HYDRAULIC CONDUCTIVITY ESTIMATION THROUGH THE USE OF TRACERS TESTS AND GEOMECHANICAL SURVEY: PRELIMINARY OUTCOMES FROM THE MONTAGNA DEI FIORI CARBONATE AQUIFER (CENTRAL ITALY)
ITALIAN JOURNAL OF ENGINEERING GEOLOGY AND ENVIRONMENT(2024)
Univ Politecn Marche
Abstract
Nowadays, groundwater is the most important resource on our planet. However, due to population growth, urbanisation, and climate change, this resource is often overexploited or contaminated. In this context, carbonate aquifers provide drinking water to approximately 25% of the global population. Due to aquifers heterogeneities and anisotropic fracture systems, they can be affected by potential contamination and their optimal exploitation represents a challenge aspect. In this particular scenario, carbonate mountain aquifers encompass valuable groundwater resources due to their high recharge rates and excellent water quality; therefore, the understanding of their hydrogeological characteristics are vital for aquifers protection and water management. A valid solution to explore water movement within such aquifers and to quantify the groundwater amount can be offered using artificial tracers. At the same time, the geomechanical surveys can deep the knowledge on fracture density and orientation, providing valuable insights about fracture connection and conductivity. This study combines the advantages of six artificial tracer tests performed in four deep wells (260-500 m b.g.l.) and a geomechanical survey used, among other, to estimate hydraulic conductivity of a mountainous carbonate aquifer located in Central Italy. The results obtained by different methods highlighted the presence of multiple layers with higher conductivity values, able to sustain the groundwater flow without significant piezometric level drawdown during water pumping operations. This approach provides an effective support to the water management company operating
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Key words
carbonate aquifers,hydraulic conductivity,groundwater management,tracers,scanlines,central Italy
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