D. Batistella, A. Modolo, J. R. R. Campos, V. Lima
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引用次数: 0
摘要
遥感已被证明是一种很有前途的工具,可以在大的地理区域进行作物监测。此外,当与机器学习方法相结合时,该算法可用于估计作物产量。本研究试图通过增强植被指数和归一化差异植被指数估算大豆产量。这些植被指数是利用AQUA和TERRA卫星上的中分辨率成像光谱辐射计(MODIS)传感器和Sentinel-2卫星上的多光谱仪器(MSI)传感器获得的。采用随机森林(RF)算法对大豆产量进行预测,并将预测模型与地块实际产量进行比较。RF算法在预测大豆产量方面表现出良好的性能(MSI的R2 = 0.60, RMSE = 0.50;MODIS的R²= 0.63,RMSE = 0.59)。具有与作物成熟期相对应的成像日期的植被指数在预测能力上具有较高的重要性。然而,当比较实际和预测的大豆产值时,MODIS和MSI模型的差异分别为145 kg ha-1和4 kg ha-1。因此,集成了机器学习算法的MSI传感器可以准确地估计作物产量。
Comparative analysis of orbital sensors in soybean yield estimation by the random forest algorithm
ABSTRACT Remote sensing has proven to be a promising tool allowing crop monitoring over large geographic areas. In addition, when combined with machine learning methods, the algorithms can be used for estimating crop yield. This study sought to estimate soybean yield through the enhanced vegetation index and normalized difference vegetation index. These vegetation indices were obtained using moderate-resolution imaging spectro-radiometer (MODIS) sensors on AQUA and TERRA satellites and multispectral instrument (MSI) sensor on Sentinel-2 satellite. Random forest (RF) algorithm was used to predict soybean yield and the estimation models were compared with the actual plot’s yield. The RF algorithm showed good performance to estimate soybean yield with our models (R2 = 0.60 and RMSE = 0.50 for MSI; R² = 0.63 and RMSE = 0.59 for MODIS). Vegetation indices with imaging dates corresponding to the crop’s maturation had a higher degree of importance in its predictive ability. However, when comparing the actual and predicted soybean production values, differences of 145 kg ha-1 in contrast to 4 kg ha-1 were found for the MODIS and MSI models, respectively. Therefore, the MSI sensor integrated with machine learning algorithms accurately estimated crop yields.
期刊介绍:
A Ciência e Agrotecnologia, editada a cada 2 meses pela Editora da Universidade Federal de Lavras (UFLA), publica artigos científicos de interesse agropecuário elaborados por membros da comunidade científica nacional e internacional.
A revista é distribuída em âmbito nacional e internacional para bibliotecas de Faculdades, Universidades e Instituições de Pesquisa.