Coverage path planning for agricultural ground multi-robots under complex terrain conditions

Date

2023

Journal Title

Journal ISSN

Volume Title

Publisher

Kansas State University

Abstract

As steep terrain conditions are considered to be too risky for human operators, agricultural tasks must be carried out by multi-robots. This research considers minimum energy path planning by a team of ground robots for full coverage of uneven terrain. Experimental data from a real robot is used to develop a machine learning model to estimate minimum energy straight line paths between pairs of proximally located points. Longer paths are approximated as sequences of line segments. Exemplar-based clustering is used to identify a set of waypoints, which can be used for sensor placement, to ensure full terrain coverage. Treating the waypoints as the vertices of a digraph, optimal cyclic paths for navigation by a team of agricultural robots are determined. The proposed approach for waypoint identification and optimal path discovery can be implemented through local message passing in a sensor network. Comparison with other recently proposed methods, and simulations using real-world elevation data establish the effectiveness of the proposed approach.

Description

Keywords

Factor graph model, Optimization, Multi-robots, Message passing, Agriculture, Machine learning

Graduation Month

December

Degree

Master of Science

Department

Department of Electrical and Computer Engineering

Major Professor

Stephen Welch; Sanjoy Das

Date

Type

Thesis

Citation