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Urban Landscape Change Analysis Using Local Climate Zones and Object-Based Classification in the Salt Lake Metro Region, Utah, USA

机译:基于局部气候带和基于对象分类的美国犹他州盐湖都会区的城市景观变化分析

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Urban areas globally are vulnerable to warming climate trends exacerbated by their growing populations and heat island effects. The Local Climate Zone (LCZ) typology has become a popular framework for characterizing urban microclimates in different regions using various classification methods, including a widely adopted pixel-based protocol by the World Urban Database and Access Portal Tools (WUDAPT) Project. However, few studies to date have explored the potential of object-based image analysis (OBIA) to facilitate classification of LCZs given their inherent complexity, and few studies have further used the LCZ framework to analyze land cover changes in urban areas over time. This study classified LCZs in the Salt Lake Metro Region, Utah, USA for 1993 and 2017 using a supervised object-based analysis of Landsat satellite imagery and assessed their change during this time frame. The overall accuracy, measured for the most recent classification period (2017), was equal to 64% across 12 LCZs, with most of the error resulting from similarities among highly developed LCZs and non-developed classes with sparse or low-stature vegetation. The observed 1993–2017 changes in LCZs indicated a regional tendency towards primarily suburban, open low-rise development, and large low-rise and paved classes. However, despite the potential for local cooling with landscape transitions likely to increase vegetation cover and irrigation compared to pre-development conditions, summer averages of Landsat-derived top-of-atmosphere brightness temperatures showed a pronounced warming between 1992–1994 and 2016–2018 across the study region, with a 0.1–2.9 °C increase among individual LCZs. Our results indicate that future applications of LCZs towards urban change analyses should develop a stronger understanding of LCZ microclimate sensitivity to changes in size and configuration of urban neighborhoods and regions. Furthermore, while OBIA is promising for capturing the heterogeneous and multi-scale nature of LCZs, its applications could be strengthened by adopting more generalizable approaches for LCZ-relevant segmentation and validation, and by incorporating active remote sensing data to account for the 3D complexity of urban areas.
机译:全球城市地区容易受到人口增长和热岛效应加剧的气候变暖趋势的影响。本地气候区(LCZ)类型已成为使用各种分类方法来表征不同地区城市小气候的流行框架,其中包括世界城市数据库和访问门户工具(WUDAPT)项目广泛采用的基于像素的协议。然而,鉴于其固有的复杂性,迄今为止,很少有研究探索基于对象的图像分析(OBIA)促进LCZ分类的潜力,并且很少有研究进一步使用LCZ框架来分析随时间推移城市地区的土地覆盖变化。这项研究使用有监督的基于对象的Landsat卫星图像分析,对1993年和2017年美国犹他州盐湖都会区的LCZ进行了分类,并评估了此期间的变化。在最近的分类期(2017年)中测得的总体准确性在12个LCZ中等于64%,其中大部分误差是由于高度发达的LCZ和植被稀疏或低矮的非发达类之间的相似性引起的。观察到的1993-2017年LCZ的变化表明,该地区趋向于主要是郊区化,开放式低层发展以及大型低层和铺砌等级。然而,尽管与开发前的条件相比,局部降温和景观转换可能会增加植被覆盖和灌溉,但从1992年至1994年至2016年至2018年之间,由Landsat得出的大气顶亮度温度的夏季平均值显示出明显的变暖现象。在整个研究区域中,单个LCZ之间的温度升高0.1-2.9°C。我们的研究结果表明,LCZ在城市变化分析中的未来应用应能加深对LCZ小气候对城市邻里和地区规模和构造变化敏感性的理解。此外,虽然OBIA有望捕获LCZ的异质和多尺度性质,但可以通过采用更具通用性的方法来进行LCZ相关的分割和验证,并结合有效的遥感数据来解决LCZ的3D复杂性,从而加强其应用。城市地区。

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