检索规则说明:AND代表“并且”;OR代表“或者”;NOT代表“不包含”;(注意必须大写,运算符两边需空一格)
检 索 范 例 :范例一: (K=图书馆学 OR K=情报学) AND A=范并思 范例二:J=计算机应用与软件 AND (U=C++ OR U=Basic) NOT M=Visual
作 者:Yihu TANG Li HUANG Limin WU Xianghui MENG
机构地区:[1]School of Mechanical Engineering,Shanghai Jiao Tong University,Shanghai,200240,China [2]National Key Laboratory of Marine Engine Science and Technology,Shanghai,201108,China [3]Shanghai Marine Diesel Research Institute,Shanghai,201108,China
出 处:《Science China(Technological Sciences)》2025年第3期192-203,共12页中国科学(技术科学英文版)
基 金:supported by the National Natural Science Foundation of China(Grant No.52130502);the National Key Laboratory of Marine Engine Science and Technology(Grant No.LAB2023-06-WD)。
摘 要:The simulation of lubrication on rough surfaces is essential for the design and optimization of tribological performance.Although the application of physics-informed neural networks(PINNs)in analyzing hydrodynamic lubrication has been increasing,their implementation has predominantly been restricted to smooth surfaces.This limitation arises from the inherent spectral bias of conventional PINN methodologies,which tend to prioritize the learning of low-frequency features,thereby hindering their ability to analyze rough surfaces characterized by high-frequency signals effectively.To date,there have been no reported instances of PINN methodologies being applied to rough surface lubrication.In response to these challenges,this paper presents an innovative multiscale lubrication neural network(MLNN)architecture that incorporates a trainable Fourier feature embedding.By integrating learnable feature embedding frequencies,this architecture is capable of automatically adjusting to various frequency components,thus improving the analysis of rough surface characteristics.The proposed method has been evaluated across a range of surface topographies,with results compared to those derived from the finite element method(FEM).The comparative analysis indicates a high degree of consistency between the MLNN results and those obtained through FEM.Moreover,this novel architecture demonstrates superior performance in terms of both accuracy and computational efficiency when compared to traditional Fourier feature networks that utilize fixed feature embedding frequencies.As a result,the MLNN model represents a more effective tool for the analysis of lubrication on rough surfaces.
关 键 词:physics-informed neural network Fourier feature embedding multiscale lubrication rough surface
正在载入数据...
正在载入数据...
正在载入数据...
正在载入数据...
正在载入数据...
正在载入数据...
正在载入数据...
正在链接到云南高校图书馆文献保障联盟下载...
云南高校图书馆联盟文献共享服务平台 版权所有©
您的IP:52.15.225.105