用于模拟冬小麦生物物理参数的快速时间序列重要变量

Thorsten Dahms, Sylvia Seissiger, E. Borg, H. Vajen, B. Fichtelmann, C. Conrad
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引用次数: 16

摘要

高分辨率农业监测对农业管理(精准农业)越来越重要,它依赖于高分辨率遥感数据(例如RapidEye或Sentinel-2),例如在整个种植季节和分田水平上可靠地推导生物物理参数。这些数据可用于常规绘制生物物理参数,如吸收光合有效辐射(FPAR)的比例、叶面积指数(LAI)和叶绿素含量。目前,开发这些生物物理参数的鲁棒映射方法是研究的主题。同时,巨大的数据量将挑战处理能力,明智地选择和减少数据将提高遥感在农业中的适用性。利用德国梅克伦堡-西波美拉尼亚地区的RapidEye冬小麦数据,利用基于条件推理树的随机森林模型对生物物理参数进行建模。该研究旨在从光谱波段和指标中选择最重要的信息用于冬小麦参数预测。为了检验单光谱波段或指数对模拟冬小麦不同生长阶段生物物理现实的重要性,将原位和遥感观测数据分组为物候阶段。FPAR的模型精度范围在0.19和0.83之间,表明模型精度与物候阶段有关。结果表明,对于每个生物物理参数,不同的光谱变量对建模具有重要意义,重要变量的数量取决于物候时间跨度。对短物候群的生物物理参数的预测,往往只取决于一到三个变量。结果还表明,在果实发育物候期,模型精度最低,重要性的确定较为模糊。
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Important Variables of a RapidEye Time Series for Modelling Biophysical Parameters of Winter Wheat
High-resolution agricultural monitoring, e.g. the robust derivation of biophysical parameters through-out the cropping season and at subfield level, is gaining importance for agricultural management (pre-cision agriculture) and relies on high resolution remote sensing data (e.g. RapidEye or Sentinel-2). This data can then be utilized for regular mapping of biophysical parameters such as the fraction of absorbed photosynthetic active radiation (FPAR), the leaf area index (LAI) and the chlorophyll con-tent. Currently the development of methods for robust mapping of these biophysical parameters is matter of subject in research. At the same time, enormous data amounts will challenge processing capacities and a wise selection and reduction of data will improve the applicability of remote sensing in agriculture. Biophysical parameters were modelled with RapidEye data on winter wheat in Mecklenburg-West Pomerania, Germany, using Random Forest based on conditional inference trees. The study aims at the selection of the most important information out of spectral bands and indices for parameter predic-tion on winter wheat. In-situ and remote sensing observations were grouped into phenological phases in order to examine the importance of single spectral bands or indices for modelling biophysical reality in the several growing stages of winter wheat. Model accuracies for FPAR ranged between a coeffi-cient of determination of 0.19 and 0.83, showing, that the model accuracy is linked with the phenolog-ical phase. The results showed that for each biophysical parameter, different spectral variables become important for modelling and the number of important variables depends on the phenological time span. The prediction of biophysical parameters for short phenological groups, often depends only on one to three variables. The results also showed, that in the phenological phase of fruit development, the model accuracy is the lowest and the determination of the importance is more vague.
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来源期刊
Photogrammetrie Fernerkundung Geoinformation
Photogrammetrie Fernerkundung Geoinformation REMOTE SENSING-IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
CiteScore
1.36
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>12 weeks
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