推动真相:原子守恒是使用物种加权校正的大气成分模型中的硬约束。

ACS ES&T Air Pub Date : 2024-11-20 eCollection Date: 2025-01-10 DOI:10.1021/acsestair.4c00220
Patrick Obin Sturm, Sam J Silva
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引用次数: 0

摘要

大气成分的计算模型在物理上并不总是一致的。例如,并不是所有的模型都遵守基本的守恒定律,比如相互联系的化学系统中的原子守恒定律。在性能良好的模型中,这些非物理偏差通常被忽略,因为它们通常很小,因此只需要轻微的推动就可以完美地保持质量。在这里,我们介绍了一种方法,该方法将任何数值模型的预测锚定在物理上一致的硬约束上,将浓度推到尊重守恒定律的最接近的解。这种封闭形式的模型不可知修正使用单一矩阵操作来最小程度地干扰预测浓度,以确保原子守恒到机器精度。为了证明这种方法,我们训练了一个梯度增强决策树集合来模拟一个小型的臭氧光化学参考模型,并测试了校正对准确但非保守预测的影响。轻推的方法对大多数物种已经很好的预测结果的干扰最小,但降低了包括自由基在内的重要氧化剂的准确性。我们开发了这种轻推方法的加权扩展,该方法考虑了校正中每个物种的不确定性和大小。这种种水平的加权方法对于准确预测自由基等重要的低浓度物种至关重要。我们发现,通过将非物理预测推向更可能的质量守恒解决方案,应用物种加权修正略微提高了整体准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Nudge to the Truth: Atom Conservation as a Hard Constraint in Models of Atmospheric Composition Using a Species-Weighted Correction.

Computational models of atmospheric composition are not always physically consistent. For example, not all models respect fundamental conservation laws such as conservation of atoms in an interconnected chemical system. In well performing models, these unphysical deviations are often ignored because they are frequently minor, and thus only need a small nudge to perfectly conserve mass. Here we introduce a method that anchors a prediction from any numerical model to physically consistent hard constraints, nudging concentrations to the nearest solution that respects the conservation laws. This closed-form model-agnostic correction uses a single matrix operation to minimally perturb the predicted concentrations to ensure that atoms are conserved to machine precision. To demonstrate this approach, we train a gradient boosting decision tree ensemble to emulate a small reference model of ozone photochemistry and test the effect of the correction on accurate but nonconservative predictions. The nudging approach minimally perturbs the already well-predicted results for most species, but decreases the accuracy of important oxidants, including radicals. We develop a weighted extension of this nudging approach that considers the uncertainty and magnitude of each species in the correction. This species-level weighting approach is essential to accurately predict important low concentration species such as radicals. We find that applying the species-weighted correction slightly improves overall accuracy by nudging unphysical predictions to a more likely mass-conserving solution.

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