Identifying preflare spectral features using explainable artificial intelligence

被引:8
|
作者
Panos, Brandon [1 ,2 ]
Kleint, Lucia [1 ,2 ]
Zbinden, Jonas [1 ,2 ]
机构
[1] Univ Geneva, 7 Route Drize, CH-1227 Carouge, Switzerland
[2] Univ Bern, Astron Inst, Sidlerstr 5, CH-3012 Bern, Switzerland
关键词
Key words. Sun; flares; -; techniques; spectroscopic; Sun; activity; chromosphere; methods; data analysis - methods; statistical; SOLAR-FLARES; ACTIVE-REGION; SPACE WEATHER; MODEL; INFORMATION; PHASE; I;
D O I
10.1051/0004-6361/202244835
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
The prediction of solar flares is of practical and scientific interest; however, many machine learning methods used for this prediction task do not provide the physical explanations behind a model's performance. We made use of two recently developed explainable artificial intelligence techniques called gradient-weighted class activation mapping (Grad-CAM) and expected gradients (EG) to reveal the decision-making process behind a high-performance neural network that has been trained to distinguish between MgII spectra derived from flaring and nonflaring active regions, a fact that can be applied to the task of short timescale flare forecasting. The two techniques generate visual explanations (heatmaps) that can be projected back onto the spectra, allowing for the identification of features that are strongly associated with precursory flare activity. We automated the search for explainable interpretations on the level of individual wavelengths, and provide multiple examples of flare prediction using IRIS spectral data, finding that prediction scores in general increase before flare onset. Large IRIS rasters that cover a significant portion of the active region and coincide with small preflare brightenings both in IRIS and SDO/AIA images tend to lead to better forecasts. The models reveal that MgII triplet emission, flows, as well as broad and highly asymmetric spectra are all important for the task of flare prediction. Additionally, we find that intensity is only weakly correlated to a spectrum's prediction score, meaning that low intensity spectra can still be of great importance for the flare prediction task, and that $78$% of the time, the position of the model's maximum attention along the slit during the preflare phase is predictive of the location of the flare's maximum UV emission
引用
收藏
页数:22
相关论文
共 50 条
  • [31] A Review of Explainable Artificial Intelligence
    Lin, Kuo-Yi
    Liu, Yuguang
    Li, Li
    Dou, Runliang
    ADVANCES IN PRODUCTION MANAGEMENT SYSTEMS: ARTIFICIAL INTELLIGENCE FOR SUSTAINABLE AND RESILIENT PRODUCTION SYSTEMS, APMS 2021, PT IV, 2021, 633 : 574 - 584
  • [32] Explainable Artificial Intelligence for Cybersecurity
    Sharma, Deepak Kumar
    Mishra, Jahanavi
    Singh, Aeshit
    Govil, Raghav
    Srivastava, Gautam
    Lin, Jerry Chun-Wei
    COMPUTERS & ELECTRICAL ENGINEERING, 2022, 103
  • [33] Explainable Artificial Intelligence: A Survey
    Dosilovic, Filip Karlo
    Brcic, Mario
    Hlupic, Nikica
    2018 41ST INTERNATIONAL CONVENTION ON INFORMATION AND COMMUNICATION TECHNOLOGY, ELECTRONICS AND MICROELECTRONICS (MIPRO), 2018, : 210 - 215
  • [34] Detecting and Unmasking AI-Generated Texts through Explainable Artificial Intelligence using Stylistic Features
    Shah, Aditya
    Ranka, Prateek
    Dedhia, Urmi
    Prasad, Shruti
    Muni, Siddhi
    Bhowmick, Kiran
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2023, 14 (10) : 1043 - 1053
  • [35] Deciphering Knee Osteoarthritis Diagnostic Features With Explainable Artificial Intelligence: A Systematic Review
    Teoh, Yun Xin
    Othmani, Alice
    Li Goh, Siew
    Usman, Juliana
    Lai, Khin Wee
    IEEE ACCESS, 2024, 12 : 109080 - 109108
  • [36] On Using Explainable Artificial Intelligence for Failure Identification in Microwave Networks
    Ayoub, Omran
    Musumeci, Francesco
    Ezzeddine, Fatima
    Passera, Claudio
    Tornatore, Massimo
    25TH CONFERENCE ON INNOVATION IN CLOUDS, INTERNET AND NETWORKS (ICIN 2022), 2022, : 48 - 55
  • [37] Explainable artificial intelligence to detect atrial fibrillation using electrocardiogram
    Jo, Yong-Yeon
    Cho, Younghoon
    Lee, Soo Youn
    Kwon, Joon-myoung
    Kim, Kyung-Hee
    Jeon, Ki-Hyun
    Cho, Soohyun
    Park, Jinsik
    Oh, Byung-Hee
    INTERNATIONAL JOURNAL OF CARDIOLOGY, 2021, 328 : 104 - 110
  • [38] Interretation of load forecasting using explainable artificial intelligence techniques
    Lee Y.-G.
    Oh J.-Y.
    Kim G.
    Kim, Gibak (imkgb27@ssu.ac.kr), 1600, Korean Institute of Electrical Engineers (69): : 480 - 485
  • [39] Explainable Artificial Intelligence for Prediction of Diabetes using Stacking Classifier
    Devi, Aruna B.
    Karthik, N.
    10TH INTERNATIONAL CONFERENCE ON ELECTRONICS, COMPUTING AND COMMUNICATION TECHNOLOGIES, CONECCT 2024, 2024,
  • [40] Analyzing credit spread changes using explainable artificial intelligence
    Heger, Julia
    Min, Aleksey
    Zagst, Rudi
    INTERNATIONAL REVIEW OF FINANCIAL ANALYSIS, 2024, 94