Prediction of Grain Yield in Henan Province Based on Grey BP Neural Network Model

BP neural network (BPNN) is widely used due to its good generalization and robustness, but the model has the defect that it cannot automatically optimize the input variables. In response to this problem, this study uses the grey relational analysis method to rank the importance of input variables, o...

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Main Authors: Bingjun Li, Yifan Zhang, Shuhua Zhang, Wenyan Li
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Discrete Dynamics in Nature and Society
Online Access:http://dx.doi.org/10.1155/2021/9919332
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spelling doaj-894cbcae7cf647ae947a39d72af382382021-09-06T00:01:29ZengHindawi LimitedDiscrete Dynamics in Nature and Society1607-887X2021-01-01202110.1155/2021/9919332Prediction of Grain Yield in Henan Province Based on Grey BP Neural Network ModelBingjun Li0Yifan Zhang1Shuhua Zhang2Wenyan Li3College of Information and Management ScienceCollege of Information and Management ScienceCollege of Information and Management ScienceCollege of Information and Management ScienceBP neural network (BPNN) is widely used due to its good generalization and robustness, but the model has the defect that it cannot automatically optimize the input variables. In response to this problem, this study uses the grey relational analysis method to rank the importance of input variables, obtains the key variables and the best BPNN model structure through multiple training and learning for the BPNN models, and proposes a variable optimization selection algorithm combining grey relational analysis and BP neural network. The predicted values from the metabolic GM (1, 1) model for key variables was used as input to the best BPNN model for prediction modeling, and a grey BP neural network model prediction model (GR-BPNN) was proposed. The long short-term memory neural network (LSTM), convolutional neural network (CNN), traditional BP neural network (BP), GM (1, N) model, and stepwise regression (SR) are also implemented as benchmark models to prove the superiority and applicability of the new model. Finally, the GR-BPNN forecasting model was applied to the grain yield forecast of the whole province and subregions for Henan Province. The forecasting results found that the growth rate of grain production in Henan Province slowed down and the center of gravity for grain production shifted northwards.http://dx.doi.org/10.1155/2021/9919332
collection DOAJ
language English
format Article
sources DOAJ
author Bingjun Li
Yifan Zhang
Shuhua Zhang
Wenyan Li
spellingShingle Bingjun Li
Yifan Zhang
Shuhua Zhang
Wenyan Li
Prediction of Grain Yield in Henan Province Based on Grey BP Neural Network Model
Discrete Dynamics in Nature and Society
author_facet Bingjun Li
Yifan Zhang
Shuhua Zhang
Wenyan Li
author_sort Bingjun Li
title Prediction of Grain Yield in Henan Province Based on Grey BP Neural Network Model
title_short Prediction of Grain Yield in Henan Province Based on Grey BP Neural Network Model
title_full Prediction of Grain Yield in Henan Province Based on Grey BP Neural Network Model
title_fullStr Prediction of Grain Yield in Henan Province Based on Grey BP Neural Network Model
title_full_unstemmed Prediction of Grain Yield in Henan Province Based on Grey BP Neural Network Model
title_sort prediction of grain yield in henan province based on grey bp neural network model
publisher Hindawi Limited
series Discrete Dynamics in Nature and Society
issn 1607-887X
publishDate 2021-01-01
description BP neural network (BPNN) is widely used due to its good generalization and robustness, but the model has the defect that it cannot automatically optimize the input variables. In response to this problem, this study uses the grey relational analysis method to rank the importance of input variables, obtains the key variables and the best BPNN model structure through multiple training and learning for the BPNN models, and proposes a variable optimization selection algorithm combining grey relational analysis and BP neural network. The predicted values from the metabolic GM (1, 1) model for key variables was used as input to the best BPNN model for prediction modeling, and a grey BP neural network model prediction model (GR-BPNN) was proposed. The long short-term memory neural network (LSTM), convolutional neural network (CNN), traditional BP neural network (BP), GM (1, N) model, and stepwise regression (SR) are also implemented as benchmark models to prove the superiority and applicability of the new model. Finally, the GR-BPNN forecasting model was applied to the grain yield forecast of the whole province and subregions for Henan Province. The forecasting results found that the growth rate of grain production in Henan Province slowed down and the center of gravity for grain production shifted northwards.
url http://dx.doi.org/10.1155/2021/9919332
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AT yifanzhang predictionofgrainyieldinhenanprovincebasedongreybpneuralnetworkmodel
AT shuhuazhang predictionofgrainyieldinhenanprovincebasedongreybpneuralnetworkmodel
AT wenyanli predictionofgrainyieldinhenanprovincebasedongreybpneuralnetworkmodel
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