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Energy-optimal path planning by stochastic dynamically orthogonal level-set optimization

机译:随机动态正交水平集优化的能量最优路径规划

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A stochastic optimization methodology is formulated for computing energy-optimal paths from among time-optimal paths of autonomous vehicles navigating in a dynamic flow field. Based on partial differential equations, the methodology rigorously leverages the level-set equation that governs time-optimal reachability fronts for a given relative vehicle-speed function. To set up the energy optimization, the relative vehicle-speed and headings are considered to be stochastic and new stochastic Dynamically Orthogonal (DO) level-set equations are derived. Their solution provides the distribution of time-optimal reachability fronts and corresponding distribution of time-optimal paths. An optimization is then performed on the vehicle's energy-time joint distribution to select the energy-optimal paths for each arrival time, among all stochastic time-optimal paths for that arrival time. Numerical schemes to solve the reduced stochastic DO level-set equations are obtained, and accuracy and efficiency considerations are discussed. These reduced equations are first shown to be efficient at solving the governing stochastic level-sets, in part by comparisons with direct Monte Carlo simulations. To validate the methodology and illustrate its accuracy, comparisons with semi-analytical energy-optimal path solutions are then completed. In particular, we consider the energy-optimal crossing of a canonical steady front and set up its semi-analytical solution using a energy-time nested nonlinear double-optimization scheme. We then showcase the inner workings and nuances of the energy-optimal path planning, considering different mission scenarios. Finally, we study and discuss results of energy-optimal missions in a wind-driven barotropic quasigeostrophic double-gyre ocean circulation. (C) 2016ElsevierLtd. All rights reserved.
机译:制定了一种随机优化方法,用于计算在动态流场中导航的自动驾驶汽车的时间最优路径中的能量最优路径。基于偏微分方程,该方法严格利用水平集方程,该方程控制给定相对车速函数的时间最佳可达性前沿。为了进行能量优化,将相对车速和航向视为随机的,并推导新的随机动态正交(DO)水平集方程。他们的解决方案提供了时间最佳可达性前沿的分布以及时间最佳路径的相应分布。然后对车辆的能量时间联合分布进行优化,以在每个到达时间的所有随机时间最优路径中选择每个到达时间的能量最优路径。获得了求解简化的随机溶解氧水平集方程的数值方案,并讨论了精度和效率方面的考虑。首先,通过与直接蒙特卡洛模拟进行比较,这些简化的方程式首先显示出对控制随机水平集有效的解决方案。为了验证该方法并说明其准确性,然后完成了与半分析能量最优路径解决方案的比较。特别地,我们考虑规范稳态前沿的能量最优交叉,并使用能量时间嵌套的非线性双重优化方案建立其半解析解。然后,我们将考虑不同的任务场景,展示能量最佳路径规划的内部工作原理和细微差别。最后,我们研究和讨论了风动力正压准地转双涡旋海洋环流中能量最优任务的结果。 (C)2016ElsevierLtd。版权所有。

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