Earth Systems

Amid much uncertainty about the future of the global climate and efforts aimed at preventing its most damaging impacts, graduate students affiliated with the MIT Joint Program on the Science and Policy of Global Change are hard at work exploring some of the challenges and possible solutions that lie ahead. They are also sharing their knowledge with the MIT community.

Short-term variability and long-term change in climate pose a challenge to water planners. Some climate uncertainties can be reduced over time as new information is collected, while others are irreducible. This presentation shows how flexible water-supply infrastructure planning can help mitigate climate risk at lower cost, especially for uncertainties with high learning potential

The weather in a few days can be difficult to predict, especially with certain phenomena such as thunderstorms. If this is the case, then how can we trust climate projections over several decades? This session’s co-leaders discuss the similarities and differences between predicting next week's weather and the climate in 2100, and how they allow us to make confident climate projections.

Embedded within the climate system are many nonlinear feedback systems and possible tipping points , making prediction of future climate difficult. Co-leaders of this session discuss such mechanisms of the climate system; Earth-system models; the role of clouds, oceans, land cover and biology in the climate system; and how extreme weather relates to climate change.

MIT Joint Program-affiliated researcher and Institute for Data, Systems, and Society (IDSS) PhD student Sarah Fletcher has won a 2017 American Geophysical Union (AGU) Outstanding Student Paper Award for her paper, “Urban water supply infrastructure planning under predictive groundwater uncertainty: Bayesian updating and flexible design.” Granted to the top five percent of student participants, the award inc

How might climate change affect the acidification of the world’s oceans or air quality in China and india in the coming decades, and what climate policies could be effective in minimizing such impacts? To answer such questions, decision-makers routinely rely on science-based projections of physical and economic impacts of climate change on selected regions and economic sectors. But the projections they obtain may not be as reliable or useful as they appear: today’s gold standard for climate impact assessments—model intercomparison projects (MIPs)—fall short in many ways.

MIPs, which use detailed climate and impact models to assess environmental and economic effects of different climate-change scenarios, require international coordination among multiple research groups, and use a rigid modeling structure with a fixed set of climate-change scenarios. This highly dispersed, inflexible modeling approach makes it difficult to produce consistent and timely climate impact assessments under changing economic and environmental policies. In addition, MIPs focus on a single economic sector at a time and do not represent feedbacks among sectors, thus degrading their ability to produce accurate projections of climate impacts and meaningful comparisons of those impacts across multiple sectors.

To overcome these drawbacks, researchers at the MIT Joint Program on the Science and Policy of Global Change propose an alternative method that only a handful of other groups are now pursuing: a self-consistent modeling framework to assess climate impacts across multiple regions and sectors. They describe the Joint Program’s implementation of this method and provide illustrative examples in a new study published in Nature Communications.

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