Deep Learning Based Wheat Crop Yield Prediction Model in Punjab Region of North India

Crop yield prediction is an important aspect of agriculture. The timely and accurate crop yield predictions can be of great help for policy makers and farmers in planning and decision making. Generally, statistical models are employed to predict the crop yield which is time consuming and tedious. Em...

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Veröffentlicht in:Applied artificial intelligence 2021-12, Vol.35 (15), p.1304-1328
Hauptverfasser: Bali, Nishu, Singla, Anshu
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container_title Applied artificial intelligence
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creator Bali, Nishu
Singla, Anshu
description Crop yield prediction is an important aspect of agriculture. The timely and accurate crop yield predictions can be of great help for policy makers and farmers in planning and decision making. Generally, statistical models are employed to predict the crop yield which is time consuming and tedious. Emerging trends of deep learning and machine learning has come up as a major breakthrough in the arena. Deep learning models have the inherent ability to perform feature extraction in large dataset thus more suitable for predictions. In this paper, a deep learning-based Recurrent Neural Network (RNN) model is employed to predict wheat crop yield of northern region of India. The present study also employed LSTM to unravel the vanishing gradient problem inherent in RNN model. Experiments were conducted using 43 years benchmark dataset and proposed model results were compared with three machine learning models. Evidently, the results obtained from RNN-LSTM model(RMSE: 147.12,MAE: 60.50), Artificial Neural Network(RMSE: 732.14,MAE: 623.13), Random Forest (RMSE: 540.88, MAE: 449.36) and Multivariate Linear Regression (RMSE: 915.64,MAE: 796.07), proved the efficacy of model. Also, predicted crop yield values were found to be more close to true values for RNN-LSTM model proving efficiency of the proposed work.
doi_str_mv 10.1080/08839514.2021.1976091
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Evidently, the results obtained from RNN-LSTM model(RMSE: 147.12,MAE: 60.50), Artificial Neural Network(RMSE: 732.14,MAE: 623.13), Random Forest (RMSE: 540.88, MAE: 449.36) and Multivariate Linear Regression (RMSE: 915.64,MAE: 796.07), proved the efficacy of model. 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subjects Agricultural production
Artificial neural networks
Crop yield
Datasets
Decision making
Decision trees
Deep learning
Feature extraction
Machine learning
Neural networks
Prediction models
Recurrent neural networks
Statistical analysis
Statistical models
Wheat
title Deep Learning Based Wheat Crop Yield Prediction Model in Punjab Region of North India
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