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Smooth Deep Learning Magnetotelluric Inversion Based on Physics-Informed Swin Transformer and Multiwindow Savitzky–Golay Filter

Wei Liu, He Wang, Zhenzhu Xi, Rongqing Zhang

2023IEEE Transactions on Geoscience and Remote Sensing19 citationsDOI

Abstract

Despite exhibiting excellent inversion results for synthetic data in Magnetotelluric (MT) inversion, applying deep learning (DL) to directly inverting MT field data remains challenging. In this study, different from most previous works that mainly focus on generating massive representative resistivity models to cover the solutions of the field data or constructing a strong network by employing advanced DL techniques, we provide a new perspective in that a multi-window Savitzky-Golay (MWSG) filter is proposed to first smooth the apparent resistivity and phase derived from the MT field measurements before network prediction. This smoothing operation aims to promote the actual apparent resistivity and phase to be close in morphology and smoothness to the training input data, i.e. to adapt the field data to the training sample data. Then, the smoothed apparent resistivity and phase, instead of the original ones, are fed into the well-trained network for instantaneous inversion. Because we create a set of layered resistivity models with gradual-changing resistivity to act as desired output during network training, it together with the proposed MWSG filter enables this work to achieve smooth inversion. Besides, we introduce Swin Transformer (SwinT) to improve the efficiency of MT DL inversion, based on which a physics-informed neural network (PISwinT) is implemented to enhance the generalization capability. We demonstrate the proposed PISwinT-MWSG smooth inversion method in both synthetic and field MT cases, and it is expected to improve the adaptability and practicability of the DL method to directly solve the inverse problems in MT surveys.

Topics & Concepts

MagnetotelluricsInversion (geology)Computer scienceElectrical resistivity and conductivityAlgorithmArtificial neural networkTransformerSynthetic dataSpurious relationshipDeep learningArtificial intelligenceGeophysicsElectronic engineeringGeologyMachine learningElectrical engineeringEngineeringSeismologyTectonicsVoltageGeophysical and Geoelectrical MethodsGeophysical Methods and ApplicationsSoil Moisture and Remote Sensing