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PSO-PSR-ELM集成学习算法在地面气温观测资料质量控制中的应用
引用本文:张颖超,姚润进,熊雄,沈云培.PSO-PSR-ELM集成学习算法在地面气温观测资料质量控制中的应用[J].气候与环境研究,2017,22(1):59-70.
作者姓名:张颖超  姚润进  熊雄  沈云培
作者单位:南京信息工程大学信息与控制学院, 南京 210044;南京信息工程大学气象灾害预报预警与评估协同创新中心, 南京 210044,南京信息工程大学信息与控制学院, 南京 210044,南京信息工程大学气象灾害教育部重点实验室, 南京 210044,南京信息工程大学信息与控制学院, 南京 210044
基金项目:国家自然科学基金项目41675156,江苏省六大人才高峰项目WLW-021,江苏省高校优势学科建设工程资助项目
摘    要:针对台站密度低、新建台站以及特种单要素站等无法获得有效邻站或内部参考资料情况下的质量控制问题,从气温时间序列的混沌特性出发,考虑气温在短时间内的连续性和稳定性,提出一种基于粒子群(Particle Swarm Optimization,PSO)改进的相空间重构法(Phase Space Reconstruction,PSR)和极限学习机(Extreme Learning Machine,ELM)的集成学习算法的地面逐时气温观测资料的单站质量控制方法,实现气温资料的质量控制。为检验该方法的适用性,运用该方法对江苏省八市2007~2009年的地面气温观测资料进行质量控制,并与传统单站方法及切比雪夫多项式内插法(Tshebyshev Polynomial Interpolation,TPI)进行对比。实验结果表明,该方法相比较于TPI和传统方法可以更有效地标记出可疑数据,具有检错率高、地区和气候适应性、可控性强等优点。

关 键 词:质量控制  气温  混沌性  粒子群  相空间重构  极限学习机
收稿时间:2016/1/13 0:00:00

Application of PSO-PSR-ELM-Based Ensemble Learning Algorithm in Quality Control of Surface Temperature Observations
ZHANG Yingchao,YAO Runjin,XIONG Xiong and SHEN Yunpei.Application of PSO-PSR-ELM-Based Ensemble Learning Algorithm in Quality Control of Surface Temperature Observations[J].Climatic and Environmental Research,2017,22(1):59-70.
Authors:ZHANG Yingchao  YAO Runjin  XIONG Xiong and SHEN Yunpei
Institution:School of Information and Control, Nanjing University of Information Science and Technology, Nanjing 210044;Collaborative Innovation Center on Forecast and Evaluation of Meteorological Disasters, Nanjing University of Information Science and Technology, Nanjing 210044,School of Information and Control, Nanjing University of Information Science and Technology, Nanjing 210044,Key Laboratory of Meteorological Disaster of Ministry of Education, Nanjing University of Information Science and Technology, Nanjing 210044 and School of Information and Control, Nanjing University of Information Science and Technology, Nanjing 210044
Abstract:In order to overcome the quality control problem over areas where the station density is low, or for some stations that have no adjacent stations and lack effective internal reference data, for example those newly deployed stations and special single factor stations, a new quality control method for surface temperature observations based on the ensemble learning algorithm of Phase Space Reconstruction (PSR) and Extreme Learning Machine (ELM) that was improved by Particle Swarm Optimization (PSO) was introduced in detail in this paper. This method considers the chaotic characteristics of the time series of temperature. In order to assess the feasibility and applicability of the proposed method, it was applied to hourly temperature observations from 2007 to 2009 in eight cities of Jiangsu Province. Results were examined and compared against that of conventional single-station quality control method and Tshebyshev Polynomial Interpolation (TPI) method. It was found that the method introduced in this study can flag suspicious data more effectively, and it also has the advantages of high identification accuracy and good adaptability and controllability over different regions with various climate backgrounds.
Keywords:Quality control  Temperature  Chaos  Particle swarm optimization  Phase space reconstruction  Extreme learning machine
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