Mixed-Integer Quadratic Programming (MIQP) has been identified as a suitable approach for finding an optimal solution to the behavior planning problem with low runtimes. Logical constraints and continuous equations are optimized alongside. However, it has only been formulated for a straight road, omitting common situations such as taking turns at intersections. This has prevented the model from being used in reality so far. Based on a triple integrator model formulation, we compute the orientation of the vehicle and model it in a disjunctive manner. That allows us to formulate linear constraints to account for the non-holonomy and collision avoidance. These constraints are approximations, for which we introduce the theory. We show the applicability in two benchmark scenarios and prove the feasibility by solving the same models using nonlinear optimization. This new model will allow researchers to leverage the benefits of MIQP, such as logical constraints, or global optimality.
翻译:混合半径编程(MIQP)已被确定为在低运行时间找到行为规划问题最佳解决办法的合适方法。逻辑限制和连续方程式是优化的。然而,它只是为一条直路制定的,省略了十字路口旋转等常见情况。这使得模型无法在现实中使用。基于三重集成模型的配方,我们计算了车辆方向,并以分解的方式模型。这使我们能够制定线性限制,以说明非光学和避免碰撞的情况。这些限制是近似值,我们为此引入了理论。我们用非线性优化方法解决同样的模型,从而证明其可行性。这一新模型将使研究人员能够利用MIQP的好处,例如逻辑限制或全球最佳性。