Xuan Sun, Cihan Akcay, Torrin Bechtel, Scott Kruger, L. Lao, Yueqiang Liu, Sandeep Madireddy, Joseph McClenaghan
{"title":"Impact of various DIII-D diagnostics on the accuracy of neural network surrogates for kinetic EFIT reconstructions","authors":"Xuan Sun, Cihan Akcay, Torrin Bechtel, Scott Kruger, L. Lao, Yueqiang Liu, Sandeep Madireddy, Joseph McClenaghan","doi":"10.1088/1741-4326/ad5d7b","DOIUrl":null,"url":null,"abstract":"\n Kinetic equilibrium reconstructions make use of profile information such as particle density and temperature measurements in addition to magnetics data to compute a self-consistent equilibrium. They are used in a multitude of physics-based modeling. This work develops a multi-layer perceptron (MLP) neural network (NN) model as a surrogate for kinetic Equilibrium Fitting (EFITs) and trains on the 2019 DIIID discharge campaign database of kinetic equilibrium reconstructions. We investigate the impact of including various diagnostic data and machine actuator controls as input into the NN. When giving various categories of data as input into NN models that have been trained using those same categories of data, the predictions on multiple equilibrium reconstruction solutions (poloidal magnetic flux, global scalars, pressure profile, current profile) are highly accurate. When comparing different models with different diagnostics as input, the magnetics-only model outputs accurate kinetic profiles and the inclusion of additional data does not significantly impact the accuracy. When the NN is tasked with inferring only a single target such as the EFIT pressure profile or EFIT current profile, we see a large increase in the accuracy of the prediction of the kinetic profiles as more data is included. These results indicate that certain MLP NN configurations can be reasonably robust to different burning-plasma-relevant diagnostics depending on the accuracy requirements for equilibrium reconstruction tasks.","PeriodicalId":503481,"journal":{"name":"Nuclear Fusion","volume":"28 3","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-07-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Nuclear Fusion","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1088/1741-4326/ad5d7b","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Kinetic equilibrium reconstructions make use of profile information such as particle density and temperature measurements in addition to magnetics data to compute a self-consistent equilibrium. They are used in a multitude of physics-based modeling. This work develops a multi-layer perceptron (MLP) neural network (NN) model as a surrogate for kinetic Equilibrium Fitting (EFITs) and trains on the 2019 DIIID discharge campaign database of kinetic equilibrium reconstructions. We investigate the impact of including various diagnostic data and machine actuator controls as input into the NN. When giving various categories of data as input into NN models that have been trained using those same categories of data, the predictions on multiple equilibrium reconstruction solutions (poloidal magnetic flux, global scalars, pressure profile, current profile) are highly accurate. When comparing different models with different diagnostics as input, the magnetics-only model outputs accurate kinetic profiles and the inclusion of additional data does not significantly impact the accuracy. When the NN is tasked with inferring only a single target such as the EFIT pressure profile or EFIT current profile, we see a large increase in the accuracy of the prediction of the kinetic profiles as more data is included. These results indicate that certain MLP NN configurations can be reasonably robust to different burning-plasma-relevant diagnostics depending on the accuracy requirements for equilibrium reconstruction tasks.
动力学平衡重构除了利用磁学数据外,还利用颗粒密度和温度测量等剖面信息来计算自洽平衡。它们被用于多种基于物理的建模。这项工作开发了一种多层感知器(MLP)神经网络(NN)模型,作为动力学平衡拟合(EFITs)的替代物,并在2019年DIIID放电活动动力学平衡重建数据库上进行训练。我们研究了将各种诊断数据和机器致动器控制作为 NN 输入的影响。当将各类数据输入到使用同类数据训练的 NN 模型中时,对多种平衡重构方案(极磁通量、全局标量、压力剖面、电流剖面)的预测非常准确。在比较以不同诊断结果为输入的不同模型时,仅有磁性的模型能输出准确的动力学剖面图,加入其他数据对准确性没有显著影响。当 NN 只负责推断单个目标(如 EFIT 压力剖面或 EFIT 电流剖面)时,我们发现随着数据的增加,动能剖面预测的准确性也大幅提高。这些结果表明,根据平衡重建任务的精度要求,某些 MLP NN 配置对不同的燃烧等离子体相关诊断具有合理的鲁棒性。