论文标题

具有深层混合神经网络提取器的可转移跨tokamak破坏预测

Transferable Cross-Tokamak Disruption Prediction with Deep Hybrid Neural Network Feature Extractor

论文作者

Zheng, Wei, Xue, Fengming, Zhang, Ming, Chen, Zhongyong, Shen, Chengshuo, Ai, Xinkun, Wang, Nengchao, Chen, Dalong, Guo, Bihao, Ding, Yonghua, Chen, Zhipeng, Yang, Zhoujun, Shen, Biao, Xiao, Bingjia, Pan, Yuan

论文摘要

预测不同托卡马克人的破坏是要克服的巨大障碍。未来的Tokamaks在高性能出院时几乎无法忍受中断。很少有高性能的破坏排放几乎不能构成丰富的训练集,这使得当前数据驱动的方法很难获得可接受的结果。能够将在一个Tokamak训练的中断预测模型转移到另一种训练的中断预测模型才能解决问题。关键是一个包含特征提取器的中断预测模型,该模型能够在Tokamak诊断数据中提取常见的破坏前体痕迹和可转移的破坏分类器。基于上面的问题,本文首先提出了专门针对tokamaks的普通诊断中的破坏前体特征而设计的深融合功能提取器,这是根据当前已知的中断前体,为可转移模型提供了有希望的基础。通过与J文本上的手动特征提取进行比较,可以证明融合功能提取器。基于在J-TEXT上训练的特征提取器,将中断预测模型转移到East数据中,仅来自East实验的20次放电。该性能与经过1896年出院的训练的模型相当。从其他模型培训方案的比较中,转移学习在预测不同tokamaks的中断方面表明了其潜力。

Predicting disruptions across different tokamaks is a great obstacle to overcome. Future tokamaks can hardly tolerate disruptions at high performance discharge. Few disruption discharges at high performance can hardly compose an abundant training set, which makes it difficult for current data-driven methods to obtain an acceptable result. A machine learning method capable of transferring a disruption prediction model trained on one tokamak to another is required to solve the problem. The key is a disruption prediction model containing a feature extractor that is able to extract common disruption precursor traces in tokamak diagnostic data, and a transferable disruption classifier. Based on the concerns above, the paper first presents a deep fusion feature extractor designed specifically for extracting disruption precursor features from common diagnostics on tokamaks according to currently known precursors of disruption, providing a promising foundation for transferable models. The fusion feature extractor is proved by comparing with manual feature extraction on J-TEXT. Based on the feature extractor trained on J-TEXT, the disruption prediction model was transferred to EAST data with mere 20 discharges from EAST experiment. The performance is comparable with a model trained with 1896 discharges from EAST. From the comparison among other model training scenarios, transfer learning showed its potential in predicting disruptions across different tokamaks.

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