基于蚁群优化算法的旅游规划路径

Shuang Che, Yan Chen
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引用次数: 0

摘要

旅游业的发展带动了相关产业的发展。对于个性化的旅游推荐平台,为了更贴近用户的需求,我们对平台中存储的游客数据进行分析。并选择以用户行为分析为基础,探索数据库数据与旅游景区实时信息之间的定量关系,为游客提供个性化的旅游路线指导和设计。然而,目前的个性化推荐系统技术水平较低,且大多是基于静态数据作为外部特征,无法满足用户的实时性需求。本文针对传统的直线距离最优解预测导航方案,创新性地将用户兴趣实时动态预测分析转化为时间最优解。结合旅游景点的相关指标计算出规划方案。采用改进蚁群算法的启发式因子计算行进路径。应用Dijkstra最小二乘法求解信息素更新律,为游客在旅行过程中定制路线规划。仿真结果表明,时间轨迹最优解的最小二乘法在旅游规划中具有技术优势。为旅游产业个性化规划提供技术支持,为传统的导航轨迹预测研究做出贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tourism Planning Path Based on Ant Colony Optimization Algorithm
The development of tourism has led to the development of related industries. For the personalized travel recommendation platform, to be closer to the needs of users, we analyze the tourist data stored in the platform. We also select the basis of user behavior analysis to explore the quantitative relationship between database data and real-time information on tourist attractions, which is to guide and design personalized travel routes for tourists. However, the current personalized recommendation system has a low level of technology, and most of them are based on static data as external features, which can not meet the real-time needs of users. In this paper, for the traditional prediction navigation scheme of the optimal solution of straight-line distance, the real-time dynamic prediction analysis of user interest which is transformed into the optimal solution of time is innovatively used. The planning scheme is calculated by combining the relevant indicators of tourist attractions. The heuristic factor of the improved ant colony algorithm is adopted to calculate the travel path. The Dijkstra least square method is applied to solve the pheromone update law to customize the route planning for tourists during their travel. The simulation results indicate that the least square method of the optimal solution of the time trajectory has technical advantages in the tourism planning. It provides technical support for the individualized planning of tourism industry and contributes to the traditional navigation trajectory prediction research.
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