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When remote sensing data meet ubiquitous urban data: Fine-grained air quality inference

机译:当遥感数据与无处不在的城市数据相符时:细粒度的空气质量推断

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With the growth of the economy, the air quality is becoming a serious issue, especially for those developing countries, such as China. Therefore, it is very important for the public and the government to access real-time air quality information. Unfortunately, the limited number of air quality monitoring stations is unable to provide fine-grained air quality information in a huge city, such as Beijing. One cost-effective approach for obtaining fine-grained air quality information is to infer air quality with those measured data at the monitoring stations. However, existing inference techniques have poor performance because of the extreme data sparsity problem (e.g., only 0.2% data are known). We observe that remote sensing has been a high-quality data source about urban dynamics. In this paper, we propose to integrate remote sensing data and ubiquitous urban data for air quality inference. There are two main challenges, i.e., data heterogeneity and incomplete remote sensing data. In response to the challenges, we propose a two-stage inference approach. In the first stage, we use the AOT remote sensing data and the meteorological data to infer the air quality values with an Artificial Neural Network (ANN). After this stage, we significantly reduce the percentage of empty cells in the tensor representing the spatio-temporal air quality values. In the second stage, we propose a tensor decomposition method to infer the complete set of air quality values. We use the spatial features (i.e., road features and POI features) and the temporal features (i.e., meteorological features) as the constraints in the tensor decomposition process. Experiments with real data sets show that our approach has profound performance advantage over the state-of-the-art methods, such as U-Air.
机译:随着经济的增长,空气质量正成为一个严重的问题,特别是对于那些发展中国家(例如中国)而言。因此,对于公众和政府而言,获取实时空气质量信息非常重要。不幸的是,在北京这样的大城市中,数量有限的空气质量监测站无法提供细粒度的空气质量信息。一种获取细粒度空气质量信息的具有成本效益的方法是用监测站的测量数据推断空气质量。但是,由于极端的数据稀疏性问题(例如,仅已知0.2%的数据),所以现有的推理技术的性能较差。我们观察到遥感一直是有关城市动态的高质量数据源。在本文中,我们建议将遥感数据与无处不在的城市数据进行整合,以进行空气质量推断。存在两个主要挑战,即数据异质性和不完整的遥感数据。为了应对挑战,我们提出了一种两阶段的推理方法。在第一阶段,我们使用AOT遥感数据和气象数据通过人工神经网络(ANN)推断空气质量值。在此阶段之后,我们显着减少了表示时空空气质量值的张量中的空单元的百分比。在第二阶段,我们提出了张量分解方法来推断空气质量值的完整集合。我们使用空间特征(即道路特征和POI特征)和时间特征(即气象特征)作为张量分解过程中的约束。使用真实数据集进行的实验表明,与U-Air等最先进的方法相比,我们的方法具有明显的性能优势。

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