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Contextual outlier detection on hotspot data in Riau Province using k-means algorithm

机译:利用K-Means算法,Riau省热点数据的上下文远异常检测

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Forest fire is one of the environmental problems which has continuously repeated and become a biggest threat to forest resources in Indonesia. One of the forest fire prevention efforts is to determine the spread of hotspots (active fires) clusters. Hotspot data are obtained by remote sensing using satellite that possibly exist the location information containing irregularities (outliers). This research aims to detect contextual outliers on hotspot data in Riau province for the period 2001 to 2009 based on climate context, i.e. rainfall. Contextual outliers were detected using the results of clustering on the daily hotspot frequency attribute and rainfall attribute. The applied method was the technique of clustering using K-means algorithm. The result showed that there were 54 objects detected as contextual outliers, many of them occurred in February, March, June, July, and August. Those objects as contextual outliers were hotspots which have high daily occurrences with high rainfall. The contextual outliers detected have an average of daily occurrences is 65.76 hotspots with an average of rainfall is 37.15 mm.
机译:森林火灾是持续重复的环境问题之一,成为印度尼西亚森林资源的最大威胁。其中一个森林防火努力是确定热点(主动火灾)集群的传播。通过使用可能存在包含不规则性(异常值)的位置信息的卫星来遥感来获得热点数据。本研究旨在根据气候背景,检测2001年至2009年期间的riau省热点数据的上下代异常因素,即降雨。使用每日热点频率属性和降雨属性的聚类结果检测到上下文异常值。应用方法是使用k均值算法进行聚类技术。结果表明,检测到54个物体被检测为上下文异常值,其中许多人发生在2月,3月,7月,7月和8月。这些对象作为上下文异常值是具有高降雨量的高每日发生的热点。检测到的上下文异常因素平均每日出现是65.76个热点,平均降雨量为37.15毫米。

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