Characterization of clastic sedimentary enviroments by clustering algorithm and several statistical approaches — case study, Sava Depression in Northern Croatia
Abstract:This study demonstrates a method to identify and characterize some facies of turbiditic depositional environments. The study area is a hydrocarbon field in the Sava Depression (Northern Croatia). Its Upper Miocene reservoirs have been proved to represent a lacustrine turbidite system. In the workflow, first an unsupervised neural network was applied as clustering method for two sandstone reservoirs. The elements of the input vectors were the basic petrophysical parameters. In the second step autocorrelation su… Show more
“…This clustering method was ap plied because NNC was used in similar problems to characteri zation of clastic sedimentary environments (e.g. HORVáTH, 2015;HORVáTH & MALvIć, 2013).…”
According to the paper by (GRUND & GEIGER;2011;BORKA, 2016) this study area was characterized as sequences represent ing a prodeltaic submarine fan (Fig. 1).
“…This clustering method was ap plied because NNC was used in similar problems to characteri zation of clastic sedimentary environments (e.g. HORVáTH, 2015;HORVáTH & MALvIć, 2013).…”
According to the paper by (GRUND & GEIGER;2011;BORKA, 2016) this study area was characterized as sequences represent ing a prodeltaic submarine fan (Fig. 1).
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