Kuppan, P. and Vishwa Priya, V (2025) On-Demand Forecasting-Based Crop Yield Prediction and Recommendation Using Deep Ensemble Swarm Intelligence with Multi-Perceptron Neural Network. International Journal of Basic and Applied Sciences, 14 (SI-1). pp. 538-584. ISSN 2227-5053
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On-Demand Forecasting-Based Crop Yield Prediction and Recommendation Using Deep Ensemble Swarm Intelligence with Multi-Perceptron Neural Network Kuppan. P Dr. Vishwa Priya. V
Agriculture is a fast-growing industrial resource that has developed the Indian economy in recent years to achieve more crop production worldwide. The traditional methodologies don't carry the multi-feature constraints and forecasting rate to degrade the recommendation accuracy because of a lower precision rate and accurate positive margins. To resolve this problem, we propose an on-demand forecasting-based Crop Yield Prediction and Recommendation Using Optimal Spider Swarm Intelligence Technique (OSSIT) with a Perceptron Neural Network (MPNN). The multi-constraints data are based on metrological seasonal data, crop production rate, and demand forecasting rate to augment the collective dataset. C-score Min-max normalizer preprocesses to process the data and formalizes the feature limits to scale the actual and ideal margin variations. Then, the Crop Subjectivity Impact Rate (CSIR) is analyzed with decision tree margins (DTM) to identify the actual support crop production for feature relations. Further, absolute demand forecasting variation feature limits are observed with the ARIMA moving index rate to identify the findings in feature scaling. Also, the feature selection is carried out by the Optimal Spider Swarm Intelligence Technique (OSSIT) to determine the relational features by considering the multi-concern feature relation. The non-relation features are reduced accordingly by the inequality relation to avoid the feature dimension. By intention, the Multi Perceptron Neural Network (MPNN) takes the multi-constraint feature margins. The proposed system produces high performance by selecting the correct feature dependencies for selecting the seasonal crop and absolute mean growth rate with demand-level margins. The proposed system produces a higher precision agriculture rate, recall rate, F1 measure, and lower false rate with redundant time complexity.
11 01 2025 538 584 10.14419/rv2aqw26 https://www.sciencepubco.com/index.php/IJBAS/article/view/34991 https://www.sciencepubco.com/index.php/IJBAS/article/download/34991/19405 https://www.sciencepubco.com/index.php/IJBAS/article/download/34991/19405
| Item Type: | Article |
|---|---|
| Subjects: | Computer Applications > Computer Networks |
| Domains: | Computer Science |
| Depositing User: | Mr Sureshkumar A |
| Date Deposited: | 29 Dec 2025 14:44 |
| Last Modified: | 29 Dec 2025 14:44 |
| URI: | https://ir.vistas.ac.in/id/eprint/12180 |


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