Zongming Liu, Yue Zhu, Xiaoyu Zhang, Kongxi Zhu, Wei Hong
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引用次数: 0
摘要
在中国乡村振兴的背景下,防止国家资源的错配和确定急需更新的村庄已成为关键目标。现有的规划方法往往忽视了情感感知对环境意识和空间规划的影响。本研究提出了一个创新的框架来解决这一差距,重点是优化村庄建设以增强情绪反应。通过网络抓取和自然语言处理(NLP)对社交媒体数据进行分析,评估情绪评价。然后应用地理信息系统(GIS)评估村庄布局和环境特征。该研究以陕西省渭南市的国家级传统村落为研究对象,对“模范”、“低效”和“重点”村落进行了分类,并提出了针对性的规划建议。结果表明:(1)不同人群的情绪差异;(2)景观要素的正向影响各不相同,其中天空的正向影响最强(r = 0.328, p = 0.001);和(3)“示范村”、“重点村”和“低效村”的比例分别为6.52%、39.13%和50.00%,需要及时更新。本研究为将情感分析整合到中国农村规划中,以确保更有效的资源配置和村庄发展提供了一个新的理论和实践框架。
A planning method for traditional villages based on natural language processing and geographic information systems.
In the context of China's rural revitalization, preventing the misallocation of national resources and identifying villages in urgent need of renewal have become critical goals. Existing planning methods often overlook how emotional perceptions influence environmental awareness and spatial planning. This study proposes an innovative framework to address this gap, focusing on optimizing village construction to enhance emotional responses. By using web crawling and natural language processing (NLP), social media data is analyzed to assess emotional evaluations. Geographic information systems (GIS) are then applied to evaluate village layouts and environmental characteristics. Focusing on national-level traditional villages in Weinan, Shaanxi Province, the study identifies "exemplary," "inefficient," and "priority" villages, offering targeted planning recommendations. Results show: (1) emotional differences across population groups; (2) varying impacts of landscape elements, with the sky having the strongest positive influence (r = 0.328, p = 0.001); and (3) "exemplary," "priority," and "inefficient" villages account for 6.52%, 39.13%, and 50.00%, respectively, revealing a need for timely renewal. This study offers a novel theoretical and practical framework for integrating emotional analysis into China's rural planning to ensure more effective resource allocation and village development.
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