An Adaptive Coverage Control Approach for Multiple Autonomous Off-road Vehicles in Dynamic Agricultural Fields
By: Sajad Ahmadi, Mohammadreza Davoodi, Javad Mohammadpour Velni
Potential Business Impact:
Farms get covered better with smart robots.
This paper presents an adaptive coverage control method for a fleet of off-road and Unmanned Ground Vehicles (UGVs) operating in dynamic (time-varying) agricultural environments. Traditional coverage control approaches often assume static conditions, making them unsuitable for real-world farming scenarios where obstacles, such as moving machinery and uneven terrains, create continuous challenges. To address this, we propose a real-time path planning framework that integrates Unmanned Aerial Vehicles (UAVs) for obstacle detection and terrain assessment, allowing UGVs to dynamically adjust their coverage paths. The environment is modeled as a weighted directed graph, where the edge weights are continuously updated based on the UAV observations to reflect obstacle motion and terrain variations. The proposed approach incorporates Voronoi-based partitioning, adaptive edge weight assignment, and cost-based path optimization to enhance navigation efficiency. Simulation results demonstrate the effectiveness of the proposed method in improving path planning, reducing traversal costs, and maintaining robust coverage in the presence of dynamic obstacles and muddy terrains.
Similar Papers
Density-Driven Multi-Agent Coordination for Efficient Farm Coverage and Management in Smart Agriculture
Systems and Control
Drones spray crops smarter, saving chemicals and time.
Local Path Planning with Dynamic Obstacle Avoidance in Unstructured Environments
Robotics
Robot safely dodges moving things to reach its goal.
Radio-Coverage-Aware Path Planning for Cooperative Autonomous Vehicles
Signal Processing
Helps self-driving cars find best routes with good internet.