大型城市场景下无人机多目标三维路径规划

Nikolas Hohmann, M. Bujny, J. Adamy, M. Olhofer
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引用次数: 2

摘要

在无人机(uav)的实际路径规划应用中,优化算法必须同时考虑多个目标(例如最小化风险、路径长度、旅行时间、能耗或噪声污染)的处理、3D空间中平滑轨迹的生成以及处理城市环境的能力等方面,以提供实际可行的解决方案。由于目前可用的方法不允许这样做,在本文中,我们提出了一种整体方法来解决三维大尺度城市环境中无人机的多目标路径规划(MOPP)问题。针对所解决的优化问题,我们提出了无人机的能量模型和噪声模型,遵循光滑的三维路径。我们利用基于三维非均匀有理b样条(NURBS)的路径表示。作为优化器,我们使用了传统版本的进化策略(ES),两种标准的多目标进化算法(moea) - NSGA2和MO-CMA-ES,以及基于梯度的L-BFGS-B方法。为了指导优化,我们通过应用基于精确双向Dijkstra算法的高级初始化方案,提出了上述算法的混合版本。在统计分析中,我们比较了有混合初始化和没有混合初始化的不同算法,考虑了函数评估的数量和得到的Pareto前沿的质量特征,表明了解的收敛性和多样性。我们基于OpenStreetMap导出的真实世界数据,在纽约市的一个现实的3D城市路径规划场景中评估了这些方法。研究结果表明,混合初始化是有效识别近最优解的主要因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-objective 3D Path Planning for UAVs in Large-Scale Urban Scenarios
In the context of real-world path planning applications for Unmanned Aerial Vehicles (UAVs), aspects such as handling of multiple objectives (e.g., minimizing risk, path length, travel time, energy consumption, or noise pollution), generation of smooth trajectories in 3D space, and the ability to deal with urban environments have to be taken into account jointly by an optimization algorithm to provide practically feasible solutions. Since the currently available methods do not allow for that, in this paper, we propose a holistic approach for solving a Multi-Objective Path Planning (MOPP) problem for UAVs in a three-dimensional, large-scale urban environment. For the tackled optimization problem, we propose an energy model and a noise model for a UAV, following a smooth 3D path. We utilize a path representation based on 3D Non-Uniform Rational B-Splines (NURBS). As optimizers, we use a conventional version of an Evolution Strategy (ES), two standard Multi-Objective Evolutionary Algorithms (MOEAs) - NSGA2 and MO-CMA-ES, and a gradient-based L-BFGS-B approach. To guide the optimization, we propose hybrid versions of the mentioned algorithms by applying an advanced initialization scheme that is based on the exact bidirectional Dijkstra algorithm. We compare the different algorithms with and without hybrid initialization in a statistical analysis, which considers the number of function evaluations and quality features of the obtained Pareto fronts indicating convergence and diversity of the solutions. We evaluate the methods on a realistic 3D urban path planning scenario in New York City, based on real-world data exported from OpenStreetMap. The examination's results indicate that hybrid initialization is the main factor for the efficient identification of near-optimal solutions.
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