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Method on intrusion detection for industrial internet based on light gradient boosting machine
Published 2023-04-01“…Intrusion detection is a critical security protection technology in the industrial internet, and it plays a vital role in ensuring the security of the system.In order to meet the requirements of high accuracy and high real-time intrusion detection in industrial internet, an industrial internet intrusion detection method based on light gradient boosting machine optimization was proposed.To address the problem of low detection accuracy caused by difficult-to-classify samples in industrial internet business data, the original loss function of the light gradient boosting machine as a focal loss function was improved.This function can dynamically adjust the loss value and weight of different types of data samples during the training process, reducing the weight of easy-to-classify samples to improve detection accuracy for difficult-to-classify samples.Then a fruit fly optimization algorithm was used to select the optimal parameter combination of the model for the problem that the light gradient boosting machine has many parameters and has great influence on the detection accuracy, detection time and fitting degree of the model.Finally, the optimal parameter combination of the model was obtained and verified on the gas pipeline dataset provided by Mississippi State University, then the effectiveness of the proposed mode was further verified on the water dataset.The experimental results show that the proposed method achieves higher detection accuracy and lower detection time than the comparison model.The detection accuracy of the proposed method on the gas pipeline dataset is at least 3.14% higher than that of the comparison model.The detection time is 0.35s and 19.53s lower than that of the random forest and support vector machine in the comparison model, and 0.06s and 0.02s higher than that of the decision tree and extreme gradient boosting machine, respectively.The proposed method also achieved good detection results on the water dataset.Therefore, the proposed method can effectively identify attack data samples in industrial internet business data and improve the practicality and efficiency of intrusion detection in the industrial internet.…”
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1862
Short-Term Power Load Forecasting Based on DPSO-LSSVM Model
Published 2025-01-01“…The dynamic particle swarm optimization algorithm is utilized to dynamically adjust the parameters to achieve higher accuracy in load forecasting. …”
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1863
Dynamic appliance scheduling and energy management in smart homes using adaptive reinforcement learning techniques
Published 2025-07-01“…The experimental results show that the outperforming multiobjective reinforcement learning puma optimizer algorithm (MORL–POA), SAPOA, and POA methods, the suggested solution dramatically lowers the peak-to-average ratio (PAR) value from 3.4286 to 1.9765 without RES and 1.0339 with RES. …”
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1864
Developing a Model to Predict the Effectiveness of Vaccination on Mortality Caused by COVID-19
Published 2025-05-01Get full text
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1865
Container Liner Shipping System Design Considering Methanol-Powered Vessels
Published 2025-04-01Get full text
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1866
Injection Current Distribution Characteristics Identification Based Distribution-Level Fault Line Selection
Published 2024-10-01Get full text
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1867
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Evaluating the strength properties of high-performance concrete in the form of ensemble and hybrid models using deep learning techniques
Published 2025-07-01“…This paper focuses on forecasting models using T-SFIS, GBMBoost, and Decision Tree, combined with metaheuristic algorithms (GWO, QPSO) in hybrid and ensemble frameworks. …”
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Quantum-enhanced beetle swarm optimized ELM for high-dimensional smart grid intrusion detection
Published 2025-07-01“…The experimental results demonstrate that QBOA-ELM achieves significantly better accuracy (97.5%), recall (96.8%), precision (97.2%), F1-Score (0.972), sensitivity (96.8%), and specificity (98.1%) in intrusion detection tasks when compared to traditional Beetle Swarm Optimization Extreme Learning Machine (BOA-ELM) and other classical algorithms such as Support Vector Machine (SVM) and Decision Tree (DT). …”
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Framework for the Multi-Objective Optimization of Hybrid Fuel Cell System Design and Operation
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1873
SMART DELAY PREDICTION: SUPERVISED MACHINE LEARNING SOLUTIONS FOR CONSTRUCTION PROJECTS
Published 2025-06-01Get full text
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1874
Risk assessment of corn borer based on feature optimization and weighted spatial clustering: a case study in Shandong Province, China
Published 2025-07-01“…In terms of clustering performance, the weighted K-means clustering algorithm achieves higher Silhouette coefficient by 0.0138 and 0.1885 compared with the weighted agglomerative hierarchical clustering algorithm (weighted AHC) and weighted DBSCAN, respectively, the Calinski-Harabasz index is higher by 3.8017 and 22.4039, and the Davies-Bouldin index is lower by 0.1006 and 0.4889, demonstrating superior clustering results. …”
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Improving machine learning models through explainable AI for predicting the level of dietary diversity among Ethiopian preschool children
Published 2025-03-01“…Results The ensemble ML models exhibited robust predictive performance, and light gradient boosting outperformed the other ensemble ML algorithms by 95.3%. The explainability of the Light Gradient Boosting Ensemble Model was determined using Eli5 and LIME. …”
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Efficient Equivalence Checking Technique for Some Classes of Finite-State Machines
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1878
Immunophenotype-guided interpretable radiomics model for predicting neoadjuvant anti-PD-1 response in stage III–IV d-MMR/MSI-H colorectal cancer
Published 2025-08-01“…Eventually, an interpretable immunotherapy response prediction model was developed by integrating a decision tree algorithm with SHapley Additive exPlanations (SHAP) analysis.Results Two immunophenotypes (immune-hot and immune-cold) were identified, compared with the immune-cold, the former exhibited more abundant RNA-based immune cell infiltration and higher densities of CD3 and CD8 T cells in both the core tumor and invasive margin areas. …”
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Machine learning-driven design of wide-angle impedance matching structures for wide-angle scanning arrays
Published 2025-05-01“…The methodology involves training a network using three ML algorithms, including decision tree, bagging, and random forest. …”
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A Data-Driven Intelligent Methodology for Developing Explainable Diagnostic Model for Febrile Diseases
Published 2025-03-01Get full text
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