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Assessing spatial variability of SO2 field as detected by an air quality network using Self-Organizing Maps,cluster, and Principal Component Analysis
Authors:Gabriel Ibarra-Berastegi  Jon Sáenz  Agustín Ezcurra  Unai Ganzedo  Javier Díaz de Argandoña  Iñigo Errasti  Alejandro Fernandez-Ferrero  Josué Polanco-Martínez
Affiliation:1. Dept. of Fisheries Management and Marine Research, Echebastar Fleet SLU, Muelle Erroxape s/n (Box 39), 48370 Bermeo, Spain;3. UMR CNRS 5805 EPOC, University of Bordeaux, 33615, Pessac, France;4. Otago Museum, 419 Great King Street, PO Box 6202, Dunedin 9059, New Zealand;5. IKERBASQUE, Basque Foundation of Science, 48013 Bilbao, Spain;6. DigitalGlobe, Inc., 2325 Dulles Corner Blvd, Suite 1000, Herndon, VA, 20171, USA;7. University of Las Palmas de Gran Canaria, Campus Universitario de Tafira, Edificio de Ciencias Básicas, Facultad de Ciencias del Mar, sn. 35017 Las Palmas de Gran Canaria, Spain
Abstract:
In Bilbao (Spain), an air quality network measures sulphur dioxide levels at 4 locations. The objective of this paper is to develop a practical methodology to identify redundant sensors and evaluate a network's capability to correctly follow and represent SO2 fields in Bilbao, in the frame of a continuous network optimization process.The methodology is developed and tested at this particular location, but it is general enough to be useable at other places as well, since it is not tied neither to the particular geographical characteristics of the place nor to the phenomenology of the air quality over the area.To assess the spatial variability of SO2 measured at 4 locations in the area, three different techniques have been used: Self-Organizing Maps (SOMs), cluster analysis (CA) and Principal Component Analysis (PCA). The results show that the three techniques yield the same results, but the information obtained via PCA can be helpful not only for that purpose but also to throw light on the major mechanisms involved. This might be used in future network optimization stages. The main advantage of cluster analysis and SOMs is that they provide readily interpretable results. All the calculations have been carried out using the freely available software R.
Keywords:
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