SBIR/STTR Award attributes
To ensure safe and cost-effective subsurface operations - including drilling, production, stimulation, and injection - knowledge of the state of stress is essential. Specifically, in CO2 sequestration operations, characterizing the in-situ stress state in the complex storage reservoirs and cap rocks is critical for safe storage of CO2 and minimizing of predicted potential environmental hazards related to fluid leakage and induced seismicity. The currently available methodologies for stress estimation are heavily dependent on well logs such as density, sonic, porosity, etc. These inferences are based on simplified models or correlations which generally result in stress profiles with a large range of uncertainties. The required logs are rarely available in horizontal wells where understanding the lateral changes in the state of stress is very important. Also, seismic data that cover a larger volume of subsurface formations are not of sufficient spatial resolution for the required subsurface characterization, especially for carbon storage purposes. These limitations and shortcomings identify an essential requirement for new sources of data for stress evaluations, which provide higher resolution data with more substantial spatial coverage. During drilling, a large volume of data is generated either on the rig or by downhole Logging While Drilling LWD) and Measurement While Drilling MWD). However, due to a lack of robust interpretation schemes, these data have not been used to understand geomechanical characteristics of the formations, including rock properties and in-situ stresses. The drill bit is the first BHA component meeting and logging a formation. With the recent advancements in LWD and MWD, high-scanning-rate data can be collected near the bit. Interpretation of these data may enable creating profiles of in-situ stresses. Previous experimental and analytical studies have provided invaluable information about the dynamic system response arising from the bit-rock interaction. Since the bit-rock interface laws encapsulate information about all processes induced by the bit during drilling, the effects attributed to the bit, rock properties, and stresses can be differentiated through modeling. The fundamental basis of this proposal is to determine geomechanical properties of formations by developing algorithms to post-process and interpret drilling dynamics data. To achieve this goal, we will use advanced signal processing and machine learning methodologies to identify and extract the signals that carry information about rocks and the stress field. The expected outcome of the project is a software package that uses downhole dynamic drilling data to produce continuous logs of in-situ stresses.