Detection and monitoring of hydrothermal alteration by Principal Component Analysis applied on UAS derived optical data, Vulcano Island - Italy

Author(s):  
Daniel Müller ◽  
Stefan Bredemeyer ◽  
Edgar Zorn ◽  
Erica De Paolo ◽  
Thomas Walter

<p>Modern UAS (unmanned aircraft system), light weight sensor systems and new processing routines allow us to gather optical data of volcanoes at a high resolution. However, due to the typically poor colorization, our ability to investigate and interpret such data is limited. Further, the information stored in the red, green and blue channel (RGB) is correlated. This makes any analysis a 3 dimensional task. Principal Component Analysis (PCA) helps us to overcome these problems by decorrelating the original band information and generating a variance representation of the original data. Therefore PCA is a suitable tool to detect optical anomalies, as might be caused by volcanic degassing and associated processes.</p><p>Applied in a case study at La Fossa Cone (Vulcano Island - Italy), the PCA showed a high efficiency for the detection and pixel based extraction of areas subject to hydrothermal alteration and sulfur deposition. We observed a broad alteration zone surrounding the active fumarole field, but also heterogeneities within, indicating a segmentation. Systematic variations in color and density distribution of sulfur deposits have implications for structural controls on the degassing system.</p><p>Combining the efficiency of PCA with the high resolution of UAS derived data, this methodology has a high potential to be employed in the spatio-temporal monitoring of volcanic hydrothermal systems and processes at surface.</p><p> </p>

2021 ◽  
Author(s):  
Radoslaw Panczak ◽  
Claudia Berlin ◽  
Marieke Voorpostel ◽  
Marcel Zwahlen ◽  
Matthias Egger

Background The Swiss neighbourhood index of socioeconomic position (Swiss-SEP) was published in 2012, based on neighbourhoods of 50 households and data from the 2000 census on rent, education and occupation of the household head, and crowding. We developed updated Swiss-SEP versions and validated them against income and mortality data.Methods We replicated the 2012 analyses, creating a new index based on the micro censuses 2012-2015. We used principal component analysis on neighbourhood-aggregated indicators and standardised the index to a range of 0-100. We also created a hybrid version, with updated values for neighbourhoods centred on buildings constructed after 2000 and original values for remaining neighbourhoods.Results Analyses were based on 1.54 million neighbourhoods, with 892,129 households captured in the micro censuses. The distance by road between reference and other buildings of neighbourhoods doubled. All three versions of the Swiss-SEP index (old, new, hybrid) correlated well with household income and mortality.Conclusion The Swiss-SEP index captures area-based SEP at a high resolution. The hybrid version maintains a high spatial resolution while adding information on new neighbourhoods. The indices allow the study of SEP when data on individual-level SEP are missing, or area-level effects are of interest.


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