基于深度学习的城市森林景观对热环境的影响:以中国东南部三个主要城市为例

Forests Pub Date : 2024-07-25 DOI:10.3390/f15081304
Shenye Zhang, Ziyi Wu, Zhilong Wu, Sen Lin, Xisheng Hu, Lifeng Zheng
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引用次数: 0

摘要

城市化进程的加快加剧了城市热岛现象,而城市森林被认为是调节热环境的有效策略。然而,对于城市森林的详细空间配置与热环境之间的非线性关联,仍然缺乏系统的研究。我们提出了一种基于深度学习的方法,利用多源高分辨率遥感数据和相对辐射校正来提取森林数据。随后,我们利用深度神经网络(DNN)量化了中国福建省福州、厦门和漳州夏季和冬季城市森林景观模式与地表温度(LST)之间的联系。我们的研究结果表明(1)在提取精度和适应性方面,我们的提取方法优于 DeepLabv3+、FCN_8S 和 SegNet,总体精度(OA)达到 87.57%;此外,相对辐射校正的实施提高了提取精度和模型泛化能力,使 OA 提高了 0.05%。(2)地理和季节差异影响了城市森林的降温效应,夏季降温效应更为明显,尤其是在漳州。(3) 森林景观组成和配置对热环境影响的重要性随季节而变化;景观配置对三个城市地表温度的调节作用更为关键,冬季比夏季更为重要。(4) 森林空间格局的季节性和特定城市的差异影响低地温层。针对特定季节、城市和尺度采用适当的森林结构可以优化降温效果。这些结果为城市热岛动力学提供了定量的见解,对城市规划战略具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Impact of Urban Forest Landscape on Thermal Environment Based on Deep Learning: A Case of Three Main Cities in Southeastern China
Accelerated urbanization has exacerbated the urban heat island phenomenon, and urban forests have been recognized as an effective strategy for modulating thermal environments. Nevertheless, there remains a dearth of systematic investigations into the nonlinear associations between the detailed spatial configurations of urban forests and thermal conditions. We proposed a deep learning-based approach to extract forest data, utilizing multisource high-resolution remote sensing data with relative radiometric correction. Subsequently, we employed deep neural networks (DNNs) to quantify the linkages between urban forest landscape patterns and land surface temperature (LST) in summer and winter across Fuzhou, Xiamen, and Zhangzhou in Fujian Province, China. Our findings indicate the following: (1) Our extraction approach outperforms DeepLabv3+, FCN_8S, and SegNet in terms of extraction precision and adaptability, achieving an overall accuracy (OA) of 87.57%; furthermore, the implementation of relative radiometric correction enhances both the extraction precision and model generalizability, improving OA by 0.05%. (2) Geographic and seasonal differences influence the urban forests’ cooling effects, with more pronounced cooling in summer, particularly in Zhangzhou. (3) The significance of forest landscape composition and configuration in affecting the thermal environment varies seasonally; landscape configuration plays a more pivotal role in modulating surface temperatures across the three cities, with a more critical role in winter than in summer. (4) Seasonal and city-specific variations in forest spatial patterns influence LST. Adopting the appropriate forest structures tailored to specific seasons, cities, and scales can optimize cooling effects. These results offer quantitative insights into urban heat island dynamics and carry significant implications for urban planning strategies.
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