Print Email Facebook Twitter Reservoir Lithology Determination by Hidden Markov Random Fields Based on a Gaussian Mixture Model Title Reservoir Lithology Determination by Hidden Markov Random Fields Based on a Gaussian Mixture Model Author Feng, R. (TU Delft Applied Geology) Luthi, S.M. (TU Delft Applied Geology) Gisolf, A. (TU Delft ImPhys/Acoustical Wavefield Imaging) Angerer, Erika (OMV Exploration & Production) Date 2018-07-06 Abstract In this paper, geological prior information is incorporated in the classification of reservoir lithologies after the adoption of Markov random fields (MRFs). The prediction of hidden lithologies is based on measured observations, such as seismic inversion results, which are associated with the latent categorical variables, based on the assumption of Gaussian distributions. Compared with other statistical methods, such as the Gaussian mixture model or k-Means, which do not take spatial relationships into account, the hidden MRFs approach can connect the same or similar lithologies horizontally while ensuring a geologically reasonable vertical ordering. It is, therefore, able to exclude randomly appearing lithologies caused by errors in the inversion. The prior information consists of a Gibbs distribution function and transition probability matrices. The Gibbs distribution connects the same or similar lithologies internally, which does not need a geological definition from the outside. The transition matrices provide preferential transitions between different lithologies, and an estimation of them implicitly depends on the depositional environments and juxtaposition rules between different lithologies. Analog cross sections from the subsurface or outcrop studies can contribute to the construction of these matrices by a simple counting procedure. Subject Bayes methodsGaussian mixture modelHidden Markov modelsHidden Markov random fields (HMRFs)lithology determinationMarkov processesReservoirsRocksseismic inversiontransition matrix. To reference this document use: http://resolver.tudelft.nl/uuid:38816a60-318f-42b4-95ee-0ab76b47881d DOI https://doi.org/10.1109/TGRS.2018.2841059 ISSN 0196-2892 Source IEEE Transactions on Geoscience and Remote Sensing, 56 (11), 6663-6673 Part of collection Institutional Repository Document type journal article Rights © 2018 R. Feng, S.M. Luthi, A. Gisolf, Erika Angerer Files PDF 08405756.pdf 8.6 MB Close viewer /islandora/object/uuid:38816a60-318f-42b4-95ee-0ab76b47881d/datastream/OBJ/view