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Full Description
As a prominent academic conference in the field of electrical engineering in China, this book showcases the latest research trends, methodologies, and experimental findings across a wide spectrum of cutting-edge topics. These include electrical technology, power systems, electromagnetic emission techniques, and electrical equipment, reflecting the field's close alignment with ongoing advancements in multiple technological domains.
The objective of the proceedings is to provide a comprehensive interdisciplinary platform for researchers, engineers, academics, and industry professionals to present innovative research and development outcomes in electrical engineering. This forum encourages the exchange of ideas that integrate knowledge from diverse disciplines, fostering deeper insights into complex engineering challenges.
These volumes serve as a valuable reference for researchers and graduate students, offering a rich resource for exploring state-of-the-art theories and practical solutions in electrical engineering.
Contents
Matlab Simulation of Three-phase Voltage Source PWM Rectifier.- Optimized Power Allocation Strategy of Multi-types Battery Energy Storage System for Frequency Regulation.- Detection of Trace Acetylene in Transformer Oil Based on Air-core Anti-resonant Optical Fiber.- Dynamic Stability Analysis of Pillar Insulators for Large-Capacity Generator Outlet Circuit Breakers.- Investigation of Influencing Factors and Control Strategies for Voltage Stability of New Energy DC Transmission Links Under AC/DC Faults.- Reinforcement Learning-Based Control Strategy for Low-Frequency Oscillation Suppression in VSG.- Analysis and Improvement of Failure Reason for Excitation Surge Criterion of Main Transformer.- Superconducting synchronous condensers for reactive power compensation and voltage support at the LCC-HVDC sending end.- Comparative Performance Analysis of Different Interior Rotor Structures for 1MW High-Speed Flywheel Energy Storage Motors.- Lightweight Convolutional Neural Network Model Based on Depthwise Separable Convolution and Feature Fusion Modules.- Harmonic source modeling method based on Bernstein-KAN.



