HCA-DBN: a hill climbing optimized Deep Belief Network for crop yield classification based on kernel weight threshold
Prakash Sandhya, B. Venkataramana

TL;DR
This paper introduces a new machine learning model for classifying maize yield based on kernel weight, showing high accuracy even with limited data.
Contribution
The novel HCA-DBN model combines deep learning with hill climbing optimization for improved yield classification.
Findings
HCA-DBN achieved 94% accuracy in classifying maize kernel weight into low and high yield categories.
The model outperformed standard classifiers like Random Forest and XGBoost under small sample conditions.
Results were validated using bootstrapping and stratified 10-fold cross-validation, ensuring statistical stability.
Abstract
Accurate classification of maize yield potential is essential for food security and effective agricultural planning, particularly in regions characterized by environmental variability and socio-economic constraints. This study explores the binary classification of maize kernel weight into low (<25 g) and high (≥25 g) categories, utilizing plant and ear traits collected from an organic maize field experiment in Vellore district, Tamil Nadu (n = 160). A Hybrid Cascade – Deep Belief Network (HCA-DBN) is proposed, utilizing the feature extraction capabilities of Deep Belief Networks (DBN) coupled with Hill Climbing Algorithm (HCA) as a lightweight hyperparameter tuning strategy. The model’s performance was benchmarked against standard classifiers including Logistic Regression, Random Forest, XGBoost, Decision Tree, Multi-Layer Perceptron (MLP), and Support Vector Classifier (SVC). The…
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Taxonomy
TopicsSmart Agriculture and AI · Remote Sensing in Agriculture · Spectroscopy and Chemometric Analyses
