新闻动态
热点追踪
  • 主管单位:中华人民共和国农业农村部
    主办单位:中国农业科学院柑桔研究所
    主  编:陈善春
    地  址:重庆市北碚区歇马街道柑桔研究所内
    邮政编码:400712
    电  话:(023)68349196
    电子邮件:nfgs@cric.cn
    国际标准连续出版物号:1007-1431
    国内统一连续出版物号:50-1112/S
    邮发代号:78-13
    定  价:10.00
  • 你是本站第:2194
  • 今日访问:0
孙爱华,顾晓霞,李虎,钟韵,徐文,张礼杰,林震,廖文月,朱士江.基于高光谱参数的柑橘园土壤水分动态监测[J].中国南方果树,2023,52(4):
基于高光谱参数的柑橘园土壤水分动态监测
Soil moisture dynamics monitoring in citrus orchards based on UAV spectral remote sensing
投稿时间:2022-09-05  修订日期:2022-10-31
DOI:
中文关键词:  柑橘园  土壤含水率  光谱反射率  多元线性逐步回归法(SMLR)
英文关键词:citrus orchard  soil moisture content  spectral reflectivity  stepwise multiple linear regression (SMLR)
基金项目:国家自然科学基金资助项目(编号:52000120);湖北省水利重点科研项目(编号:HBSLKY201919);三峡库区生态环境教育部工程研究中心开放基金课题(编号:KF2019-15;KF2018-06)
作者单位E-mail
孙爱华 三峡大学三峡库区生态环境教育部工程研究中心 1617799296@qq.com 
顾晓霞 三峡大学三峡库区生态环境教育部工程研究中心 1617799296@qq.com 
李虎 三峡大学三峡库区生态环境教育部工程研究中心 1617799296@qq.com 
钟韵 三峡大学三峡库区生态环境教育部工程研究中心 1617799296@qq.com 
徐文 三峡大学三峡库区生态环境教育部工程研究中心 1617799296@qq.com 
张礼杰 三峡大学三峡库区生态环境教育部工程研究中心 907772978@qq.com 
林震 三峡大学三峡库区生态环境教育部工程研究中心 1617799296@qq.com 
廖文月 宜昌市农业科学研究院 1617799296@qq.com 
朱士江* 三峡大学水工程智慧建造与管理湖北省重点实验室 46212465@qq.com 
摘要点击次数: 1165
全文下载次数: 0
中文摘要:
      摘要:土壤水分是提高柑橘产量和品质的关键因素,为了高效、无损、精准的获取柑橘园土壤水分动态变化,利用ASD光谱仪选取了适宜的响应波段(350~1075nm)的数据作为试验光谱反射率,采用多元线性逐步回归分析(SMLR)对提取的特征波段反射率及9种光谱的转换形式的数据进行计算和分析,并利用实测柑橘根系0~60cm的土壤含水率进行验证,建立了预测柑橘园土壤含水率的高光谱模型。结果表明:土壤含水率在0~20cm的深度条件下变化最为明显,有助于提高模型的预测精度;光谱的微分处理较非微分处理,与波长的关系曲线波动更大且反演精度显著上升;柑橘园的试验样本水分的特征波段在700~760nm以及950nm左右是进行建模优先考虑的特征波段;光谱对数(1gR)的一阶导数和倒数的对数(lgR-1)的一阶导数对土壤水分的拟合精度较高,两种拟合方式的决定系数(R2)均达到0.876以上,均方根误差(RMSE)均达2.19%,相对分析误差(RPD)均达7.107;其中光谱对数(1gR)的一阶导数为预测柑橘园土壤含水率的最优模型,在进一步验证中实测值和模型计算值拟合的相关系数高达0.992。因此,基于光谱对数(1gR)的一阶导数构建的模型可实现对柑橘园土壤水分的精确监测。
英文摘要:
      Abstract: Soil moisture is the key factor to improve yield and quality of Citrus, in order to obtain soil moisture in formation of citrus orchard efficiently, nondestructively and accurately. ASD spectrometer was used to select the appropriate response band (350~1075nm) data as the test spectral reflectance. Stepwise multiple linear regression (SMLR) was used to calculate and analyze the extracted characteristic band reflectance and the data of 9 spectral conversion forms. The measured soil moisture content of citrus roots in 0~60cm was used to verify and establish a hyperspectral model for predicting soil moisture content in citrus orchards. The results show that the variation of soil moisture content is the most obvious at 0~20cm, which is helpful to improve the prediction accuracy of the model; Compared with non-differential treatment, the relation curve between spectrum and wavelength fluctuates more greatly and the inversion accuracy in creases significantly; The first derivative of the logarithm of the spectrum (1gR) and the first derivative of the reciprocal of the logarithm of the spectrum (lgR-1) had high fitting precision for soil moisture, the determination coefficient (R2) of the two fitting methods was above 0.876, the root mean square error (RMSE) was 2.19%, and residual predictive deviation (RPD) was 7.107; The first derivative of the logarithm of the spectrum(1gR) is the optimal model for predicting the soil moisture content of the citrus orchard. In further verification, the correlation coefficient between the measured value and the calculated value of the model was as high as 0.992. Therefore, the model based on the first derivative of the logarithm of the spectrum (1gR) can achieve accurate monitoring of soil moisture in citrus orchard.
查看/发表评论  下载PDF阅读器
关闭