MLLGJan 12

Dual-Level Models for Physics-Informed Multi-Step Time Series Forecasting

arXiv:2601.07640v11 citationsh-index: 11
Originality Incremental advance
AI Analysis

It addresses forecasting for automatic control and optimization of physical processes, but is incremental as it combines existing techniques like LSTM and PINNs.

This paper tackles multi-step forecasting of dynamical systems by integrating probabilistic input forecasting with physics-informed output prediction, achieving higher log-likelihood and lower mean squared errors compared to conventional methods.

This paper develops an approach for multi-step forecasting of dynamical systems by integrating probabilistic input forecasting with physics-informed output prediction. Accurate multi-step forecasting of time series systems is important for the automatic control and optimization of physical processes, enabling more precise decision-making. While mechanistic-based and data-driven machine learning (ML) approaches have been employed for time series forecasting, they face significant limitations. Incomplete knowledge of process mathematical models limits mechanistic-based direct employment, while purely data-driven ML models struggle with dynamic environments, leading to poor generalization. To address these limitations, this paper proposes a dual-level strategy for physics-informed forecasting of dynamical systems. On the first level, input variables are forecast using a hybrid method that integrates a long short-term memory (LSTM) network into probabilistic state transition models (STMs). On the second level, these stochastically predicted inputs are sequentially fed into a physics-informed neural network (PINN) to generate multi-step output predictions. The experimental results of the paper demonstrate that the hybrid input forecasting models achieve a higher log-likelihood and lower mean squared errors (MSE) compared to conventional STMs. Furthermore, the PINNs driven by the input forecasting models outperform their purely data-driven counterparts in terms of MSE and log-likelihood, exhibiting stronger generalization and forecasting performance across multiple test cases.

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