Accurate precipitation estimates at individual locations are crucial for
weather forecasting and spatial analysis. This study presents a paradigm shift
by leveraging Deep Neural Networks (DNNs) to surpass traditional methods like
Kriging for station-specific precipitation approximation. We propose two
innovative NN architectures: one utilizing precipitation, elevation, and
location, and another incorporating additional meteorological parameters like
humidity, temperature, and wind speed. Trained on a vast dataset (1980-2019),
these models outperform Kriging across various evaluation metrics (correlation
coefficient, root mean square error, bias, and skill score) on a five-year
validation set. This compelling evidence demonstrates the transformative power
of deep learning for spatial prediction, offering a robust and precise
alternative for station-specific precipitation estimation.