Characterizing climate pathways using feature importance on echo state networks

Author:

Goode Katherine1,Ries Daniel2,McClernon Kellie2

Affiliation:

1. Department of Statistical Sciences Sandia National Laboratories Albuquerque USA

2. Department of Statistics and Data Analytics Sandia National Laboratories Albuquerque USA

Abstract

AbstractThe 2022 National Defense Strategy of the United States listed climate change as a serious threat to national security. Climate intervention methods, such as stratospheric aerosol injection, have been proposed as mitigation strategies, but the downstream effects of such actions on a complex climate system are not well understood. The development of algorithmic techniques for quantifying relationships between source and impact variables related to a climate event (i.e., a climate pathway) would help inform policy decisions. Data‐driven deep learning models have become powerful tools for modeling highly nonlinear relationships and may provide a route to characterize climate variable relationships. In this paper, we explore the use of an echo state network (ESN) for characterizing climate pathways. ESNs are a computationally efficient neural network variation designed for temporal data, and recent work proposes ESNs as a useful tool for forecasting spatiotemporal climate data. However, ESNs are noninterpretable black‐box models along with other neural networks. The lack of model transparency poses a hurdle for understanding variable relationships. We address this issue by developing feature importance methods for ESNs in the context of spatiotemporal data to quantify variable relationships captured by the model. We conduct a simulation study to assess and compare the feature importance techniques, and we demonstrate the approach on reanalysis climate data. In the climate application, we consider a time period that includes the 1991 volcanic eruption of Mount Pinatubo. This event was a significant stratospheric aerosol injection, which acts as a proxy for an anthropogenic stratospheric aerosol injection. We are able to use the proposed approach to characterize relationships between pathway variables associated with this event that agree with relationships previously identified by climate scientists.

Funder

Sandia National Laboratories

Publisher

Wiley

Reference51 articles.

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3. J.Watts.China plans rapid expansion of ‘weather modification’ efforts 2020.https://www.theguardian.com/world/2020/dec/03/china‐vows‐to‐boost‐weather‐modification‐capabilities.

4. Re-evaluation of SO2release of the 15 June 1991 Pinatubo eruption using ultraviolet and infrared satellite sensors

5. Stratospheric aerosol optical depths, 1850–1990

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