Deep 3D thermal modelling for the city of Berlin (Germany)

被引:0
|
作者
Judith Sippel
Sven Fuchs
Mauro Cacace
Anna Braatz
Oliver Kastner
Ernst Huenges
Magdalena Scheck-Wenderoth
机构
[1] GeoForschungsZentrum Potsdam (GFZ),Wintershall Holding GmbH
[2] EXX,undefined
[3] New Exploration Opportunities,undefined
来源
关键词
3D geological model; Conductive thermal field; Coupled fluid and heat transport; Energy Atlas Berlin;
D O I
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学科分类号
摘要
This study predicts the subsurface temperature distribution of Germany’s capital Berlin. For this purpose, a data-based lithosphere-scale 3D structural model is developed incorporating 21 individual geological units. This model shows a horizontal grid resolution of (500 × 500) m and provides the geometric base for two different approaches of 3D thermal simulations: (1) calculations of the steady-state purely conductive thermal field and (2) simulations of coupled fluid flow and heat transport. The results point out fundamentally different structural and thermal configurations for potential geothermal target units. The top of the Triassic Middle Buntsandstein strongly varies in depth (159–2,470 m below sea level) and predicted temperatures (15–95 °C), mostly because of the complex geometry of the underlying Permian Zechstein salt. The top of the sub-salt Sedimentary Rotliegend is rather flat (2,890–3,785 m below sea level) and reveals temperatures of 85–139 °C. The predicted 70 °C-isotherm is located at depths of about 1,500–2,200 m, cutting the Middle Buntsandstein over large parts of Berlin. The 110 °C-isotherm at 2,900–3,700 m depth widely crosscuts the Sedimentary Rotliegend. Groundwater flow results in subsurface cooling the extent of which is strongly controlled by the geometry and the distribution of the Tertiary Rupelian Clay. The cooling effect is strongest where this clay-rich aquitard is thinnest or missing, thus facilitating deep-reaching forced convective flow. The differences between the purely conductive and coupled models highlight the need for investigations of the complex interrelation of flow- and thermal fields to properly predict temperatures in sedimentary systems.
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页码:3545 / 3566
页数:21
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