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2621
Efficient Pathfinding on Grid Maps: Comparative Analysis of Classical Algorithms and Incremental Line Search
Published 2025-01-01“…On average, ILS achieved a 87.31% reduction in execution time and a 71.44% reduction in node expansions compared to their standard counterparts. …”
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2622
Acoustic impedance inversion via voting stacked regression (VStaR) algorithms
Published 2025-07-01“…To refine the AI estimation, we used stacking and voting regression algorithms, with depth, two-way travel time (TWTT), and nine seismic attributes as inputs. …”
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2623
Dimensionality cutback and deep learning algorithms efficacy as to the breast cancer diagnostic dataset
Published 2024-11-01“…The results indicate that the dimensionality of the Wisconsin Breast Cancer dataset, which is increasingly becoming the "gold standard" for diagnosing Malignant-Benign tumors, can be significantly reduced without losing predictive power. The Deep Learning algorithms in WEKA deliver excellent performance for both supervised and unsupervised learning, regardless of whether dealing with full or reduced datasets.…”
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2624
Comparison of Energy Consumption Optimization in Sugar Factory Using Meta-Heuristic Algorithms
Published 2025-06-01“…The total energy input reduction with the genetic algorithm was 17.05%, while the imperialist competitive algorithm achieved a higher reduction of 26.40%. …”
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2625
Modern Tanscriptome Data Rrocessing Algorithms: a Review of Methods and Results of Approbation
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2626
Modern Tanscriptome Data Rrocessing Algorithms: a Review of Methods and Results of Approbation
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2627
Research on Fractional-Order Control of Anchor Drilling Machine Optimized by Intelligent Algorithms
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2628
A Comparative Analysis of Machine Learning Algorithms for Classification of Diabetes Utilizing Confusion Matrix Analysis
Published 2024-05-01“…The study determined that three algorithms are very effective at prediction. Mainly, logistic regression and Adaboost had a classification rate above 92%, and the naive bayes algorithm achieved a classification rate above 90%. …”
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2629
Performance comparison of machine learning algorithms for condition monitoring of tapered roller bearings
Published 2025-06-01“…This paper investigated the implementation of machine learning algorithms for health monitoring and fault detection of tapered roller bearings (TRBs) (30205 J2/Q, 30206 J2/Q and 30207 J2/Q). …”
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2630
Low Speed Longitudinal Control Algorithms for Automated Vehicles in Simulation and Real Platforms
Published 2018-01-01“…In that sense, this paper presents a use case where three longitudinal low speed control techniques are designed, tuned, and validated using an in-house simulation framework and later applied in a real vehicle. Control algorithms include a classical PID, an adaptive network fuzzy inference system (ANFIS), and a Model Predictive Control (MPC). …”
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2631
Diabetes Mellitus Disease Prediction and Type Classification Involving Predictive Modeling Using Machine Learning Techniques and Classifiers
Published 2022-01-01“…Various Machine-Learning (ML) algorithms are being used in order to predict and detect the disease to avoid further complications of health. …”
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2632
Generating the Flood Susceptibility Map for Istanbul with GIS-Based Machine Learning Algorithms
Published 2024-01-01“…Random forest (RF), stochastic gradient boosting (SGB), and XGBoost algorithms were used. The best predictive performance was obtained with the XGBoost algorithm, followed by SGB and RF, respectively. …”
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2633
MODELLING FLUCTUATIONS OF GROUNDWATER LEVEL USING MACHINE LEARNING ALGORITHMS IN THE SOKOTO BASIN
Published 2025-05-01“…Among the models, the XGBoost algorithm demonstrated the highest performance, providing precise predictions that closely aligned with the actual groundwater levels. …”
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2634
How low can you go: evaluating electrode reduction methods for EEG-based speech imagery BCIs
Published 2025-07-01“…In this study, we evaluated several electrode reduction algorithms in combination with various feature extraction and classification methods across three distinct EEG-based speech imagery datasets to identify the optimal number and position of electrodes for SI-BCIs. …”
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2635
Anomaly detection using unsupervised machine learning algorithms: A simulation study
Published 2024-12-01“…Through systematic analysis on a synthetically simulated dataset, the study assessed each algorithm’s predictive performance using accuracy, precision, recall, and F1 score specifically for outlier detection. …”
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2636
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2637
Research on intelligent control of coal slime flotation based on the WOA-GRU model
Published 2025-04-01Subjects: Get full text
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2638
Impact of Right-Hand Polarized Signals in GNSS-R Water Detection Algorithms
Published 2025-01-01“…This analysis can offer a deeper understanding of RHCP data and yield predictive insights prior to the HydroGNSS launch. In this study, we initially analyzed coherence indicators in incoherently averaged dual-polarized signals, and subsequently, applied these indicators to a random forest classifier, similar to the HydroGNSS surface inundation algorithm. …”
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2639
Review of Fault Detection and Diagnosis Methods in Power Plants: Algorithms, Architectures, and Trends
Published 2025-06-01“…A novel taxonomy of diagnostic configurations, mapping system types, sensor use, algorithmic strategy, and functional depth is proposed. …”
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2640
Deep Reinforcement Learning for Automated Insulin Delivery Systems: Algorithms, Applications, and Prospects
Published 2025-04-01“…Advances in continuous glucose monitoring (CGM) technologies and wearable devices are enabling the enhancement of automated insulin delivery systems (AIDs) towards fully automated closed-loop systems, aiming to achieve secure, personalized, and optimal blood glucose concentration (BGC) management for individuals with diabetes. While model predictive control provides a flexible framework for developing AIDs control algorithms, models that capture inter- and intra-patient variability and perturbation uncertainty are needed for accurate and effective regulation of BGC. …”
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