Forecasting the Dst Index with Temporal Convolutional Network and Integrated Gradients

IF 2.7 3区 物理与天体物理 Q2 ASTRONOMY & ASTROPHYSICS
Junyan Liu, Chenglong Shen, Yang Wang, Mengjiao Xu, Yutian Chi, Zhihui Zhong, Dongwei Mao, Zhiyong Zhang, Can Wang, Jiajia Liu, Yuming Wang
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引用次数: 0

Abstract

The Disturbance Storm Time (Dst) Index stands as a crucial geomagnetic metric, serving to quantify the intensity of geomagnetic disturbances. The accurate prediction of the Dst index plays a pivotal role in mitigating the detrimental effects caused by severe space-weather events. Therefore, Dst prediction has been a long-standing focal point within the realms of space physics and space-weather forecasting. In this study, a Temporal Convolutional Network (TCN) is deployed in tandem with the Integrated Gradient (IG) algorithm to predict the Dst index and scrutinize its associated physical processes. With these two components, our model can give the contribution of each input parameter to the outcome along with the forecast. The TCN component of our model utilizes interplanetary observational data, encompassing the vector magnetic field, solar-wind velocity, proton temperature, proton density, interplanetary electric field, and other relevant parameters for forecasting Dst indices. Despite the disparity in test sets, our model’s forecast accuracy approximates the error levels of the prior models. Remarkably, the prediction error of these machine-learning models has become comparable to the inherent error between the Dst index itself and the actual ring-current strength.

To understand the physical process behind the forecasting model, the IG algorithm was applied in our prediction model, in an attempt to analyze the underlying physical process of the machine-learning black box. In the temporal dimension, it is evident that the more recent the time, the more substantial the influence on the final prediction. Regarding the physical parameters, besides the historical Dst index itself, the flow pressure, the \(z\)-component of the magnetic field, and the proton density all significantly contribute to the final prediction. Additionally, IG attributions were analyzed for subsets of data, including different Dst-index ranges, different observation times, and different interplanetary structures. Most of the subsets exhibit an IG matrix with deviations from the mean distribution, which indicates a complex nonlinear system and sensitivity of the prediction to input values. These analyses align with physical reasoning and are in good agreement with previous research. The results affirm that the TCN+IG technique not only enhances space-weather forecast accuracy but also advances our comprehension of the underlying physical processes in space weather.

Abstract Image

Abstract Image

用时态卷积网络和综合梯度预测 Dst 指数
扰动风暴时间(Dst)指数是一个重要的地磁指标,用于量化地磁扰动的强度。Dst 指数的准确预测在减轻严重空间天气事件造成的有害影响方面发挥着关键作用。因此,Dst 预测一直是空间物理学和空间天气预报领域的一个焦点。在这项研究中,我们将时空卷积网络(TCN)与综合梯度(IG)算法结合起来,预测 Dst 指数并仔细研究其相关的物理过程。有了这两个组件,我们的模型就能在预测结果的同时,给出每个输入参数对结果的贡献。我们模型的TCN部分利用行星际观测数据,包括矢量磁场、太阳风速度、质子温度、质子密度、行星际电场和其他相关参数来预测Dst指数。尽管测试集存在差异,但我们模型的预测准确度接近先前模型的误差水平。值得注意的是,这些机器学习模型的预测误差已经与Dst指数本身和实际环流强度之间的固有误差相当。为了了解预测模型背后的物理过程,我们在预测模型中应用了IG算法,试图分析机器学习黑箱的基本物理过程。从时间维度来看,时间越近,对最终预测的影响越大。在物理参数方面,除了历史Dst指数本身,流压、磁场的\(z\)分量和质子密度都对最终预测有显著贡献。此外,还分析了数据子集的IG归因,包括不同的Dst指数范围、不同的观测时间和不同的行星际结构。大多数子集显示出偏离平均分布的 IG 矩阵,这表明这是一个复杂的非线性系统,预测结果对输入值非常敏感。这些分析与物理推理相吻合,与之前的研究结果也十分吻合。这些结果证明,TCN+IG 技术不仅提高了空间天气预报的准确性,而且有助于我们理解空间天气的基本物理过程。
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来源期刊
Solar Physics
Solar Physics 地学天文-天文与天体物理
CiteScore
5.10
自引率
17.90%
发文量
146
审稿时长
1 months
期刊介绍: Solar Physics was founded in 1967 and is the principal journal for the publication of the results of fundamental research on the Sun. The journal treats all aspects of solar physics, ranging from the internal structure of the Sun and its evolution to the outer corona and solar wind in interplanetary space. Papers on solar-terrestrial physics and on stellar research are also published when their results have a direct bearing on our understanding of the Sun.
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