Rice Yield Prediction in Hubei Province Based on Deep Learning and the Effect of Spatial Heterogeneity

Timely and accurate crop yield information can ensure regional food security. In the field of predicting crop yields, deep learning techniques such as long short-term memory (LSTM) and convolutional neural networks (CNN) are frequently employed. Many studies have shown that the predictions of models...

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Main Authors: Shitong Zhou, Lei Xu, Nengcheng Chen
Format: Article
Language:English
Published: MDPI AG 2023-02-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/15/5/1361
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author Shitong Zhou
Lei Xu
Nengcheng Chen
author_facet Shitong Zhou
Lei Xu
Nengcheng Chen
author_sort Shitong Zhou
collection DOAJ
description Timely and accurate crop yield information can ensure regional food security. In the field of predicting crop yields, deep learning techniques such as long short-term memory (LSTM) and convolutional neural networks (CNN) are frequently employed. Many studies have shown that the predictions of models combining the two are better than those of single models. Crop growth can be reflected by the vegetation index calculated using data from remote sensing. However, the use of pure remote sensing data alone ignores the spatial heterogeneity of different regions. In this paper, we tested a total of three models, CNN-LSTM, CNN and convolutional LSTM (ConvLSTM), for predicting the annual rice yield at the county level in Hubei Province, China. The model was trained by ERA5 temperature (AT) data, MODIS remote sensing data including the Enhanced Vegetation Index (EVI), Gross Primary Productivity (GPP) and Soil-Adapted Vegetation Index (SAVI), and a dummy variable representing spatial heterogeneity; rice yield data from 2000–2019 were employed as labels. Data download and processing were based on Google Earth Engine (GEE). The downloaded remote sensing images were processed into normalized histograms for the training and prediction of deep learning models. According to the experimental findings, the model that included a dummy variable to represent spatial heterogeneity had a stronger predictive ability than the model trained using just remote sensing data. The prediction performance of the CNN-LSTM model outperformed the CNN or ConvLSTM model.
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spelling doaj.art-e468acb7f4b942d0b4d091fcae9289722023-11-17T08:32:02ZengMDPI AGRemote Sensing2072-42922023-02-01155136110.3390/rs15051361Rice Yield Prediction in Hubei Province Based on Deep Learning and the Effect of Spatial HeterogeneityShitong Zhou0Lei Xu1Nengcheng Chen2National Engineering Research Center for Geographic Information System, School of Geography and Information Engineering, China University of Geosciences (Wuhan), Wuhan 430074, ChinaNational Engineering Research Center for Geographic Information System, School of Geography and Information Engineering, China University of Geosciences (Wuhan), Wuhan 430074, ChinaNational Engineering Research Center for Geographic Information System, School of Geography and Information Engineering, China University of Geosciences (Wuhan), Wuhan 430074, ChinaTimely and accurate crop yield information can ensure regional food security. In the field of predicting crop yields, deep learning techniques such as long short-term memory (LSTM) and convolutional neural networks (CNN) are frequently employed. Many studies have shown that the predictions of models combining the two are better than those of single models. Crop growth can be reflected by the vegetation index calculated using data from remote sensing. However, the use of pure remote sensing data alone ignores the spatial heterogeneity of different regions. In this paper, we tested a total of three models, CNN-LSTM, CNN and convolutional LSTM (ConvLSTM), for predicting the annual rice yield at the county level in Hubei Province, China. The model was trained by ERA5 temperature (AT) data, MODIS remote sensing data including the Enhanced Vegetation Index (EVI), Gross Primary Productivity (GPP) and Soil-Adapted Vegetation Index (SAVI), and a dummy variable representing spatial heterogeneity; rice yield data from 2000–2019 were employed as labels. Data download and processing were based on Google Earth Engine (GEE). The downloaded remote sensing images were processed into normalized histograms for the training and prediction of deep learning models. According to the experimental findings, the model that included a dummy variable to represent spatial heterogeneity had a stronger predictive ability than the model trained using just remote sensing data. The prediction performance of the CNN-LSTM model outperformed the CNN or ConvLSTM model.https://www.mdpi.com/2072-4292/15/5/1361ricecrop yield predictionCNN-LSTMspatial heterogeneityGoogle Earth Enginedeep learning
spellingShingle Shitong Zhou
Lei Xu
Nengcheng Chen
Rice Yield Prediction in Hubei Province Based on Deep Learning and the Effect of Spatial Heterogeneity
Remote Sensing
rice
crop yield prediction
CNN-LSTM
spatial heterogeneity
Google Earth Engine
deep learning
title Rice Yield Prediction in Hubei Province Based on Deep Learning and the Effect of Spatial Heterogeneity
title_full Rice Yield Prediction in Hubei Province Based on Deep Learning and the Effect of Spatial Heterogeneity
title_fullStr Rice Yield Prediction in Hubei Province Based on Deep Learning and the Effect of Spatial Heterogeneity
title_full_unstemmed Rice Yield Prediction in Hubei Province Based on Deep Learning and the Effect of Spatial Heterogeneity
title_short Rice Yield Prediction in Hubei Province Based on Deep Learning and the Effect of Spatial Heterogeneity
title_sort rice yield prediction in hubei province based on deep learning and the effect of spatial heterogeneity
topic rice
crop yield prediction
CNN-LSTM
spatial heterogeneity
Google Earth Engine
deep learning
url https://www.mdpi.com/2072-4292/15/5/1361
work_keys_str_mv AT shitongzhou riceyieldpredictioninhubeiprovincebasedondeeplearningandtheeffectofspatialheterogeneity
AT leixu riceyieldpredictioninhubeiprovincebasedondeeplearningandtheeffectofspatialheterogeneity
AT nengchengchen riceyieldpredictioninhubeiprovincebasedondeeplearningandtheeffectofspatialheterogeneity