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Predictive turbulence-driven flux model of scrape-off layer widths across confinement regimes in tokamaks
Published 2025-01-01Get full text
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Nonlinear Model Predictive Yaw Moment Control Through Electric Axle and Friction Brake Torque Distribution
Published 2025-01-01Get full text
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Enhanced Inverse Model Predictive Control for EV Chargers: Solution for DC–DC Side
Published 2025-01-01Get full text
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Long-Horizon Direct Model Predictive Control for Medium-Voltage Converters Connected to a Distorted Grid
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A predictive machine-learning model for clinical decision-making in washed microbiota transplantation on ulcerative colitis
Published 2024-12-01“…Besides, the voting ensembles exhibited an area under curve (AUC) of 0.769 ± 0.019 [accuracy, 0.754; F1-score, 0.845] in the internal validation; the AUC of the external validation was 0.614 ± 0.017 [accuracy, 0.801; F1-score, 0.887]. Additionally, the model was available at https://wmtpredict.streamlit.app.ConclusionsThis study pioneered the development of a machine learning model to predict the one-month clinical response of WMT on UC. …”
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Design of a Predictive Controller for the Current Loop of the Tubular Linear Motor Using a Discrete Model
Published 2025-04-01Get full text
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Robust Invariant Set Design for Reliable Stopping in Adaptive Cruise Control via Model Predictive Control
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Development and validation of a predictive model for critical illness in adult patients requiring hospitalization for COVID-19.
Published 2021-01-01“…We developed a free, web-based calculator to facilitate use of the prediction model (https://icucovid19.shinyapps.io/ICUCOVID19/).…”
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Development of a predictive model for systemic lupus erythematosus incidence risk based on environmental exposure factors
Published 2024-11-01“…Leave-one-out cross-validation confirmed that the ForestMDG model had the best accuracy (0.8338). Finally, we developed a dynamic nomogram for practical use, which is accessible via the following link: https://yingzhang99321.shinyapps.io/dynnomapp/.Conclusion We created a user-friendly dynamic nomogram for predicting the relative risk of SLE onset based on occupational and living environmental exposures.Trial registration number ChiCTR2000038187.…”
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