期刊文献+

引入地形因子的黑土区大豆干生物量遥感反演模型及验证 被引量:6

Remote sensing inversion models and validation of aboveground biomass in soybean with introduction of terrain factors in black soil area
下载PDF
导出
摘要 为了对田块尺度农作物地上干生物量进行估测,提高大豆地上干生物量反演模型的精度和稳定性,该文获取了研究区地块2016年7、8月份的SPOT-6多光谱数据,并测定不同地形坡位的大豆地上干生物量,以归一化植被指数(normalized difference vegetation index,NDVI)和增强型植被指数(enhanced vegetation index,EVI)为输入量,建立田块尺度大豆地上干生物量一元线性回归模型;加入与地上干生物量相关的地形因子,建立逐步多元回归和神经网络多层感知反演模型。结果表明:1)使用传统的单一植被指数模型预测大豆地上干生物量有可行性,但模型精度和稳定性不高。2)加入地形因子(海拔、坡度、坡向)的神经网络多层感知器模型,有较高的精度和可靠性,模型准确度达到90.4%,验证结果显示预估精度为96.2%。反演结果与地块的地形、地貌、气温和降水特征基本吻合,反映了作物长势的空间分布特征,可以为田块尺度大豆地上干生物量动态监测和精准管理,提供借科学依据。 Crop biomass plays an important role in food security and global carbon cycle.Achieving the timely and accurate monitoring of biomass is vital for precise and reasonable agricultural management.Undoubtedly,remote sensing technique has been proven to be an effective tool for biomass estimation.Along with traditional means,it reduces the actual operation and investigation of ground surveys.In ordered to accurately estimate the crop aboveground biomass at the field scale and improve the precision and stability of soybean aboveground biomass inversion model,this paper obtained SPOT-6 6-meter multi-spectral data on July and August 2016 of the study area,as well as the soybean aboveground biomass of different terrain slopes.At the same time,the terrain data of the study area were measured and the topographic factors such as elevation,slope and aspect were extracted.We intended to use above measured data to build three models,which were the traditional linear regression model,the multiple regression model and the neural network model.Firstly,the correlation of the relationships between enhances vegetation index(EVI),normalized difference vegetation index(NDVI) and observed date of soybean aboveground biomass were analyzed by linear regression model.Then we added the terrain factors which were related to the aboveground biomass for establishing multilayer perception stepwise multiple regression and neural network inversion model.Through the model accuracy comparison and estimation accuracy analysis,the results were following:1) In the linear regression model established by the two vegetation indexes,NDVI Model fitting degree was higher then EVI,and the coefficient of determination(R2) reached 0.712,plus root mean square error(RMSE) was 0.116 kg/m^2.The results could be explained that the use of traditional single vegetation index model to predict soybean aboveground biomass was feasible.2) The neural network multilayer sensor model had the highest precision and reliability among all above(R2=0.904,RMSE=0.047 kg/m^2).The results of model validation showed that the average absolute and relative error of using neural network model were the smallest,and the values were 0.113 kg/m2 and 0.212,respectively.In the three types of inversion models,the inversion results of the neural network model were closest to the actual data of crop aboveground biomass distribution.The inversion results of this study were in good agreement with the terrain,topography,temperature and precipitation characteristics of the plot and accurately reflected the space distribution features of crop condition and growth.Our research provided a reliable and scientific basis for dynamic monitoring and precise management of soybean aboveground biomass.The method was meaningful in precision agriculture,especially in yield and production prediction.
作者 张新乐 徐梦园 刘焕军 孟令华 邱政超 潘越 谢雅慧 Zhang Xinle Xu Mengyuan Liu Huanjun Meng Linghua Qiu Zhengchao Pan Yue Xie Yahui(College of Resources and Environmental Sciences, Northeast Agricultural University, Harbin 150030, China Northeast Institute of Geography and Agroecology, Chinese Academy of Sciences, Changchun 130012, China)
出处 《农业工程学报》 EI CAS CSCD 北大核心 2017年第16期168-173,共6页 Transactions of the Chinese Society of Agricultural Engineering
基金 国家自然科学基金项目(41671438 41501357) "中国科学院东北地理与农业生态研究所"引进优秀人才项目
关键词 遥感 作物 模型 大豆 地上干生物量 地形因子 remote sensing crops models soybean aboveground biomass terrain factors
  • 相关文献

参考文献19

二级参考文献455

共引文献450

同被引文献106

引证文献6

二级引证文献31

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部