School of Geography and Information Engineering, China University of Geosciences, Wuhan 430074, China.
Center for Spatial Information Science and Systems, George Mason University, Fairfax, VA 22030, USA.
Sensors (Basel). 2019 Oct 9;19(20):4363. doi: 10.3390/s19204363.
Yield prediction is of great significance for yield mapping, crop market planning, crop insurance, and harvest management. Remote sensing is becoming increasingly important in crop yield prediction. Based on remote sensing data, great progress has been made in this field by using machine learning, especially the Deep Learning (DL) method, including Convolutional Neural Network (CNN) or Long Short-Term Memory (LSTM). Recent experiments in this area suggested that CNN can explore more spatial features and LSTM has the ability to reveal phenological characteristics, which both play an important role in crop yield prediction. However, very few experiments combining these two models for crop yield prediction have been reported. In this paper, we propose a deep CNN-LSTM model for both end-of-season and in-season soybean yield prediction in CONUS at the county-level. The model was trained by crop growth variables and environment variables, which include weather data, MODIS Land Surface Temperature (LST) data, and MODIS Surface Reflectance (SR) data; historical soybean yield data were employed as labels. Based on the Google Earth Engine (GEE), all these training data were combined and transformed into histogram-based tensors for deep learning. The results of the experiment indicate that the prediction performance of the proposed CNN-LSTM model can outperform the pure CNN or LSTM model in both end-of-season and in-season. The proposed method shows great potential in improving the accuracy of yield prediction for other crops like corn, wheat, and potatoes at fine scales in the future.
产量预测对于产量图绘制、作物市场规划、作物保险和收获管理具有重要意义。遥感在作物产量预测中变得越来越重要。基于遥感数据,通过使用机器学习,特别是深度学习(DL)方法,包括卷积神经网络(CNN)或长短时记忆网络(LSTM),在该领域取得了很大的进展。最近在该领域的实验表明,CNN 可以探索更多的空间特征,LSTM 具有揭示物候特征的能力,这两者在作物产量预测中都起着重要作用。然而,关于将这两种模型结合起来进行作物产量预测的实验很少。在本文中,我们提出了一种用于 CONUS 县级大豆终季和季内产量预测的深度 CNN-LSTM 模型。该模型通过作物生长变量和环境变量进行训练,包括天气数据、MODIS 地表温度(LST)数据和 MODIS 地表反射率(SR)数据;历史大豆产量数据被用作标签。基于 Google Earth Engine(GEE),所有这些训练数据都被组合并转换为基于直方图的张量进行深度学习。实验结果表明,所提出的 CNN-LSTM 模型在终季和季内的预测性能均优于纯 CNN 或 LSTM 模型。该方法在未来有望提高其他作物(如玉米、小麦和土豆)在精细尺度上的产量预测精度。