Modeling Snow on Sea Ice using Physics Guided Machine Learning

Ayush Prasad, Ioanna Merkouriadi, Aleksi Nummelin
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Abstract

Snow is a crucial element of the sea ice system, affecting sea ice growth and decay due to its low thermal conductivity and high albedo. Despite its importance, present-day climate models have an idealized representation of snow, often including only single-layer thermodynamics and omitting several processes that shape its properties. Although advanced snow process models like SnowModel exist, they are often excluded from climate modeling due to their high computational costs. SnowModel simulates snow depth, density, blowing-snow redistribution, sublimation, grain size, and thermal conductivity in a multi-layer snowpack. It operates with high spatial (1 meter) and temporal (1 hour) resolution. However, for large regions like the Arctic Ocean, these high-resolution simulations face challenges such as slow processing and large resource requirements. Data-driven emulators are used to address these issues, but they often lack generalizability and consistency with physical laws. In our study, we address these challenges by developing a physics-guided emulator that incorporates physical laws governing changes in snow density due to compaction. We evaluated three machine learning models: Long Short-Term Memory (LSTM), Physics-Guided LSTM, and Random Forest across five Arctic regions. All models achieved high accuracy, with the Physics-Guided LSTM showing the best performance in accuracy and generalizability. Our approach offers a faster way to emulate SnowModel with a speedup of over 9000 times, maintaining high fidelity.
利用物理引导的机器学习为海冰上的积雪建模
雪是海冰系统的关键要素,由于其导热率低和反照率高,影响着海冰的生长和衰减。尽管雪非常重要,但目前的气候模型对雪的描述过于理想化,通常只包括单层热力学,而忽略了影响雪特性的几个过程。尽管存在像 SnowModel 这样的高级雪过程模型,但由于其计算成本高昂,气候模型中通常不包括这些模型。SnowModel 模拟多层雪堆中的雪深、密度、吹雪分布、升华、粒度和导热性。它的空间分辨率(1 米)和时间分辨率(1 小时)都很高。然而,对于像北冰洋这样的大区域,这些高分辨率模拟面临着处理速度慢和资源需求大等挑战。数据驱动的模拟器被用来解决这些问题,但它们往往缺乏普适性和与物理规律的一致性。在我们的研究中,我们通过开发一种物理引导的模拟器来应对这些挑战,该模拟器结合了压实导致雪密度变化的物理定律:我们在五个北极地区评估了三种机器学习模型:长短期记忆(LSTM)、物理引导 LSTM 和随机森林。所有模型都达到了很高的准确度,其中物理引导 LSTM 在准确度和通用性方面表现最佳。我们的方法提供了一种更快的方法来模拟 SnowModel,速度提高了 9000 多倍,同时保持了高保真性。
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