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Algorithm

Hybrid Machine Learning Model for Location-Specific Crop Recommendation Using Soil and Climate Parameters

Accurate crop recommendation systems are essential for optimizing agriculturalproductivity and sustainability, yet existing approaches often fail to integrate diverse environmental factors and adapt to location-specific conditions. This study proposes a hybrid machine learning model that leverages soil and climate parameters through a threestage pipeline: Random Forest for feature selection, Extreme Gradient Boosting for robust prediction, and a lightweight Feed forward Neural Network for final decision-making.

Investigating Design Parameters and Control Algorithms for Solar Panel Tracking Systems

This paper presents a procedure for the design and analysis of a solar tracking system for a given photovoltaic energy conversion installation which could readily be used by local designers. As the specifications of the desired energy consumption determines the actual total weight of the required number of solar panels, the proposed procedure aims at facilitating optimum choice of the drive servo-motor and presents a formalized design method for the associated controls. The overall transfer function of the system is developed and analyzed to investigate system stability and accuracy.

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