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Big geospatial data analysis for Canada's Air Pollutant Emissions Inventory (APEI): using google earth engine to estimate particulate matter from exposed mine disturbance areas

机译:加拿大空气污染物排放量清单(APEI)的大地理空间数据分析:使用Google地球引擎估算暴露的雷区干扰区域的颗粒物

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Particulate Matter (PM) emissions originating from mine waste and mine tailings can be hazardous to human health, depending on the ore type and processes used to extract ore. Until now, only a single, simple estimate of the total area of mine waste area across all of Canada has been available for calculating air quality emissions from this source. This single estimate, based on manual satellite interpretation completed in 1977, was extrapolated to estimate mine areas for all years from 1990 to the present. These area estimates were used annually to calculate the particulate matter from mines for the Canadian Air Pollutant Emissions Inventory (APEI); however, there is high uncertainty in these measurements of mine area and therefore in emissions estimates. In order to increase certainty in emissions estimates, the exposed mine waste areas must be mapped for each year. Mapping mine waste over areas as large as the Canadian landmass requires enormous quantities of data and considerable computational power, which will be compounded when a time-series analysis is required. Therefore, in this study, we have employed Google Earth Engine (GEE) Javascript API to map exposed mine areas in four "benchmark" years (1990, 2000, 2010, and current year 2018) as part of the APEI. A random forest classifier was trained using two separate datasets (Landsat-5 year 2000; and a combination of Landsat-8, Sentinel-1, and Sentinel-2 for the year 2018). Transfer learning was then used to apply the year 2000 model to the year 1990 and 2010 Landsat-5 imagery, which produced classification results for the four "benchmark" years in our time series. This tool has enabled the monitoring of mine growth over a 30-year period and has confirmed that overall the area of mines is growing in Canada. Overall, Google Earth Engine proved to be an invaluable tool in mapping exposed mine waste areas and would be similarly useful for any organization with large-area monitoring mandates or those interested in time-series analysis of the Landsat archive.
机译:源自矿山废物和尾矿的颗粒物(PM)排放可能对人体健康造成危害,具体取决于矿石类型和提取矿石的过程。到目前为止,只有一个简单的,估计整个加拿大矿山废物总面积的简单估算可用于计算此源的空气质量排放。这项基于1977年完成的人工卫星解释的估计数被外推以估计从1990年到现在的所有年份的矿区。这些面积估计每年用于计算加拿大空气污染物排放清单(APEI)的矿山颗粒物;但是,这些矿区测量结果以及排放估算值存在很大的不确定性。为了增加排放估算的确定性,必须每年对裸露的矿山废物区域进行绘制。在加拿大陆地这样大的区域上绘制矿山废物图需要大量数据和相当大的计算能力,而当需要进行时间序列分析时,这将变得更加复杂。因此,在本研究中,我们将Google Earth Engine(GEE)Javascript API用作APEI的四个“基准”年(1990年,2000年,2010年和2018年)的裸露矿区地图。使用两个单独的数据集(2000年的Landsat-5;以及2018年的Landsat-8,Sentinel-1和Sentinel-2的组合)训练了一个随机森林分类器。然后,将迁移学习用于将2000年模型应用于1990年和2010年的Landsat-5影像,这产生了我们时间序列中四个“基准”年的分类结果。该工具已启用了对30年期间矿山增长的监控,并确认加拿大的矿山总面积正在增长。总体而言,事实证明,Google Earth Engine是绘制暴露的矿山废物区域的宝贵工具,并且对于具有大范围监视任务或对Landsat档案的时间序列分析感兴趣的任何组织,同样有用。

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