Jiaqi Cheng;Tianjun Liao;Guohua Wu;Zhongqiang Ma;Jianmai Shi
{"title":"交通巡逻中无人机的两梯队圆弧路径问题","authors":"Jiaqi Cheng;Tianjun Liao;Guohua Wu;Zhongqiang Ma;Jianmai Shi","doi":"10.1109/TASE.2025.3575171","DOIUrl":null,"url":null,"abstract":"Traditional patrolling methods relying on ground vehicles or fixed cameras are insufficient in adapting to dynamic changes in traffic flow due to their limited mobility and fixed positions, especially during emergencies like traffic accidents occur. In this paper, we investigate a new Truck-Drone collaborative Traffic Patrolling (TDTP) mode, where multiple trucks and drones work in a collaborative manner to enhance the efficiency of performing traffic patrolling tasks. The drone can be launched and recovered by trucks at certain points along the truck route, making it possible for both trucks and drones to perform patrol tasks simultaneously. A crucial aspect of TDTP is the coordinated arc routing scheduling of multiple trucks and drones, which is referred to as the Truck-Drone Arc Routing Problem (TD-ARP). We formulate the TD-ARP as a mixed-integer linear programming model with the objective of minimizing the total patrol time of all trucks and drones. Due to the difficulty of solving large instances of TD-ARP to optimality, we construct a divide and conquer based framework TA-TDAR (Task Allocation phase and Truck Drone fleet Arc Routing phase) for TD-ARP. TA involves the assignment of tasks to different truck-drone fleets, each comprising a truck and multiple drones, while TDAR focuses on path planning for the truck-drone fleets. Two phases are iteratively performed until the stopping criteria are met. In TA phase, a Task Allocation Heuristic method (TAH) is designed. Based on the task allocation results, an Adaptive Large Neighborhood Search algorithm with Local Search (ALNSLS) is embedded into TDAR phase to achieve a satisfactory scheduling scheme of each truck-drone fleet. Extensive experiments are conducted to validate the superiority of the proposed TAH-ALNSLS. The results show that our method has a potential improvement of up to 40% compared to the comparison methods, which stems from the divide and conquer framework and problem specific operators. Furthermore, several management implications are provided to assist practitioners in making efficient decisions. Note to Practitioners—This study is motivated by the need for developing effective and automated truck-drone collaborative traffic patrolling systems which can achieve complementary advantages to enhance the efficiency of performing traffic patrolling tasks. In truck-drone collaborative traffic patrolling systems, the drones provide flexible and efficient traffic patrol without the limitations of the road network, utilizing trucks as launch and recovery platforms to overcome the short battery endurance of drones. The successful implementation of truck-drone patrol system requires the coordinated arc routing scheduling between the trucks and drones. However, the truck-drone arc routing scheduling still remains largely unexplored. To establish truck-drone collaboration traffic patrol systems and obtain a high-quality patrol path, we formulate a mixed integrated model and develop a two-phase optimization method. The experimental results demonstrate the superiority of the proposed method. In addition, several meaningful insights are proposed based on experimental results, providing guidance for the practical application of the models and methods proposed in this paper.","PeriodicalId":51060,"journal":{"name":"IEEE Transactions on Automation Science and Engineering","volume":"22 ","pages":"17170-17188"},"PeriodicalIF":6.4000,"publicationDate":"2025-06-02","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Two-Echelon Arc Routing Problem With Drones in Traffic Patrol\",\"authors\":\"Jiaqi Cheng;Tianjun Liao;Guohua Wu;Zhongqiang Ma;Jianmai Shi\",\"doi\":\"10.1109/TASE.2025.3575171\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Traditional patrolling methods relying on ground vehicles or fixed cameras are insufficient in adapting to dynamic changes in traffic flow due to their limited mobility and fixed positions, especially during emergencies like traffic accidents occur. In this paper, we investigate a new Truck-Drone collaborative Traffic Patrolling (TDTP) mode, where multiple trucks and drones work in a collaborative manner to enhance the efficiency of performing traffic patrolling tasks. The drone can be launched and recovered by trucks at certain points along the truck route, making it possible for both trucks and drones to perform patrol tasks simultaneously. A crucial aspect of TDTP is the coordinated arc routing scheduling of multiple trucks and drones, which is referred to as the Truck-Drone Arc Routing Problem (TD-ARP). We formulate the TD-ARP as a mixed-integer linear programming model with the objective of minimizing the total patrol time of all trucks and drones. Due to the difficulty of solving large instances of TD-ARP to optimality, we construct a divide and conquer based framework TA-TDAR (Task Allocation phase and Truck Drone fleet Arc Routing phase) for TD-ARP. TA involves the assignment of tasks to different truck-drone fleets, each comprising a truck and multiple drones, while TDAR focuses on path planning for the truck-drone fleets. Two phases are iteratively performed until the stopping criteria are met. In TA phase, a Task Allocation Heuristic method (TAH) is designed. Based on the task allocation results, an Adaptive Large Neighborhood Search algorithm with Local Search (ALNSLS) is embedded into TDAR phase to achieve a satisfactory scheduling scheme of each truck-drone fleet. Extensive experiments are conducted to validate the superiority of the proposed TAH-ALNSLS. The results show that our method has a potential improvement of up to 40% compared to the comparison methods, which stems from the divide and conquer framework and problem specific operators. Furthermore, several management implications are provided to assist practitioners in making efficient decisions. Note to Practitioners—This study is motivated by the need for developing effective and automated truck-drone collaborative traffic patrolling systems which can achieve complementary advantages to enhance the efficiency of performing traffic patrolling tasks. In truck-drone collaborative traffic patrolling systems, the drones provide flexible and efficient traffic patrol without the limitations of the road network, utilizing trucks as launch and recovery platforms to overcome the short battery endurance of drones. The successful implementation of truck-drone patrol system requires the coordinated arc routing scheduling between the trucks and drones. However, the truck-drone arc routing scheduling still remains largely unexplored. To establish truck-drone collaboration traffic patrol systems and obtain a high-quality patrol path, we formulate a mixed integrated model and develop a two-phase optimization method. The experimental results demonstrate the superiority of the proposed method. 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Two-Echelon Arc Routing Problem With Drones in Traffic Patrol
Traditional patrolling methods relying on ground vehicles or fixed cameras are insufficient in adapting to dynamic changes in traffic flow due to their limited mobility and fixed positions, especially during emergencies like traffic accidents occur. In this paper, we investigate a new Truck-Drone collaborative Traffic Patrolling (TDTP) mode, where multiple trucks and drones work in a collaborative manner to enhance the efficiency of performing traffic patrolling tasks. The drone can be launched and recovered by trucks at certain points along the truck route, making it possible for both trucks and drones to perform patrol tasks simultaneously. A crucial aspect of TDTP is the coordinated arc routing scheduling of multiple trucks and drones, which is referred to as the Truck-Drone Arc Routing Problem (TD-ARP). We formulate the TD-ARP as a mixed-integer linear programming model with the objective of minimizing the total patrol time of all trucks and drones. Due to the difficulty of solving large instances of TD-ARP to optimality, we construct a divide and conquer based framework TA-TDAR (Task Allocation phase and Truck Drone fleet Arc Routing phase) for TD-ARP. TA involves the assignment of tasks to different truck-drone fleets, each comprising a truck and multiple drones, while TDAR focuses on path planning for the truck-drone fleets. Two phases are iteratively performed until the stopping criteria are met. In TA phase, a Task Allocation Heuristic method (TAH) is designed. Based on the task allocation results, an Adaptive Large Neighborhood Search algorithm with Local Search (ALNSLS) is embedded into TDAR phase to achieve a satisfactory scheduling scheme of each truck-drone fleet. Extensive experiments are conducted to validate the superiority of the proposed TAH-ALNSLS. The results show that our method has a potential improvement of up to 40% compared to the comparison methods, which stems from the divide and conquer framework and problem specific operators. Furthermore, several management implications are provided to assist practitioners in making efficient decisions. Note to Practitioners—This study is motivated by the need for developing effective and automated truck-drone collaborative traffic patrolling systems which can achieve complementary advantages to enhance the efficiency of performing traffic patrolling tasks. In truck-drone collaborative traffic patrolling systems, the drones provide flexible and efficient traffic patrol without the limitations of the road network, utilizing trucks as launch and recovery platforms to overcome the short battery endurance of drones. The successful implementation of truck-drone patrol system requires the coordinated arc routing scheduling between the trucks and drones. However, the truck-drone arc routing scheduling still remains largely unexplored. To establish truck-drone collaboration traffic patrol systems and obtain a high-quality patrol path, we formulate a mixed integrated model and develop a two-phase optimization method. The experimental results demonstrate the superiority of the proposed method. In addition, several meaningful insights are proposed based on experimental results, providing guidance for the practical application of the models and methods proposed in this paper.
期刊介绍:
The IEEE Transactions on Automation Science and Engineering (T-ASE) publishes fundamental papers on Automation, emphasizing scientific results that advance efficiency, quality, productivity, and reliability. T-ASE encourages interdisciplinary approaches from computer science, control systems, electrical engineering, mathematics, mechanical engineering, operations research, and other fields. T-ASE welcomes results relevant to industries such as agriculture, biotechnology, healthcare, home automation, maintenance, manufacturing, pharmaceuticals, retail, security, service, supply chains, and transportation. T-ASE addresses a research community willing to integrate knowledge across disciplines and industries. For this purpose, each paper includes a Note to Practitioners that summarizes how its results can be applied or how they might be extended to apply in practice.