Gorilla troops optimization with deep learning based crop recommendation and yield prediction

Agriculture plays a vital role in the Indian economy. Crop recommendation for a specific region is a tedious process as it can be affected by various variables such as soil type and climatic parameters. At the same time, crop yield prediction was based on several features like area, irrigation type,...

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Main Authors: A. Punitha, V. Geetha
Format: Article
Language:English
Published: KeAi Communications Co., Ltd. 2024-01-01
Series:International Journal of Cognitive Computing in Engineering
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Online Access:http://www.sciencedirect.com/science/article/pii/S266630742400038X
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author A. Punitha
V. Geetha
author_facet A. Punitha
V. Geetha
author_sort A. Punitha
collection DOAJ
description Agriculture plays a vital role in the Indian economy. Crop recommendation for a specific region is a tedious process as it can be affected by various variables such as soil type and climatic parameters. At the same time, crop yield prediction was based on several features like area, irrigation type, temperature, etc. The latest breakthroughs in Machine Learning (ML) and Artificial Intelligence (AI) technologies pave the way to designing effective crop recommendation and prediction models. Despite the significant advancements of Deep Learning (DL) models in crop recommendation, hyperparameter tuning using metaheuristic algorithms becomes essential for enhanced performance. This tool allows users to anticipate appropriate crops and their expected yields for a provided year, assisting agriculturalists in choosing crops suitable for their area and period and anticipating productivity. This article introduces a Gorilla Troops Optimization with Deep Learning-based Crop Recommendation and Yield Prediction model (GTODL-CRYPM). The proposed GTODL-CRYPM model mainly focuses on two processes, namely, crop recommendation and crop prediction. Firstly, the GTO with Long Short-Term Memory (LSTM) technique is employed to make efficient crop recommendations. Besides, the GTO model is applied to adjust the LSTM parameters optimally. Next, the Deep Belief Network (DBN) technique was executed to predict crop yield accurately. A wide range of experiments have been conducted to report the improved performance of the GTODL-CRYPM model. The outcomes are examined under the Crop Recommendation Dataset and Crop Yield Prediction Dataset. Experimentation outcomes highlighted the significant performance of the GTODL-CRYPM approach on the compared approaches, with a maximum accuracy of 99.88% and an R2 score of 99.14%.
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spelling doaj-art-db31a7c7ea944b58b667fd36bd19a5202025-08-20T02:12:54ZengKeAi Communications Co., Ltd.International Journal of Cognitive Computing in Engineering2666-30742024-01-01549450410.1016/j.ijcce.2024.09.006Gorilla troops optimization with deep learning based crop recommendation and yield predictionA. Punitha0V. Geetha1Department of CSE, Puducherry Technological University & Assistant Professor, Manakula Vinayagar Institute of Technology, India; Corresponding author.Professor, Department of CSE, Puducherry Technological University, IndiaAgriculture plays a vital role in the Indian economy. Crop recommendation for a specific region is a tedious process as it can be affected by various variables such as soil type and climatic parameters. At the same time, crop yield prediction was based on several features like area, irrigation type, temperature, etc. The latest breakthroughs in Machine Learning (ML) and Artificial Intelligence (AI) technologies pave the way to designing effective crop recommendation and prediction models. Despite the significant advancements of Deep Learning (DL) models in crop recommendation, hyperparameter tuning using metaheuristic algorithms becomes essential for enhanced performance. This tool allows users to anticipate appropriate crops and their expected yields for a provided year, assisting agriculturalists in choosing crops suitable for their area and period and anticipating productivity. This article introduces a Gorilla Troops Optimization with Deep Learning-based Crop Recommendation and Yield Prediction model (GTODL-CRYPM). The proposed GTODL-CRYPM model mainly focuses on two processes, namely, crop recommendation and crop prediction. Firstly, the GTO with Long Short-Term Memory (LSTM) technique is employed to make efficient crop recommendations. Besides, the GTO model is applied to adjust the LSTM parameters optimally. Next, the Deep Belief Network (DBN) technique was executed to predict crop yield accurately. A wide range of experiments have been conducted to report the improved performance of the GTODL-CRYPM model. The outcomes are examined under the Crop Recommendation Dataset and Crop Yield Prediction Dataset. Experimentation outcomes highlighted the significant performance of the GTODL-CRYPM approach on the compared approaches, with a maximum accuracy of 99.88% and an R2 score of 99.14%.http://www.sciencedirect.com/science/article/pii/S266630742400038XAgricultureCrop yield predictionCrop recommendationDeep learningGorilla troops optimizer
spellingShingle A. Punitha
V. Geetha
Gorilla troops optimization with deep learning based crop recommendation and yield prediction
International Journal of Cognitive Computing in Engineering
Agriculture
Crop yield prediction
Crop recommendation
Deep learning
Gorilla troops optimizer
title Gorilla troops optimization with deep learning based crop recommendation and yield prediction
title_full Gorilla troops optimization with deep learning based crop recommendation and yield prediction
title_fullStr Gorilla troops optimization with deep learning based crop recommendation and yield prediction
title_full_unstemmed Gorilla troops optimization with deep learning based crop recommendation and yield prediction
title_short Gorilla troops optimization with deep learning based crop recommendation and yield prediction
title_sort gorilla troops optimization with deep learning based crop recommendation and yield prediction
topic Agriculture
Crop yield prediction
Crop recommendation
Deep learning
Gorilla troops optimizer
url http://www.sciencedirect.com/science/article/pii/S266630742400038X
work_keys_str_mv AT apunitha gorillatroopsoptimizationwithdeeplearningbasedcroprecommendationandyieldprediction
AT vgeetha gorillatroopsoptimizationwithdeeplearningbasedcroprecommendationandyieldprediction