This thesis concerns two critical issues of modelling in geophysics. Inverse problems are ubiquitous in nature. They are often used to study a geophysical phenomenon with more than one causative set of parameters. Their mathematical formulation involves expressing them using partial differential equations. When the system is computationally extensive, it can delay the generation of solutions and the interpretation process. We understand that supervised and dimensionality reduction algorithms can help resolve such issues. We develop deep learning models for two critical applications in geophysics. We show their efficacy in speeding up the synthetic data generation process and aiding automatic interpretation.
History
Campus location
Australia
Principal supervisor
Mohan Yellishetty
Additional supervisor 1
Kumar Hemant Singh
Additional supervisor 2
Trilok Nath Singh
Year of Award
2022
Department, School or Centre
Civil Engineering
Additional Institution or Organisation
Indian Institute of Technology Bombay, India (IITB)