LGAIAPOct 3, 2023

Uncertainty Quantification in Inverse Models in Hydrology

arXiv:2310.02193v1h-index: 18
Originality Incremental advance
AI Analysis

This work addresses the problem of limited basin data for hydrologists, offering incremental improvements in prediction accuracy and uncertainty quantification.

The authors tackled the challenge of modeling streamflow in hydrology by developing a knowledge-guided, probabilistic inverse model to recover physical basin characteristics from more readily available streamflow and weather data, achieving a 3% improvement in R² for basin characteristic estimation and a 6% improvement for streamflow prediction.

In hydrology, modeling streamflow remains a challenging task due to the limited availability of basin characteristics information such as soil geology and geomorphology. These characteristics may be noisy due to measurement errors or may be missing altogether. To overcome this challenge, we propose a knowledge-guided, probabilistic inverse modeling method for recovering physical characteristics from streamflow and weather data, which are more readily available. We compare our framework with state-of-the-art inverse models for estimating river basin characteristics. We also show that these estimates offer improvement in streamflow modeling as opposed to using the original basin characteristic values. Our inverse model offers 3\% improvement in R$^2$ for the inverse model (basin characteristic estimation) and 6\% for the forward model (streamflow prediction). Our framework also offers improved explainability since it can quantify uncertainty in both the inverse and the forward model. Uncertainty quantification plays a pivotal role in improving the explainability of machine learning models by providing additional insights into the reliability and limitations of model predictions. In our analysis, we assess the quality of the uncertainty estimates. Compared to baseline uncertainty quantification methods, our framework offers 10\% improvement in the dispersion of epistemic uncertainty and 13\% improvement in coverage rate. This information can help stakeholders understand the level of uncertainty associated with the predictions and provide a more comprehensive view of the potential outcomes.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes