张智韬, 兰玉彬, 郑永军, 陈立平, 宋鹏. 影响大豆NDVI的气象因素多元回归分析[J]. 农业工程学报, 2015, 31(5): 188-193. DOI: 10.3969/j.issn.1002-6819.2015.05.027
    引用本文: 张智韬, 兰玉彬, 郑永军, 陈立平, 宋鹏. 影响大豆NDVI的气象因素多元回归分析[J]. 农业工程学报, 2015, 31(5): 188-193. DOI: 10.3969/j.issn.1002-6819.2015.05.027
    Zhang Zhitao, Lan Yubin, Zheng Yongjun, Chen Liping, Song Peng. Multiple regression analysis of soybean NDVI affected by meteorological factors[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2015, 31(5): 188-193. DOI: 10.3969/j.issn.1002-6819.2015.05.027
    Citation: Zhang Zhitao, Lan Yubin, Zheng Yongjun, Chen Liping, Song Peng. Multiple regression analysis of soybean NDVI affected by meteorological factors[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2015, 31(5): 188-193. DOI: 10.3969/j.issn.1002-6819.2015.05.027

    影响大豆NDVI的气象因素多元回归分析

    Multiple regression analysis of soybean NDVI affected by meteorological factors

    • 摘要: 针对太阳辐射、大气温度、空气湿度和风速等气象因素对大豆归一化植被指数(normalized difference vegetation index, NDVI)在每天不同时间的影响,提高大豆NDVI的监测精度。该研究采用GreenSeeker手持式光谱仪对大豆苗期、花荚期和成熟期3个主要生育阶段的NDVI值以小时为单位进行连续监测,并收集测量时的太阳辐射、大气温度、空气湿度和风速等气象数据,采用偏最小二乘法、逐步回归和岭回归方法,建立不同气象因素对大豆NDVI值影响的回归模型,并分析其定量关系。结果表明,影响大豆不同生育期NDVI变化的主要气象因素为太阳辐射和大气温度,风速和空气湿度的影响较小,可以忽略不计。经对3种模型进行预测精度评价后得出,岭回归模型的预测精度最佳,其在3个阶段的预测均方根误差(RMSE)分别为 0.034、0.018和0.016,决定系数(R2)分别为0.820、0.908和0.934,其次为逐步回归法,偏最小二乘法的预测精度最低。

       

      Abstract: Abstract: Normalized difference vegetation index (NDVI) can be used as an ideal indicator of how the crops grow, with which the crops in different growing stages, harmful insects and diseases, water and fertilizer, and the yields can be well predicted. However, the accuracy of NDVI does not remain unchanged due to the ever-changing environmental factors, apart from the impact from the crops growing factors in different stages. The article investigates, using GreenSeeker, the soybean NDVI of its three growing stages of seeding, flowering & podding and maturing in successive hours as the testing unit, for a more accurate monitoring of NDVI affected by air temperature, humidity, solar radiation, and wind speed, etc. in different periods of a day. The results show that the soybean NDVI values, being dynamic in different periods of a day, become smaller from 08:00 or 09:00 am in the morning, reach the valley in 14:00 pm in the afternoon, then give a gradual rise, the whole dynamic process is similar to a quasi-parabola. Moreover, the soybean NDVI values demonstrate different daily variation ranges in different soybean growing stages. From 08:00 am to 18:00pm, the biggest daily variation ranges are respectively among 0.13-0.23, 0.08-0.17 and 0.09-0.19, the biggest relative daily variation ranges are respectively among 20%-26%, 9%-19% and 11%-24%. The correlation study of the soybean NDVI values and the environment meteorological factors show that the changes in soybean NDVI values in its three growing stages are upon great influence by the solar radiation, air temperature, humidity and the wind speed. In four meteorological factors, the solar radiation and air temperature have a negative correlation with the soybean NDVI values at three stages (R2 =0.424, 0.503, 0.631 and 0.602, 0.743, 0.757), humidity shows a positive correlation with the soybean NDVI values(R2 =0.281, 0.435 and 0.654), and the wind speed exerts different influences in different soybean growing stages, specifically, a negative correlation in seeding, flowering & podding (R2 = 0.432, 0.218), and in maturing stage(R2 = 0.127). The regression models were set up to test the impact of four meteorological factors on soybean NDVI and analyze the quantitative relations among them, namely Partial Least Squares (PLS), Stepwise Regression and Ridge Regression. It was found that among four meteorological factors affecting soybean NDVI values, the major factors are the solar radiation and the air temperature, while the minor ones are the wind speed and humidity and their influence on soybean NDVI values can be neglected. In significance tests, predictive accuracy of the three regression models for soybean NDVI in all three growing stages are all statistically significant (P<0.01). By contrast, Ridge Regression has a slightly higher coefficient than partial least squares (PLS) and Stepwise Regression, while the latter two models have almost the same correlation. In contrast of the predictive values and the real test results of the three regression models for soybean NDVI, the Ridge Regression ranks the highest on predictive accuracy, with the Root Mean Square Error (RMSE) of 0.034、0.018 and 0.016 and R2of 0.820, 0.908 and 0.934 in three stages of seeding, flowering & podding and maturating, followed by a less accurate predictive level of Stepwise Regression and the least accuracy of PLS. Regression model can have a better prediction of daily variation trend of soybean NDVI values and a better accuracy of NDVI monitoring.

       

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