TY - JOUR
T1 - Automatic microseismic event detection in downhole DAS data through convolutional neural networks
T2 - 2nd International Meeting for Applied Geoscience and Energy, IMAGE 2022
AU - Given, Paige
AU - Huot, Fantine
AU - Lellouch, Ariel
AU - Luo, Bin
AU - Clapp, Robert G.
AU - Biondi, Biondo L.
AU - Nemeth, Tamas
AU - Nihei, Kurt
N1 - Publisher Copyright:
© 2022 Society of Exploration Geophysicists and the American Association of Petroleum Geologists.
PY - 2022/8/15
Y1 - 2022/8/15
N2 - Downhole Distributed Acoustic Sensing (DAS) fibers lie within close proximity to microseismic events, and thus are able to detect events with very high resolution and accuracy. With this high resolution comes a substantial amount of data - several terabytes (TB) in size over a few days worth of recording. We created a convolutional neural network that can automatically detect microseismic events in DAS data. Prior work (Lellouch et al., 2021; Huot et al., 2021b), displayed the results of our network when tested on DAS data taken during well-stimulation phases. Here, we run our algorithm through 2-hours worth of data collected approximately one week after stimulation of the well has ceased, and compare the results to previous single-staged results. Our network detected events in approximately 2.04% of the data windows in the 2-hour post-stimulation phase, where previously it had predicted 3.67% of the data to hold events when tested on a single collection stage during well-stimulation. By analyzing the microseismic events in our data post-stimulation, we can analyze fracture evolution in time.
AB - Downhole Distributed Acoustic Sensing (DAS) fibers lie within close proximity to microseismic events, and thus are able to detect events with very high resolution and accuracy. With this high resolution comes a substantial amount of data - several terabytes (TB) in size over a few days worth of recording. We created a convolutional neural network that can automatically detect microseismic events in DAS data. Prior work (Lellouch et al., 2021; Huot et al., 2021b), displayed the results of our network when tested on DAS data taken during well-stimulation phases. Here, we run our algorithm through 2-hours worth of data collected approximately one week after stimulation of the well has ceased, and compare the results to previous single-staged results. Our network detected events in approximately 2.04% of the data windows in the 2-hour post-stimulation phase, where previously it had predicted 3.67% of the data to hold events when tested on a single collection stage during well-stimulation. By analyzing the microseismic events in our data post-stimulation, we can analyze fracture evolution in time.
UR - http://www.scopus.com/inward/record.url?scp=85146648256&partnerID=8YFLogxK
U2 - 10.1190/image2022-3751887.1
DO - 10.1190/image2022-3751887.1
M3 - ???researchoutput.researchoutputtypes.contributiontojournal.conferencearticle???
AN - SCOPUS:85146648256
SN - 1052-3812
VL - 2022-August
SP - 1966
EP - 1969
JO - SEG Technical Program Expanded Abstracts
JF - SEG Technical Program Expanded Abstracts
Y2 - 28 August 2022 through 1 September 2022
ER -