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Abstract
Developing accurate models for groundwater control is paramount for planning and managing life-sustaining resources (water) from aquifer reservoirs. Significant progress has been made toward designing and employing deep-forecasting models to tackle the challenge of multivariate time-series forecasting. However, most models were initially taught only to optimize natural language processing and computer vision tasks. We propose the Wavelet Gated Multiformer, which combines the strength of a vanilla Transformer with the Wavelet Crossformer that employs inner wavelet cross-correlation blocks. The self-attention mechanism (Transformer) computes the relationship between inner time-series points, while the cross-correlation finds trending periodicity patterns. The multi-headed encoder is channeled through a mixing gate (linear combination) of sub-encoders (Transformer and Wavelet Crossformer) that output trending signatures to the decoder. This process improved the model’s predictive capabilities, reducing Mean Absolute Error by 31.26 % compared to the second-best performing transformer-like models evaluated. We have also used the Multifractal Detrended Cross-Correlation Heatmaps (MF-DCCHM) to extract cyclical trends from pairs of stations across multifractal regimes by denoising the pair of signals with Daubechies wavelets. Our dataset was obtained from a network of eight wells for groundwater monitoring in Brazilian aquifers, six rainfall stations, eleven river flow stations, and three weather stations with atmospheric pressure, temperature, and humidity sensors.
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1 Geological Survey of Brazil - SGB, Salvador, Brazil (GRID:grid.452625.2) (ISNI:0000 0001 2175 5929)
2 Petrobras, Petróleo Brasileiro S.A, Rio de Janeiro, Brazil (GRID:grid.423526.4) (ISNI:0000 0001 2192 4294)
3 Federal University of Bahia, Research Center in Geophysics and Geosciences, Salvador, Brazil (GRID:grid.8399.b) (ISNI:0000 0004 0372 8259)
4 Linköping University, Division of Artificial Intelligence and Integrated Computer Systems, Department of Computer and Information Science, Linköping, Sweden (GRID:grid.5640.7) (ISNI:0000 0001 2162 9922)