Research on Synthetic ECE Surrogate Model Based on Machine Learning
ID:110
Submission ID:115 View Protection:ATTENDEE
Updated Time:2025-11-03 11:48:10
Hits:80
Oral Presentation
Start Time:2025-11-09 09:15 (Asia/Shanghai)
Duration:15min
Session:[S1] 1. Renewable energy system » [S1] 1.Renewable energy system
Presentation File
Tips: The file permissions under this presentation are only for participants. You have not logged in yet and cannot view it temporarily.
Abstract
Electron Cyclotron Emission (ECE) diagnostic serve as a fundamental tool for measuring the plasma electron temperature distribution in Tokamak. Under complex plasma scenarios, Synthetic ECE simulations are employed to assist in the interpretation of diagnostic signals; however, these simulations are computationally intensive. A machine learning-based surrogate model for Synthetic ECE is proposed to enable rapid prediction of electron temperature distribution. Validation results demonstrate that the surrogate model achieves approximately an order-of-magnitude speedup in predicting ECE signals under challenging operating conditions compared to conventional Synthetic ECE simulations, thereby effectively meeting the requirements for real-time signal analysis in Tokamak control systems.
Keywords
CNN, Machine Learning, Synthetic-ECE
Speaker


Comment submit