北京雁栖湖应用数学研究院 北京雁栖湖应用数学研究院

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关于我们
院长致辞
理事会
协作机构
参观来访
人员
管理层
科研人员
博士后
来访学者
行政团队
学术支持
学术研究
研究团队
公开课
讨论班
期刊
招生招聘
教研人员
博士后
学生
会议
学术会议
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论坛
学院生活
住宿
交通
配套设施
周边旅游
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资料下载
清华大学 "求真书院"
清华大学丘成桐数学科学中心
清华三亚国际数学论坛
上海数学与交叉学科研究院
河套数学与交叉学科研究院
BIMSA > BIMSA 计算数学讨论班 BIMSA 计算数学讨论班 Scaling in Chebyshev-based Physics-informed Kolmogorov-Arnold Networks for Large-Domain PDEs
Scaling in Chebyshev-based Physics-informed Kolmogorov-Arnold Networks for Large-Domain PDEs
组织者
塔赫蕾·埃夫特哈里 , 胡丕丕 , 梁鑫 , 马志婷 , 哈米德·莫菲迪 , 苏春梅 , 阿克塞尔·特恩奎斯特 , 王丽 , 熊繁升 , 杨朔 , 杨武岳
演讲者
Farinaz Mostajeran
时间
2026年06月24日 14:00 至 15:00
地点
A3-4-312
线上
Zoom 518 868 7656 (BIMSA)
摘要
Modeling transport processes in environmental and engineering systems often requires solving partial differential equations over large spatial domains. Although Kolmogorov-Arnold Networks have shown strong approximation capabilities and promising performance in scientific computing, their effectiveness can significantly decrease when the input variables are not represented within an appropriate domain. In particular, when the spatial domain becomes wide, these networks may face difficulties in convergence, stability, and accuracy. This talk introduces Scaled-cPIKAN, a physics-informed framework that combines Chebyshev-based Kolmogorov-Arnold Networks with a simple but effective spatial transformation. By appropriately scaling the input coordinates and the governing equation, the proposed method stabilizes training and helps prevent common numerical issues that arise in large-domain PDE problems. Using Neural Tangent Kernel analysis, we provide theoretical insight into why this scaling is essential for achieving fast and consistent convergence. Numerical experiments on several benchmark problems will be discussed to demonstrate the accuracy, efficiency, and robustness of the method. Finally, we will highlight remaining challenges in this area and discuss possible directions for future research.
演讲者介绍
Dr. Farinaz Mostajeran is a Postdoctoral Researcher at the University of Utah's Energy & Intelligence Lab (EiLAB). Her current research focuses on developing neural network-based methods for scientific computing, with a particular emphasis on Kolmogorov-Arnold Networks (KANs), physics-informed learning, and large-scale problems governed by partial differential equations (PDEs). Before joining the University of Utah, she was a Postdoctoral Researcher in the Department of Applied Mathematics at Tarbiat Modares University, where she worked on solving fractional PDEs using hybrid Physics-Informed Neural Networks (PINNs). She received her Ph.D. in Applied Mathematics from Tarbiat Modares University, where her research focused on neural solvers, including physics-informed approaches based on PINNs, radial basis function neural networks, and wavelet neural networks.
北京雁栖湖应用数学研究院
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No. 544, Hefangkou Village Huaibei Town, Huairou District Beijing 101408

北京市怀柔区 河防口村544号
北京雁栖湖应用数学研究院 101408

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