EuroPED-NN:不确定性感知代用模型

IF 2.1 2区 物理与天体物理 Q2 PHYSICS, FLUIDS & PLASMAS Plasma Physics and Controlled Fusion Pub Date : 2024-08-11 DOI:10.1088/1361-6587/ad6707
A Panera Alvarez, A Ho, A Järvinen, S Saarelma, S Wiesen, JET Contributors and the ASDEX Upgrade Team
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引用次数: 0

摘要

这项工作利用贝叶斯神经网络与噪声对比先验(BNN-NCP)技术,成功地生成了欧洲等离子体基座模型的不确定性感知代用模型。该模型是利用来自 JET-ILW 基座数据库的数据和随后的模型评估进行训练的,符合 EuroPED-NN 标准。事实证明,BNN-NCP 技术是生成不确定性感知代用模型的合适方法。它与普通神经网络的输出结果相匹配,同时为不确定性预测提供置信度估计。此外,它还能利用代用模型的不确定性突出分布外区域。这为了解模型的稳健性和可靠性提供了重要依据。EuroPED-NN 已经过物理验证,首先,分析了电子密度与等离子体电流增加的关系,其次,验证了与 EuroPED 模型相关的关系。这证实了代用模型所学到的基本物理知识的稳健性。此外,还利用该方法开发了一个以实验数据为基础的类似 EuroPED 的模型,即不确定性感知实验模型,该模型在 JET 数据库中发挥作用。这两个模型也都在∼50 次 AUG 射击中进行了测试。
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EuroPED-NN: uncertainty aware surrogate model
This work successfully generates an uncertainty-aware surrogate model of the EuroPED plasma pedestal model using the Bayesian neural network with noise contrastive prior (BNN-NCP) technique. This model is trained using data from the JET-ILW pedestal database and subsequent model evaluations, conforming to EuroPED-NN. The BNN-NCP technique has been proven to be a suitable method for generating uncertainty-aware surrogate models. It matches the output results of a regular neural network while providing confidence estimates for predictions as uncertainties. Additionally, it highlights out-of-distribution regions using surrogate model uncertainties. This provides critical insights into model robustness and reliability. EuroPED-NN has been physically validated, first, analyzing electron density with respect to increasing plasma current, , and second, validating the relation associated with the EuroPED model. This affirms the robustness of the underlying physics learned by the surrogate model. On top of that, the method was used to develop a EuroPED-like model fed with experimental data, i.e. an uncertainty aware experimental model, which is functional in JET database. Both models have been also tested in ∼50 AUG shots.
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来源期刊
Plasma Physics and Controlled Fusion
Plasma Physics and Controlled Fusion 物理-物理:核物理
CiteScore
4.50
自引率
13.60%
发文量
224
审稿时长
4.5 months
期刊介绍: Plasma Physics and Controlled Fusion covers all aspects of the physics of hot, highly ionised plasmas. This includes results of current experimental and theoretical research on all aspects of the physics of high-temperature plasmas and of controlled nuclear fusion, including the basic phenomena in highly-ionised gases in the laboratory, in the ionosphere and in space, in magnetic-confinement and inertial-confinement fusion as well as related diagnostic methods. Papers with a technological emphasis, for example in such topics as plasma control, fusion technology and diagnostics, are welcomed when the plasma physics is an integral part of the paper or when the technology is unique to plasma applications or new to the field of plasma physics. Papers on dusty plasma physics are welcome when there is a clear relevance to fusion.
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