Content area
Traffic crashes and congestion generate high social and economic costs, yet traditional traffic monitoring methods, such as police patrols, fixed cameras, and helicopters, are costly, labor-intensive, and limited in spatial coverage. This paper presents a novel Drone Routing and Scheduling with Flexible Multiple Visits (DRSFMV) framework, an optimization model for planning drone-based highway monitoring under realistic operational constraints, including battery limits, variable monitoring durations, recharging at a depot, and target-specific inter-visit time limits. A mixed-integer nonlinear programming (MINLP) model and a linearized version (MILP) are presented to solve the problem. Due to the NP-hard nature of the underlying problem structure, a heuristic solver, Hexaly, is also used. A case study using real traffic census data from three Southern California counties tests the models across various network sizes and configurations. The MILP solves small and medium instances efficiently, and Hexaly produces high-quality solutions for large-scale networks. Results show clear trade-offs between drone availability and time-slot flexibility, and demonstrate that stricter revisit constraints raise operational cost.
Details
Software;
Linear programming;
Integer programming;
Police departments;
Law enforcement;
Crashes;
Mathematical models;
Optimization techniques;
Roads & highways;
Injuries;
Transportation planning;
Traffic flow;
Unmanned aerial vehicles;
Monitoring;
Monitoring systems;
Economic impact;
Arrest warrants;
Nonlinear programming;
Optimization models;
Vehicles;
Scheduling;
Fatalities;
Cameras;
Public safety;
Traffic violations;
Traffic accidents & safety;
Sensors;
Drones;
Traffic congestion;
Algorithms;
Mixed integer;
Surveillance;
Constraints;
Helicopters
; Alavi Sepideh 2
; Toragay Oguz 3 1 Department of Information Systems, Lam Family College of Business, San Francisco State University, San Francisco, CA 94132, USA; [email protected]
2 School of Cyber and Decision Sciences, Jack H. Brown College of Business and Public Administration, California State University, San Bernardino, CA 92407, USA; [email protected]
3 Great Valley School of Graduate Professional Studies, The Pennsylvania State University, Malvern, PA 19355, USA