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植被指數(shù)反演冬小麥植被覆蓋度的適用性研究
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國家自然科學(xué)基金資助項目(51179162),、“十二五”國家科技支撐計劃資助項目(2011BAD29B01)和高等學(xué)校學(xué)科創(chuàng)新引智計劃資助項目(B12007)


Applicability of Vegetation Indices to Estimate Fractional Vegetation Coverage
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    摘要:

    利用冬小麥2個生長季高光譜反射率和覆蓋度實測資料,,基于回歸分析方法建立4種植被指數(shù)反演植被覆蓋度模型,,并對預(yù)測模型年際間的穩(wěn)定性進行了驗證,。采用噪聲等效覆蓋度誤差對各植被指數(shù)反演植被覆蓋度模型進行了敏感性分析,,結(jié)合對模型的殘差分析得到了不同種植密度和氮肥施用量條件下各植被指數(shù)的適用性,。結(jié)果表明:歸一化植被指數(shù)NDVI和改進的土壤調(diào)節(jié)指數(shù)TSAVI與冬小麥覆蓋度采用拋物線擬合結(jié)果較好,;修正的土壤調(diào)節(jié)植被指數(shù)MSAVI和增強型植被指數(shù)EVI與覆蓋度符合線性關(guān)系。驗證模型的決定系數(shù)略低于建模方程,,反演模型在年際間表現(xiàn)出較好的穩(wěn)定性,,能夠滿足覆蓋度預(yù)測需要。NDVI和TSAVI較MSAVI和EVI可更好地解釋本地區(qū)冬小麥植被覆蓋度的變化規(guī)律,。在低到中覆蓋度(0~60%)條件下,,如果當(dāng)?shù)赝寥佬畔⒖色@得,利用植被指數(shù)TSAVI估算植被覆蓋度變化規(guī)律表現(xiàn)出較好的敏感性和較高的估算精度,。如果缺失土壤線資料,,NDVI能保證覆蓋度的估算精度。在高覆蓋度(60%~100%)條件下,,可選用敏感性和精度均良好的植被指數(shù)MSAVI進行估算,。在水分供應(yīng)充分的條件下,4種植被指數(shù)對作物種植密度和氮肥施用量均不敏感,可采用統(tǒng)一模型進行不同種植密度和不同施氮量處理的冬小麥覆蓋度估算研究,,為利用植被指數(shù)快捷,、準(zhǔn)確地估算本地區(qū)區(qū)域植被覆蓋度提供了理論和技術(shù)支持。

    Abstract:

    Many linear or non-linear statistics models have been developed for the estimation of fractional vegetation coverage by using vegetation indices. However, as the disturbance by uncertainty factors such as various crop planting density and nitrogen application, vegetation indices are limited to monitor regional vegetation coverage. In this paper, vegetation indices inversion models of fraction vegetation coverage based on regression analysis method were established and evaluated by using observed hyperspectral reflectance and vegetation coverage data set of winter wheat in the year 2010—2011. Firstly, the empirical models’ applicability (sensitivity, interannual stability and accuracy) were analyzed by using noise equivalent and model evaluation parameters. Simulation results indicated that there is a better result of using a second order polynomial regression equation to describe relationships between vegetation indices NDVI (Normalized difference vegetation index), TSAVI (Transformed soil adjusted vegetation index) and fraction vegetation coverage. While vegetation indices MSAVI (Modified soil adjustment vegetation index) and EVI (Enhanced vegetation index) exhibited a linear relationship with various fraction vegetation coverage. Evaluation results showed that: the correlation coefficient of regressed evaluation equations between predicted and measured vegetation coverage (Fc) were a little lower than the former modeling equations. All the evaluation relationships were significant at p=001 confidence level, which indicated these vegetation indices inversion models seemed stable among years and could give simple but reliable estimate of fraction vegetation coverage in this region. Sensitivity analysis suggested that under low to medium coverage (0~60% Fc) conditions, if the local soil information was available, using TSAVI to estimate variation of vegetation coverage showed better performance. However, if there was no information on soil characteristics, NDVI could assure estimation accuracy of fraction vegetation coverage. When vegetation cover Fc>60%, MSAVI was suggested to be used for estimating vegetation coverage, which displayed better sensitivity, stability and accuracy. Then, the general linear model (GLM) was employed to analyze the residuals of empirical models under conditions of various planting densities and nitrogen application rates. The results were somewhat inspiring: under condition of adequate water supply, all four vegetation indices (NDVI, EVI, TSAVI, MSAVI) exhibited no sensitive to various planting densities and nitrogen application rates during the entire growth period of winter wheat. This means models based on these four vegetation indices may not require re parameterization when apply to crops with different planting densities and nitrogen application rates. The regional winter wheat coverage could be directly estimated by using vegetation indices inversion models under the circumstances of abundant water supply. These findings provide a theoretical and technical support for the use of vegetation index to quickly and accurately estimate the regional vegetation coverage. However, as the regional land surface could be various and changeable, this paper could only explain the strength of vegetation indices inversion models for adequate water supply conditions, further studies are required for assessing vegetation indices method applicability in different crop intercropped and water and fertilizer coupling conditions.

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虞連玉,蔡煥杰,姚付啟,鄭 珍,王 健,李志軍.植被指數(shù)反演冬小麥植被覆蓋度的適用性研究[J].農(nóng)業(yè)機械學(xué)報,2015,46(1):231-239. Yu Lianyu, Cai Huanjie, Yao Fuqi, Zheng Zhen, Wang Jian, Li Zhijun. Applicability of Vegetation Indices to Estimate Fractional Vegetation Coverage[J]. Transactions of the Chinese Society for Agricultural Machinery,2015,46(1):231-239.

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  • 收稿日期:2014-03-31
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  • 在線發(fā)布日期: 2015-01-10
  • 出版日期: 2015-01-10
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