Skip to content

News & Events

Interpretable machine learning approaches for identifying and understanding predictable multi-year climate variability

Emily Gordon (Stanford University)

Colloquium

Monday, February 5, 2024, 3:30 pm

Abstract

Identifying predictable climate variability beyond a few weeks is notoriously difficult due to the unpredictable noise in the Earth system. In this talk, I discuss methods for identifying predictable climate variability on interannual to decadal timescales using machine learning, specifically, neural networks. Starting with a simple application for examining predictable Pacific decadal variability, I demonstrate how explainable AI (XAI) can be used to increase trust in neural network predictions, and investigate the mechanisms governing Pacific decadal variability. I formalize this approach by examining predictable sea surface temperatures (SSTs) across the ocean, in model simulations of both pre-industrial and future climate, and how climate change influences the predictability of near-term climate variability. I further demonstrate how thoughtful and creative experimental design, coupled with the power of neural networks to predict non-linear behavior, provides insights into sources of predictable internal variability and how this may manifest under climate change. Finally, I discuss how AI-driven SST predictions can provide constrained estimates of future climate variability of surface temperatures and precipitation, and how these data-driven tools may shape future investigations of climate variability and predictability.

Bio

Dr. Emily Gordon is a Data Science Postdoctoral Fellow at Stanford University working with Prof Noah Diffenbaugh on examining the implications of skillful climate prediction for constraining projections of temperature and precipitation variability using interpretable machine learning. Originally from New Zealand, Emily gained her BSc and MSc from the Department of Physics at the University of Otago before moving to Colorado State University for her PhD in 2020 University where she worked with Prof Elizabeth Barnes on adapting novel machine learning techniques for understanding climate variability and predictability.