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Discovering Frequent Patterns on Agrometeorological Data with TrieMotif

机译:用TrieMotif发现农业气象数据的常见模式

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The "food safety" issue has concerned governments from several countries. The accurate monitoring of agriculture have become important specially due to climate change impacts. In this context, the development of new technologies for monitoring are crucial. Finding previously unknown patterns that frequently occur on time series, known as motifs, is a core task to mine the collected data. In this work we present a method that allows a fast and accurate time series motif discovery. Prom the experiments we can see that our approach is able to efficiently find motifs even when the size of the time series goes longer. We also evaluated our method using real data time series extracted from remote sensing images regarding sugarcane crops. Our proposed method was able to find relevant patterns, as sugarcane cycles and other land covers inside the same area, which are really useful for data analysis.
机译:“食品安全”问题已引起多个国家政府的关注。由于气候变化的影响,对农业进行准确的监测尤其重要。在这种情况下,开发用于监视的新技术至关重要。查找以前经常在时间序列上出现的未知模式(称为主题)是挖掘收集到的数据的一项核心任务。在这项工作中,我们提出了一种方法,可以快速准确地发现时间序列的主题。对实验进行验证,我们可以看到即使时间序列的长度更长,我们的方法也能够有效地找到主题。我们还使用从有关甘蔗作物的遥感图像中提取的实时数据时间序列来评估我们的方法。我们提出的方法能够找到相关的模式,例如同一区域内的甘蔗循环和其他土地覆盖,这对于数据分析非常有用。

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