SENDAI:一种分层稀疏测量、高效数据同化框架 / SENDAI: A Hierarchical Sparse-measurement, EfficieNt Data AssImilation Framework
1️⃣ 一句话总结
这篇论文提出了一个名为SENDAI的轻量级数据同化框架,它能够仅利用极稀疏的传感器观测数据,通过结合仿真先验知识和学习到的误差修正,准确重建复杂的时空场(如植被指数),并在数据分布变化和资源受限的实际部署中显著优于现有方法。
Bridging the gap between data-rich training regimes and observation-sparse deployment conditions remains a central challenge in spatiotemporal field reconstruction, particularly when target domains exhibit distributional shifts, heterogeneous structure, and multi-scale dynamics absent from available training data. We present SENDAI, a hierarchical Sparse-measurement, EfficieNt Data AssImilation Framework that reconstructs full spatial states from hyper sparse sensor observations by combining simulation-derived priors with learned discrepancy corrections. We demonstrate the performance on satellite remote sensing, reconstructing MODIS (Moderate Resolution Imaging Spectroradiometer) derived vegetation index fields across six globally distributed sites. Using seasonal periods as a proxy for domain shift, the framework consistently outperforms established baselines that require substantially denser observations -- SENDAI achieves a maximum SSIM improvement of 185% over traditional baselines and a 36% improvement over recent high-frequency-based methods. These gains are particularly pronounced for landscapes with sharp boundaries and sub-seasonal dynamics; more importantly, the framework effectively preserves diagnostically relevant structures -- such as field topologies, land cover discontinuities, and spatial gradients. By yielding corrections that are more structurally and spectrally separable, the reconstructed fields are better suited for downstream inference of indirectly observed variables. The results therefore highlight a lightweight and operationally viable framework for sparse-measurement reconstruction that is applicable to physically grounded inference, resource-limited deployment, and real-time monitor and control.
SENDAI:一种分层稀疏测量、高效数据同化框架 / SENDAI: A Hierarchical Sparse-measurement, EfficieNt Data AssImilation Framework
这篇论文提出了一个名为SENDAI的轻量级数据同化框架,它能够仅利用极稀疏的传感器观测数据,通过结合仿真先验知识和学习到的误差修正,准确重建复杂的时空场(如植被指数),并在数据分布变化和资源受限的实际部署中显著优于现有方法。
源自 arXiv: 2601.21664