首站-论文投稿智能助手
典型文献
Sparse identification method of extracting hybrid energy harvesting system from observed data
文献摘要:
Hybrid energy harvesters under external excitation have complex dynamical behavior and the superiority of promoting energy harvesting efficiency.Sometimes,it is difficult to model the governing equations of the hybrid energy harvesting system precisely,especially under external excitation.Accompanied with machine learning,data-driven methods play an important role in discovering the governing equations from massive datasets.Recently,there are many studies of data-driven models done in aspect of ordinary differential equations and stochastic differential equations(SDEs).However,few studies discover the governing equations for the hybrid energy harvesting system under harmonic excitation and Gaussian white noise(GWN).Thus,in this paper,a data-driven approach,with least square and sparse constraint,is devised to discover the governing equations of the systems from observed data.Firstly,the algorithm processing and pseudo code are given.Then,the effectiveness and accuracy of the method are verified by taking two examples with harmonic excitation and GWN,respectively.For harmonic excitation,all coefficients of the system can be simultaneously learned.For GWN,we approximate the drift term and diffusion term by using the Kramers-Moyal formulas,and separately learn the coefficients of the drift term and diffusion term.Cross-validation(CV)and mean-square error(MSE)are utilized to obtain the optimal number of iterations.Finally,the comparisons between true values and learned values are depicted to demonstrate that the approach is well utilized to obtain the governing equations for the hybrid energy harvester under harmonic excitation and GWN.
文献关键词:
作者姓名:
Ya-Hui Sun;Yuan-Hui Zeng;Yong-Ge Yang
作者机构:
School of Mathematics and Statistics,Guangdong University of Technology,Guangzhou 510520,China;State Key Laboratory for Strength and Vibration of Mechanical Structures,Xi'an Jiaotong University,Xi'an 710049,China
引用格式:
[1]Ya-Hui Sun;Yuan-Hui Zeng;Yong-Ge Yang-.Sparse identification method of extracting hybrid energy harvesting system from observed data)[J].中国物理B(英文版),2022(12):255-266
A类:
Moyal
B类:
Sparse,identification,extracting,hybrid,energy,harvesting,from,observed,Hybrid,harvesters,under,external,excitation,have,complex,dynamical,behavior,superiority,promoting,efficiency,Sometimes,difficult,governing,equations,precisely,especially,Accompanied,machine,learning,driven,methods,play,important,role,discovering,massive,datasets,Recently,there,many,studies,models,done,aspect,ordinary,differential,stochastic,SDEs,However,few,harmonic,Gaussian,white,noise,GWN,Thus,this,paper,approach,least,square,sparse,constraint,devised,systems,Firstly,algorithm,processing,pseudo,code,given,Then,effectiveness,accuracy,verified,by,taking,two,examples,respectively,For,coefficients,can,simultaneously,learned,approximate,drift,term,diffusion,using,Kramers,formulas,separately,Cross,validation,CV,mean,error,MSE,utilized,obtain,optimal,number,iterations,Finally,comparisons,between,true,values,depicted,demonstrate,that,well
AB值:
0.512605
相似文献
Harvesting random embedding for high-frequency change-point detection in temporal complex systems
Jia-Wen Hou;Huan-Fei Ma;Dake He;Jie Sun;Qing Nie;Wei Lin-Research Institute of Intelligent Complex Systems,Fudan University,Shanghai 200433,China;Centre for Computational Systems Biology,Institute of Science and Technology for Brain-Inspired Intelligence,Fudan University,Shanghai 200433,China;School of Mathematical Sciences,Soochow University,Suzhou 215006,China;Xinhua Hospital Affiliated to Shanghai Jiao Tong University School of Medicine,Shanghai 200092,China;School of Mathematical Sciences and Shanghai Center for Mathematical Sciences,Fudan University,Shanghai 200433,China;Department of Mathematics,Department of Developmental and Cell Biology,and NSF-Simons Center for Multiscale Cell Fate Research,University of California,Irvine,CA 92697-3875,USA;Shanghai Key Laboratory for Contemporary Applied Mathematics,LNMS(Fudan University),and LCNBI(Fudan University),Shanghai 200433,China;State Key Laboratory of Medical Neurobiology,and MOE Frontiers Center for Brain Science,Institutes of Brain Science,Fudan University,Shanghai 200032,China
机标中图分类号,由域田数据科技根据网络公开资料自动分析生成,仅供学习研究参考。