Analysis of the application of path finding system based on efficiency improvement in smart tourism

With the proposal and development of intelligent tourism destination, the problem of tourism route planning has become a hot topic in tourism research. This study proposes an intelligent tourism route planning model based on efficiency improvement for Guangxi tourism route planning. In order to impr...

Full description

Bibliographic Details
Main Authors: Shuping Liu, Hao Wu
Format: Article
Language:English
Published: Elsevier 2023-11-01
Series:Intelligent Systems with Applications
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S266730532300090X
_version_ 1827686914443968512
author Shuping Liu
Hao Wu
author_facet Shuping Liu
Hao Wu
author_sort Shuping Liu
collection DOAJ
description With the proposal and development of intelligent tourism destination, the problem of tourism route planning has become a hot topic in tourism research. This study proposes an intelligent tourism route planning model based on efficiency improvement for Guangxi tourism route planning. In order to improve the efficiency of the model, this paper combines ant colony algorithm with genetic algorithm and introduces smoothing factor and guiding factor, and obtains genetic algorithm (genetic algorithm-path smoothing ant colony optimization) with changing probability. Experimental results show that the convergence speed of the algorithm is fast, and it can converge in 78 iterations, and the operation efficiency is higher. The result error of the proposed algorithm is 1.39, which is smaller than that of other comparative algorithms. In the actual application effect evaluation, the average satisfaction of the planned route of the intelligent tourism route planning model based on efficiency improvement is 15.38, which is higher than that of the traditional genetic algorithm and simulated annealing algorithm. It shows that the model can not only efficiently plan the best travel route, but also comprehensively consider the whole trip of tourists, so that tourists can have a better travel experience. The research provides an intelligent route planning method that is more efficient and more in line with tourists' needs for tourism development.
first_indexed 2024-03-10T09:25:20Z
format Article
id doaj.art-1cdafdc215374ce293426bafd8f1bfd9
institution Directory Open Access Journal
issn 2667-3053
language English
last_indexed 2024-03-10T09:25:20Z
publishDate 2023-11-01
publisher Elsevier
record_format Article
series Intelligent Systems with Applications
spelling doaj.art-1cdafdc215374ce293426bafd8f1bfd92023-11-22T04:49:31ZengElsevierIntelligent Systems with Applications2667-30532023-11-0120200265Analysis of the application of path finding system based on efficiency improvement in smart tourismShuping Liu0Hao Wu1College of Rural Revitalization, Zhengzhou Vocational University of Information and Technology, Zhengzhou, 450008, ChinaParty Committee, Zhengzhou Vocational University of Information and Technology, Zhengzhou, 450008, China; Corresponding author.With the proposal and development of intelligent tourism destination, the problem of tourism route planning has become a hot topic in tourism research. This study proposes an intelligent tourism route planning model based on efficiency improvement for Guangxi tourism route planning. In order to improve the efficiency of the model, this paper combines ant colony algorithm with genetic algorithm and introduces smoothing factor and guiding factor, and obtains genetic algorithm (genetic algorithm-path smoothing ant colony optimization) with changing probability. Experimental results show that the convergence speed of the algorithm is fast, and it can converge in 78 iterations, and the operation efficiency is higher. The result error of the proposed algorithm is 1.39, which is smaller than that of other comparative algorithms. In the actual application effect evaluation, the average satisfaction of the planned route of the intelligent tourism route planning model based on efficiency improvement is 15.38, which is higher than that of the traditional genetic algorithm and simulated annealing algorithm. It shows that the model can not only efficiently plan the best travel route, but also comprehensively consider the whole trip of tourists, so that tourists can have a better travel experience. The research provides an intelligent route planning method that is more efficient and more in line with tourists' needs for tourism development.http://www.sciencedirect.com/science/article/pii/S266730532300090XConvergence efficiencyAnt colony algorithmGenetic algorithmTransfer probabilityTourist route planning
spellingShingle Shuping Liu
Hao Wu
Analysis of the application of path finding system based on efficiency improvement in smart tourism
Intelligent Systems with Applications
Convergence efficiency
Ant colony algorithm
Genetic algorithm
Transfer probability
Tourist route planning
title Analysis of the application of path finding system based on efficiency improvement in smart tourism
title_full Analysis of the application of path finding system based on efficiency improvement in smart tourism
title_fullStr Analysis of the application of path finding system based on efficiency improvement in smart tourism
title_full_unstemmed Analysis of the application of path finding system based on efficiency improvement in smart tourism
title_short Analysis of the application of path finding system based on efficiency improvement in smart tourism
title_sort analysis of the application of path finding system based on efficiency improvement in smart tourism
topic Convergence efficiency
Ant colony algorithm
Genetic algorithm
Transfer probability
Tourist route planning
url http://www.sciencedirect.com/science/article/pii/S266730532300090X
work_keys_str_mv AT shupingliu analysisoftheapplicationofpathfindingsystembasedonefficiencyimprovementinsmarttourism
AT haowu analysisoftheapplicationofpathfindingsystembasedonefficiencyimprovementinsmarttourism