Abolfazl Komeazi*, Goethe University Frankfurt, Geosciences, Geophysics, Altenhöferallee 1, Frankfurt, Germany, E-mail: komeazi@geophysik.uni-frankfurt.de; ORCID: 0000-0003-2411-9770Fabian Limberger, Goethe University Frankfurt, Geosciences, Geophysics, Altenhöferallee 1, Frankfurt, Germany, E-mail: f.limberger@geophysik.uni-frankfurt.de; ORCID: 0000-0002-8948-6005Georg Rümpker*, Goethe University Frankfurt, Geosciences, Geophysics, Altenhöferallee 1, Frankfurt, Germany, E-mail: rumpker@geophysik.uni-frankfurt.de; ORCID: 0000-0002-5348-9888* Corresponding author: Abolfazl Komeazi, komeazi@geophysik.uni-frankfurt.de* Corresponding author: Georg Rümpker, rumpker@geophysik.uni-frankfurt.deABSTRACTEarthquake localization using Distributed Acoustic Sensing (DAS) is challenging due to the single-component directional sensitivity of DAS systems. We propose a novel approach for localization that is based on dense DAS recordings and constraints from known structural heterogeneity of the subsurface. Our method employs full-waveform simulations to generate synthetic DAS wavefield images for a range of potential earthquake source locations. A deep convolutional neural network (CNN), based on a U-Net architecture, is trained on these images to map DAS-recorded wavefield patterns to earthquake source coordinates, without the need for identification and picking of P- and S-wave arrivals. We evaluate this wavefield-based localization technique based on a challenging synthetic case study involving DAS recordings in a single vertical borehole only. We consider different velocity models of varying geological complexity. The results show that the CNN effectively learns location-specific wavefield signatures influenced by subsurface heterogeneity. Uncertainties can be reduced significantly by adding recordings from a second borehole. While the results are based on idealized 2D synthetic modeling, the method offers a promising approach for improving microseismic monitoring when detailed information on the heterogeneous velocity structure is available (such as that derived from seismic surveys).PLAIN LANGUAGE SUMMARYLocating earthquakes using Distributed Acoustic Sensing (DAS) fiber optic cables in a single borehole is difficult because DAS primarily measures motion along one direction. Our study explores a new method that utilizes known variations in underground geology. These structures alter how seismic waves travel, creating unique patterns, or wavefields, in the DAS recordings depending on the origin of the earthquake. We use computer simulations based on geological models to generate a catalog of these wavefield patterns from many potential earthquake locations. A machine learning algorithm is then trained to recognize these patterns and map them directly to the source location. We tested this approach using simplified 2-dimensional models and found it can improve earthquake localization accuracy compared to standard techniques. While this approach is still based on simulated data, it shows strong potential for improving earthquake monitoring using a single DAS cable, especially in areas where deploying many sensors is difficult or expensive.