Exploring Randomly Wired Neural Networks for Climate Model Emulation

William Yik, Sam J. Silva, Andrew Geiss, Duncan Watson-Parris
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Abstract

Abstract Exploring the climate impacts of various anthropogenic emissions scenarios is key to making informed decisions for climate change mitigation and adaptation. State-of-the-art Earth system models can provide detailed insight into these impacts but have a large associated computational cost on a per-scenario basis. This large computational burden has driven recent interest in developing cheap machine learning models for the task of climate model emulation. In this paper, we explore the efficacy of randomly wired neural networks for this task. We describe how they can be constructed and compare them with their standard feedforward counterparts using the ClimateBench dataset. Specifically, we replace the serially connected dense layers in multilayer perceptrons, convolutional neural networks, and convolutional long short-term memory networks with randomly wired dense layers and assess the impact on model performance for models with 1 million and 10 million parameters. We find that models with less-complex architectures see the greatest performance improvement with the addition of random wiring (up to 30.4% for multilayer perceptrons). Furthermore, of 24 different model architecture, parameter count, and prediction task combinations, only one had a statistically significant performance deficit in randomly wired networks relative to their standard counterparts, with 14 cases showing statistically significant improvement. We also find no significant difference in prediction speed between networks with standard feedforward dense layers and those with randomly wired layers. These findings indicate that randomly wired neural networks may be suitable direct replacements for traditional dense layers in many standard models. Significance Statement Modeling various greenhouse gas and aerosol emissions scenarios is important for both understanding climate change and making informed political and economic decisions. However, accomplishing this with large Earth system models is a complex and computationally expensive task. As such, data-driven machine learning models have risen in prevalence as cheap emulators of Earth system models. In this work, we explore a special type of machine learning model called randomly wired neural networks and find that they perform competitively for the task of climate model emulation. This indicates that future machine learning models for emulation may significantly benefit from using randomly wired neural networks as opposed to their more-standard counterparts.
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探索随机连线神经网络在气候模型仿真中的应用
探索各种人为排放情景对气候的影响是制定明智决策以减缓和适应气候变化的关键。最先进的地球系统模型可以提供这些影响的详细信息,但在每个情景的基础上有很大的相关计算成本。这种巨大的计算负担促使人们最近对开发用于气候模型模拟任务的廉价机器学习模型产生了兴趣。在本文中,我们探讨了随机连线神经网络在这一任务中的有效性。我们描述了如何构建它们,并将它们与使用ClimateBench数据集的标准前馈对应物进行了比较。具体来说,我们将多层感知器、卷积神经网络和卷积长短期记忆网络中的连续连接的密集层替换为随机连接的密集层,并评估了具有100万个和1000万个参数的模型对模型性能的影响。我们发现,随着随机连接的增加,结构不太复杂的模型的性能提高最大(多层感知器的性能提高高达30.4%)。此外,在24种不同的模型架构、参数计数和预测任务组合中,在随机有线网络中,相对于标准网络,只有一种具有统计上显着的性能缺陷,14种情况显示出统计上显着的改善。我们还发现,具有标准前馈密集层的网络与具有随机连线层的网络在预测速度上没有显著差异。这些发现表明,在许多标准模型中,随机连线神经网络可能适合直接替代传统的密集层。模拟各种温室气体和气溶胶排放情景对于了解气候变化和做出明智的政治和经济决策都很重要。然而,用大型地球系统模型来完成这一任务是一项复杂且计算成本高昂的任务。因此,数据驱动的机器学习模型作为地球系统模型的廉价模拟器已经越来越流行。在这项工作中,我们探索了一种特殊类型的机器学习模型,称为随机连线神经网络,并发现它们在气候模型模拟任务中表现得很有竞争力。这表明,未来用于仿真的机器学习模型可能会从使用随机连接的神经网络中获益,而不是使用更标准的神经网络。
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