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861
FADA-SMOTE-Ms: Fuzzy Adaptative Smote-Based Methods
Published 2024-01-01“…In this research, an improved SMOTE-based method, namely Fuzzy-ADAptative-SMOTE-Based-Methods (FADA-SOMTE-Ms), which targets all three problems at the same time, is introduced. …”
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862
Prediction of lithium-ion battery SOC based on IGA-GRU and the fusion of multi-head attention mechanism
Published 2024-12-01“…Lithium-ion batteries have been widely used in electric vehicles due to their advantages of high specific energy and low-temperature resistance, so this paper takes lithium-ion batteries as the research object. BMS can monitor various status information of lithium-ion batteries in real-time, and the State of Charge (SOC) of lithium-ion batteries is a key parameter among them. …”
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863
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864
Predicting the compressive strength of concrete incorporating waste powders exposed to elevated temperatures utilizing machine learning
Published 2025-07-01“…MWP and GWP ranged between 0 and 9%, temperatures were ranged between 25 °C and 800 °C, and duration up to 2 h. Hyperparameters in the RF and XGB models were optimized using grid search. …”
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865
A synergistic approach for enhanced eye blink detection using wavelet analysis, autoencoding and Crow-Search optimized k-NN algorithm
Published 2025-04-01“…Abstract This research endeavor introduces a state-of-the-art, assimilated approach for eye blink detection from Electroencephalography signals. …”
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866
An exploratory analysis of longitudinal artificial intelligence for cognitive fatigue detection using neurophysiological based biosignal data
Published 2025-05-01“…Monitoring this condition in real-world settings is crucial for detecting and managing adequate break periods. Bridging this research gap is significant, as it has substantial implications for developing more effectual and less intrusive wearable devices to track cognitive fatigue. …”
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867
A Hybrid Strategy-Improved SSA-CNN-LSTM Model for Metro Passenger Flow Forecasting
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868
Predicting Insemination Outcome in Holstein Dairy Cattle using Deep Learning
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869
Data-driven machine learning approaches for simultaneous prediction of peak particle velocity and frequency induced by rock blasting in mining
Published 2025-01-01“…By employing machine learning models, this research aims to accurately predict and assess ground vibrations with frequency resulting from rock blasting.…”
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870
Prediction of obesity levels based on physical activity and eating habits with a machine learning model integrated with explainable artificial intelligence
Published 2025-07-01“…In terms of interpretability, LIME showed superior in fidelity, whereas SHAP showed improved sparsity and consistency across models, facilitating a comprehensive understanding of trait importance.ConclusionThis research demonstrates that ML algorithms, when integrated with XAI technologies, can accurately predict obesity levels and explain important contributing risk factors. …”
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871
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872
Machine learning prediction of permeability distribution in the X field Malay Basin using elastic properties
Published 2024-12-01“…In contrast, XGBoost model performed better (R2 = 0.87, RMSLE = 0.195) using only elastic properties as features. This research highlights a robust method for predicting permeability distribution using elastic properties, which can significantly enhance the efficiency of reservoir assessment. …”
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873
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874
Automatic melanoma and non-melanoma skin cancer diagnosis using advanced adaptive fine-tuned convolution neural networks
Published 2025-04-01“…Traditionally approaches have High computational costs, a lack of interpretability, deal with numerous hyperparameters and spatial variation have always been problems with machine learning (ML) and DL. …”
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875
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876
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877
Evaluating Medical Entity Recognition in Health Care: Entity Model Quantitative Study
Published 2024-10-01“… BackgroundNamed entity recognition (NER) models are essential for extracting structured information from unstructured medical texts by identifying entities such as diseases, treatments, and conditions, enhancing clinical decision-making and research. Innovations in machine learning, particularly those involving Bidirectional Encoder Representations From Transformers (BERT)–based deep learning and large language models, have significantly advanced NER capabilities. …”
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878
Predicting future occlusion or stenosis of lower extremity bypass grafts using artificial intelligence to simultaneously analyze all flow velocities collected in current and previo...
Published 2024-01-01“…The objective of this research is to investigate recurrent neural networks (RNNs) to predict future bypass graft occlusion or stenosis. …”
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879
Long short-term memory (LSTM) networks for precision prediction of Schottky barrier photodiode behavior at different illumination levels
Published 2025-07-01“…These findings highlight the potential of data-driven deep learning approaches in semiconductor research and open avenues for broader applications of LSTM architectures in predicting electronic and optoelectronic device parameters.…”
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880
Concrete Dam Deformation Prediction Model Based on Attention Mechanism and Deep Learning
Published 2025-01-01“…The model successfully captures nonlinear and time-varying characteristics in concrete dam deformation processes, showing high consistency with measured deformation patterns and demonstrating excellent engineering practicality. This research provides new insights for deformation prediction in related hydraulic engineering projects and establishes a foundation for developing real-time early warning methods based on deformation prediction for dam safety management.…”
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