1887
1st Australasian Exploration Geoscience Conference – Exploration Innovation Integration
  • ISSN: 2202-0586
  • E-ISSN:

Abstract

The North West Shelf (NWS) and its associated petroleum systems have varied geographies, geomorphologies and complex geological environments. In spite of the ongoing exploration activities in many sedimentary basins, the appraisal and field development campaigns are challenging. Besides, interpreting the connectivity between petroleum systems is challenging. The heterogeneity and multidimensionality of multi-stacked reservoirs associated with multiple oil and gas fields complicate the data integration process. Volumes and varieties of data existing in these basins are in different scales, sizes and formats, demanding new storage and retrieval methods, emphasizing both data integration and data structuring. Since the data are in terabyte size; the multiple dimensions and domains need to be brought in a single repository, we take advantage of Big Data tools and technologies. In this context, we aim at articulating the digital petroleum ecosystems and petroleum database management systems, with new data modelling, data warehousing and mining, visualization and interpretation artefacts. This approach facilitates the data management not only for individual basins but groups of basins of the NWS. Warehoused cuboid metadata can explore the connections providing new insights in the data interpretation and knowledge of new prospective areas. The multidimensional warehousing repository that supported by cloud computing, data analytics and virtualization features, provide new opportunities for delivering quality and just-in-time online ecosystem services. Other goals are deducing an integrated unified metadata model and characterizing the connectivity among the basins of the NWS and associated oil & gas fields. The study supports the features of PDE and its knowledge management.

Loading

Article metrics loading...

/content/journals/10.1071/ASEG2018abP008
2018-12-01
2026-01-21
Loading full text...

Full text loading...

References

  1. Chandrasekaran, B., Johnson, R. and Benjamins, R., 1999, Ontologies: what are they? why do we need, them?. IEEE Intelligent Systems and Their Applications, 14(1), Special Issue on Ontologies, pp. 20- 26.
  2. Chen, H., Chiang, R. H., and Storey, V. C., 2012, “Business Intelligence and Analytics: From Big Data to Big Impact,” MIS quarterly (36:4), pp. 1165-1188.
  3. Damiani, E., 2008, Key note address on ‘Digital Ecosystems: the next Generation of Service Oriented Internet”, IEEE-DEST, Phitsanulok, Thailand, Feb 2008.
  4. Khatri, V. and Ram, S. and Snodgrass, R.T., 2004, Augmenting a conceptual model with geo-spatiotemporal annotations, IEEE Transactions on Knowledge and Data Engineering, Vol. 16(11), pp. 1324-1338, doi:10.1109/TKDE.2004.66.
  5. Longley, I.M. C. Buessenschuett, L. Clydsdale, C.J. Cubitt, C.J., Davis, R.C., Johnson, M.K., Marshall, N, M., Murray, A.P., Somerville, R., Spry, T.B and Thompson, N.B., 2003, The North West Shelf of Australia - A Woodside Perspective, M. Keep and S.J. Moss, eds., as Proceedings of the Petroleum Exploration Society of Australia Symposium, Perth WA. Search and Discovery article #10041.
  6. Nimmagadda, S.L and Dreher, H., 2008, Ontology Based Data Warehouse Modelling - a Methodology for Managing Petroleum Field Ecosystems, a paper presented in the International conference of IEEE-DEST, held in Bangkok, Thailand.
  7. Nimmagadda, S.L, and Dreher, H., 2009a, Technologies for adaptability in turbulent resources business environments, a book chapter published under a title: Knowledge Discovery Practices and Emerging Applications of Data Mining: Trends and New Domains, http://www.igi-global.com/, 2009, USA.
  8. Nimmagadda, S.L, and Dreher, H., 2009b, Ontology based data warehouse modelling for managing carbon emissions in safe and secure geological storages, a paper presented in the international SEG symposium - Imaging and Interpretation, in a forum “science and technology for sustainable development”, held in Sapparo, Japan, Oct 2009.
  9. Nimmagadda, S.L, Dreher, H, Noventianto. A, Mustofa. A and Fiume. G., 2012, On new emerging concepts of Tarakan Sedimentary Basin - a Petroleum Digital Ecosystem (PDE), a paper published in the proceedings of an International Geological Congress (IGC) held in Brisbane, Australia.
  10. Nimmagadda, S.L., 2015a, Managing the Sustainable Digital Ecosystems using Big Data Paradigm, STAWA, Perth, WA, Australia.
  11. Nimmagadda, S. L., 2015b, Data Warehousing for Mining of Heterogeneous and Multidimensional Data Sources, Verlag Publisher, Scholar Press, OmniScriptum GMBH & CO. KG. p. 1-657, Germany.
  12. Pujari, A.K., 2002, “Data mining techniques”, University Press (India) Pty Limited, Hyderabad, India.
  13. Rudra, A. and Nimmagadda, S.L., 2005, Roles of multidimensionality and granularity in data mining of warehoused Australian resources data, Proceedings of the 38th Hawaii International Conference on Information System Sciences, Hawaii, USA.
  14. Venable, J. R., 2006, The Role of Theory and Theorising in Design Science Research: In Hevner, A., Chatterjee, S. (eds.) Proceedings of the First International Conference on Design Science Research in Information Systems and Technology, USA.
  15. Welty, C., 2002, Ontology-Driven Conceptual Modelling, invited talk at the Fourteenth International Conference on Advanced Information Systems Engineering (CAiSE), Toronto, Canada.
  16. Zhong, T. Raghu, R. and Livny, M., 1996, An efficient data clustering method for very large databases, Proceedings of ACM SIGMOD International conference on management of data, ACM, NY, USA.
/content/journals/10.1071/ASEG2018abP008
Loading
This is a required field
Please enter a valid email address
Approval was a Success
Invalid data
An Error Occurred
Approval was partially successful, following selected items could not be processed due to error