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3161
Multi-Objective Optimal Scheduling of Water Transmission and Distribution Channel Gate Groups Based on Machine Learning
Published 2025-06-01“…A one-dimensional hydrodynamic model based on St. Venant’s system of equations is built to generate the feature dataset, which is then combined with the random forest algorithm to create a nonlinear prediction model. …”
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3162
Optimal control of asynchronous drive of auxiliary machines of electric rolling stock
Published 2023-04-01“…The proposed system of optimal control of electric locomotive auxiliary machines is designed to improve the energy efficiency of the drive with a new algorithm for selecting the optimal value of the rotor flux linkage by reducing the current consumed by the drive. …”
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3163
A Hybrid Machine Learning Model for Accurate Autism Diagnosis
Published 2024-01-01“…The proposed model employs an improved Squirrel Search Algorithm-based Feature Selection (ISSA-FS) to identify the most relevant features from medical data. …”
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3164
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3165
A multi-objective optimization approach for the virtual coupling train set driving strategy
Published 2025-01-01“…Furthermore, the particle swarm optimization (PSO)-based model predictive control (MPC) algorithm has also demonstrated tracking accuracy and further improved safety during VCTS operation, with an average increase of 37.7% in tracking accuracy compared to the traditional MPC algorithm.…”
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3166
A simulation-driven computational framework for adaptive energy-efficient optimization in machine learning-based intrusion detection systems
Published 2025-04-01“…Extensive simulations conducted on the KDD 1999 dataset demonstrate that GreenMU achieves a detection accuracy close to 99%, significantly surpassing standard baseline models while reducing energy consumption by 31%. Furthermore, the framework improves computational efficiency, reducing processing time by 15% and making it highly effective for resource-constrained environments such as IoT and edge computing. …”
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3167
Cost Index Predictions for Construction Engineering Based on LSTM Neural Networks
Published 2020-01-01“…This research extended current algorithm tools that can be used to forecast cost indexes and evaluated the optimization mechanism of the algorithm in order to improve the efficiency and accuracy of prediction, which have not been explored in current research knowledge.…”
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3168
Cost-Effective Multitask Active Learning in Wearable Sensor Systems
Published 2025-02-01“…Multitask learning models provide benefits by reducing model complexity and improving accuracy by concurrently learning multiple tasks with shared representations. …”
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3169
Optimized YOLOv8 for enhanced breast tumor segmentation in ultrasound imaging
Published 2025-06-01Get full text
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3170
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3171
Distributed robust planning for new power system considering uncertainty and frequency security
Published 2025-08-01“…Secondly, establish a two-stage optimization model for planning and operation under frequency safety constraints, aiming to minimize system costs under frequency safety constraints; Then, iterative solutions are obtained by using column and constraint generation algorithms. …”
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3172
Financial fraud detection using a hybrid deep belief network and quantum optimization approach
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3173
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3174
Predictive analytics of complex healthcare systems using deep learning based disease diagnosis model
Published 2024-11-01“…In addition, the convolutional neural network with long short-term memory (CNN-LSTM) approach is used to classify LCC. To optimize the hyperparameter values of the CNN-LSTM approach, the Chaotic Tunicate Swarm Algorithm (CTSA) approach was implemented to improve the accuracy of classifier results. …”
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3175
Adaptive gradient scaling: integrating Adam and landscape modification for protein structure prediction
Published 2025-07-01“…Despite their success, machine learning methods face fundamental limitations in optimizing complex high-dimensional energy landscapes, which motivates research into new methods to improve the robustness and performance of optimization algorithms. …”
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3176
Integrated Optimization of Emergency Evacuation Routing for Dam Failure-Induced Flooding: A Coupled Flood–Road Network Modeling Approach
Published 2025-04-01“…Based on this model, a flood evacuation route planning method was proposed using Dijkstra’s algorithm. …”
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3177
Improved Set-point Tracking Control of an Unmanned Aerodynamic MIMO System Using Hybrid Neural Networks
Published 2024-03-01Get full text
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3178
Attention-based hybrid deep learning model with CSFOA optimization and G-TverskyUNet3+ for Arabic sign language recognition
Published 2025-06-01“…In addition, employing a novel metaheuristic algorithm, the Crisscross Seed Forest Optimization Algorithm, which combines the Crisscross Optimization and Forest Optimization algorithms to determine the best features from the extracted texture, color, and deep learning features. …”
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3179
GA BP prediction model for energy consumption of steel rolling reheating furnace
Published 2025-04-01“…The proposed GA-BP model demonstrates superior predictive capabilities and robustness, offering valuable insights for optimizing process parameters and improving energy efficiency in SRRF operations.…”
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3180
Challenges in Unifying Physically Based and Machine Learning Simulations Through Differentiable Modeling: A Land Surface Case Study
Published 2025-02-01“…Scaling and bias correction factors, often used in ML approaches for enhancing generalizability, were found to limit the transferability of the optimized physical parameters to the land model. The global objective function further compromises the algorithm's ability to simultaneously capture contrasting moisture regimes. …”
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