Construction of smart tourism system integrating tourist needs and scene characteristics

Xiqiong Wang
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引用次数: 0

Abstract

The demand for travel is increasing as human living conditions rise. The paper presents a smart tourism system architecture that incorporates visitors' demands and scenario characteristics, and performs path planning using path search algorithms and selective tour path recommendation algorithms, in order to improve tourists' travelling experiences and save them time. The experimental data showed that the enhanced heuristic search algorithm visited 122 nodes, which is 62.9% and 52.3% less than the sparrow search algorithm and the improved genetic search strategy, respectively. The number of iterations required to reach convergence for the selective tour path recommendation algorithm, genetic algorithm, discrete particle swarm algorithm, and genetic particle swarm algorithm, respectively, was 39, 90, 85, and 63, indicating that the proposed selective tour path recommendation algorithm has the fastest computational speed. The accuracy, stability, user satisfaction, and overall rating of the smart tourism system that integrates tourists' needs and scenario characteristics are all higher than those of the three types of tourism systems, such as the iBeacon Smart Tourism System, indicating that this smart tourism system is the best to use, helping to enhance tourists' experiences and promote the robust development of the tourism industry.
结合游客需求和景区特点构建智慧旅游系统
随着人类生活水平的提高,人们对旅游的需求也在不断增加。本文提出了一种智慧旅游系统架构,结合游客需求和场景特征,利用路径搜索算法和选择性游览路径推荐算法进行路径规划,以改善游客的旅游体验,节省游客时间。实验数据显示,增强启发式搜索算法访问了 122 个节点,分别比麻雀搜索算法和改进遗传搜索策略少 62.9% 和 52.3%。选择性游览路径推荐算法、遗传算法、离散粒子群算法和遗传粒子群算法达到收敛所需的迭代次数分别为 39、90、85 和 63,表明所提出的选择性游览路径推荐算法具有最快的计算速度。综合游客需求和场景特点的智慧旅游系统的准确性、稳定性、用户满意度和综合评分均高于iBeacon智慧旅游系统等三类旅游系统,说明该智慧旅游系统的使用效果最好,有助于提升游客体验,促进旅游业的蓬勃发展。
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CiteScore
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