Data-Driven Exploration of Lentic Water Bodies with ASVs Guided by Gradient-Free Optimization/Contour Detection Algorithms

E. Besada-Portas, J. Girón-Sierra, J. Jiménez, J. Orozco
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引用次数: 1

Abstract

This paper presents a local-path planner for water quality monitoring involving an Autonomous Surface Vehicle (ASV). The planner determines new measuring waypoints based on the information collected so far, and on two gradient-free optimization and contour-detection algorithms. In particular, the optimization algorithm generates the locations where the variable/substance under study must be measured and use them as the waypoints of the external loop of the Guidance, Navigation and Control system of our ASV. Besides, the contour algorithm obtains useful waypoints to determine the water body locations where the variable/substance under study reaches a given value. The paper also analyzes how the approach works via progressive simulations over an ASV carefully modelled with a set of non-linear differential equations. Preliminary results suggest that the approach can be useful in real-world single-ASV water-quality monitoring missions where there is not previous knowledge of the state and location of the variable/substance under study.
基于无梯度优化/轮廓检测算法的asv数据驱动水体探测
提出了一种基于自动水面车辆(ASV)的水质监测局部路径规划方法。规划器根据目前收集到的信息,以及两种无梯度优化和轮廓检测算法,确定新的测量路点。特别是,优化算法生成了所研究变量/物质必须测量的位置,并将其用作ASV制导、导航和控制系统外回路的路点。此外,轮廓算法获得有用的路径点,以确定所研究变量/物质达到给定值的水体位置。本文还分析了该方法是如何通过一组非线性微分方程精心建模的ASV上的渐进模拟来工作的。初步结果表明,该方法可用于现实世界的单asv水质监测任务,因为之前不知道所研究的变量/物质的状态和位置。
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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