Suppr超能文献

基于空间数据和随机森林的地铁站选址与预测:以中国兰州为例的研究

Selection and prediction of metro station sites based on spatial data and random forest: a study of Lanzhou, China.

作者信息

Niu Quanfu, Wang Gang, Liu Bo, Zhang Ruizhen, Lei Jiaojiao, Wang Hao, Liu Mingzhi

机构信息

School of Civil Engineering, Lanzhou University of Technology, Lanzhou, 730050, China.

Emergency Mapping Engineering Research Center of Gansu Province, Lanzhou, 730050, China.

出版信息

Sci Rep. 2023 Dec 18;13(1):22542. doi: 10.1038/s41598-023-49877-6.

Abstract

Urban economic development, congestion relief, and traffic efficiency are all greatly impacted by the thoughtful planning of urban metro station layout. with the urban area of Lanzhou as an example, the suitability of the station locations of the built metro stations of the rail transit lines 1 and 2 in the study area have been evaluated using multi-source heterogeneous spatial data through data collection, feature matrix construction, the use of random forest and K-fold cross-validation, among other methods. The average Gini reduction value was used to examine the contribution rate of each feature indicator based on the examination of model truthfulness. According to the study's findings: (1) K-fold cross-validation was applied to test the random forest model that was built using the built metro stations and particular factors. The average accuracy of the tests and out-of-bag data (OOB) of tenfold cross-validation were 89.62% and 91.285%, respectively. Additionally, the AUC area under the ROC curve was 0.9823, indicating that this time, from the perspective of the natural environment, traffic location, and social factors The 19 elements selected from the views of the urban function structure, social economics, and natural environment are closely associated to the locations of the metro station in the research region, and the prediction the findings are more reliable; (2) It becomes apparent that more than half of the built station sites display excellent agreement with the predicted sites in terms of geographical location by superimposing the built metro station sites with the prediction results and tally up their cumulative prediction probability values within the 300 m buffering zone; (3) Based on the contribution rate of each indicator to the model, transport facilities, companies, population density, night lighting, science, education and culture, residential communities, and road network density are identified as the primary influential factors, each accounting for over 6.6%. Subsequently, land use, elevation, and slope are found to have relatively lower contributions. The results of the research provided important information for the local metro's best location selection and planning.

摘要

城市经济发展、拥堵缓解和交通效率都受到城市地铁站布局精心规划的极大影响。以兰州城区为例,通过数据收集、特征矩阵构建、随机森林的运用以及K折交叉验证等多源异构空间数据方法,对研究区域内已建成的轨道交通1号线和2号线地铁站的选址适宜性进行了评估。基于模型真实性检验,使用平均基尼系数减少值来检验每个特征指标的贡献率。根据研究结果:(1)应用K折交叉验证来测试使用已建成地铁站和特定因素构建的随机森林模型。十折交叉验证的测试平均准确率和袋外数据(OOB)分别为89.62%和91.285%。此外,ROC曲线下的AUC面积为0.9823,表明此次从自然环境、交通区位和社会因素等城市功能结构、社会经济和自然环境视角选取的19个要素与研究区域内地铁站的位置密切相关,预测结果较为可靠;(2)通过将已建成的地铁站站点与预测结果进行叠加,并统计其在300米缓冲区内的累积预测概率值,明显看出超过一半的已建站点在地理位置上与预测站点显示出极好的一致性;(3)根据各指标对模型的贡献率,确定交通设施、公司、人口密度、夜间照明、科学教育文化、居民社区和道路网密度为主要影响因素,各因素贡献率均超过6.6%。随后发现土地利用、海拔和坡度的贡献率相对较低。该研究结果为当地地铁的最佳选址和规划提供了重要信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ff58/10728089/1f6b7a099463/41598_2023_49877_Fig1_HTML.jpg

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验