利用遥感数据估算城市甲烷浓度

C. Stadler, V. S. Fusé, A. Faramiñán, Santiago Linares, P. Juliarena
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引用次数: 0

摘要

鉴于其潜在的全球变暖效应,甲烷(CH4)是第二重要的温室气体(GHG)。虽然城市只占全球地表面积的2%,但它们排放的温室气体却占全球总量的70%。因此,有必要研究它们的大气浓度变化,以确定其主要来源并减轻其排放。本研究的主要目的是利用卫星产品估算城市CH4浓度。为此,首先对阿根廷坦迪尔市16个地点的大气CH4浓度进行了为期一年的分析;这样就可以对观测数据进行登记。结果表明,冬季和秋季的浓度高于夏季和春季。然后,利用Landsat 8卫星数据获取归一化植被指数(NDVI)和地表温度(LST)。采用线性回归方法,以季节CH4浓度为因变量,NDVI和LST为自变量。调整后的R2为0.53,影响CH4浓度的主要变量为NDVI, NDVI与城市化有关。最后,将回归得到的数学表达式应用于城市CH4浓度,分析城市CH4浓度的时空变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of urban methane concentration from remote sensor data
Methane (CH4) is the second more important greenhouse gas (GHG), respecting its potential global warming. Although cities represent only 2% of the global surface, they are responsible for 70% of the GHGs emissions. Thus, it is necessary to study their atmospheric concentration variations to identify the main sources and mitigate their emissions. The main objective of this study is to estimate the CH4 urban concentration using satellite products. To do this, first the atmospheric CH4 concentration was analyzed in 16 sites in the city of Tandil (Argentina) for one year; thus, the observed data could be registered. It was found that in winter and autumn, the concentrations were higher than in summer and spring. Then, the data from Landsat 8 satellite were used to obtain the Normalized Difference Vegetation Index (NDVI) and Land Surface Temperature (LST). Linear regression was applied, taking into account the seasonal CH4 concentration as the dependent variable, and the NDVI and LST as the independent variables. The adjusted R2 was 0.53, and the principal variable that affected the CH4 concentration was NDVI, which is related to urbanization. Finally, the mathematical expression from the regression was applied to obtain CH4 urban concentration, which allows us to analyze the temporal and spatial variations.
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