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A hybrid genetic approach for airborne sensor vehicle routing in real-time reconnaissance missions
Institution:1. Defence Research Development Canada – Valcartier, 2459 Pie-XI Blvd. North, Québec, PQ, Canada, G3J 1X5;2. Laval University, Computer Science Department, Quebec, PQ, Canada, G1K 7P4;1. College of Automation Engineering, Nanjing University of Aeronautics and Astronautics, Nanjing, 211106, China;2. Department of Automation, Tsinghua University, Beijing, 100084, China;1. Chordate Biology, Department of Natural and Exact Sciences, UNLPam, Uruguay 151, Santa Rosa, La Pampa, Argentina;2. Animal Health Laboratory, INTA, Anguil, Ruta Nacional 5 km 580, CC 11 6326 Anguil, La Pampa, Argentina;3. INTA EEA, Rafaela, Ruta 34 km, 227 2300 Rafaela, Santa Fe, Argentina;4. Animal Physiology, Department of Biology, Biochemistry and Pharmacy, National University of the South, Bahía Blanca, Argentina;5. CONICET, San Juan 670, Argentina;1. Grupo de Ecología Comportamental de Mamíferos, Cátedra de Fisiología Animal, Departamento de Biología, Bioquímica y Farmacia, Universidad Nacional del Sur, Argentina;1. School of Electrical and Information Engineering, Tianjin University, Tianjin 300072, China;2. Shenyang Aircraft Design and Research Institute, Shenyang 110000, China
Abstract:Past initiatives to address surveillance and reconnaissance mission planning mainly focused on low-level control aspects such as real-time path planning and collision avoidance algorithms in limited environment. However, few efforts have been spent on high-level real-time task allocation. It is believed that automated decision capabilities supporting real-time resource allocation for sensor control and interactions might significantly reduce user workload, focusing attention on alternate tasks and objectives while assigning hard computational tasks to artificial agents. In this paper, we propose a new hybrid genetic algorithm to solve the dynamic vehicle routing problem with time windows, in which a group of airborne sensors are engaged in a reconnaissance mission evolving in a dynamic uncertain environment involving known and unknown targets/threats. In that context, visiting a target may consist in carrying out a collection of subtasks such as search, detect, recognize and confirm suspected targets, discover and confirm new ones. The approach consists in concurrently evolving two populations of solutions to minimize total travel time and temporal constraint violation using genetic operators combining variations of key concepts inspired from routing techniques and search strategies. A least commitment principle in servicing scheduled customers is also exploited to potentially improve solution quality.
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