地温梯度
地质学
地震学
地球物理成像
分布式声传感
地球物理学
计算机科学
电信
光纤传感器
光纤
作者
Joanna M. Holmgren,Antony Butcher,Maximilian J. Werner,Sacha Lapins,Jonathan Chambers,J. M. Kendall,Germán Rodrı́guez,James P. Verdon,Vanessa Starcher
出处
期刊:Geophysics
[Society of Exploration Geophysicists]
日期:2025-04-18
卷期号:: 1-44
标识
DOI:10.1190/geo2024-0596.1
摘要
We explore the performance of Distributed Acoustic Sensing (DAS) for crosswell seismic imaging at a shallow geothermal project in an abandoned mine. The UK Geoenergy Observatory (UKGEOS) research facility in Glasgow has repurposed an abandoned coal mine below the city with the goal to investigate the heat storage and heat recovery potential of flooded mines. Originally for distributed temperature sensing purposes, UKGEOS installed fiber-optic cables in lt;100 m deep boreholes passing through the mined coal seams now targeted for heat production. We first conducted a crosswell active-source seismic survey prior to heat pump installation to obtain a baseline velocity structure of the coal seams and surrounding lithologies. We acquired data simultaneously with DAS and a co-located hydrophone array to facilitate a comparison with conventional crosswell methods. We find that the noise levels are significantly higher for DAS, making first arrivals discernible only within 30 m vertical offset between shot and channel depths which limits the DAS monitoring depth range along the borehole. However, the DAS coda provides much greater spatial resolution that can capture refracted arrivals, allowing for accurate and precise identification of discrete layers. Future repeated surveys with DAS can thus shed important light on any changes within the seismic velocity structure between the boreholes, indicating potential changes in fracture zones and fluid pathways. As repurposing abandoned coal mines for geothermal energy has been shown to be a promising alterative geoenergy source, DAS could be an inexpensive and simpler alternative to drilling monitoring wells and deploying conventional seismic arrays.
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