Matches in SemOpenAlex for { <https://semopenalex.org/work/W4253126924> ?p ?o ?g. }
- W4253126924 abstract "Abstract. In this work neural networks have been used for the retrieval of volcanic ash and SO2 parameters based on Moderate Resolution Imaging Spectroradiometer (MODIS) multispectral measurements. Different neural networks were built for each parameter to be retrieved, experimenting different topologies and evaluating their performances. As test case the May 2010 Eyjafjallajokull eruption has been considered. A set of six MODIS images have been used for the training and validation phases. In order to estimate of the parameters associated with volcanic eruption such as ash mass, effective radius, aerosol optical depth and sulphur dioxide columnar abundance, the neural networks have been trained by using the retrievals obtained from well known algorithms based on simulated radiances at the top of the atmosphere estimated from radiative transfer models. Three neural network's topologies with a different number of inputs have been compared: (a) only three MODIS TIR channels, (b) all multispectral MODIS channels and (c) only the channels that were selected by a pruning procedure applied to all MODIS channels. Results show that the neural network approach is able to reproduce very well the results obtained from the standard algorithms for all retrieved parameters, showing a root mean square error (RMSE) computed from the validation sets below the target data standard deviation (STD). In particular the network built considering all the MODIS channels gives a better performance in terms of specialization, mainly on images close in time to the training ones, while, as expected, the networks with less inputs reveals a better generalization performance when applied to independent datasets. In order to increase the network generalization capability, a pruning algorithm has been also implemented. Such a procedure permits to operate a features selection, extracting only the most significant MODIS channels from images. The results of pruning revealed that obtained inputs, for all the retrieved parameters, correspond to the TIR channels sensitive to ash, plus some other channels in the visible and mid-infrared spectral ranges. The artificial neural network approach proved to be effective in addressing the inversion problem for the estimation of volcanic ash and SO2 cloud parameters, providing fast and reliable retrievals, which are important requirements during the volcanic crisis." @default.
- W4253126924 created "2022-05-12" @default.
- W4253126924 creator A5000352417 @default.
- W4253126924 creator A5018792332 @default.
- W4253126924 creator A5024242637 @default.
- W4253126924 creator A5034096403 @default.
- W4253126924 creator A5038068921 @default.
- W4253126924 creator A5044836011 @default.
- W4253126924 creator A5049445891 @default.
- W4253126924 date "2014-04-04" @default.
- W4253126924 modified "2023-09-29" @default.
- W4253126924 title "A neural network approach for the simultaneous retrieval of volcanic ash parameters and SO<sub>2</sub> using MODIS data" @default.
- W4253126924 cites W1498177199 @default.
- W4253126924 cites W1902150074 @default.
- W4253126924 cites W1975755497 @default.
- W4253126924 cites W1976069213 @default.
- W4253126924 cites W1977177161 @default.
- W4253126924 cites W1982846260 @default.
- W4253126924 cites W2015125188 @default.
- W4253126924 cites W2019920864 @default.
- W4253126924 cites W2022375582 @default.
- W4253126924 cites W2031394421 @default.
- W4253126924 cites W2035394794 @default.
- W4253126924 cites W2038963893 @default.
- W4253126924 cites W2040543587 @default.
- W4253126924 cites W2042768381 @default.
- W4253126924 cites W2044643221 @default.
- W4253126924 cites W2049891650 @default.
- W4253126924 cites W2053870625 @default.
- W4253126924 cites W2055970510 @default.
- W4253126924 cites W2056479622 @default.
- W4253126924 cites W2075411600 @default.
- W4253126924 cites W2077591616 @default.
- W4253126924 cites W2079454091 @default.
- W4253126924 cites W2081219861 @default.
- W4253126924 cites W2084547407 @default.
- W4253126924 cites W2091233539 @default.
- W4253126924 cites W2092358262 @default.
- W4253126924 cites W2093200821 @default.
- W4253126924 cites W2093939860 @default.
- W4253126924 cites W2095321522 @default.
- W4253126924 cites W2096033560 @default.
- W4253126924 cites W2097319286 @default.
- W4253126924 cites W2100452085 @default.
- W4253126924 cites W2103496339 @default.
- W4253126924 cites W2139145264 @default.
- W4253126924 cites W2140310004 @default.
- W4253126924 cites W2140351252 @default.
- W4253126924 cites W2148186985 @default.
- W4253126924 cites W2149419822 @default.
- W4253126924 cites W2153538582 @default.
- W4253126924 cites W2154612353 @default.
- W4253126924 cites W2158670705 @default.
- W4253126924 cites W2159291134 @default.
- W4253126924 cites W2160840673 @default.
- W4253126924 cites W2163943318 @default.
- W4253126924 cites W2164924179 @default.
- W4253126924 cites W2165165309 @default.
- W4253126924 cites W2167498724 @default.
- W4253126924 cites W2167704640 @default.
- W4253126924 cites W2172009270 @default.
- W4253126924 cites W2242937139 @default.
- W4253126924 cites W4205686602 @default.
- W4253126924 cites W4234599976 @default.
- W4253126924 doi "https://doi.org/10.5194/amtd-7-3349-2014" @default.
- W4253126924 hasPublicationYear "2014" @default.
- W4253126924 type Work @default.
- W4253126924 citedByCount "3" @default.
- W4253126924 countsByYear W42531269242014 @default.
- W4253126924 countsByYear W42531269242016 @default.
- W4253126924 countsByYear W42531269242022 @default.
- W4253126924 crossrefType "posted-content" @default.
- W4253126924 hasAuthorship W4253126924A5000352417 @default.
- W4253126924 hasAuthorship W4253126924A5018792332 @default.
- W4253126924 hasAuthorship W4253126924A5024242637 @default.
- W4253126924 hasAuthorship W4253126924A5034096403 @default.
- W4253126924 hasAuthorship W4253126924A5038068921 @default.
- W4253126924 hasAuthorship W4253126924A5044836011 @default.
- W4253126924 hasAuthorship W4253126924A5049445891 @default.
- W4253126924 hasBestOaLocation W42531269241 @default.
- W4253126924 hasConcept C105795698 @default.
- W4253126924 hasConcept C108010975 @default.
- W4253126924 hasConcept C108597893 @default.
- W4253126924 hasConcept C11413529 @default.
- W4253126924 hasConcept C120665830 @default.
- W4253126924 hasConcept C120806208 @default.
- W4253126924 hasConcept C121332964 @default.
- W4253126924 hasConcept C127313418 @default.
- W4253126924 hasConcept C1276947 @default.
- W4253126924 hasConcept C130066347 @default.
- W4253126924 hasConcept C134306372 @default.
- W4253126924 hasConcept C139945424 @default.
- W4253126924 hasConcept C154945302 @default.
- W4253126924 hasConcept C165205528 @default.
- W4253126924 hasConcept C173163844 @default.
- W4253126924 hasConcept C177148314 @default.
- W4253126924 hasConcept C19269812 @default.
- W4253126924 hasConcept C2777007095 @default.
- W4253126924 hasConcept C33923547 @default.
- W4253126924 hasConcept C39432304 @default.