27 September 2023

Rise up: How computer modelling could predict where we’ll go as seas rise

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Jill Kimball* says advances in computation and modelling can help simulate the global effects of sea level rise to better guide policymaking.

Photo: Corinna Behrens

A new modelling approach can help us better understand how policy decisions will influence human migration as sea levels rise across the globe.

The new study indicates that global policy decisions about greenhouse gas emissions, and a range of policy decisions that determine where people live and work in coastal areas, will determine whether people need to migrate as a result of sea level rise and where they may go.

The study also shows that the best way to weigh the potential effects of these policies is to build new climate change models, computer-generated predictions of how and when global temperatures and landscapes will change.

“This paper homes in on policy as the key to managing climate change impacts,” says Elizabeth Fussell, an Associate Professor of Population Studies at Brown University’s Population Studies and Training Centre.

“Analysing the effects of current and potential policies on sea-level rise can bring real data, real investigations, and real analyses to the table in political discussions that will shape our future.”

Global policy decisions will play a major role in determining not only how many people will migrate away from the coast due to climate change but also where those migrants will go, says lead author David Wrathall, an Assistant Professor at Oregon State University’s College of Earth, Ocean and Atmospheric Sciences.

“We’ve been looking at this problem the wrong way,” Wrathall says.

“We’ve been asking how many people will be vulnerable to sea level rise and assuming the same number of people will migrate.”

“In reality, policies being made today and moving forward will exert a strong influence in shaping migration.”

“People will move in very specific ways because of these policies.”

The researchers suggest that policymakers who are seeking to understand how their decisions affect migration cannot afford to experiment on vulnerable populations in the real world with expensive and potentially dangerous policies.

Instead, decision-makers can anticipate the effects of realistic policy alternatives using simulations thanks to advances in computation and modelling, taking into account a wide range of economic policies, planning decisions, infrastructure investments, and adaptation measures.

For example, Wrathall says, some current tax codes incentivise businesses to locate near ports, which could potentially put whole industries at risk in the face of rising sea levels.

High interest rates could prevent some homeowners from borrowing money to protect their coastal homes, which may cause them to leave.

And global decisions about the management of greenhouse gas emissions could affect how quickly the planet warms and sea levels rise.

“Modelling allows us to look at all kinds of scenarios to identify the specific policies that might work to help people migrate and anticipate the policies that cause problems,” Wrathall says.

“Whatever losses and damage are caused by sea level rise, they are human losses — so understanding how humans react to changes, and how policy drives those changes, is crucial,” Fussell says.

The paper appears in Nature Climate Change.

The report comes from Fussell and 19 other members of an international research network the National Socio-Environmental Synthesis Centre at the University of Maryland assembled.

* Jill Kimball is a writer for the Humanities and Social Sciences at Brown University. She tweets at @JillKimball. Her website is jillkimball.com.

This article first appeared at www.futurity.org

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