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2661
Reducing bias in coronary heart disease prediction using Smote-ENN and PCA.
Published 2025-01-01“…Its treatment and prevention face challenges such as high costs, prolonged recovery periods, and limited efficacy of traditional methods. …”
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2662
A Distributed Collaborative Navigation Strategy Based on Adaptive Extended Kalman Filter Integrated Positioning and Model Predictive Control for Global Navigation Satellite System/...
Published 2025-02-01“…This framework predicts and optimizes each robot’s kinematic model, thereby improving the system’s collaborative operations and dynamic decision-making capabilities. …”
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2663
Energy Efficient Heat Exchange Network for the Oil Vacuum Distillation Facility
Published 2019-12-01“…The cost curves tools carry out the search of an optimal minimum temperature difference value. …”
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2664
Advancing cardiovascular care through actionable AI innovation
Published 2025-05-01“…Indeed, offline RL refers to a class of ML algorithms that learn optimal decision-making policies from a fixed dataset of previously collected experiences—such as electronic health records or registries—without the need for active, real-time interaction with the clinical environment. …”
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2665
Model‐Free Deep Reinforcement Learning with Multiple Line‐of‐Sight Guidance Laws for Autonomous Underwater Vehicles Full‐Attitude and Velocity Control
Published 2025-08-01“…Conventional proportional–integral–derivative (PID) algorithms require frequent control parameter adjustments under varying voyage conditions, which increases operational and experimental costs. …”
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2666
Development of a justification process for selecting alternative risk reduction measures
Published 2025-06-01“…An eleven-step risk management process was designed to determine alternative preventive measures, characterized by feedback loops that enable the selection of optimal risk reduction strategies.ResultsThis study presents algorithms for solving three types of decision-making problems regarding the selection of combinations of preventive measures from a defined set of alternatives. …”
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2667
TinyML and IoT-enabled system for automated chicken egg quality analysis and monitoring
Published 2025-12-01“…Traditional methods of egg quality assessment often lack precision and can be time-consuming and costly. This study addresses these challenges by introducing an innovative solution that combines Artificial Intelligence (AI) and Internet of Things (IoT) technologies, offering a transformative approach to automating the egg mirage process and improving overall egg quality analysis. …”
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2668
The Role of Artificial Intelligence in Aviation Construction Projects in the United Arab Emirates: Insights from Construction Professionals
Published 2024-12-01“…The majority agreed that AI has the potential to revolutionize project management processes, improving decision-making, and efficiency. AI tools can predict delays, optimize workflows, and enhance safety through real-time data analytics and machine learning algorithms, reducing risks and human error. …”
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2669
Learning Deceptive Tactics for Defense and Attack in Bayesian–Markov Stackelberg Security Games
Published 2025-03-01“…By leveraging Bayesian techniques, we aim to minimize the expected total discounted costs, thus optimizing decision-making in the security domain. …”
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2670
Ensemble Machine Learning Model Prediction and Metaheuristic Optimisation of Oil Spills Using Organic Absorbents: Supporting Sustainable Maritime
Published 2025-06-01“…To close this gap, our work combines metaheuristic algorithms with ensemble machine learning and suggests a hybrid technique for the precise prediction and improvement of oil removal efficiency. …”
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2671
Current status and outlook of UWB radar personnel localization for mine rescue
Published 2025-04-01“…Future research directions of UWB radar personnel localization technology for mine rescue operations are proposed: ① optimizing the UWB radar localization system by constructing cross-modal information fusion models and developing highly adaptive signal processing methods to enhance the system's adaptability to post-mining disaster environments; ② improving the applicability of combined static and dynamic target localization by developing hybrid localization algorithms that integrate Bayesian networks or deep belief networks to fuse static and dynamic target features and establishing state-switching-based comprehensive models; ③ improving UWB radar echo processing algorithms, combining adaptive beamforming technology, Multiple Input Multiple Output (MIMO) technology, and optimized K-means++ or entropy-based hierarchical analysis algorithms, effectively distinguishing multi-target position information, and validating their adaptability and reliability in complex environments through extensive simulation experiments.…”
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2672
A Summary of the Existing Data on Cleft Surgical Outcomes: What Do We Not Know?
Published 2025-04-01“…These limitations highlight the need for further research with more representative populations globally, standardized measurement tools, and a global consortium of cleft surgeons to make recommendations based on improved data. As the need for training in cleft surgery expands across the globe, evidence-based algorithms are essential to optimize outcomes and limit costly complications.…”
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2673
Incorporating Contextual Factors into a Comprehensive Analysis of Operational Efficiency and Service Quality in Healthcare Sector
Published 2025-04-01“…The proposed two-phased integrated technique enhances the performance of healthcare services and provides a roadmap for improvement for inefficient regions.…”
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2674
A Multi-Strategy Active Learning Framework for Enhanced Peripheral Blood Cell Image Detection
Published 2025-01-01“…The framework reduces annotation costs and improves detection performance by combining uncertainty-based selection, diversity querying, and density-based querying to prioritize the most informative and diverse samples. …”
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2675
Robust Drone Video Analysis for Occluded Urban Traffic Monitoring Based on Deep Learning
Published 2025-01-01“…The results enable precise input for traffic simulators (e.g., PTV-Vissim), supporting data-driven UTM decisions while minimizing costly real-world experimentation.…”
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2676
Travel time prediction for an intelligent transportation system based on a data-driven feature selection method considering temporal correlation
Published 2024-12-01“…Results show that OA2DD improves the convergence curve and reduces the number of selected features by up to 50 %, leading to a 56 % reduction in computational costs. …”
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2677
Handover Strategy for LEO Satellite Networks Using Bipartite Graph and Hysteresis Margin
Published 2025-01-01“…The proposed approach utilizes the Kuhn-Munkres (KM) algorithm to achieve optimal matching with maximum weight, thereby ensuring efficient load distribution and high-quality communication. …”
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2678
Advancing Agricultural Machinery Maintenance: Deep Learning-Enabled Motor Fault Diagnosis
Published 2025-01-01“…This article further discusses future research directions, such as optimizing DL models for real-time processing, improving robustness under varying agricultural conditions, and developing user-friendly interfaces for farmers and technicians. …”
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2679
Collaborative multiview time series modeling for vehicle maintenance demand prediction
Published 2025-04-01“…Abstract Accurate prediction of vehicle maintenance demands is crucial for sustaining vehicle use, optimizing performance, and minimizing ownership costs. …”
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2680
Computing Non-Dominated Flexible Skylines in Vertically Distributed Datasets with No Random Access
Published 2025-05-01“…These algorithms process data locally, thereby reducing data transfer and exposure to breaches, while at the same time improving scalability thanks to data distribution across multiple sources. …”
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