Application of machine learning for predicting shallow geothermal temperatures

Research output: ThesisMaster's Thesis

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@mastersthesis{497d926c32ef4eeab0c22611e5d8d5f1,
title = "Application of machine learning for predicting shallow geothermal temperatures",
abstract = "Nowadays, the energy sector is experiencing the transition towards clean energy sources that reduce carbon emissions. Geothermal energy can cover the demand for energy grid stability and contribute to decarbonisation. The heat extracted from underground can be used directly as heat for space cooling and heating without any conversion. The extraction of heat from shallow underground depths (up to 200 m) is the basis of this research. To provide long-term sustainability of projects involving geothermal deployment and heat extraction, it is necessary to carefully monitor and manage the geothermal resources. Groundwater temperature (GWT) is a critical environmental parameter influencing the utilisation of geothermal systems. Accurate prediction of GWT is essential for assessing the efficiency and optimising the performance of geothermal installations. This thesis investigates the predictive modelling of GWT using machine learning (ML) techniques. To accurately predict GWT with the help of ML algorithms, a comprehensive dataset with selected features was assembled, incorporating measurements from the eHYD database, along with weather data from Visual Crossing. The data from 1996 to 2016 of shallow geothermal wells in Vienna, district 22, was used for this purpose. Steps for dataset preprocessing are described, and ML algorithms are applied and evaluated to predict the temperature. The analysis revealed the K-Nearest Neighbors model to be the model providing the highest accuracy in predicting GWT, as well as showed the importance of additional accounting for urban factors when investigating geothermal applications on the city scale.",
keywords = "Maschinelles Lernen, Temperaturvorhersage, Oberfl{\"a}chengeothermie, Dekarbonisierung, Machine learning, temperature prediction, shallow geothermal energy, decarbonisation",
author = "Viktoriia Skosareva",
note = "no embargo",
year = "2024",
doi = "10.34901/mul.pub.2024.125",
language = "English",
school = "Montanuniversitaet Leoben (000)",

}

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TY - THES

T1 - Application of machine learning for predicting shallow geothermal temperatures

AU - Skosareva, Viktoriia

N1 - no embargo

PY - 2024

Y1 - 2024

N2 - Nowadays, the energy sector is experiencing the transition towards clean energy sources that reduce carbon emissions. Geothermal energy can cover the demand for energy grid stability and contribute to decarbonisation. The heat extracted from underground can be used directly as heat for space cooling and heating without any conversion. The extraction of heat from shallow underground depths (up to 200 m) is the basis of this research. To provide long-term sustainability of projects involving geothermal deployment and heat extraction, it is necessary to carefully monitor and manage the geothermal resources. Groundwater temperature (GWT) is a critical environmental parameter influencing the utilisation of geothermal systems. Accurate prediction of GWT is essential for assessing the efficiency and optimising the performance of geothermal installations. This thesis investigates the predictive modelling of GWT using machine learning (ML) techniques. To accurately predict GWT with the help of ML algorithms, a comprehensive dataset with selected features was assembled, incorporating measurements from the eHYD database, along with weather data from Visual Crossing. The data from 1996 to 2016 of shallow geothermal wells in Vienna, district 22, was used for this purpose. Steps for dataset preprocessing are described, and ML algorithms are applied and evaluated to predict the temperature. The analysis revealed the K-Nearest Neighbors model to be the model providing the highest accuracy in predicting GWT, as well as showed the importance of additional accounting for urban factors when investigating geothermal applications on the city scale.

AB - Nowadays, the energy sector is experiencing the transition towards clean energy sources that reduce carbon emissions. Geothermal energy can cover the demand for energy grid stability and contribute to decarbonisation. The heat extracted from underground can be used directly as heat for space cooling and heating without any conversion. The extraction of heat from shallow underground depths (up to 200 m) is the basis of this research. To provide long-term sustainability of projects involving geothermal deployment and heat extraction, it is necessary to carefully monitor and manage the geothermal resources. Groundwater temperature (GWT) is a critical environmental parameter influencing the utilisation of geothermal systems. Accurate prediction of GWT is essential for assessing the efficiency and optimising the performance of geothermal installations. This thesis investigates the predictive modelling of GWT using machine learning (ML) techniques. To accurately predict GWT with the help of ML algorithms, a comprehensive dataset with selected features was assembled, incorporating measurements from the eHYD database, along with weather data from Visual Crossing. The data from 1996 to 2016 of shallow geothermal wells in Vienna, district 22, was used for this purpose. Steps for dataset preprocessing are described, and ML algorithms are applied and evaluated to predict the temperature. The analysis revealed the K-Nearest Neighbors model to be the model providing the highest accuracy in predicting GWT, as well as showed the importance of additional accounting for urban factors when investigating geothermal applications on the city scale.

KW - Maschinelles Lernen

KW - Temperaturvorhersage

KW - Oberflächengeothermie

KW - Dekarbonisierung

KW - Machine learning

KW - temperature prediction

KW - shallow geothermal energy

KW - decarbonisation

U2 - 10.34901/mul.pub.2024.125

DO - 10.34901/mul.pub.2024.125

M3 - Master's Thesis

ER -