Deep Learning the Forecast of Galactic Cosmic-Ray Spectra

Yi-Lun Du, Xiaojian Song and Xi Luo
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Abstract

We introduce a novel deep learning framework based on long short-term memory networks to predict galactic cosmic-ray spectra on a one-day-ahead basis by leveraging historical solar activity data, overcoming limitations inherent in traditional transport models. By flexibly incorporating multiple solar parameters, such as the heliospheric magnetic field, solar wind speed, and sunspot numbers, the model achieves accurate short-term and long-term predictions of cosmic-ray flux. The addition of historical cosmic-ray flux data significantly enhances prediction accuracy, allowing the model to capture complex dependencies between past and future flux variations. Additionally, the model reliably predicts full cosmic-ray spectra for different particle species, enhancing its utility for comprehensive space weather forecasting. Our approach offers a scalable, data-driven alternative to traditional physics-based methods, ensuring robust daily and long-term forecasts. This work opens avenues for advanced models that can integrate broader observational data, with significant implications for space weather monitoring and mission planning.
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银河系宇宙射线光谱的深度学习预测
我们引入了一种新的基于长短期记忆网络的深度学习框架,利用历史太阳活动数据预测一天前的星系宇宙射线光谱,克服了传统传输模型固有的局限性。该模型通过灵活地结合多个太阳参数,如日球磁场、太阳风速度和太阳黑子数,实现了对宇宙射线通量的精确短期和长期预测。历史宇宙射线通量数据的添加显著提高了预测精度,使模型能够捕捉过去和未来通量变化之间的复杂依赖关系。此外,该模型可靠地预测了不同粒子种类的全宇宙射线谱,提高了其在综合空间天气预报中的实用性。我们的方法为传统的基于物理的方法提供了一种可扩展的、数据驱动的替代方案,确保了强大的日常和长期预测。这项工作为先进的模型开辟了道路,可以整合更广泛的观测数据,对空间天气监测和任务规划具有重要意义。
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