报告题目:Robust PDE Identification from a Noisy Data Set
报告人:刘皓助理教授香港浸会大学
报告时间:2026年06月24日10:00—11:00
报告地点:正新楼313
校内联系人:吕俊良 [email protected]
报告摘要:
Partial differential equations (PDEs) are fundamental tools for modeling physical phenomena across science and engineering. Traditionally derived from empirical observation, PDEs can now be discovered directly from data -- thanks to the rapid growth in data collection and storage capabilities. This presentation introduces our recent work on data-driven identification of parametric PDEs. A central challenge in this field is handling data corrupted by heavy noise, which many existing methods fail to address effectively. We tackle this by proposing a successively denoised differentiation strategy that improves both noise removal and the accuracy of computed partial derivatives. Building on this foundation, we develop two subspace pursuit-based methods for identifying parametric PDEs. We further extend this framework to PDEs with spatially and temporally varying coefficients. By incorporating B-spline representations, we formulate the problem as one of block sparse recovery and introduce a group subspace pursuit algorithm with theoretical guarantees. Finally, we present a weak-form based algorithm for the varying-coefficient setting, which achieves significantly improved robustness against noise.
报告人简介:
刘皓,香港浸会大学数学系助理教授。其于2018年在香港科技大学取得博士学位,并于2018-2021年在佐治亚理工大学做博士后。在2021年,其加入香港浸会大学。其主要研究方向包括图像处理,深度学习理论,偏微分方程识别以及数值偏微分方程。