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Title Development and Effectiveness Evaluation of an Agricultural Simulator Using Digital Twin Metaverse
Authors Hwanki Min ; Sangkyun Kim
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(Cover Date)
Vol.33 No.1(2026-02)
Keywords Metaverse; Digital Twin; Agriculture; Simulator; Smartfarm
Abstract This study developed an agricultural simulator that integrates a digital twin and a metaverse-based 3D virtual environment, and quantitatively verified its effectiveness by applying an XGBoost (Extreme Gradient Boosting)-based regression prediction model. Existing machine learning (ML)-based agricultural prediction research has tended to focus on improving prediction accuracy, but there has been a relative lack of a decision support structure that integrates synchronization with actual operating environments, scenario-based repeated experiments, and user interaction. Therefore, this study proposes an “agricultural metaverse simulator” that combines (1) building a digital twin model based on actual greenhouse data, (2) real-time visualization and interaction in a metaverse environment, and (3) integration of an XGBoost-based growth prediction model. The data were collected from the Rural Development Administration’s publicly available tomato data and data from three experimental greenhouses, and a total of 18 variables were configured: seven inputs (environment/control) and 11 outputs (growth/production). Preprocessing ensured reproducibility by specifying unit unification, missing value handling, and outlier correction (IQR: Interquartile Range) criteria. Model performance was evaluated using Root Mean Squared Error (RMSE) and Coefficient of Determination (R²), and results were presented by greenhouse unit (farm_code). Furthermore, the effectiveness of the simulator was rigorously verified through statistical significance tests (paired-samples t-tests and, when necessary, nonparametric tests) for differences between simulation results and field measurements