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Assessment of Remote Sensing Data to Model PM10 Estimation in Cities with a Low Number of Air Quality Stations: A Case of Study in Quito, Ecuador

机译:评估遥感数据,以较少的空气质量站估计估计:基多,厄瓜多尔研究的案例

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摘要

The monitoring of air pollutant concentration within cities is crucial for environment management and public health policies in order to promote sustainable cities. In this study, we present an approach to estimate the concentration of particulate matter of less than 10 µm diameter (PM10) using an empirical land use regression (LUR) model and considering different remote sensing data as the input. The study area is Quito, the capital of Ecuador, and the data were collected between 2013 and 2017. The model predictors are the surface reflectance bands (visible and infrared) of Landsat-7 ETM+, Landsat-8 OLI/TIRS, and Aqua-Terra/MODIS sensors and some environmental indexes (normalized difference vegetation index—NDVI; normalized difference soil index—NDSI, soil-adjusted vegetation index—SAVI; normalized difference water index—NDWI; and land surface temperature (LST)). The dependent variable is PM10 ground measurements. Furthermore, this study also aims to compare three different sources of remote sensing data (Landsat-7 ETM+, Landsat-8 OLI, and Aqua-Terra/MODIS) to estimate the PM10 concentration, and three different predictive techniques (stepwise regression, partial least square regression, and artificial neuronal network (ANN)) to build the model. The models obtained are able to estimate PM10 in regions where air data acquisition is limited or even does not exist. The best model is the one built with an ANN, where the coefficient of determination (R2 = 0.68) is the highest and the root-mean-square error (RMSE = 6.22) is the lowest among all the models. Thus, the selected model allows the generation of PM10 concentration maps from public remote sensing data, constituting an alternative over other techniques to estimate pollutants, especially when few air quality ground stations are available.
机译:在城市内的空气污染物浓度监测对于环境管理和公共卫生政策至关重要,以促进可持续城市。在这项研究中,我们使用经验土地利用回归(LUR)模型并考虑到输入的不同遥感数据,提出一种估计小于10μm直径(PM10)的颗粒物质浓度的方法。研究区是厄瓜多尔的基多,数据在2013年和2017年之间收集。模型预测器是Landsat-7 Etm +,Landsat-8 Oli / Tirs和Aqua的表面反射带(可见和红外) Terra / Modis传感器和一些环境指标(归一化差异植被指数指数-NDVI;归一化差异土壤指数-NDSI,土壤调整后植被指数 - SAVI;归一化差水指数-NDWI;和陆地温度(LST))。从属变量是PM10接地测量。此外,本研究还旨在比较三种不同的遥感数据来源(Landsat-7 Etm +,Landsat-8 Oli和Aqua-Terra / Modis)来估算PM10浓度和三种不同的预测技术(逐步回归,部分最少方形回归,人工神经元网络(ANN))构建模型。所获得的模型能够估计空中数据采集受限甚至不存在的区域中的PM10。最好的模型是用ANN构建的模型,其中确定系数(R2 = 0.68)是最高的,根均方误差(RMSE = 6.22)是所有模型中最低的。因此,所选模型允许从公共遥感数据产生PM10浓度图,构成其他技术以估计污染物的替代,特别是当少量空气质量接地站时。

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