|国家预印本平台
首页|A Real-Time, Auto-Regression Method for In-Situ Feature Extraction in Hydrodynamics Simulations

A Real-Time, Auto-Regression Method for In-Situ Feature Extraction in Hydrodynamics Simulations

A Real-Time, Auto-Regression Method for In-Situ Feature Extraction in Hydrodynamics Simulations

来源:Arxiv_logoArxiv
英文摘要

Hydrodynamics simulations are powerful tools for studying fluid behavior under physical forces, enabling extraction of features that reveal key flow characteristics. Traditional post-analysis methods offer high accuracy but incur significant computational and I/O costs. In contrast, in-situ methods reduce data movement by analyzing data during the simulation, yet often compromise either accuracy or performance. We propose a lightweight auto-regression algorithm for real-time in-situ feature extraction. It applies curve-fitting to temporal and spatial data, reducing data volume and minimizing simulation overhead. The model is trained incrementally using mini-batches, ensuring responsiveness and low computational cost. To facilitate adoption, we provide a flexible library with simple APIs for easy integration into existing workflows. We evaluate the method on simulations of material deformation and white dwarf (WD) mergers, extracting features such as shock propagation and delay-time distribution. Results show high accuracy (94.44%-99.60%) and low performance impact (0.11%-4.95%) demonstrating the method's effectiveness for accurate and efficient in-situ analysis.

Kewei Yan、Yonghong Yan

天文学计算技术、计算机技术

Kewei Yan,Yonghong Yan.A Real-Time, Auto-Regression Method for In-Situ Feature Extraction in Hydrodynamics Simulations[EB/OL].(2025-04-14)[2025-06-06].https://arxiv.org/abs/2504.10632.点此复制

评论