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Linear prediction based uniform state sampling for sampling based motion planning systems

机译:基于线性预测的均匀状态采样,用于基于采样的运动计划系统

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We discuss the optimality and computational efficiency of sampling based motion planning (SBMP), which calculates dynamically precise and approximately optimal state transitions using arbitrarily selected nonlinear control system models. To ensure high optimality and computational efficiency, SBMP requires an approximately uniform state sampling function, though the non-linearity of the system models does not allow a perfect function. We propose linear prediction-based uniform state sampling (LPUSS) that samples approximately uniform state points while ensuring a dynamically correct state transition profile with a small calculation cost. LPUSS samples a state by using the given non-linear control system model after determining the input values by using a local linear transition model. We developed a mechanical motion planning system using LPUSS, articulated body algorithm, and parallel computing techniques. To validate LPUSS, we conducted experiments on double, triple, and sixtuple inverted pendulum models. LPUSS showed better optimality and computational efficiency with the double and triple inverted pendulum models, compared with randomized kinodynamic planning (RKP), which is based on rapid random tree (RRT), and our previously proposed rapid semi-optimal motion-planning method in which state sampling is based on uniform inputs. In particular, compared with our previous method, LPUSS was respectively 130 times and 3,000 times faster on double and triple inverted pendulum models under the condition of the same optimality. LPUSS found an approximately optimal swing up motion for the sixtuple inverted pendulum model within 40 minutes. According to our survey, there is no other optimization method that is applicable to higher than quadruple inverted pendulum models with standard constraints.
机译:我们讨论了基于采样的运动计划(SBMP)的最优性和计算效率,该算法使用任意选择的非线性控制系统模型来动态地计算精确且近似最优的状态转换。为了确保高的最优性和计算效率,SBMP需要近似均匀的状态采样函数,尽管系统模型的非线性不允许完美的函数。我们提出了基于线性预测的统一状态采样(LPUSS),该方法对近似统一状态点进行采样,同时以较小的计算成本确保动态正确的状态转换配置文件。 LPUSS在使用局部线性过渡模型确定输入值之后,通过使用给定的非线性控制系统模型对状态进行采样。我们使用LPUSS,铰接式车身算法和并行计算技术开发了机械运动计划系统。为了验证LPUSS,我们在双,三和六元组倒立摆模型上进行了实验。与基于快速随机树(RRT)的随机运动学动力规划(RKP)以及我们先前提出的快速半最优运动规划方法相比,LPUSS在双和三重倒立摆模型中表现出更好的最优性和计算效率。状态采样基于统一输入。特别是,与我们以前的方法相比,在相同的最优性条件下,双和三重倒立摆模型的LPUSS分别快130倍和3,000倍。 LPUSS在60分钟内发现了六元倒立摆模型的最佳上扬运动。根据我们的调查,没有其他优化方法适用于具有标准约束的四重以上倒立摆模型。

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