Wind-Aware Path Optimization for an Aerobot in the Atmosphere of Venus Using Genetic Algorithms

Anna Puigvert I Juan, Bernardo Martinez Rocamora, Guilherme A. S. Pereira
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引用次数: 1

Abstract

This paper presents a path optimization solution for an autonomous aerial robot (aerobot) in the windy atmosphere of Venus. The aircraft is required to travel from its current position to a goal position by following minimum energy paths. The approach proposed in this paper uses genetic algorithms, a heuristic search that, based on a population of initially feasible paths and a set of biologically inspired operations, finds a low-cost path. The proposed cost function accounts for energy expenditure, such as thrust or drag, and also energy accumulation, such as charging with solar panels and gains from potential energy (e.g., due to upward directional winds). Path feasibility is assured by computing local reachability regions based on the wind velocity and the maximum speed of the aerobot. The method is illustrated through a series of simulations that show our results as a function of the number of iterations and path population sizes. A comparison with a previous algorithm is also made.
基于遗传算法的金星大气飞行器风感知路径优化
提出了一种自主飞行机器人在金星多风大气中的路径优化方案。飞机被要求从当前位置通过最小能量路径到达目标位置。本文提出的方法使用遗传算法,这是一种启发式搜索,基于一组初始可行路径和一组生物启发操作,找到一条低成本的路径。提议的成本函数考虑了能量消耗,例如推力或阻力,以及能量积累,例如用太阳能电池板充电和势能收益(例如,由于向上方向的风)。基于风速和飞行器最大速度计算局部可达区域,保证路径的可行性。通过一系列的模拟来说明该方法,这些模拟表明我们的结果是迭代次数和路径总体大小的函数。并与之前的算法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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