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Monitoring Scheduling of Drones for Emission Control Areas: An Ant Colony-Based Approach

Poly Z. H. Sun, Xiaosong Luo, Edmond Q. Wu, Tienyu Zuo, Zhi‐Ri Tang, Zilong Zhuang

2021IEEE Transactions on Intelligent Transportation Systems36 citationsDOI

Abstract

The drone has become a promising tool to improve the efficiency of vessel emission monitoring in emission control areas of the part due to its high mobility. However, how to optimize the flight path of drones to improve the weighted sum of monitored vessels, i.e., drone scheduling problem (DSP), is a not yet fully researched problem. In this paper, different from the classic optimization solution method used by the literature, an efficient ant colony-based algorithm is developed to solve DSP. Given the characteristics of DSP, a hierarchical-based pheromone update strategy and partition-based pheromone management mechanism are proposed to optimize the typical ant colony algorithm. Numerical experiments not only illustrate the feasibility of using the ant colony algorithm to solve DSP, but also show that the algorithm we proposed outperforms other compared methods in terms of the solution quality and the solving speed under different problem scales.

Topics & Concepts

DroneAnt colony optimization algorithmsPartition (number theory)Scheduling (production processes)Ant colonyComputer scienceDigital signal processingMathematical optimizationEngineeringAlgorithmMathematicsCombinatoricsGeneticsComputer hardwareBiologyMaritime Transport Emissions and EfficiencyVehicle Routing Optimization MethodsElectric Vehicles and Infrastructure
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