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Spatio-Temporal Clustering Analysis for Air Pollution Particulate Matter (PM2.5) Using a Deep Learning Model

机译:空气污染颗粒物质(PM2.5)使用深层学习模型的时空聚类分析

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Fine particulate issue (PM2.5) is normal air contamination and has antagonistic well-being impacts globally, particularly in the quickly industrial nation such as Taiwan because of massive air contamination. The PM2.5 pollution changes with existence separation and is overwhelmed by the area’s limitation inferable from the distinction’s uniqueness in topographical conditions including geology and meteorology, and the trademark’s gadget normal for urbanization and industrialization. To portray these boundaries and components, contention, and mechanics, the five-years PM2.5 contamination examples of Newport area’s duty in eastern Taiwan with high-goal senior high goal were explored. This resolution was found using the linear assignment to build the clustering model with a convolution autoencoder for Spatio-temporal analysis for air pollution particulate matter PM2.5. In all the above models fully connected model is a better result performance model.
机译:细颗粒问题(PM 2.5 )是正常的空气污染,并且在全球敌人的影响,特别是由于巨大的空气污染,在台湾等迅速的工业国家。下午 2.5 存在分离的污染变化,由地区的唯一性在包括地质和气象的地形条件下的唯一性,以及商标的城市化和工业化的唯一性,而是淹没。描绘了这些边界和组件,争论和力学,五年下午 2.5 探索了纽波特地区纽波特地区义务的污染例,拥有高目标高级高达的高目标。使用线性分配找到该分辨率,以构建具有卷积AutoEncoder的聚类模型,以进行空气污染颗粒物质的时空分析 2.5 。在上面的所有模型中,完全连接的模型是一个更好的结果性能模型。

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