structure,optimal forward velocity,seamless compatibility,collision avoidance,time scaled collision cone constraints,forward velocity optimization layer,convex quadratic programming problem,autonomous driving scenarios,optimization layers,MPC framework,model predictive control framework,TSCC constraints,lane change maneuver,overtaking maneuver,merging maneuver
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