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Monte Carlo sampling for the tourist trip design problem

Authors :
Xiaochen Chou
Luca Maria Gambardella
Roberto Montemanni
Source :
Millenium, Vol 2, Iss 10 (2019)
Publication Year :
2019
Publisher :
Instituto Politécnico de Viseu, 2019.

Abstract

Introduction: The Tourist Trip Design Problem is a variant of a route-planning problem for tourists interested in multiple points of interest. Each point of interest has different availability, and a certain satisfaction score can be achieved when it is visited. Objectives: The objective is to select a subset of points of interests to visit within a given time budget, in such a way that the satisfaction score of the tourist is maximized and the total travel time is minimized. Methods: In our proposed model, the calculation of the availability of a POI is based on the waiting time and / or the weather forecast. However, research shows that most tourists prefer to travel within a crowded and limited area of very attractive POIs for safety reasons and because they feel more in control. Results: In this work we demonstrate that the existing model of the Probabilistic Orienteering Problem fits a probabilistic variant of this problem and that Monte Carlo Sampling techniques can be used inside a heurist solver to efficiently provide solutions. Conclusions: In this work we demonstrate the existing model of the Probabilistic Orienteering Problem fits the stochastic Tourist Trip Design Problem. We proposed a way to solve the problem by using Monte Carlo Sampling techniques inside a heuristic solver and discussed several possible improvements on the model. Further extension of the model will be developed for solving more practical problems.

Details

Language :
English, Portuguese
ISSN :
08733015 and 1647662X
Volume :
2
Issue :
10
Database :
Directory of Open Access Journals
Journal :
Millenium
Publication Type :
Academic Journal
Accession number :
edsdoj.2c45fe1d9574ef4a76a75e1788aa71d
Document Type :
article
Full Text :
https://doi.org/10.29352/mill0210.09.00259