基于卫星植被指数的冬季灌溉作物产量回归预测:模型、预测因子和实验

Z. Khalil, S. Abdullaev
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摘要

基于归一化植被指数(NDVI)数据的农业气象作物预报技术是现代农业产业的重要组成部分。的目标。通过探索卫星MODIS NDVI数据,建立启发式产量模型和回归预测模型的开发方法,包括ACF预测因子的选择过程,并进行实验预测。材料和方法。使用伊拉克迪瓦尼耶省灌溉冬小麦和大麦的官方产量统计数据和2001-2019年NDVI MODIS观测数据。考虑到作物栽培技术的变化相对缓慢,以及气候因素对生物生产力波动的影响,建议选择包含产量趋势的双组分启发式产量模型。结果。以启发式模型为背景,提出了一种面向对象的ACF回归模型选择和预测器选择方法。首先,利用NDVI与作物盖度和作物叶片指数的半定量联系,确定了NDVI随小麦和大麦生长阶段的演变规律;结果表明,在省级ACF中,作为原始预测因子,对于全省三个不同的产粮区,应选择2月上半月的NDVI时间序列作为原始预测因子。实验表明,两种培养的回归ACF可以通过2-3种不同的原始非共线性预测因子与去年的产量相结合或通过包含线性或二次依赖关系来实现令人满意的质量。结论。通过对模型训练时间间隔的特殊选择和自回归预测器参数的控制,获得了相对误差在10%以内的小麦预报结果。大麦预测模型的高质量是由于大麦产量的变异性主要受气候因素的影响。所开发的面向对象方法可以适用于旱作农业的条件和其他作物的产量预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regression Forecasts of Irrigated Winter Crop Yields Us-ing Satellite Vegetation Indexеs: Models, Predictors and Experiments
The technologies of agrometeorological crop forecasts (ACF), based on data on the normalized vegetation index (NDVI) are an important element of the modern agricultural industry. Aim. To establish the heuristic yield model and approaches to the development of models of regression forecasts, including the ACF predictors selection procedure by exploring satellite Moderate Imaging Spectroradiometer (MODIS) NDVI data and conduct experimental forecasting. Materials and methods. The official yield statistics of irrigated winter wheat and barley in Diwaniyah province of Iraq and the NDVI MODIS observation for 2001–2019 are used. It is proposed to choose a two-component heuristic yield model containing a yield trend, due to a relatively slow change in crop cultivation technology and a climatic component associated with fluctuations in biological productivity due to the effects of weather conditions. Results. Using of heuristic model as background, an object-oriented approach to the choice of ACF regression model and predictor selection is developed. Firstly, we use NDVI semi-quantitative connection with crop coverage and crop leaf indexes to determine NDVI evolution according with the wheat and barley growing stages. Then, it is shown that in the province level ACF, as the original predictors should choose the NDVI time-series derived on the first and second half of February for three distinct grain-producing regions of the pro-vince. Experiments have shown that the satisfactory quality of the regressive ACF of both cultures can be achieved with 2–3 different original non-collinear predictors by their combination with the last year's yield or by inclusion of linear or quadratic dependencies. Conclusion. Wheat forecast with a relative error of 10% is obtained only by special selecting of time interval to train model and by control the parameters of the auto-regressive predictor. The high quality of the barley forecasting models is due to the fact that the variability of barley yields is dominated by the climatic component. The developed object-oriented approach can be adapted to the conditions of rainfed agriculture and to forecast of yield of other crops.
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