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  # πŸŒ‹ MIGRATE Project β€” Multidisciplinary and InteGRated Approach for geoThermal Exploration
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- **MIGRATE** (*Multidisciplinary and InteGRated Approach for geoThermal Exploration*) is a scientific project that bridges **geology**, **seismology**, and **machine learning** to develop a new generation of automated, reproducible and high-resolution exploration tools for the Earth's upper crust.
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  ## 🎯 Motivation
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  MIGRATE integrates three complementary disciplines:
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  - **Seismology** β€” ambient noise surface wave tomography, dispersion curve analysis
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- - **Geology** β€” magma occurrence, tectonic structure modeling, crustal scale interpretation
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  - **Machine Learning** β€” generative modeling, contrastive learning, neural surrogate inversion, and digital twins
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  These domains are tightly coupled to:
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  - Automate the inversion of surface wave dispersion curves
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  - Learn expressive representations of crustal velocity models
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- - Enable **fast and reproducible geothermal target identification**
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  ## 🧠 AI for Earth Models
 
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  # πŸŒ‹ MIGRATE Project β€” Multidisciplinary and InteGRated Approach for geoThermal Exploration
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+ **MIGRATE** (*Multidisciplinary and InteGRated Approach for geoThermal Exploration*) is a scientific project that bridges **seismology** and **machine learning** to develop a new generation of automated, reproducible and high-resolution exploration tools for the Earth's upper crust.
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  ## 🎯 Motivation
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  MIGRATE integrates three complementary disciplines:
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  - **Seismology** β€” ambient noise surface wave tomography, dispersion curve analysis
 
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  - **Machine Learning** β€” generative modeling, contrastive learning, neural surrogate inversion, and digital twins
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  These domains are tightly coupled to:
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  - Automate the inversion of surface wave dispersion curves
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  - Learn expressive representations of crustal velocity models
 
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  ## 🧠 AI for Earth Models