Abstract

Data mining is an information exploration methodology with fascinating and understandable patterns and informative models for vast volumes of data. Agricultural productivity growth is the key to poverty alleviation. However, due to a lack of proper technical guidance in the agriculture field, crop yield differs over different years. Mining techniques were implemented in different applications, such as soil classification, rainfall prediction, and weather forecast, separately. It is proposed that an Artificial Intelligence system can combine the mined extracts of various factors such as soil, rainfall, and crop production to predict the market value to be developed. Smart analysis and a comprehensive prediction model in agriculture helps the farmer to yield the right crops at the right time. The main benefits of the proposed system are as follows: Yielding the right crop at the right time, balancing crop production, economy growth, and planning to reduce crop scarcity. Initially, the database is collected, and the input dataset is preprocessed. Feature selection is carried out followed by feature extraction techniques. The best features were then optimized using the recurrent cuckoo search optimization algorithm, then the optimized output can be given as an input for the process of classification. The classification process is conducted using the Discrete DBN-VGGNet classifier. The performance estimation is made to prove the effectiveness of the proposed scheme.

Highlights

  • The Discrete hybrid DBN‐VGG classification is used to derive the non‐linear properties of the retinal atherosclerosis fundus images for better or more specific functionality

  • Due to the increased success compared to other, existing methods, the Discrete Hybrid DBN‐VGG + Recurrent Chicken Swarm Optimization (RCSO) was used as the crop selection method

  • The findings suggest an improved performance of the proposed method. This performance reflected 97% precision and 97% accuracy with 94% recall

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Summary

A Novel Approach in Prediction of Crop Production Using

Aghila Rajagopal 1, Sudan Jha 2, Manju Khari 3, Sultan Ahmad 4,*, Bader Alouffi 5 and Abdullah Alharbi 6.

Introduction
Related Works
Preprocessing
Feature Extraction
Feature Selection
Discrete Hybrid DBN‐VGG Classification
Performance Analysis
Performance Metrics
Comparative Performance Analysis
Findings
Conclusions
Full Text
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