3D Hybrid Path Planning for Optimized Coverage of Agricultural Fields: A
Novel Approach for Wheeled Robots
- Danial POUR ARAB,
- Matthias Spisser,
- Caroline Essert
Matthias Spisser
T&S - Technology and Strategy Strasbourg
Author ProfileCaroline Essert
Laboratoire des Sciences de l'Ingenieur de l'Informatique et de l'Imagerie
Author ProfileAbstract
Over the last few decades, the agricultural industry has witnessed
significant advancements in autonomous systems, primarily aimed at
improving efficiency while reducing environmental impact. The critical
role of complete coverage path planning cannot be overstated in this
context. It involves determining an optimal path for tasks such as
harvesting, mowing, and spraying, taking into account various factors
like land topography, operational requirements, and robot
characteristics. Our previous approach introduced a tree-based
exploration method to generate potential solutions, coupled with an
optimization process to select the best ones, considering field
complexities and robot characteristics. Yet, despite its strengths, it
had certain limitations, notably in computational time and number of
examined driving directions. In this paper, we present a novel hybrid
method that combines the comprehensive coverage benefits of our original
approach with the computational efficiency of the Fields2Cover
algorithm. Besides combining our previous approach and Fieds2Cover
strengths for optimizing coverage area, overlaps, non-working path
length and overall travel time, it significantly improves the
computation process, enhances the flexibility of trajectory generation.
It also takes into account the working trajectory inclinations for more
advanced optimization to address soil erosion and energy consumption. In
an effort to support this innovative approach, we have also created and
made available a public dataset. This dataset includes both 2D and 3D
representations of thirty agricultural fields located in France. This
resource not only illustrates the effectiveness of our approach but also
provides an invaluable data for future research in complete coverage
path planning within the context of modern agriculture.16 Nov 2023Submitted to Journal of Field Robotics 17 Nov 2023Submission Checks Completed
17 Nov 2023Assigned to Editor
17 Nov 2023Review(s) Completed, Editorial Evaluation Pending
26 Apr 2024Reviewer(s) Assigned
04 Aug 2024Review(s) Completed, Editorial Evaluation Pending
11 Aug 2024Editorial Decision: Accept