Mixed integer convex and nonlinear programs, MICP and MINLP, are expressive but require long solving times. Recent work that combines data-driven methods on solver heuristics has shown potential to overcome this issue allowing for applications on larger scale practical problems. To solve mixed-integer bilinear programs online with data-driven methods, several formulations exist including mathematical programming with complementary constraints (MPCC), mixed-integer programming (MIP). In this work, we benchmark the performances of those data-driven schemes on a bookshelf organization problem that has discrete mode switch and collision avoidance constraints. The success rate, optimal cost and solving time are compared along with non-data-driven methods. Our proposed methods are demonstrated as a high level planner for a robotic arm for the bookshelf problem.
翻译:将数据驱动的方法与求解器和避免碰撞的限制结合起来的近期工作表明,有可能克服这一问题,从而在更大的实际问题上进行应用。为了解决在线混合整数双线程序与数据驱动方法的混合整数双线程序,存在几种配方,包括具有补充制约的数学编程(MPCC)、混合整数编程(MIP)等。在这项工作中,我们将这些数据驱动计划的业绩以具有离散模式开关和避免碰撞限制的书架组织问题作为基准。成功率、最佳成本和解答时间与非数据驱动方法相比较。我们提出的方法被证明是用于解决书架问题的机器人臂的高级规划师。