2011
DOI: 10.5194/amt-4-2619-2011
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Volcanic ash detection and retrievals using MODIS data by means of neural networks

Abstract: Abstract. Volcanic ash clouds detection and retrieval represent a key issue for aviation safety due to the harming effects on aircraft. A lesson learned from the recent Eyjafjallajokull eruption is the need to obtain accurate and reliable retrievals on a real time basis.In this work we have developed a fast and accurate Neural Network (NN) approach to detect and retrieve volcanic ash cloud properties from the Moderate Resolution Imaging Spectroradiometer (MODIS) data in the Thermal InfraRed (TIR) spectral rang… Show more

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Cited by 37 publications
(36 citation statements)
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References 54 publications
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“…Neural networks are powerful tools for the mapping of nonlinear relationships, and have been successfully applied as stand-alone retrieval algorithms to several remote sensing problems, including aerosol-related applications (Han et al, 2006;Niang et al, 2006;Radosavljevic et al, 2010;Picchiani et al, 2011). Nevertheless, the output of a NN retrieval scheme is also suitable for use as the initial step of an iterative retrieval method, giving rise to a "neurovariational" retrieval scheme.…”
Section: Introductionmentioning
confidence: 99%
“…Neural networks are powerful tools for the mapping of nonlinear relationships, and have been successfully applied as stand-alone retrieval algorithms to several remote sensing problems, including aerosol-related applications (Han et al, 2006;Niang et al, 2006;Radosavljevic et al, 2010;Picchiani et al, 2011). Nevertheless, the output of a NN retrieval scheme is also suitable for use as the initial step of an iterative retrieval method, giving rise to a "neurovariational" retrieval scheme.…”
Section: Introductionmentioning
confidence: 99%
“…Additional benefits are the independence from a priori assumptions about the statistical characterization of the data and the possibility of easily incorporating different types of data (Foody, 1995). For these reasons, NNs have often been successfully used for the solution of the inverse problem of geophysical quantities from satellite measurements (Blackwell, 2005;Picchiani et al, 2011Picchiani et al, , 2012.…”
Section: Neural Networkmentioning
confidence: 99%
“…In this work, we used the same approach developed in Picchiani et al (2011) to train the NNs. The backpropagation algorithm (Bishop, 1995) has been applied performing a cross-validation approach (Haykin, 1994;Bishop, 1995) to avoid the possibility of over training, i.e., the memorization of specific patterns instead of statistical mapping linking the inputs to outputs and, therefore, hampering the generalization capability for new data.…”
Section: Neural Networkmentioning
confidence: 99%
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“…Furthermore, Iyer et al proposed a classification system based on extracting unique cepstral features from a volcano's infrasonic signature, and feeding these features to the Radial Basis Function Neural Network [32]. Moreover, Picchiani et al used a single layer neural network to classify ash clouds of MODIS images in the Thermal InfraRed (TIR) spectral [33]. Furthermore, Tan et al proposed a Bayesian detection algorithm and a near-optimal sensor selection algorithm to detect earthquake events and timing using wireless sensor networks [34].…”
Section: Related Workmentioning
confidence: 99%