Adaptive Process-Guided Learning: An Application in Predicting Lake DO Concentrations
Runlong Yu, Chonghao Qiu, Robert Ladwig, Paul C. Hanson, Yiqun Xie,, Yanhua Li, Xiaowei Jia

TL;DR
This paper presents an adaptive process-guided learning framework that combines physical lake models with neural networks to improve dissolved oxygen predictions, especially during fluctuating conditions, with broad applicability.
Contribution
It introduces the April model that dynamically adjusts timesteps to enhance stability and accuracy in process-guided neural network predictions of lake DO levels.
Findings
Robust DO prediction across diverse lakes.
Effective handling of rapid DO fluctuations.
Improved stability with adaptive timestep adjustment.
Abstract
This paper introduces a \textit{Process-Guided Learning (Pril)} framework that integrates physical models with recurrent neural networks (RNNs) to enhance the prediction of dissolved oxygen (DO) concentrations in lakes, which is crucial for sustaining water quality and ecosystem health. Unlike traditional RNNs, which may deliver high accuracy but often lack physical consistency and broad applicability, the \textit{Pril} method incorporates differential DO equations for each lake layer, modeling it as a first-order linear solution using a forward Euler scheme with a daily timestep. However, this method is sensitive to numerical instabilities. When drastic fluctuations occur, the numerical integration is neither mass-conservative nor stable. Especially during stratified conditions, exogenous fluxes into each layer cause significant within-day changes in DO concentrations. To address this…
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Taxonomy
TopicsStatistical and Computational Modeling · Data Stream Mining Techniques · Intelligent Tutoring Systems and Adaptive Learning
