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Estimation of ECH power deposition based on neural networks and fuzzy logic in plasma fusion Tokamaks

机译:基于神经网络和模糊逻辑的等离子体融合托卡马克ECH功率沉积估计

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In order to stabilize magnetic hydro dynamics (MHD) activity in a Tokamaks, the measurement data acquired by different sensors along with prior information obtained from predictive plasma models are used. Suppression of plasma instabilities is a key issue to improve the confinement time of controlled thermonuclear fusion with Tokamaks. This paper proposes a method based on Self Organizing Maps (SOM) type Neural Network to estimate the Electron Cyclotron Heating (ECH) power deposition radius (r(DEP)) during plasma confinement. The proposed approach that is a part of the control system to stabilize MHD instability, has been compared to the Bayesian filter approach which has been proposed previously. The Bayesian approach uses on-line information acquired from Electron Cyclotron Emission (ECE) sensors and prior information got from ray-tracing code to compute the mean and standard deviation of the estimated deposition channel. The SOM approach mostly relies on ECE sensors data instead of prior information and tries to estimate the power deposition channel in real-time with less computations. A fuzzy system is also designed to reduce the uncertainty of the SOM algorithm. These algorithms have been fully compared in different aspects too. The algorithms have been tested on off-line ECE channels data, obtained from an experimental shot at Frascati Tokamak Upgrade (FTU), Frascati, Italy.
机译:为了稳定托卡马克中的磁流体动力学(MHD)活动,使用了由不同传感器获取的测量数据以及从预测性等离子体模型获取的先验信息。血浆不稳定性的抑制是改善与托卡马克合成热核聚变的限制时间的关键问题。本文提出了一种基于自组织映射(SOM)型神经网络的方法,用于估计等离子体约束期间电子回旋加速器(ECH)的功率沉积半径(r(DEP))。作为稳定MHD不稳定性的控制系统一部分的拟议方法已与先前提出的贝叶斯滤波方法进行了比较。贝叶斯方法使用从电子回旋加速器(ECE)传感器获取的在线信息以及从射线跟踪代码获得的先验信息来计算估计沉积通道的平均值和标准偏差。 SOM方法主要依靠ECE传感器数据而不是先验信息,并尝试通过较少的计算实时估计功率沉积通道。还设计了模糊系统以减少SOM算法的不确定性。这些算法也已在不同方面进行了全面比较。该算法已在离线ECE通道数据上进行了测试,这些数据是从意大利Frascati的Frascati Tokamak Upgrade(FTU)的实验镜头获得的。

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