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781
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782
On the use of kolmogorov–arnold networks for adapting wind numerical weather forecasts with explainability and interpretability: application to madeira international airport
Published 2024-01-01“…This study examines the application of machine learning to enhance wind nowcasting by using a Kolmogorov-Arnold Network model to improve predictions from the Global Forecast System at Madeira International Airport, a site affected by complex terrain. …”
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783
Distributed energy sharing algorithm for Micro Grid energy system based on cloud computing
Published 2024-09-01Get full text
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784
Improving stroke risk prediction by integrating XGBoost, optimized principal component analysis, and explainable artificial intelligence
Published 2025-02-01“…To improve stroke risk prediction models in terms of efficiency and interpretability, we propose to integrate modern machine learning algorithms and data dimensionality reduction methods, in particular XGBoost and optimized principal component analysis (PCA), which provide data structuring and increase processing speed, especially for large datasets. …”
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785
Elucidating thermal phenomena of non-Newtonian experimental data based copper-alumina-ethylene glycol hybrid nanofluid in a cubic enclosure with central heated plate by machine lea...
Published 2025-03-01“…Finally, a cross-validation performance analysis was conducted using a machine learning model and good accuracy was obtained. …”
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786
Internet of Things and Artificial Intelligence for Secure and Sustainable Green Mobility: A Multimodal Data Fusion Approach to Enhance Efficiency and Security
Published 2025-04-01“…This paper proposes an IoT and AI-driven framework for secure and sustainable green mobility, leveraging multimodal data fusion to enhance traffic management, energy efficiency, and emissions reduction. Using publicly available datasets, including METR-LA for traffic flow and OpenWeatherMap for environmental context, the framework integrates machine learning models for congestion prediction and reinforcement learning for dynamic route optimization. …”
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787
Efficient feature selection based on Gower distance for breast cancer diagnosis
Published 2025-06-01Get full text
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788
The Influence of Non-Landslide Sample Selection Methods on Landslide Susceptibility Prediction
Published 2025-03-01“…The EIV method leverages machine learning to assign adaptive weights to influencing factors, prioritizing sample selection in low-susceptibility regions and avoiding high-susceptibility areas, thereby enhancing sample quality. …”
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789
Opportunities and Limitations of Wrist-Worn Devices for Dyskinesia Detection in Parkinson’s Disease
Published 2025-07-01“…Each representation was assessed on public datasets to identify the best-performing machine learning model and subsequently applied to our own collected dataset to assess generalizability. …”
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790
The PLSR-ML fusion strategy for high-accuracy leaf potassium inversion in karst region of Southwest China
Published 2025-07-01“…This performance gain was attributed to rigorous overfitting control: PLSR’s dimensionality reduction synergized with ensemble machine learning (RF, XGBoost, MLP) to eliminate redundant spectral features while retaining predictive signals. …”
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791
Predicting traffic flow between bike-sharing system stations: A case study of Chicago
Published 2025-05-01“…Specifically, we compare two parallel multilayer perceptron deep learning models, incorporating matrix factorization and gate recurrent unit (GRU) neural networks. …”
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792
Data-driven analysis and visualization of dielectric properties curated from scientific literature
Published 2025-12-01“…This dataset enabled the development of machine learning models with high predictive performance and facilitated the identification of important descriptors through recursive feature eliminations. …”
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793
Unveiling the drivers contributing to global wheat yield shocks through quantile regression
Published 2025-09-01“…Furthermore, we assess the relationships between shocks and their key ecological and socioeconomic drivers using quantile regression based on statistical (linear quantile mixed model) and machine learning (quantile random forest) models. …”
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794
Balancing CICIoV2024 Dataset with RUS for Improved IoV Attack Detection
Published 2025-03-01“…This research employed RUS to mitigate data imbalance within the CICIoV2024 dataset, which often impedes effective threat detection in machine learning models. Four machine learning classifiers Random Forest, AdaBoost, Gradient Boosting, and XGBoost were evaluated on both imbalanced and balanced datasets to compare their performance. …”
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795
Impacts of long-range transport of aerosols and biomass burning smoke from the Bay of Bengal to the Indian Ocean
Published 2025-01-01“…In this way, they are a type of Interpretable Machine Learning (IML) / eXplainable Artificial Intelligence (XAI) that provide quantitative information on the sources of PM _2.5 . …”
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796
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797
Testing an inverse modeling approach with gradient boosting regression for stroke volume estimation using patient thermodilution data
Published 2025-03-01“…We developed a modified method for SV estimation that combines a validated 1-D model of the systemic circulation with machine learning. …”
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798
Innovative Machining Strategies for Metal Matrix Composites: Trends and Future Prospects
Published 2025-01-01“…The transformative role of artificial intelligence (AI) and machine learning (ML) in process optimization is explored, showcasing improvements in precision, tool wear reduction, and surface quality. …”
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799
Nonlinear compressive reduced basis approximation for PDE’s
Published 2023-09-01Get full text
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800
A Novel Policy Distillation With WPA-Based Knowledge Filtering Algorithm for Efficient Industrial Robot Control
Published 2024-01-01“…The machine learning model experiences the computing resource limitation of industrial robots working the complex jobs of intelligent operations including machine vision, action planning and human collaborations. …”
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