LGOct 15, 2025

Progressive multi-fidelity learning for physical system predictions

arXiv:2510.13762v11 citationsh-index: 12
Originality Incremental advance
AI Analysis

This addresses the problem of expensive data acquisition in physical system predictions, offering a method to improve surrogate models with multi-fidelity data, though it appears incremental as it builds on existing multi-fidelity approaches.

The paper tackles the challenge of building accurate surrogate models for physical systems when high-fidelity data is scarce and multi-fidelity data is diverse and not concurrently available, by introducing a progressive multi-fidelity surrogate model that sequentially incorporates diverse data types and reliably integrates multi-modal data for accurate predictions.

Highly accurate datasets from numerical or physical experiments are often expensive and time-consuming to acquire, posing a significant challenge for applications that require precise evaluations, potentially across multiple scenarios and in real-time. Even building sufficiently accurate surrogate models can be extremely challenging with limited high-fidelity data. Conversely, less expensive, low-fidelity data can be computed more easily and encompass a broader range of scenarios. By leveraging multi-fidelity information, prediction capabilities of surrogates can be improved. However, in practical situations, data may be different in types, come from sources of different modalities, and not be concurrently available, further complicating the modeling process. To address these challenges, we introduce a progressive multi-fidelity surrogate model. This model can sequentially incorporate diverse data types using tailored encoders. Multi-fidelity regression from the encoded inputs to the target quantities of interest is then performed using neural networks. Input information progressively flows from lower to higher fidelity levels through two sets of connections: concatenations among all the encoded inputs, and additive connections among the final outputs. This dual connection system enables the model to exploit correlations among different datasets while ensuring that each level makes an additive correction to the previous level without altering it. This approach prevents performance degradation as new input data are integrated into the model and automatically adapts predictions based on the available inputs. We demonstrate the effectiveness of the approach on numerical benchmarks and a real-world case study, showing that it reliably integrates multi-modal data and provides accurate predictions, maintaining performance when generalizing across time and parameter variations.

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