Alabi, A., & Enikanselu, P. A. (2019). Integrating seismic acoustic impedance inversion and attributes for reservoir analysis over ‘DJ’Field, Niger Delta. Journal of Petroleum Exploration and Production Technology, 9, 2487-2496.
Bennington, N. L., Zhang, H., Thurber, C. H., & Bedrosian, P. A. (2015). Joint inversion of seismic and magnetotelluric data in the Parkfield Region of California using the normalized cross-gradient constraint. Pure and Applied Geophysics, 172(5), 1033-1052.
Berteussen, K., & Ursin, B. (1983). Approximate computation of the acoustic impedance from seismic data. Geophysics, 48(10), 1351-1358.
Bezdek, J. C., Ehrlich, R., & Full, W. (1984). FCM: The fuzzy c-means clustering algorithm. Computers & Geosciences, 10(2-3), 191-203.
Bhatt, A., & Helle, H. B. (2002). Determination of facies from well logs using modular neural networks. Petroleum Geoscience, 8(3), 217-228.
Bosch, M., Mukerji, T., & Gonzalez, E. F. (2010). Seismic inversion for reservoir properties combining statistical rock physics and geostatistics: A review. Geophysics, 75(5), 75A165-175A176.
Chopra, S., & Marfurt, K. J. (2005). Seismic attributes—A historical perspective. Geophysics, 70(5), 3SO-28SO.
Chopra, S., & Marfurt, K. J. (2007). Seismic attributes for prospect identification and reservoir characterization. Society of Exploration Geophysicists and European Association of of Geoscientists and Engineers.
Das, V., & Mukerji, T. (2020). Petrophysical properties prediction from prestack seismic data using convolutional neural networks. Geophysics, 85(5), N41-N55.
Farfour, M., El-Ghali, M. A., Gaci, S., Moustafa, M. S., & Siddiqui, N. A. (2021). Seismic attributes for hydrocarbon detection and reservoir characterization: a case study from Poseidon field, Northwestern Australia. Arabian Journal of Geosciences, 14, 1-11.
Geoscience, A. (2023). Regional Geology of the Browse Basin. https://www.ga.gov.au/scientific-topics/energy/province-sedimentary-basin-geology/petroleum/acreagerelease/browse
Jahanjooy, S., Hashemi, H., & Bagheri, M. (2023). Multi-dimensional, Multi-Constraint, Deconvolution, Denoising, and Seismic Inversion Using Hard and Fuzzy Clustering Concepts [Manuscript submitted for publication].
Jahanjooy, S., Riahi, M. A., & Moghanloo, H. G. (2022). Blind inversion of multidimensional seismic data using sequential Tikhonov and total variation regularizationsBlind seismic inversion using STTVR. Geophysics, 87(1), R53-R61.
Kieu, D. T., & Kepic, A. (2020). Seismic-impedance inversion with fuzzy clustering constraints: An example from the Carlin Gold district, Nevada, USA. Geophysical Prospecting, 68(1-Cost-Effective and Innovative Mineral Exploration Solutions), 103-128.
Krzanowski, W. J., & Lai, Y. (1988). A criterion for determining the number of groups in a data set using sum-of-squares clustering. Biometrics, 23-34.
Liao, C., Hu, X., Zhang, S., Li, X., Yin, Q., Zhang, Z., & Zhang, L. (2022). Joint inversion of gravity, magnetotelluric and seismic data using the alternating direction method of multipliers. Geophysical Journal International, 229(1), 203-218.
Liner, C. L. (2016). Elements of 3D seismology. Society of exploration geophysicists.
Liu, Z. (2018). Seismic geomorphology of continental margin evolution in the late Cretaceous to Neogene of the Browse Basin, northwest Australia. Colorado School of Mines.
Mardani, R. A., & Thrust, G. V. Estimation of Acoustic Impedance from Seismic Data in Well-log Resolution Using Machine Learning, Neural Network, and Comparison with Band-limited Seismic Inversion.
Maulana, I. D. P. A. D. M. C. J. M. I. R. F. (2021). Analyzing Shallow Marine Depositional Environment using Paleotopography Reconstruction and RGB Blending - Case Study: Woolaston and Johnson Formation, Poseidon Field, Browse Basin Joint Convention Bandung, Bandung.
Miller, D. J., Nelson, C. A., Cannon, M. B., & Cannon, K. P. (2009). Comparison of fuzzy clustering methods and their applications to geophysics data. Applied Computational Intelligence and Soft Computing, 2009, 1-9.
Mousavi, J., Radad, M., Soleimani Monfared, M., & Roshandel Kahoo, A. (2022). Fault enhancement in seismic images by introducing a novel strategy integrating attributes and image analysis techniques. Pure and Applied Geophysics, 179(5), 1645-1660.
Olaleye, O. K., Enikanselu, P. A., & Ayuk, M. A. (2021). Characterization of reservoir sands using 3D seismic attributes in the coastal swamp area of Niger Delta Basin. Journal of Petroleum Exploration and Production Technology, 11, 3995-4004.
Oumarou, S., Mabrouk, D., Tabod, T. C., Marcel, J., Ngos III, S., Essi, J. M. A., & Kamguia, J. (2021). Seismic attributes in reservoir characterization: an overview. Arabian Journal of Geosciences, 14, 1-15.
Pintea, S. L., Sharma, S., Vossepoel, F. C., van Gemert, J. C., Loog, M., & Verschuur, D. J. (2021). Seismic inversion with deep learning: A proposal for litho-type classification. Computational Geosciences, 1-14.
Radlinski, A., Kennard, J., Edwards, D., Hinde, A., & Davenport, R. (2004). Hydrocarbon generation and expulsion from Early Cretaceous source rocks in the Browse Basin, North West Shelf, Australia: a small angle neutron scattering study. The APPEA Journal, 44(1), 151-180.
Rapstine, T. D. (2015). Gravity gradiometry and seismic interpretation integration using spatially guided fuzzy c-means clustering inversion. Colorado School of Mines.
Rollet, N., Grosjean, E., Edwards, D., Palu, T., Abbott, S., Totterdell, J., Lech, M., Khider, K., Hall, L., & Orlov, C. (2016). New insights into the petroleum prospectivity of the Browse Basin: the results of a multi-disciplinary study. The APPEA Journal, 56(1), 483-494.
Rosa, D. R., Santos, J. M., Souza, R. M., Grana, D., Schiozer, D. J., Davolio, A., & Wang, Y. (2020). Comparing different approaches of time-lapse seismic inversion. Journal of Geophysics and Engineering, 17(6), 929-939.
Russell, B., & Hampson, D. (1991). Comparison of poststack seismic inversion methods. In SEG Technical Program Expanded Abstracts 1991 (pp. 876-878). Society of Exploration Geophysicists.
Sun, J., & Li, Y. (2016a). Joint inversion of multiple geophysical and petrophysical data using generalized fuzzy clustering algorithms. Geophysical Supplements to the Monthly Notices of the Royal Astronomical Society, 208(2), 1201-1216.
Sun, J., & Li, Y. (2016b). Joint inversion of multiple geophysical data using guided fuzzy c-means clustering. Geophysics, 81(3), ID37-ID57.
TerraNubis (2023). Project NW Shelf Australia - Poseidon 3D. Retrieved July 28,2023 from https://terranubis.com/datainfo/NW-Shelf-Australia-Poseidon-3D
Wang, Y., Ksienzyk, A. K., Liu, M., & Brönner, M. (2021). Multigeophysical data integration using cluster analysis: assisting geological mapping in Trøndelag, Mid-Norway. Geophysical Journal International, 225(2), 1142-1157.
Zahmatkesh, I., Kadkhodaie, A., Soleimani, B., Golalzadeh, A., & Azarpour, M. (2018). Estimating Vsand and reservoir properties from seismic attributes and acoustic impedance inversion: A case study from the Mansuri oilfield, SW Iran. Journal of Petroleum Science and Engineering, 161, 259-274.
Zhang, R., & Castagna, J. (2011). Seismic sparse-layer reflectivity inversion using basis pursuit decomposition. Geophysics, 76(6), R147-R158.