Using Machine Learning to Discern Eruption in Noisy Environments: A Case Study using CO2-driven Cold-Water Geyser in Chimayo, New Mexico
B. Yuan, Y. J. Tan, M. K. Mudunuru, O. E. Marcillo, A. A. Delorey, P., M. Roberts, J. D. Webster, C. N. L. Gammans, S. Karra, G. D. Guthrie, and P., A. Johnson

TL;DR
This study applies machine learning, specifically Random Forest classifiers, to distinguish eruption signals from noise in seismic data of a CO2-driven geyser, demonstrating over 90% accuracy in noisy environments, with implications for leak monitoring in CO2 sequestration.
Contribution
The paper introduces a novel ML framework combining filtering techniques and RF classification to accurately identify geyser states in noisy seismic data, relevant for environmental monitoring.
Findings
RF classifier achieves >90% accuracy in classifying geyser states
Hierarchical filtering reduces seismic noise without losing eruption signals
Method shows potential for leak detection in CO2 sequestration projects
Abstract
We present an approach based on machine learning (ML) to distinguish eruption and precursory signals of Chimay\'{o} geyser (New Mexico, USA) under noisy environments. This geyser can be considered as a natural analog of intrusion into shallow water aquifers. By studying this geyser, we can understand upwelling of -rich fluids from depth, which has relevance to leak monitoring in a sequestration project. ML methods such as Random Forests (RF) are known to be robust multi-class classifiers and perform well under unfavorable noisy conditions. However, the extent of the RF method's accuracy is poorly understood for this -driven geysering application. The current study aims to quantify the performance of RF-classifiers to discern the geyser state. Towards this goal, we first present the data collected from the seismometer that is…
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Taxonomy
TopicsSeismology and Earthquake Studies · Seismic Waves and Analysis · Seismic Imaging and Inversion Techniques
