Approximation Algorithms for the Team Orienteering Problem

In this paper we study a team orienteering problem, which is to find service paths for multiple vehicles in a network such that the profit sum of serving the nodes in the paths is maximized, subject to the cost budget of each vehicle. This problem has many potential applications in IoT and smart cit...

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Bibliographic Details
Published inAnnual Joint Conference of the IEEE Computer and Communications Societies pp. 1389 - 1398
Main Authors Xu, Wenzheng, Xu, Zichuan, Peng, Jian, Liang, Weifa, Liu, Tang, Jia, Xiaohua, Das, Sajal K.
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.07.2020
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Summary:In this paper we study a team orienteering problem, which is to find service paths for multiple vehicles in a network such that the profit sum of serving the nodes in the paths is maximized, subject to the cost budget of each vehicle. This problem has many potential applications in IoT and smart cities, such as dispatching energy-constrained mobile chargers to charge as many energy-critical sensors as possible to prolong the network lifetime. In this paper, we first formulate the team orienteering problem, where different vehicles are different types, each node can be served by multiple vehicles, and the profit of serving the node is a submodular function of the number of vehicles serving it. We then propose a novel \left( {1 - {{(1/e)}^{\frac{1}{{2 + \varepsilon }}} \right) approximation algorithm for the problem, where ϵ is a given constant with 0 < ϵ≤ 1 and e is the base of the natural logarithm. In particular, the approximation ratio is no less than 0.32 when ϵ= 0.5. In addition, for a special team orienteering problem with the same type of vehicles and the profits of serving a node once and multiple times being the same, we devise an improved approximation algorithm. Finally, we evaluate the proposed algorithms with simulation experiments, and the results of which are very promising. Precisely, the profit sums delivered by the proposed algorithms are approximately 12.5% to 17.5% higher than those by existing algorithms.
ISSN:2641-9874
DOI:10.1109/INFOCOM41043.2020.9155343