Routing and Scheduling in Multigraphs With Time Constraints-A Memetic Approach for Airport Ground Movement

IEEE TRANSACTIONS ON EVOLUTIONARY COMPUTATION(2024)

引用 0|浏览2
暂无评分
摘要
Routing and scheduling problems with increasingly realistic modeling approaches often entail the consideration of multiple objectives, time constraints, and modeling the system as a multigraph. This detailed modeling approach has increased computational complexity and may also lead to violation of the additivity property of the costs. In the worst scenario, increased complexity makes the problem intractable for exact algorithms. Even when the problem is solvable, exact algorithms may not provide solutions within the given time budget, and the found solutions are not guaranteed to be optimal due to the additivity property violation. Approximate solution methods become more suitable in this case. This article focuses on one particular real-world application, the Airport Ground Movement Problem, where both time constraints and parallel arcs are involved. We introduce a novel memetic algorithm for routing in multigraphs with time constraints (MARMT) and present a comprehensive study of its different variants based on diverse genetic representation methods. We propose a local search operator that enhances search efficiency and effectiveness. MARMT is tested on real data based on two airports of different sizes. Our results show that MARMT does not suffer from the nonadditivity property problem as it outperforms the state-of-the-art exact algorithm when allowed to converge. When a time budget of 10 s is imposed on MARMT, it is able to provide solutions with quality comparable (within 1%-5% degradation) to the ones given by the exact algorithm with respect to the aggregated objective values. MARMT can be adapted for other applications, such as train operations.
更多
查看译文
关键词
Time factors,Airports,Routing,Costs,Aircraft,Shortest path problem,Metaheuristics,Airport ground movement,memetic algorithm (MA),multigraphs,multiobjective routing and scheduling,time windows
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要