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Optimizing Agricultural Drone Operations: From Launch and Recovery Siting to Tiered Routing Strategies
arXiv Math
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이 매체는 공공·자유 라이선스로 본문을 직접 표시합니다.Mathematics > Optimization and Control
[Submitted on 18 Jun 2026]
Title:Optimizing Agricultural Drone Operations: From Launch and Recovery Siting to Tiered Routing Strategies
View PDF HTML (experimental)Abstract:Drones are increasingly used in agriculture, where tight margins demand efficient planning. Current optimization tools suffer from exponential runtimes as problem sizes grow, necessitating practical heuristics for daily operations. This paper presents an operational framework and benchmarking analysis for drone spraying operations. We evaluate the trade-offs between facility siting methods and tiered routing parameters. For facility siting, comparing a Mixed-Integer Program (MIP) baseline against a $p$-Median heuristic shows that the heuristic reduces runtime by three orders of magnitude, from over 97 seconds to under 1.2 seconds, with only a 4\% reduction in serviced field area. For route planning, a tiered problem decomposition approach partitioning the target area into 6 to 8 spatial clusters reduces computation time by an order of magnitude with minimal degradation in serviced area. This framework achieves minute-scale planning on commodity hardware, demonstrating operational relevance. Future research will incorporate weather modeling, integrated optimization of facility location and routing, and validation across diverse field geometries.
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