Application of artificial neural networks in global climate change and ecological research:An overview

被引:0
作者
LIU ZeLinPENG ChangHuiXIANG WenHuaTIAN DaLunDENG XiangWen ZHAO MeiFang College of Life Science and TechnologyCentralSouth University of Forestry and TechnologyChangsha China Institute of Environment SciencesDepartment of Biology SciencesUniversity of Quebec at MontrealCase postale succ CentreVilleMontrealQCHC PCanada [1 ,1 ,2 ,1 ,1 ,1 ,1 ,1 ,410004 ,2 ,8888 ,3 ,3 ,8 ]
机构
关键词
global change; ecology; artificial neural network; nonlinear problem;
D O I
暂无
中图分类号
P467 [气候变化、历史气候];
学科分类号
0706 ; 070601 ;
摘要
Fields that employ artificial neural networks(ANNs)have developed and expanded continuously in recent years with the ongoing development of computer technology and artificial intelligence.ANN has been adopted widely and put into practice by research-ers in light of increasing concerns over ecological issues such as global warming,frequent El Nio-Southern Oscillation(ENSO)events,and atmospheric circulation anomalies.Limitations exist and there is a potential risk for misuse in that ANN model pa-rameters require typically higher overall sensitivity,and the chosen network structure is generally more dependent upon individ-ual experience.ANNs,however,are relatively accurate when used for short-term predictions;despite global climate change re-search favoring the effects of interactions as the basis of study and the preference for long-term experimental research.ANNs remain a better choice than many traditional methods when dealing with nonlinear problems,and possesses great potential for the study of global climate change and ecological issues.ANNs can resolve problems that other methods cannot.This is especially true for situations in which measurements are difficult to conduct or when only incomplete data are available.It is anticipated that ANNs will be widely adopted and then further developed for global climate change and ecological research.
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页码:3853 / 3863
页数:11
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