农业工程学报
農業工程學報
농업공정학보
2014年
13期
94-103
,共10页
徐驰%曾文治%黄介生%伍靖伟
徐馳%曾文治%黃介生%伍靖偉
서치%증문치%황개생%오정위
土壤%含水率%遥感%高光谱%定量反演%协同克里金插值
土壤%含水率%遙感%高光譜%定量反縯%協同剋裏金插值
토양%함수솔%요감%고광보%정량반연%협동극리금삽치
soils%water content%remote sensing%hyperspectral data%quantitative inversion%Co-kriging interpolation
为研究土壤耕作层(0~40 cm)含水率的空间分布情况,利用EO-1的Hyperion传感器高光谱数据,对研究区域(106°20′~109°19′E,40°19′~41°18′N)的表层(0~10 cm)含水率进行定量反演,并利用表层含水率反演结果作为协同克里金插值的协变量,同时利用103个采样点实测的耕作层含水率作为主变量,进行协同克里金插值。结果表明:通过特征指数法提取水分反演的敏感波段集中在1295~2224 nm波长区间,特征指数法模型校正的相关系数r>0.5但模型验证的精度较低(r<0.2);通过偏最小二乘法建模,模型校正的r>0.8,模型验证的 r>0.5,效果较好;运用协同克里金插值时,将反演的表层含水率作为协变量,可以弥补主变量耕作层含水率样本点少,变异函数欠稳定的缺点,同时,所提取理论模型的块金值(C0)与基台值(C0+C)的比值均<25%,随机因素比例小,模型稳健。此外,协同克里金插值方法与利用表层与耕作层含水率线性拟合进行预测相比,能够有效提高预测精度,决定系数r2和Nash效率系数(nash-sutcliffe modelling efficiency,NSE)分别提高72.6%和89.9%,因此,将高光谱反演与协同克里金方法相结合,可以综合两者优势,节约采样成本,提高预测效率。
為研究土壤耕作層(0~40 cm)含水率的空間分佈情況,利用EO-1的Hyperion傳感器高光譜數據,對研究區域(106°20′~109°19′E,40°19′~41°18′N)的錶層(0~10 cm)含水率進行定量反縯,併利用錶層含水率反縯結果作為協同剋裏金插值的協變量,同時利用103箇採樣點實測的耕作層含水率作為主變量,進行協同剋裏金插值。結果錶明:通過特徵指數法提取水分反縯的敏感波段集中在1295~2224 nm波長區間,特徵指數法模型校正的相關繫數r>0.5但模型驗證的精度較低(r<0.2);通過偏最小二乘法建模,模型校正的r>0.8,模型驗證的 r>0.5,效果較好;運用協同剋裏金插值時,將反縯的錶層含水率作為協變量,可以瀰補主變量耕作層含水率樣本點少,變異函數欠穩定的缺點,同時,所提取理論模型的塊金值(C0)與基檯值(C0+C)的比值均<25%,隨機因素比例小,模型穩健。此外,協同剋裏金插值方法與利用錶層與耕作層含水率線性擬閤進行預測相比,能夠有效提高預測精度,決定繫數r2和Nash效率繫數(nash-sutcliffe modelling efficiency,NSE)分彆提高72.6%和89.9%,因此,將高光譜反縯與協同剋裏金方法相結閤,可以綜閤兩者優勢,節約採樣成本,提高預測效率。
위연구토양경작층(0~40 cm)함수솔적공간분포정황,이용EO-1적Hyperion전감기고광보수거,대연구구역(106°20′~109°19′E,40°19′~41°18′N)적표층(0~10 cm)함수솔진행정량반연,병이용표층함수솔반연결과작위협동극리금삽치적협변량,동시이용103개채양점실측적경작층함수솔작위주변량,진행협동극리금삽치。결과표명:통과특정지수법제취수분반연적민감파단집중재1295~2224 nm파장구간,특정지수법모형교정적상관계수r>0.5단모형험증적정도교저(r<0.2);통과편최소이승법건모,모형교정적r>0.8,모형험증적 r>0.5,효과교호;운용협동극리금삽치시,장반연적표층함수솔작위협변량,가이미보주변량경작층함수솔양본점소,변이함수흠은정적결점,동시,소제취이론모형적괴금치(C0)여기태치(C0+C)적비치균<25%,수궤인소비례소,모형은건。차외,협동극리금삽치방법여이용표층여경작층함수솔선성의합진행예측상비,능구유효제고예측정도,결정계수r2화Nash효솔계수(nash-sutcliffe modelling efficiency,NSE)분별제고72.6%화89.9%,인차,장고광보반연여협동극리금방법상결합,가이종합량자우세,절약채양성본,제고예측효솔。
Understanding the distribution of soil water content of plow layer (0-40 cm) is important for agriculture water management for plant growth. In our study, Hyperion data (EO-1, USGS) was firstly used to inverse topsoil water content and then the measured water content values of 0-40 cm depth were used to calculate the average water content of plow layer. Both data can be used together to obtain a distribution of regional plow layer water content. By use of such method, a study was carried out by taking soil samples in a 64 hm2 area located in Hetao Irrigation District, Inner Mongolia, China in late April. The soil samples were arranged in gird and the grids size were 20, 50, and 100 meters respectively. There were 136 different sampling points and 103 of them had soil samples (0-40 cm depth with 10 cm increment). The time of Hyperion data was April 11, 2013 and it was pre-processed by EVNI 5.0 software. Then derivative filter (1st) was used to remove the scattering and other disturbance. Both raw and filtered images were used to inverse the water content of topsoil using the flag index method and partial least square regression (PLS). After that, the water content of topsoil obtained by Hyperion data were used as the co - variable and the average water contents of 0-40 cm depth were used as the main variable in the co - kriging method to map the water content of plow layer (0-40 cm depth) in the study area. The results indicated that sensitive wavelength bands for topsoil water content were ranged from 1295 nm to 2224 nm when using the flag index method, and the accuracy of prediction models of the flag index method was poor (r<0.2 in the validation process). However, prediction models established by PLS method can yield higher accuracy compared to the flag index method (r>0.5 in both calibration and validation process. The co-kriging interpolation had a consideration of water content of both topsoil (0-10 cm) and plow layer (0-40 cm), and the C0/(C0+C) values in the models were all <25%, demonstrating small random variations in these interpolation models. In addition, compared with the method of linear fitting using topsoil water content and plow layer water content, the co-kriging method can increase 72.6% ofr2 and 89.9% of NSE. Therefore, combined hyperspectral inversion with the co-kriging interpolation can be used to predict soil water content of plow layer effectively.