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中国农学通报 ›› 2018, Vol. 34 ›› Issue (20): 158-164.doi: 10.11924/j.issn.1000-6850.casb17060013

• 农业科技信息 • 上一篇    

基于时间序列MODIS NDVI的农作物物候信息提取

张喜旺,陈云生,孟琪,王璇   

  1. 黄河中下游数字地理技术教育部重点实验室,黄河中下游数字地理技术教育部重点实验室,黄河中下游数字地理技术教育部重点实验室,黄河中下游数字地理技术教育部重点实验室
  • 收稿日期:2017-06-02 修回日期:2017-08-13 接受日期:2017-08-24 出版日期:2018-07-13 发布日期:2018-07-13
  • 通讯作者: 张喜旺
  • 基金资助:
    河南省科技厅科技攻关项目“冬小麦长势对产量的影响及其遥感监测方法研究”(152102110047);黄河中下游数字地理技术教育部重点实 验室与国际华人地理信息科学协会(CPGIS)合作基地开放基金项目“基于多源多时相遥感数据融合的植物种类分类,降水预测与作物估产” (JOF201602)。

Extraction of Crop Phenological Information Based on Time Series MODIS NDVI

  • Received:2017-06-02 Revised:2017-08-13 Accepted:2017-08-24 Online:2018-07-13 Published:2018-07-13

摘要: 物候是植被长期适应环境的周期性变化而形成的生长发育规律,研究农作物物候对预报农时、作物估产和气候变化的影响等具有重要价值。针对现有研究的问题,改进物候信息遥感提取方法,并利用2006年至2015年的MODIS NDVI时间序列,提取伊洛河流域主要农业区的农作物物候信息。[方法]首先将MODIS MOD13Q1和MYD13Q1产品组合形成8天间隔的时间序列数据,再进行Savitzky-Golay滤波去除噪音信息;根据冬小麦和夏玉米的生物生理特性,结合遥感数据的特点,利用与关键形态特征点的相对位置来界定物候期;最后提取研究区冬小麦和夏玉米的多年关键物候期信息。[结果]监测结果与往年观测资料对比,研究结果客观可信。整体上物候期相对稳定,但当农作物受气候变化以及异常天气的影响,年际间会存在明显的差异。其中,出苗期相对变异最小,而冬小麦的抽穗期和夏玉米的抽雄期相对变异最大。研究发现十年间同一物候期相差最高达二十天左右。[结论]研究说明了本文研究方法的可行性和有效性,及时掌握农作物物候信息对农业生产与管理,以及农业遥感的深入研究具有重要意义。

关键词: 马铃薯, 马铃薯, 不同品种, 耗水量

Abstract: Phenology is the formed growth and development law of vegetation to adapt to the long-term cyclical changes of environment. It has great value to research crop phenology for predicting the effects of agriculture, crop yield and climate change. At the same time, phenology is also an important parameter of land surface process model and global vegetation model. [Objective] Compared with the traditional site observation method, remote sensing can overcome the shortcomings of traditional fixed point observation, and is widely used in this field. The current remote sensing monitoring method focuses on the morphological feature points of the time series curve and its corresponding phenological information. The relative relationship between phonological information and morphological features is rarely considered in the research process. Aiming at the problem of existing researches, this paper improved the remote sensing extraction method of phenological information, and extracted the crop phenology information by using the MODIS NDVI time series data from 2006 to 2015 in the main agricultural areas of Yiluo River Basin. [Method] First, the NDVI data from MODIS MOD13Q1 and MYD13Q1 products were combined to form 8-day interval time series data, increasing the temporal resolution of data, and then Savitzky-Golay filter was used to remove noise information and form a smooth curve because the local fitting is more suitable to show complex phenological phenomenon. After that, the phenological dates were defined by the relative position to the key morphological feature points according to the biological physiological characteristics, combined with the characteristics of remote sensing data. They are emergence date,dormancy date,green-up date,heading date and maturity date respectively for winter wheat, and emergence date,jointing data, tasseling data and maturity date respectively for summer maize. Finally, the key phenological information of winter wheat and summer maize were extracted from the processed time series curve based on the definition of each phenology in the study area. [Result] The results show that the relative variation of emergence date is the smallest, while the heading stage of winter wheat and the tasseling data of summer maize are the most. For winter wheat and summer maize, the emergence date is separately concentrated in mid-October and mid-June, while the maturity date is separately concentrated at the end of May and the end of September during the ten years. They are relatively stable because of planting habits. The heading stage of winter wheat is almost distributed throughout April, and the tasseling data of summer maize is almost distributed throughout August. The monitored phonological information is objective and credible compared with previous observations. However, there are clear variations for each phenology between the years when crops are affected by climate change and abnormal weather. Among them, it is found that the maximum variation in the same phenology is about twenty days during the ten years in the study area. [Conclusion] This demonstrates that remote sensing technology can objectively reflect what has happened, and the proposed method is feasible and effective in this paper. It is of great significance to grasp timely phenological information for agricultural production and management, as well as in-depth agricultural remote sensing researches.

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