학술논문

Machine Learning Approach for Soil Nutrient Prediction
Document Type
Conference
Source
2023 IEEE Silchar Subsection Conference (SILCON) Silchar Subsection Conference (SILCON), 2023 IEEE. :1-6 Nov, 2023
Subject
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Fields, Waves and Electromagnetics
Photonics and Electrooptics
Power, Energy and Industry Applications
Robotics and Control Systems
Signal Processing and Analysis
Productivity
Spectroscopy
Machine learning algorithms
Machine learning
Soil
Prediction algorithms
Farming
Machine Learning
Atomic Emission spectral Data
K-Nearest Neighbor regression
MLR and r2_score
Language
Abstract
Soil nutrient prediction is of utmost importance in agricultural practices as it directly affects crop productivity and sustainable farming. In order to forecast soil nutrient levels, this study compares the effectiveness of two machine learning algorithms: K-Nearest Neighbors (KNN) regression and Multiple Linear Regression (MLR). Atomic emission spectroscopy data and conventional laboratory data pertaining to macro and micronutrients present in soil taken from seven different zones of Tamil Nadu are involved in the construction of the customized dataset that is used for this investigation. Initially, the data in the dataset is pre-processed to filter outliers. Both KNN regression and MLR were trained and assessed using the gathered dataset in the comparison study. Using the r2_score as a performance metric, the percentage of variation achieved by the models is evaluated. The performance of algorithms was evaluated. According to the findings, KNN regression works better than MLR at predicting soil nutrient levels. Due to its capacity to capture complex interactions between soil nutrient concentrations and predictor variables, KNN regression shows improved accuracy and generalization capabilities. The findings have important implications for farmers and decision-makers, offering insightful information to support wise choices for land management and environmentally friendly farming methods.