Pregled bibliografske jedinice broj: 255349
Unsupervised neural networks in the analysis forest ecosystem stress using Pb soil data in Croatian karst areas
Unsupervised neural networks in the analysis forest ecosystem stress using Pb soil data in Croatian karst areas // X. Congress of Hungarian Geomathematics: applications of geostatistics, GIS and remote sensing in the fields of geosciences and environmental protection
Mórahalom, Mađarska, 2006. (predavanje, međunarodna recenzija, neobjavljeni rad, znanstveni)
CROSBI ID: 255349 Za ispravke kontaktirajte CROSBI podršku putem web obrasca
Naslov
Unsupervised neural networks in the analysis forest ecosystem stress using Pb soil data in Croatian karst areas
Autori
Bukovec, Dragan ; Miko, Slobodan ; Kusan, Vlado ; Antonić, Oleg ; Peh, Zoran ; Pernar, Renata ; Mesić, Saša ; Šparica-Miko, Martina
Vrsta, podvrsta i kategorija rada
Sažeci sa skupova, neobjavljeni rad, znanstveni
Skup
X. Congress of Hungarian Geomathematics: applications of geostatistics, GIS and remote sensing in the fields of geosciences and environmental protection
Mjesto i datum
Mórahalom, Mađarska, 18.05.2006. - 20.05.2006
Vrsta sudjelovanja
Predavanje
Vrsta recenzije
Međunarodna recenzija
Ključne riječi
Lead; soil; neural networks; karst; acid deposition; Croatia; Unsupervised neural networks; forest ecosystem stress; geochemistry; lead; soil; karst areas
(Lead; soil; neural networks; karst; acid deposition; CroatiaUnsupervised neural networks; forest ecosystem stress; geochemistry; lead; soil; karst areas)
Sažetak
It is well known that soil pollution are directly linked to the amount of precipitation. Atmospherically introduced high lead concentrations in soils of Croatian karst occur along the sharp geomorphologic boundary along which the Mediterranean climate abruptly changes into a cold continental climate and at altitudes above 900 m. Detailed studies of Pb distribution in soil profiles showed concentrations of lead in remote regions up to 200 mgkg-1 in the upper 4 cm of the soil profiles. With the application of the Pb/Sc ratio obtained during the geochemical baseline mapping of the topsoil cover in the Croatian karst at 1088 sampling sites, the spatial risk of acid deposition in areas of high geomorphic variability was evaluated. The empirical model built on the neural networks related the amount of atmospherically introduced Pb (calculated from the Pb/Sc normalization variable which separates the anthropogenically introduced Pb from lithogenic lead), extent and type of forest cover, digital elevation model with its variations as well as the mean annual precipitation. The correlation model was very high (R>0.85). The presented model, which links soil geochemistry with precipitation and degree of forest damage, was found to be an suitable tool for evaluation of the spatial acidification risk.
Izvorni jezik
Engleski
Znanstvena područja
Geologija
POVEZANOST RADA
Projekti:
0181006
Ustanove:
Hrvatski geološki institut
Profili:
Martina Šparica Miko
(autor)
Dragan Bukovec
(autor)
Slobodan Miko
(autor)
Renata Pernar
(autor)
Zoran Peh
(autor)
Oleg Antonić
(autor)
Saša Mesić
(autor)