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基于多时相棉花长势遥感的棉田质量诊断
引用本文:柏军华,李少昆,李静,王克如,谢瑞芝,高世菊,陈兵,王方永,刘国庆,谭海珍.基于多时相棉花长势遥感的棉田质量诊断[J].中国农业科学,2008,41(4):1003-1011.
作者姓名:柏军华  李少昆  李静  王克如  谢瑞芝  高世菊  陈兵  王方永  刘国庆  谭海珍
作者单位:1. 中国农业科学院作物科学研究所/国家农作物基因资源与基因改良重大科学工程,北京,100081;新疆兵团绿洲生态农业重点开放实验室/新疆作物高产研究中心,新疆石河子,832003
2. 中国科学研究院遥感应用所/国家遥感应用重点实验室,北京,100101
3. 中国农业科学院作物科学研究所/国家农作物基因资源与基因改良重大科学工程,北京,100081
4. 新疆兵团绿洲生态农业重点开放实验室/新疆作物高产研究中心,新疆石河子,832003
基金项目:国家高技术研究发展计划(863计划) , 石河子大学校科研和教改项目
摘    要: 【目的】研究多时相遥感信息对棉田质量进行诊断的技术和方法,为棉花生产提供具有针对性的管理方案,促进棉田均衡增产、增效。【方法】研究分析多时相遥感数据对地物信息的动态分析与评判能力,以及棉花长势指标动态变化与棉田质量的关系,对棉花生长盛期多时相的LANDSAT-5多时相遥感数据进行融合,将棉田质量状况划分为健康棉田、有障碍棉田和疑似有障碍棉田三类。【结果】数据分析结果表明,棉花生长盛期(花铃期)单时相的LANDSAT-5反射率数据可以作为棉田生长状况的判断指标,划分健康生长与生长障碍的阈值为0.820;利用多时相遥感数据的棉田质量划分方法,可以将棉田质量分为健康、有障碍和疑似有障碍三类。依据此方法对新疆建设兵团148团约1 1705.3 ha的417块棉田进行分类,得出健康、有障碍和疑似有障碍三类棉田所占比例分别为36.4%、34.1%和29.5%;经过8块条田(426.5 ha)的地面同步调查证实了这种方法的准确性,造成该区棉田质量障碍的主要因素为耕地盐渍化、不平整、土壤质地不匀。【结论】研究表明棉田多时相遥感数据进行棉田质量诊断是可行的。利用这种方法,结合不同质量棉田形成机理,能够得到棉田质量状况及影响因素精细分布的信息,为进一步进行的棉田土壤改良与生产管理采取针对性的措施提供数据支撑。

关 键 词:棉花长势  多时相  遥感监测  棉田质量
收稿时间:2007-9-10
修稿时间:2007年9月10日

Diagnosing Cotton Field Quality with Multi-Temporal Remote Sensing Data of Cotton Growth
BAI Jun-hua,LI Shao-kun,LI Jing,WANG Ke-ru,XIE Rui-zhi,GAO Shi-ju,CHEN Bing,WANG Fang-yong,LIU Guo-qing,TAN Hai-zhen.Diagnosing Cotton Field Quality with Multi-Temporal Remote Sensing Data of Cotton Growth[J].Scientia Agricultura Sinica,2008,41(4):1003-1011.
Authors:BAI Jun-hua  LI Shao-kun  LI Jing  WANG Ke-ru  XIE Rui-zhi  GAO Shi-ju  CHEN Bing  WANG Fang-yong  LIU Guo-qing  TAN Hai-zhen
Abstract:【Objective】The cotton field quality was diagnosed with the remote sensing technology, and the results would provide the technology support to take the active measurements for cotton industry, and would promote to increase the yield and efficiency.【Method】The multi-temporal remote sensing of the flower-boll stages data was fused in the years form A.D. 2005 to A.D.2006. In terms of the relationship between cotton growth and cotton field quality, and the determination ability of multi-temporal remote sensing data for dynamic information, the cotton field quality conditions were divided into the three styles of the healthy cotton field, handicapped cotton field and suspected cotton field with handicap.【Result】The results showed that the 0.82 of LANDSAT-5 TM4 reflective was reasonable to divide the healthy and handicapped cotton fields with the single-time remote sensing images from the flower-boll stages of cotton, and then 417 cotton fields about 11705.3hm2 was classified using the multi-temporal data, the results were that the three-style proposition of cotton field quality was 36.4%, 34.1% and 29.5% respectively; the validity of classification was proved by the synchronization investigation based on the eight cotton field(426hm2), and the testing results of soil character and total salt indicate that the main factors of handicapping cotton field were salting, disunity of character, difference of level. 【Conclusion】It was believed to diagnose the cotton field with multi-temporal remote sensing data of cotton growth and map the information of cotton field quality, and combining the mechanism inducing the cotton field different quality, the precise information of cotton field quality would provide the data support to improve the cotton soil conditions.
Keywords:Cotton growth  Multi-temporal  Remote sensing  Cotton field quality
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