Article ID Journal Published Year Pages File Type
507686 Computers & Geosciences 2013 8 Pages PDF
Abstract

•A new application of ILS method to Thermal Response Test is proposed, based on geostatistics.•The method was implemented in user-friendly Excel macros, provided with the paper.•Drift is used to find ground thermal conductivity (λg), starting from fluctuation data analysis.•Conditional Estimation finds ground volumetric heat capacity and borehole thermal resistance.•DCE method is a reliable and simple application of ILS theory.

In this paper we present a new method (DCE – Drift and Conditional Estimation), coupling Infinite Line Source (ILS) theory with geostatistics, to interpret thermal response test (TRT) data and the relative implementing user-friendly software (GA-TRT). Many methods (analytical and numerical) currently exist to analyze TRT data. The innovation derives from the fact that we use a probabilistic approach, able to overcome, without excessively complicated calculations, many interpretation problems (choice of the guess value of ground volumetric heat capacity, identification of the fluctuations of recorded data, inability to provide a measure of the precision of the estimates obtained) that cannot be solved otherwise. The new procedure is based on a geostatistical drift analysis of temperature records which leads to a precise equivalent ground thermal conductivity (λg) estimation, confirmed by the calculation of its estimation variance. Afterwards, based on λg, a monovariate regression on the original data allows for the identification of the theoretical relationship between ground volumetric heat capacity (cg) and borehole thermal resistance (Rb). By assuming the monovariate Probability Distribution Function (PDF) for each variable, the joint conditional PDF to the cg−Rb relationship is found; finally, the conditional expectation allows for the identification of the correct and optimal couple of the cg−Rb estimated values.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science Applications
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