Réf ABG-139686 Sujet de Thèse
26/06/2026 Autre financement public
Karlsruhe Institute of Technology - Institute of Applied Geosciences - Division of Geothermal Research
Lieu de travail
Karlsruhe - Allemagne
Intitulé du sujet
Pattern recognition in DAS data
Champs scientifiques
Terre, univers, espace
Numérique
Physique
Mots clés
Geophysics, Signal processing, Seismology, Machine Learning, Seismic monitoring
Description du sujet
Distributed Acoustic Sensing (DAS) is a fiber optic technology that turns optical fibers into dense seismic arrays. When deployed on unused telecommunication fibers (“dark fibers”), DAS provides regularly spaced seismic measurements along tens or much more kilometers, which could enable seismic monitoring of large areas. The research is planned in the frame of the RUBADO project (BMWE, FKZ 03EE4076A), within which DAS is applied in the Upper Rhine Graben to explore its potential for monitoring geothermal reservoirs and induced seismicity at such scales. Efficient monitoring requires automated processing of the large volumes of data generated (several TB) to extract transient seismic signals, such as microseismic events, from the anthropogenic noise, which constitutes most of the recorded signal. Additionally, identification of quite periods is of interest for applying ambient seismic noise interferometry. Machine learning (ML) offers a promising solution to automatically classify signals of interest. The objective of this research work is to develop, implement and validate ML-based methods that improve signal detection and classification in DAS data, directly contributing to geothermal monitoring and broader seismic applications.
In this framework, the following tasks are expected:
Data acquisition, signal pre-processing and classification
Collect and organize datasets acquired within the RUBADO project,
Perform multi-domain analysis of DAS waveforms in the time, frequency, and space–wavenumber domains (and other array-based representations where relevant),
Develop robust pre-processing workflows (e.g., denoising and segmentation) tailored to DAS data characteristics.
Identify and extract physically meaningful signal attributes and recurring waveform patterns that capture the variability of seismic and anthropogenic sources, forming the basis for machine learning feature spaces.
Training dataset development and pattern recognition framework:
Build and curate a labelled dataset through manual inspection and expert annotation of transient signals in DAS recordings,
Define consistent labeling strategies for different signal classes (e.g., seismic events, traffic-induced noise, instrumental artifacts),
Investigate and implement pattern recognition approaches to identify recurrent waveform structures and spatio-temporal signatures in DAS records,
Develop machine learning and deep learning workflows for automatic signal classification, including supervised, unsupervised, and/or semi-supervised (hybrid) approaches to use both labeled and unlabeled data.
Model validation, benchmarking and transfer:
Apply ML models to DAS datasets from the RUBADO project,
Benchmark the performance against independent geophone data and existing event catalogs,
Assess model generalization capability across different DAS deployments, acquisition geometries, and environmental conditions,
Perform systematic uncertainty and bias analysis to identify limitations and improve model transferability.
Workflow integration for seismic monitoring and subsurface imaging:
Integrate the developed processing and machine learning pipeline into the RUBADO analysis framework for near real-time or batch seismic monitoring,
Enhance event detection, classification, and characterization workflows to improve signal interpretability in DAS data,
Support improved subsurface imaging by providing cleaner, better-characterized input signals for further seismic processing (e.g., ambient noise analysis, interferometry, or velocity inversion).
Prise de fonction :
01/10/2026
Nature du financement
Autre financement public
Précisions sur le financement
75% based upon the salary frame agreement for the German public service sector (TV-L)
Présentation établissement et labo d'accueil
Karlsruhe Institute of Technology - Institute of Applied Geosciences - Division of Geothermal Research
The Geothermal Energy and Reservoir Technology group, led by Prof. Dr. Thomas Kohl, deals with the scientific and technological challenges of geothermal energy in research and teaching. This base load energy source can be used to produce heat and electricity. The development opportunities of geothermal energy, especially in southern Germany, offers enormous potential and must be further developed for eco-friendly economic use.
In this working group, we investigate a broad range of topics in geophysics and applied geoscience, from geothermal reservoir exploration and development, induced seismicity, thermal water circuit to numerics, related to the successful use of geothermal energy. Our research contributes to the research field "Energy " within the program "Renewable Energies " as defined by the Helmholtz Association, of which KIT Is member.
The geothermal team is a multi-disciplinary team gathering geologists, geochemists, geophysicists, geomecanical engineers and several nationalities are represented (Europe, South America, Middle East, Asia...). We are involved in numerous scientific projects and have many international partners.
Site web :
https://geothermics.agw.kit.edu/english/index.php
Intitulé du doctorat
Doctor in Geosciences
Pays d'obtention du doctorat
Allemagne
Etablissement délivrant le doctorat
Department of Civil Engineering, Geo and Environmental Sciences
Ecole doctorale
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Profil du candidat
The ideal candidate should have the following qualifications:
Master’s degree in Geophysics, Physics, Computational Earth Sciences, Mathematics or related field.
Strong background in seismology and signal processing.
Strong programming skills (e.g. Python, MATLAB, C/C++).
Proven experience in big data analysis and/or machine learning.
Interest in geothermal applications.
Enthusiasm for fieldwork in addition to office work and for interdisciplinary collaboration.
At KIT we value the diversity of our employees; different perspectives and backgrounds enrich our work. We therefore welcome applications from all candidates. Women are especially encouraged to apply. Applications from recognized severely disabled individuals are given preferential consideration when qualifications are equal.
Date limite de candidature
22/07/2026