A method for composing tour schedules adaptive to weather change

Bing Wu, Y. Murata, N. Shibata, K. Yasumoto, Minoru Ito
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引用次数: 12

Abstract

People do sightseeing in their spare time to relax, and sightseeing is an important industry for some regions. The satisfaction of tourists critically depends on weather during their tours. In order to give people maximum satisfaction, we have to take care of the weather when planning a schedule. However, if there are many possible patterns for weather changes, the number of possible schedules will be very large, and in this case, it is difficult to find a good schedule. In this paper, we formulate the problem to compose schedules for probabilistically changing weather when the probability of future weather is given. We also propose an approximation algorithm for this problem based on the greedy search and the neighborhood search techniques. To evaluate the proposed method, we compare our method with Brute force method and a greedy method for an instance of Beijing sightseeing. As a result, the proposed method found the optimal solution in 6 sec, while the Brute force method took 16 hours. The proposed method composed a schedule whose expected satisfaction is 17.9 composed by the greedy method, for an instance with 20 destinations.
一种适应天气变化的旅游日程编制方法
人们在业余时间进行观光旅游来放松身心,在一些地区观光旅游是一项重要的产业。游客的满意度在很大程度上取决于旅游期间的天气。为了给人们最大的满足感,我们在计划日程时必须考虑天气。然而,如果有许多可能的天气变化模式,可能的时间表数量将非常大,在这种情况下,很难找到一个好的时间表。本文研究了当未来天气的概率给定时,如何编制概率变化天气的调度问题。我们还提出了一种基于贪心搜索和邻域搜索技术的近似算法。以北京观光为例,将该方法与蛮力方法和贪心方法进行了比较。结果表明,该方法在6秒内找到了最优解,而蛮力方法则需要16个小时。对于一个有20个目的地的实例,提出的方法组成了一个期望满意度为17.9的由贪心方法组成的调度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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