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BRAZILIAN AMAZONIA DEFORESTATION DETECTION USING SPATIO-TEMPORAL SCAN STATISTICS

机译:使用时空扫描统计数据的巴西亚马逊遮阳性砍伐检测

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The spatio-temporal models, developed for analyses of diseases, can also be used for others fields of study, including concerns about forest and deforestation. The aim of this paper is to quantitatively check priority areas in order to combat deforestation on the Amazon forest, using the space-time scan statistic. The study area location is at the south of the Amazonas State and cover around 297.183 kilometre squares, including the municipality of Boca do Acre, Labrea, Canutama, Humaita, Manicore, Novo Aripuana e Apui County on the north region of Brazil. This area has showed a significant change for land cover, which has increased the number of deforestation's alerts. Therefore this situation becomes a concern and gets more investigation, trying to stop factors that increase the number of cases in the area. The methodology includes the location and year that deforestation's alert occurred. These deforestation's alerts are mapped by the DETER (Detection System of Deforestation in Real Time in Amazonia), which is carry out by the Brazilian Space Agency (INPE). The software SatScanTM v7.0 was used in order to define space-time permutation scan statistic for detection of deforestation cases. The outcome of this experiment shows an efficient model to detect space-time clusters of deforestation's alerts. The model was efficient to detect the location, the size, the order and characteristics about activities at the end of the experiments. Two clusters were considered actives and kept actives up to the end of the study. These clusters are located in Canutama and Labrea County. This quantitative spatial modelling of deforestation warnings allowed: firstly, identifying actives clustering of deforestation, in which the environment government official are able to concentrate their actions; secondly, identifying historic clustering of deforestation, in which the environment government official are able to monitoring in order to avoid them to became actives again; and finally, verify that distances between the deforestation warning and the roads explain part of the significant clustering.
机译:用于分析疾病的时空模型,也可以用于其他研究领域,包括关于森林和森林砍伐的担忧。本文的目的是使用空时扫描统计来定量检查优先区域,以便打击亚马逊森林的砍伐森林。该研究区位置位于亚马逊州的南部,覆盖大约297.183公里的方块,包括博卡的市政府,拉布雷,坎布雷山,Humaita,Manicore,Novo Aripuana e Apui County在巴西的北部地区。该领域对陆地覆盖的显着变化,增加了森林砍伐警报的数量。因此,这种情况成为一个令人担忧并获得更多的调查,试图阻止增加该地区案件数量的因素。该方法包括砍伐森林警报的位置和年份。这些森林砍伐的警报被阻止(亚马逊实时砍伐森林检测系统)映射,这是由巴西空间机构(INPE)进行的。使用软件SATSCantm V7.0来定义用于检测遮瑕案例的时空置换扫描统计。该实验的结果显示了一种有效的模型,用于检测遮瑕疵警报的空间簇。该模型有效地检测实验结束时活动的位置,大小,顺序和特征。两个集群被认为是活性的,并保持激活于研究结束。这些集群位于Canutama和Labrea County。这种定量空间建模的森林砍伐警告允许:首先,识别森林砍伐的活动集群,环境政府官员能够集中注意力;其次,确定森林砍伐的历史聚类,其中环境政府官员能够监测,以避免他们再次成为活动;最后,验证砍伐森林警告之间的距离和道路之间的距离解释了重​​要聚类的一部分。

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