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Satellite-based soybean yield forecast: Integrating machine learning and weather data for improving crop yield prediction in southern Brazil

机译:基于卫星的大豆产量预测:整合机器学习和天气数据,以提高巴西南部农作物产量预测

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Soybean yield predictions in Brazil are of great interest for market behavior, to drive governmental policies and to increase global food security. In Brazil soybean yield data generally demand various revisions through the following months after harvest suggesting that there is space for improving the accuracy and the time of yield predictions. This study presents a novel model to perform in-season ("near real-time") soybean yield forecasts in southern Brazil using Long-Short Term Memory (LSTM), Neural Networks, satellite imagery and weather data. The objectives of this study were to: (i) compare the performance of three different algorithms (multivariate OLS linear regression, random forest and LSTM neural networks) for forecasting soybean yield using NDVI, EVI, land surface temperature and precipitation as independent variables, and (ii) evaluate how early (during the soybean growing season) this method is able to forecast yield with reasonable accuracy. Satellite and weather data were masked using a non-crop-specific layer with field boundaries obtained from the Rural Environment Registry that is mandatory for all farmers in Brazil. Main outcomes from this study were: (i) soybean yield forecasts at municipality-scale with a mean absolute error (MAE) of 0.24 Mg ha(-1) at DOY 64 (march 5) (ii) a superior performance of the LSTM neural networks relative to the other algorithms for all the forecast dates except DOY 16 where multivariate OLS linear regression provided the best performance, and (iii) model performance (e.g., MAE) for yield forecast decreased when predictions were performed earlier in the season, with MAE increasing from 0.24 Mg ha(-1) to 0.42 Mg ha(-1) (last values from OLS regression) when forecast timing changed from DOY 64 (March 5) to DOY 16 (January 6). This research portrays the benefits of integrating statistical techniques, remote sensing, weather to field survey data in order to perform more reliable in-season soybean yield forecasts.
机译:巴西的大豆产量预测对市场行为有益,以推动政府政策并增加全球粮食安全。在巴西大豆产量数据一般需要在收获后几个月要求各种修订,表明存在有空间以提高提高屈服预测的准确性和时间。本研究提出了一种小型模型,用于在巴西南部的季节(“近实时”)使用长短期记忆(LSTM),神经网络,卫星图像和天气数据。本研究的目标是:(i)比较三种不同算法(多元ols线性回归,随机森林和LSTM神经网络)的性能,用于使用NDVI,EVI,陆地温度和降水作为独立变量的豆油屈服(ii)评估如何早期(在大豆生长季节)这种方法能够以合理的准确性预测产量。使用非裁剪特异性层掩盖卫星和天气数据,该层与农村环境登记处获得的现场边界,这是巴西所有农民的强制性。本研究的主要结果是:(i)在DOY 64(3月5日)(II)的典型绝对误差(MAE)的平均绝对误差(MAE)(3月5日)(ii)的卓越性能,在DOY 64(3月5日)(ii)的卓越性能的神秘性表现除了DOY 16之外的所有预测日期的相对于其他算法的网络,其中多元OLS线性回归提供了最佳性能,并且在本赛季早期执行预测时,对于收益率预测的模型性能(例如,MAE)降低,而MAE当预测时序从Doy 64(3月5日)到Doy 16(1月6日)时,从0.24 mg ha(-1)到0.42 mg ha(-1)(-1)(从OLS回归的最后一个值)增加。本研究描绘了整合统计技术,遥感,天气到现场调查数据的好处,以便在季节大豆产量预测中进行更可靠。

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