Affiliation:
1. Zhejiang University Department of Engineering Mechanics, , Hangzhou 310027 , China ;
2. Zhejiang Lab, Hangzhou 311121, China
3. Westlake University School of Engineering, , Hangzhou 310030 , China
4. Zhejiang University Department of Engineering Mechanics, , Hangzhou 310027 , China
Abstract
Abstract
Data-driven equation identification for dynamical systems has achieved great progress, which for static systems, however, has not kept pace. Unlike dynamical systems, static systems are time invariant, so we cannot capture discrete data along the time stream, which requires identifying governing equations only from scarce data. This work is devoted to this topic, building a data-driven method for extracting the differential-variational equations that govern static behaviors only from scarce, noisy data of responses, loads, as well as the values of system attributes if available. Compared to the differential framework typically adopted in equation identification, the differential-variational framework, due to its spatial integration and variation arbitrariness, brings some advantages, such as high robustness to data noise and low requirements on data amounts. The application, efficacy, and all the aforementioned advantages of this method are demonstrated by four numerical examples, including three continuous systems and one discrete system.
Funder
National Natural Science Foundation of China
Subject
Mechanical Engineering,Mechanics of Materials,Condensed Matter Physics