Air pollution monitoring platforms play a very important role in preventing and mitigating the effects of pollution. Recent advances in the field of graph signal processing have made it possible to describe and analyze air pollution monitoring networks using graphs. One of the main applications is the reconstruction of the measured signal in a graph using a subset of sensors. Reconstructing the signal using information from sensor neighbors can help improve the quality of network data, examples are filling in missing data with correlated neighboring nodes, or correcting a drifting sensor with neighboring sensors that are more accurate. This paper compares the use of various types of graph signal reconstruction methods applied to real data sets of Spanish air pollution reference stations. The methods considered are Laplacian interpolation, graph signal processing low-pass based graph signal reconstruction, and kernel-based graph signal reconstruction, and are compared on actual air pollution data sets measuring O3, NO2, and PM10. The ability of the methods to reconstruct the signal of a pollutant is shown, as well as the computational cost of this reconstruction. The results indicate the superiority of methods based on kernel-based graph signal reconstruction, as well as the difficulties of the methods to scale in an air pollution monitoring network with a large number of low-cost sensors. However, we show that scalability can be overcome with simple methods, such as partitioning the network using a clustering algorithm.
翻译:空气污染监测平台在预防和减轻污染影响方面发挥着非常重要的作用; 图表信号处理领域最近的进展使得有可能用图表描述和分析空气污染监测网络; 主要应用之一是利用传感器子组重建图中测得的信号; 利用传感器邻居提供的信息重建信号有助于提高网络数据的质量,实例是用相邻的相邻节点填补缺失的数据,或用更准确的近邻传感器纠正流传传感器; 本文比较了在西班牙空气污染参照站实际数据集中应用的各类图形信号重建方法的使用情况; 考虑的方法之一是拉板图内插、图形信号处理低射线图基图形信号重建以及内核图信号重建,这些方法与测量O3、NO2和PM10的实际空气污染数据集进行比较; 显示重建污染物信号的方法的能力以及这种重建的计算成本。 研究结果表明,基于内核图图形重建的各种方法的优越性,以及我们使用低射线图的图像信号组重建的图表信号组的图形信号组方法,以及基于低射线图的图像组信号组重建方法的难度。