School of Architecture, Tianjin University, Tianjin, China.
School of Civil Engineering, Tianjin University, Tianjin, China.
Front Public Health. 2024 Sep 18;12:1402536. doi: 10.3389/fpubh.2024.1402536. eCollection 2024.
Urban green space (GS) exposure is recognized as a nature-based strategy for addressing urban challenges. However, the stress relieving effects and mechanisms of GS exposure are yet to be fully explored. The development of machine learning and street view images offers a method for large-scale measurement and precise empirical analysis.
This study focuses on the central area of Shanghai, examining the complex effects of GS exposure on psychological stress perception. By constructing a multidimensional psychological stress perception scale and integrating machine learning algorithms with extensive street view images data, we successfully developed a framework for measuring urban stress perception. Using the scores from the psychological stress perception scale provided by volunteers as labeled data, we predicted the psychological stress perception in Shanghai's central urban area through the Support Vector Machine (SVM) algorithm. Additionally, this study employed the interpretable machine learning model eXtreme Gradient Boosting (XGBoost) algorithm to reveal the nonlinear relationship between GS exposure and residents' psychological stress.
Results indicate that the GS exposure in central Shanghai is generally low, with significant spatial heterogeneity. GS exposure has a positive impact on reducing residents' psychological stress. However, this effect has a threshold; when GS exposure exceeds 0.35, its impact on stress perception gradually diminishes.
We recommend combining the threshold of stress perception with GS exposure to identify urban spaces, thereby guiding precise strategies for enhancing GS. This research not only demonstrates the complex mitigating effect of GS exposure on psychological stress perception but also emphasizes the importance of considering the "dose-effect" of it in urban planning and construction. Based on open-source data, the framework and methods developed in this study have the potential to be applied in different urban environments, thus providing more comprehensive support for future urban planning.
城市绿地(GS)暴露被认为是应对城市挑战的一种基于自然的策略。然而,GS 暴露的缓解压力效果和机制尚未得到充分探索。机器学习和街景图像的发展为大规模测量和精确的实证分析提供了一种方法。
本研究关注上海中心区,研究 GS 暴露对心理压力感知的复杂影响。通过构建多维心理压力感知量表,并将机器学习算法与广泛的街景图像数据相结合,我们成功开发了一种测量城市压力感知的框架。使用志愿者提供的心理压力感知量表的得分作为标记数据,我们通过支持向量机(SVM)算法预测上海中心城区的心理压力感知。此外,本研究还采用可解释的机器学习模型极端梯度提升(XGBoost)算法来揭示 GS 暴露与居民心理压力之间的非线性关系。
结果表明,上海中心区的 GS 暴露普遍较低,具有显著的空间异质性。GS 暴露对降低居民心理压力有积极影响。然而,这种影响有一个阈值;当 GS 暴露超过 0.35 时,其对压力感知的影响逐渐减弱。
我们建议将压力感知的阈值与 GS 暴露相结合,以识别城市空间,从而指导增强 GS 的精确策略。本研究不仅展示了 GS 暴露对心理压力感知的复杂缓解效果,还强调了在城市规划和建设中考虑其“剂量-效应”的重要性。基于开源数据,本研究中开发的框架和方法有可能应用于不同的城市环境,从而为未来的城市规划提供更全面的支持。