Climate Wedges

RESEARCH ARTICLE SUMMARY

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https://doi.org/10.1126

science.adr2118 Science 5 March 2026 1009

CLIMATE

Democratizing climate change mitigation pathway using modernized stabilization wedges

Nathan Johnson and Iain Staffell*

INTRODUCTION: Mitigating climate change is arguably society’s greatest challenge. Deep-decarbonization pathways envision radical transformations in how we produce and consume energy, goods, and services. Integrated assessment models have produced thousands of cost-optimal pathways, underpinned by millions of assumptions. Enacting any pathway requires broad societal buy-in; however, the barriers to producing and interpreting these pathways exclude most people from the conversation, sidelining

societal preferences and debate. In this work, we complementhese models with a simple, inclusive framework for comparingdiverse mitigation strategies and constructing decarbonizationpathways that reflect personal priorities and values.

RATIONALE: In 2004, Pacala and Socolow introduced the stabilization

wedges, a seminal framework for constructing, comparing,

and communicating decarbonization pathways. Since then,

the climate problem has shifted: Global greenhouse gas (GHG)

emissions have continued to rise, targets to limit warming have

been strengthened, and new climate solutions have emerged.

What is typically considered a mitigation strategy must expand

beyond technological fixes to include behavioral change and

nature-based

solutions, which are more difficult to represent

within cost-optimizing

frameworks.

RESULTS: We define a wedge as any activity that can scale linearly

over 30 years to avoid 2 gigatonnes of CO2 equivalent (GtCO2e) per

year by 2050 (~4% of global GHG emissions). Wedges provide a

standard unit to compare mitigation strategies and link deployment

to temperature outcomes. Limiting warming to 1.5°C

requires around 20 wedges in addition to the 17 wedges that

current policies are expected to deliver.

We identified 36 strategies that span electricity generation,

industry, transport, buildings, land, and food, each capable of

achieving at least one wedge, and quantified the deployment

needed globally by 2050. Technological solutions are central and

include building wind, solar, or nuclear power (~7% of global

electricity); deploying electric vehicles (~20% of passenger land

transport); installing heat pumps (~40% of buildings); and

capturing carbon (~90% of cement plants). Less examined options

address unsustainable consumption, such as reducing meat in

diets (~30%), food waste (~50%), and air travel (~70%). Natural

carbon sinks provide many options, including the expansion of

forests (~7% of tropical or ~20% of temperate), planting trees on

croplands (~40 or 80%) or pastures (~30 or 60%), and managing

agricultural soils (~60% of global cropland). Many strategies can

achieve multiple wedges, but all are constrained by technical,

biophysical, and/or socioeconomic limits. Even so, 20 wedges can

be delivered in ~6.9 trillion combinations, allowing pathways to

prioritize social acceptance and cobenefits, alongside cost.

To reveal where consensus exists in mainstream thinking, and

where society might wish to rebalance effort, we translated

hundreds of decarbonization pathways from integrated assessment

models into wedges. The exact mix of strategies varies widely, but

mitigation is generally concentrated in electricity generation (38%)

and industry (26%), relying heavily on renewables (~6 wedges)

and, to a lesser extent, on carbon capture (~2 wedges), whereas

nature-based

and behavioral strategies play limited roles.

CONCLUSION: Climate wedges complement existing tools by

turning a sprawling solution space into a clear list of options

without prescribing a single route to decarbonization. They

provide an accessible planning toolkit: Set a temperature target

and select strategies, weighing up their trade-offs.

The framework

could be downscaled to countries and institutions, and its

revealed preferences could inform future modeling to align

cost-optimal

scenarios with actions that people are more likely

to support.

*Corresponding author. Email: i. staffell@ imperial. ac. uk Cite this article as

N. Johnson, I. Staffell, Science 391, eadr2118 (2026). DOI: 10.1126/science.adr2118

Global decarbonization can be divided into

climate wedges, with 36 strategies able

to deliver at least one wedge. A wedge saves

2 billion tonnes of CO2 equivalent emissions

per year by 2050. Deploying 20 wedges

reduces global emissions by ~80% over

30 years, consistent with the Paris Agreement

goal. Shaded wedges (left) show the median

share of emissions reductions across

integrated assessment model pathways,

colored according to economic sectors (right).

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CLIMATE

Democratizing climate change

mitigation pathways using

modernized stabilization wedges

Nathan Johnson and Iain Staffell*

Mitigating climate change requires broad societal buy-in.

Integrated assessment models (IAMs) produce cost-optimal

pathways, but these are complex and not easily customized

to reflect individuals’ preferences. Twenty years ago, the

stabilization wedge framework introduced a simpler way to

discuss decarbonization. Here, we modernized this framework,

identifying 36 strategies, each with the potential to mitigate

4% of global emissions by 2050, and quantified their

required scale of deployment. People can build personalized

decarbonization pathways by choosing a portfolio of these

strategies, with more than 6 trillion combinations that are able

to limit global warming to 1.5°C. We assessed which strategies

IAMs favor and found that they prioritize technological over

behavioral and nature-based

solutions, with limited agreement.

This framework empowers a general audience to construct

and debate pathways, by making informed choices that reflect

objectives beyond cost-optimization.

Climate change is an existential threat (1) that requires holistic action

across society to mitigate risks to ecosystems and livelihoods.

Constructive debate around decarbonization must reflect people’s contrasting

priorities. Normal scientific approaches address well-defined

problems, whereas multifaceted and divisive issues such as climate

change require postnormal science (2, 3). This recognizes deep uncertainties

and value conflicts and advocates for an inclusive approach

that extends beyond scientific expertise.

Integrated assessment models (IAMs) are frameworks of interacting

models of the global economy, energy, land, and climate systems, which

produce internally consistent cost-minimizing

technology and policy

scenarios for meeting human needs while limiting greenhouse gas

(GHG) emissions. IAM scenarios heavily influence thinking around

decarbonization because they are precise and holistic, accounting for

many factors and feedbacks that influence mitigation costs. However,

the thousands of scenarios generated offer much complexity and few

actionable insights—features of any one scenario (e.g., building more

nuclear reactors or carbon capture plants) are countered by other,

equally valid, scenarios that favor different approaches (4). Their focus

on cost-minimization

also means that various nonproductive mitigation

strategies (e.g., reducing meat consumption or air travel) are

overlooked (5, 6) and that scenarios are misaligned with citizens’ perspectives

(7, 8). Open-sourcing

models and comprehensive intercomparisons

have increased transparency in IAM research (9), following

criticisms of their “black-box”

nature (9, 10). However, their technology-dominated

focus, inherent complexity, and high barriers to public

usage limit broader engagement (10).

People have diverse perspectives on climate change mitigation (11),

which hinders progress despite strong global support for decarbonization

(12). Although affordability is key, many other criteria (e.g., convenience,

cobenefits, and perceived risks) must be balanced against

cost for wider social acceptance (13). The multidimensional trade-offs

and consequences of any given strategy require widespread discussion

to create societal buy-in,

prompting calls for more flexible and inclusive

approaches to complement IAMs (10). Project Drawdown (14) and

online simulators such as the 2050 Calculators (15) and EN-ROADS

(16) provide alternatives, but these have their own limitations. Project

Drawdown is passive and does not allow users to construct personalized

pathways, whereas the system dynamics approach of online simulators

offers precise personalization of pathways, but interactions are

complex and sometimes counterintuitive and thus difficult for nonexpert

users to explain and understand.

This work bridges gaps between existing tools by providing a simple

language and interactive framework for comparing mitigation strategies,

building on the stabilization wedges (17). It embodies postnormal

scientific values, prioritizing simplicity, transparency, and inclusivity

to allow the broadest possible audience to produce and scrutinize

decarbonization pathways. The stabilization wedges have been used

worldwide to engage students in climate change discourse (18); however,

much has changed in the two decades since their publication.

Progress in deploying most strategies has been slower than required

(19), new climate change mitigation strategies have emerged (20), and

greater effort is needed to limit warming to international targets (21).

Here, we modernized the framework to fit today’s context, expanded

the portfolio of mitigation strategies, and explored which strategies

IAMs select to drive decarbonization for context.

A wedge approach to mitigation

No single strategy can reduce global GHG emissions to zero, so we

first divided the problem into smaller mitigation wedges. We define a

“wedge” as an activity that reduces emissions relative to a baseline,

with additional effort that scales up linearly from 2020 to save 2 gigatonnes

of CO2 equivalent (GtCO2e) per year by 2050, thus reducing

cumulative emissions by 30 GtCO2e over 30 years (Fig. 1). Our estimates

of emissions saved by displacing activities account for all GHGs,

including upstream emissions from fuel production and electricity

generation, but exclude embodied emissions from capital infrastructure

(see materials and methods).

The wedges framework can be used to build decarbonization scenarios

as follows. Users first decide how many wedges to achieve,

which depends on their target level of warming or emissions, and how

these would evolve in their baseline scenario without further intervention.

Both are contentious. The 1.5°C target may prove infeasible (22),

implying that less stringent targets should be explorable despite the

complex ethical trade-offs

they create. Baseline scenarios are deeply

uncertain owing to unforeseeable technology shifts and policy developments

(23, 24). Existing climate policies will drive the deployment of

several mitigation strategies (e.g., electric vehicle mandates and renewable

energy targets) and are expected to stem future emissions growth.

If delivered in full, “current policies” contribute 17 wedges relative to

a “no policy” counterfactual, leading to ~2.5°C of warming by 2100. A

further 20 wedges are required to limit warming to 1.5°C, implying

that the number of wedges must be roughly doubled. These additional

wedges will likely be more difficult and costly to deploy because the remaining

sources of emissions become harder to abate (25, 26). Furthermore,

if policies are reversed or fail to deliver their stated impact

(e.g., because incentives are too weak), then baseline emissions will increase

and more wedges will be required.

The user then chooses a portfolio of strategies to deliver the desired

number of mitigation wedges. We identifed 36 strategies with the

potential to achieve a minimum of one wedge and quantified how

widely each must be deployed by 2050 to do so (Fig. 2). Wedges can

be achieved by a broad range of actions: using energy more efficiently,

using cleaner fuels and technologies, changing consumer behaviors,

capturing and storing CO2 emissions, or adopting sustainable and

regenerative land management. For example, reforesting 104 million

ha of tropical forests, which sequester 19.3 tonnes of CO2 (tCO2) per

Centre for Environmental Policy, Imperial College London, London, UK. *Corresponding

author. Email: i. staffell@ imperial. ac. uk

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ha per year, would save 2 GtCO2 per year and achieve a wedge. Installing

renewable or nuclear power to displace 2800 terrawatt-hours

(TWh) of electricity, which would otherwise have been generated from

the global average fossil-fuel

mix and emitted ~700 gCO2e per kWh,

also achieves a wedge. See materials and methods for more worked

examples.

For all strategies, deployment must be additional to any that occurs

in the chosen baseline scenario. Some strategies address large sources

of emissions and can achieve multiple wedges. Solar and wind power

are widely identified as having the potential to achieve >4 wedges each

(see table S3). Many other strategies address smaller sources, allowing

for only one wedge. There are also constraints on the maximum number

of wedges possible within each sector, and thus some strategies

compete to reduce emissions (e.g., active travel and public transport).

Industry and fuel production produce the largest share of emissions

across 2050 baseline scenarios (see sectors in Fig. 2) and thus can accommodate

the largest mitigation efforts, followed by electricity generation,

transport, and buildings. The land and food sector can be a

net source (as it is today) or sink of emissions, with the potential to

equal industry in achieving up to 18 wedges (27). Nature-based

and

engineered carbon dioxide removal technologies (e.g., reforestation or

direct air capture) remove CO2 from the atmosphere, meaning that they

are not constrained by the scale of addressable emissions. However,

other factors constrain the potential of all strategies, including biophysical,

technical, and economic limits, which Fig. 2 summarizes as

general upper bounds to mitigation potential. Despite the various

constraints on wedge selection, there is considerable flexibility: A target

of 20 wedges could be delivered by 6.9 trillion possible combinations

of strategies.

Interactions between strategies can diminish their impact. Deploying

two related strategies that improve an activity’s efficiency and also

displace it would yield less than two wedges (e.g., combining building

insulation with heat pumps). Many strategies involve electrification

and thus require additional clean electricity to avoid increasing fossil

fuel consumption. Each wedge of heat pumps, direct air capture, electric

vehicles, and clean hydrogen requires an additional 0.4, 0.5, 0.7,

and 1.8 wedges of nuclear or renewable electricity, respectively.

Strategies also influence the competitiveness of others through indirect

interactions; for example, a wedge of reforestation increases

competition for land and thus food and bioenergy costs (28). We scoped

strategies around best-practice

implementation to reduce the influence

of negative interactions. For example, building coal power plants

to charge electric vehicles or clearing rainforests for bioenergy crops

is incompatible with effective emissions reductions. A core strength

of IAMs is their systematic and endogenous handling of interactions.

This framework instead leaves users to evaluate the implications of

interactions to maintain tractability and facilitate individuals’ perspectives.

Background on each strategy’s interactions, strengths and weaknesses

is provided in the “Contextualizing strategies” section of the

supplementary materials.

The climate wedges are designed to inspire debate and are not a rigid

roadmap for decarbonization. They can provide a first-order

translation

of real-world

policies or targets. For example, the Intergovernmental

Panel on Climate Change (IPCC)’s 1.5°C pathways will require >80% of

global electricity to be supplied by renewables by 2050, up from 30%

historically (29) and in our 2050 no-policy pathway. To achieve a wedge,

wind or solar power must provide 6.6% of global electricity in 2050, thus

>7.5 wedges are required. Rather than seeking the precise combination

of mitigation strategies and policies that reduces emissions at the lowest

cost, the wedges allow people to discuss and explore which strategies

they wish to deploy.

Users might consider some strategies infeasible or

find that they disagree with their preconditions. They might oppose strategies

on ethical [e.g., carbon capture and storage (CCS) or nuclear] (30),

cultural (e.g., reducing meat consumption or car travel) (31), or technical

(e.g., hydrogen, direct air capture, or enhanced weathering) (32, 33)

grounds. Users can disregard strategies accordingly and choose alternatives

that reflect their personal preferences, providing a framework

to evaluate the social acceptability of decarbonization pathways.

Options that can achieve a wedge

The proposed strategies are at very different stages of development:

Some have clear precedent and many are scaling rapidly, whereas others

remain niche (Fig. 3). Electricity sector strategies are among the

most mature, reducing emissions by displacing fossil fuel power plants

with low-carbon

alternatives or by capturing their emissions. A wedge

is achieved by generating 2800 TWh of electricity from solar, wind, or

nuclear power in 2050. This equates to just 300 kWh per capita in 2050,

less than 3% of per capita consumption in the United States today (34).

Together, solar, wind, and nuclear power produced 7400 TWh in 2024,

equivalent to 2.6 wedges (34). A wedge of coal-to-

gas

fuel switching would

require increasing global gas generation by 60%, producing 4100 TWh

by 2050. This would require 600 billion cubic meters of natural gas,

roughly one-sixth

of present global consumption (35), and would be incompatible

with deep decarbonization. CCS must be retrofitted at one-fifth

of coal plants or half of natural gas plants (producing 2900 or

7100 TWh, respectively) to achieve a wedge, yet just three commercial

CCS power plants are in operation, producing <10 TWh per year (36).

Bioenergy with CCS (BECCS) plants must generate less electricity to

achieve a wedge (1600 to 2000 TWh in 2050 depending on the feedstock),

as capturing CO2 from combusting biomass actively lowers atmospheric

concentrations, but each wedge requires up to one-third

of present global

biomass supply, raising sustainability concerns (37).

Passenger cars account for almost half of global transport emissions

(38). Halving fuel consumption of gasoline and diesel cars by 2050

Fig. 1. Historical global GHG emissions and a spectrum of stylized future

pathways to 2050, showing the relationship between the number of wedges

deployed and global temperature outcomes. The inset shows the definition of one

wedge of mitigation effort. In the graph, the black solid line shows historical GHG

emissions (70), and the colored lines show stylized future emissions pathways, with

color indicative of mitigation effort. Each pathway reflects the achievement of one

additional wedge relative to the pathway above it. Pathways begin in 2020 (taken as

the average of 2019 and 2021 to remove short-term

impacts of COVID-19)

and run to

2050. The thick lines show three representative pathways abstracted from several

scenarios (65, 7173): “no policy” is a counterfactual with no climate policies

introduced globally, “current policies” assumes that existing policies are delivered in

full, and “decarbonization” illustrates a trajectory that limits warming to 1.5°C. Labels

show the observed global temperature rise in 2020 (74) and the projected temperature

rise in 2050 and 2100, all relative to the preindustrial period (from 1850 to 1900).

Projected temperatures are approximated from cumulative emissions to 2050 (see

materials and methods), showing the median and 33rd to 67th percentile range.

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Fig. 2. The 36 mitigation strategies that have the potential to achieve at least one wedge of mitigation and the scale of deployment required for each. Each strategy is

depicted by an icon with a sentence that quantifies the scale of deployment needed to achieve 2 GtCO2e of mitigation in 2050, expressed relative to the global scale in 2050

unless otherwise stated. Strategies are grouped by sector, which is indicated by colored backgrounds. The key on the right explains other elements of the figure. Indicative upper

bounds for how many wedges can be achieved collectively within each sector were calculated by translating sectoral emissions in 2050 from four baseline scenarios into

wedges, with the exception of land use, which was derived from (27). Upper bounds for individual strategies are derived from a meta-review

of mitigation potentials (see

materials and methods). Strategies within industry cannot collectively mitigate all of the sector’s emissions because emissions savings from avoided fuel extraction and

production are accounted for in end-use

sectors and many smaller actions are also needed (see main text). pax, passenger.

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Fig. 3. Uncertain assumptions and projections of the future influence the effort required to achieve a wedge and by how much each strategy must scale relative to

today. Strategies are grouped according to the sectors in Fig. 2, indicated by vertical, colored headings. Effort refers to the additional deployment required in 2050 to achieve a

wedge, unless otherwise stated. Effort is measured in various units specific to strategies and sectors. Colored bars show the mean effort required across baseline pathways

(where multiple pathways are used) or the median effort across 10,000 Monte Carlo simulations (where a single baseline pathway with uncertain input parameters is used).

Error bars are shown where uncertainty can be quantified, giving the maximum or minimum effort required across baseline pathways or the 5th and 95th percentiles across

Monte Carlo simulations. Yellow circles indicate deployment of each strategy in the most recent year for which data were available, where this can be calculated. Where these

exceed the corresponding bar, the additional effort required is <100% of present deployment.

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(matching the efficiency of a Toyota Prius) achieves a wedge (39), but

this fleet would still emit 3 to 6 GtCO2e per year. Alternatively, increasing

the share of electric vehicles, biofuels, public transport, or active

(avoided) travel to deliver 17 to 19% of all passenger land transport achieves

a wedge. Effort is similar across these strategies because all are similarly

low-carbon

with best-practice

deployment. As these strategies all displace

car travel (50 to 70% of passenger land transport in 2050), a maximum

of two to four wedges are possible. In the case of electric vehicles,

a wedge also requires ~2000 TWh of clean electricity (0.7 nuclear or renewable

wedges). Active and public transport are well established globally,

and thus per capita usage only needs to double from 2020 to 2050

to achieve a wedge, compared with a factor of 10 for biofuels. However,

these strategies are seeing limited or negative growth (40). Conversely,

the stock of electric vehicles increased sixfold from 2020 to 2024 (41)

and must increase a further 17-fold

to achieve a wedge. Freight transport

can achieve several wedges through a similar mix of options.

Reducing air travel can also achieve a wedge but requires around a 70%

reduction in demand in 2050, comparable to the restrictions introduced

during the COVID-19

pandemic (42). The use of sustainable aviation

fuels could contribute, but present blending must rise from a maximum

of 50 (43) to 75% and be applied to all flights.

Industry features a more diverse group of strategies, owing to the

variety of products and processes. Steel and cement are the most

emissions-intensive

commodities, accounting for half of direct sector

emissions (44). Other industries sum to three to five wedges in 2050

under baseline scenarios, but their diversity means no single measure

can achieve a wedge. CCS is the primary strategy for deep decarbonization

of cement production and needs to be applied to 93% of cement

plants by 2050 to achieve a wedge. CCS is also a candidate for decarbonizing

steel production, alongside clean hydrogen and electricity

(33). Respectively, these must replace 44 or 35% of steel production in

2050 to achieve a wedge, with hydrogen-electric

steel also requiring

~4000 TWh of clean electricity (1.5 nuclear or renewables wedges).

Hydrogen has many other potential uses across the economy (45), but

demand growth is uncertain, increasing from 100 Mt to 200 to 600 Mt

in 2050 (33). A wedge is achieved for each 150 Mt of clean hydrogen

produced in 2050, requiring ~5100 TWh of clean electricity (1.8 nuclear

or renewables wedges) for the 70% produced through electrolysis.

Extracting and producing fossil fuels adds a further four to seven

wedges in 2050 baseline scenarios, which are reduced indirectly by

(and accounted for within) other strategies that displace fossil fuels.

Within this, methane emissions contribute ~2 wedges by 2050, hence

a wedge could also be achieved by direct actions that halve upstream

leakage, venting, and flaring. Refrigerants for heat pumps, air conditioners,

and refrigeration produce up to 13,000 times the warming

effect of CO2 (46, 47), and thus their rapid phase-out

and careful destruction

can achieve a wedge. Using direct air capture to draw CO2 from

air could offset residual emissions from hard-to-

abate

sectors, but the

technology must scale 200,000-fold

from capturing <10 ktCO2 today

to achieve a wedge (48, 49). A wedge of direct air capture also requires

1500 TWh of clean electricity (0.5 nuclear or renewable wedges), which

is equivalent to present consumption by US households (50).

Most emissions from buildings arise from heating and cooling (51),

so improving insulation and the efficiency of heating offer large potential.

One wedge requires roughly doubling insulation levels, which

would halve heat transfer from 1.5 to 0.8 Wm–2 K–1 between 2020 and

2050, a value still five times greater than the Passivhaus standard of

0.15 Wm–2 K–1 (52). Heat pumps can produce negligible emissions, so

a wedge is possible if heat pumps deliver 25 to 60% of global heating

in 2050 using ~1300 TWh of clean electricity (0.4 nuclear or renewables

wedges). Across the developing world, almost a billion households

rely on biomass cookstoves, two-thirds

of which are inefficient

“traditional” stoves (53). Immediately replacing all traditional stoves

with improved stoves would yield 0.85 wedges, so achieving one wedge

requires that new stoves deployed through 2050 are also improved.

Reducing emissions from the land and food sector is a clear priority

because sources are large and interventions are potentially rapid (27).

A wedge can be achieved by halving food loss and waste to one-sixth

of all food produced or by reducing meat consumption across regions

that overconsume (everywhere except for South Asia and sub-Saharan

Africa) by 30%. The latter would lower the mean meat consumption

of these regions to 270 kcal per day, compared with ~90 kcal recommended

on health grounds (54). Reducing agricultural production also

relieves pressure to convert natural ecosystems to farmland (55), which

is another route to achieving wedges. For example, a wedge requires

reducing tropical forest losses (including deforestation) by 40% by

2050, equivalent to 75 Mha over 30 years (an area the size of Pakistan).

A similar reduction was delivered in the Brazilian Amazon by Luiz

Inácio Lula da Silva within 6 months of his presidency (56). A half-wedge

is achieved by phasing out tropical peatland drainage by 2050

with a second half-wedge

from rewetting 18 Mha (an area the size of

the state of Washington). The remaining strategies bolster land-based

carbon sinks to remove CO2 from the atmosphere, with the density of

carbon stored per hectare per year determining the land area required.

Achieving a wedge requires 104 Mha of forest (an area the size of

Colombia) to be reestablished in the tropics by 2050, compared with

904 Mha of croplands (an area the size of the United States) to adopt

soil carbon management. Reestablishing temperate forests and planting

trees in croplands and pastures require areas between these two

extremes. Several of these strategies can theoretically contribute multiple

wedges, but nature-based

carbon storage can increase pressure

on food systems and be reversed by future disturbances, such as fires

or deforestation (27).

IAM results in the language of wedges

IAMs have produced many scenarios for deep decarbonization, which

can provide a potential starting point for constructing pathways with

the climate wedges framework (Fig. 4). We grouped IAM pathways from

the IPCC Sixth Assessment Report (AR6) database (57) into baseline

and mitigation pairs that yield 2050 GHG emissions consistent with

the stylized current policies and decarbonization scenarios in Fig. 1.

Emissions between the paired scenarios differ by 40.4 ± 10.3 GtCO2e

year–1 in 2050, equivalent to 20.2 ± 5.2 wedges. Figure 4A disaggregates

this reduction in GHG emissions across the five broad sectors assessed

in Fig. 2, whereas Fig. 4, B to E, quantifies the additional deployment

of individual strategies (i.e., deployment in mitigation pathways minus

that in their corresponding baseline pathways). Sector-level

mitigation

is measured directly from GHG emissions reductions calculated within

IAMs, and thus reflects differences in scope and assumptions, and

accounts for interactions. Deployment of individual strategies is instead

measured by activity and converted to wedges using the definitions

from Fig. 3, and thus excludes these differences and interactions.

For example, a mean of 33.3 EJ (9250 TWh) of additional wind power

is deployed in decarbonization relative to baseline scenarios, translating

to 3.3 wedges.

Most mitigation effort is achieved within electricity generation

(38%) and industry (26%), compared with transport (12%), land (11%),

and buildings (5%). This sectoral split (Fig. 4A) agrees with the decomposition

of a single pair of IAM scenarios (58), with mean absolute

differences of 8 to 20%, yet is broader in representing 249 to 367 IAM

scenario pairs and incorporating land-use

change. Different subsets of

scenario pairs contribute to our evaluation of each sector and strategy

(hence the sample size varies between bars in Fig. 4), as IAMs do not

report all variables consistently, and so 3.4 GtCO2e year–1 (8%) cannot

be allocated to specific sectors. IAMs tend to prioritize the energy system

over the land system (58, 59), where coarse disaggregation of

land uses and demands for specific agricultural and forestry commodities

limit which strategies are included. Nature-based

strategies

contribute only 2.2 wedges across AR6 scenarios, despite offering

comparable mitigation potentials to those within the energy sector

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(27, 60). Users of the climate wedges framework should therefore

consider the wider potential of nature-based

mitigation when choosing

strategies.

Notably, 8.8 wedges of clean electricity are deployed (Fig. 4B); however,

2.1 wedges are not additive and are required to power electrification

in industry and transport. The additional wedges required to power

heat pumps could not be calculated because the AR6 database does not

disaggregate mitigation efforts within the buildings sector. Wind and

solar power contribute 3.3 and 3.1 wedges, respectively, reinforcing thinking

from the IPCC (4) and others (61) that renewables are the largest

driver of decarbonization, despite challenges with electricity system integration

(62, 63). CCS totals 2.1 wedges across the five applications we

evaluated (1.3 in power and 0.8 in industry). Across all sectors, nuclear

power and electric vehicles are the only other strategies to contribute

more than a single wedge on average, with clean hydrogen and methane

reduction close behind at 0.95 each.

The AR6 database variables allowed us to evaluate 17 of our 36

strategies, and hence, 10, 21, 40, and 63% of sector-wide

mitigation

cannot be accounted for across electricity, transport, industry, and land

use, respectively. Technological strategies are favored, whereas naturebased

and behavioral strategies are mostly absent because decisions

in IAMs are driven by discounted long-run

system costs, making them

less well suited for modeling nonproductive activities (64). These mismatches

(colorless bars in Fig. 4, B to E) also include decarbonization

by actions with insufficient mitigation potential to be considered as

wedges (e.g., material recycling or solar water heating), those that are

not disaggregated in IAM reporting (e.g., public transport, active travel,

and vehicle efficiency), and interactions between strategies that cannot

be disentangled with available data.

Although IAM scenarios generally agree on the balance of emissions

reductions between sectors, deployment of specific strategies ranges

substantially, with the interquartile range greater than the mean for

10 of the 17 strategies we evaluated. For example, models select very

different combinations of wind, solar, and nuclear power, which respectively

contribute 1.5 to 4.6, 1.3 to 4.5, and 0.1 to 1.9 wedges at the

25th to 75th percentiles. Our disaggregation generally agrees with

A B

C D E

Fig. 4. Translating IAM outputs to wedges shows the aggregate mix of mitigation strategies selected by cost-optimizing

models. Shaded bars show mean differences

between pairs of baseline and decarbonization scenarios from the IPCC AR6 database (57), colored according to the sectors in Fig. 2. Error bars show the interquartile range of

the differences across pairs. n is the number of scenario pairs represented. (A) The reduction in GHG emissions in 2050 in decarbonization relative to baseline scenarios,

measured in terms of GtCO2e abated, attributed to sectors. (B) The additional deployment of individual power-sector

strategies in 2050 in decarbonization relative to baseline

scenarios, translated into mitigation wedges based on the required effort given in Fig. 3. Negative bars with dotted borders indicate the amount of clean electricity that must be

deployed to power hydrogen electrolyzers and electric vehicles, highlighting interactions between strategies. (C to E) The additional deployment of strategies within the

industry, transport, and land-use

sectors. Strategies within the buildings sector cannot be computed because the most granular data available are total demand per fuel.

Colorless bars show the discrepancy between IAM-calculated

sectoral emissions reductions from (A) and the sum of individual bottom-up

strategy calculations, which represent

only around half of all strategies. Error bars for afforestation in (E) indicate that the mean is above the 75th percentile. Details on the pairing of scenarios, the IAM variables used,

and individual pair-wise

results are provided in the materials and methods. HFC, hydrofluorocarbon.

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other decompositions of annual emissions reductions in 2030 and

2050 and cumulative emissions reductions to 2050, noting differences

in scope (60, 65, 66) (see fig. S30). Renewable energy provides the largest

emissions reductions with smaller contributions from electrification,

hydrogen, and CCS, indicating general agreement across model types

and decomposition techniques. Our decomposition could be broader

and more precise if scenario outputs were reported more comprehensively

and consistently to public databases, and hence, future work could

extend our results accordingly.

The broad set of IAM scenarios we assessed here shows there are

many different cost-effective

pathways to decarbonization. In reality,

the possibility space around future emissions scenarios is even wider

than IAMs imply, as nature-based

and behavioral strategies and noneconomic

drivers of mitigation are frequently overlooked (10). Against

a backdrop of trillions of options, socially accepted decarbonization

pathways can be achieved only through inclusive dialogue, enabled by

frameworks such as the climate wedges.

Discussion and conclusions

An effective global response to climate change requires that emissions

are reduced rapidly across all aspects of society. We broke this

challenge up into more manageable discrete choices. To limit warming

to 1.5°C, 20 strategies must be deployed from the 36 that we

propose, at the scale we estimate. These require profound, often order-of-

magnitude,

changes to be made and must be additional to the 17 wedges

that current policies are set to achieve globally. Deep decarbonization

requires best-practice

deployment of strategies in supportive combinations

to avoid negative interactions. For example, to reduce rather

than displace heating emissions, heat pumps must run on low-carbon

electricity (supported by clean-electricity

wedges) and use climatefriendly

refrigerants (supported by the refrigerant pollution wedge).

The climate wedges framework challenges its user to think holistically

about the interactions, trade-offs,

and synergies that their pathways

create.

IAM scenarios offer many competing views on how to decarbonize

at the lowest cost (4). At the same time, disregarding human preferences

has produced scenarios that are not widely supported by the

public (7). Cost must be a feature, as decarbonization cannot degrade

living standards, but it cannot be the only consideration. More computer

modeling will not generate societal buy-in,

and so science must

now seek to engage society in decarbonization through alternative

means.

A first step is moving from normal scientific reasoning toward postnormal

science, which embodies the wills and wants of the global

public who must support and adopt mitigation strategies (2, 3). Many

of the strategies we identified require that individuals change their behavior

and all require general public support. Fostering informed opinions

in an empowered public relies on people possessing a firm understanding

of the options for decarbonization. Our framework can be understood

broadly and used to quickly construct and debate pathways for

mitigating climate change. Its accessibility and flexibility complement

the precision and complexity of IAMs but requires key simplifications:

stylizing strategies to linear uptake, excluding interactions between

strategies, and pragmatic treatment of uncertainty. Insights from the

wedges on people’s preferences for particular mitigation strategies

could potentially be used to constrain IAMs, combining the strengths

of both frameworks to produce consistent cost-optimal

scenarios that

incorporate society’s values, thus providing a greater chance of acceptance

and adoption.

Each proposed strategy carries many benefits and challenges. Some

are expensive, but others could save money. Some are perceived as

safe, and others as risky. The criteria for appraising strategies are

manifold, and their hierarchy of importance will vary between individuals

and nations. The framework can be applied to other strategies

for reducing emissions, including those less widely discussed. For

example, a wedge could be achieved by empowering women through

health and education, in turn reducing population growth by 0.1% per

year to 2050. We do not explicitly consider “degrowth” strategies (6),

but many of the proposed strategies target consumption (e.g., diet,

food loss, and travel). Likewise, geoengineering measures such as solar

radiation management could be converted into wedge-equivalents

through their impact on reducing global temperatures, raising very

different risks and ethical considerations.

As climate policy is enacted at the national level, producing country-scale

wedges would be a useful complement to our global framework.

This translation first requires resizing the wedge. Scaling wedges in

proportion to population implies equal effort per capita. Taking

Indonesia as an example, 284 million inhabitants scales each wedge

to 70 MtCO2e in 2050. Other indicators such as gross domestic product

could instead reflect the ability to finance mitigation. The second requirement

is context for how many wedges to achieve, which could

use existing emissions projections under current policies and net-zero

pathways. Climate Action Tracker projects that Indonesia’s 2050 emissions

must fall by ~1190 MtCO2e to become 1.5°C compliant, which

implies 17 country-scale

wedges (67). This compares to 20 wedges in

our global framework, reflecting Indonesia’s lower emissions per

capita. Third, the effort required for each strategy must be recalculated.

A first approximation would scale these linearly with the size of a

wedge, meaning, for example, 100 TWh of electricity from wind, 45 Mt

of clean steel, or reforesting 4 Mha. Estimates should be refined with

country-specific

data for displaced activities (e.g., electricity mix and

land carbon fluxes), where available. Finally, the upper bound for each

strategy’s mitigation potential should be adjusted according to the

nation’s resources (e.g., industrial output and land area) to ensusre that

pathways are physically and socioeconomically credible. For example,

Indonesia has lost 1.3 Mha of forest per year since 2000, emitting 1 GtCO2

per year (68), which, if avoided, would deliver ~14 country-scale

wedges.

Modernizing the climate-stabilization

wedges allows a new generation

to engage in contemporary debates about decarbonization and,

through informed dialogue, brings people from different nations and

cultures into closer agreement on how to address climate change.

Materials and methods summary

This study centers on three questions, which users of the climate wedges

framework must consider when constructing a mitigation pathway:

How many mitigation wedges should be deployed, what strategies and

scale of deployment are needed to achieve wedges, and what other factors

influence decisions on the portfolio of wedges to deploy?

Linking wedges to temperatures

We updated the wedge unit to deliver 2 GtCO2e of annual savings by

2050 (fig. S2), approximately preserving the annual increment in effort

of wedges from Pacala and Socolow (17). We represented no-policy,

current-policy,

and deep-decarbonization

pathways in terms of the

number of wedges deployed by simple linearization of projected emissions

from 2020 to 2050. We connected the deployment of wedges to

temperature outcomes using the IPCC AR6 scenario database (57), linking

cumulative GHG emissions to 2050 to temperature response in 2050

and 2100 (fig. S3). The latter shows a nonlinear response due to the path

dependency of post-2050

emissions.

Scoping strategies and their maximum potential

We formed a long list of strategies with wedge-scale

potential by reviewing

the portfolio of strategies from Pacala and Socolow (17) and

Project Drawdown (14) and mining the literature for additional strategies,

notably on carbon dioxide removal, freight transport, and industry.

We retained 36 strategies capable of at least one wedge (with aggregation

where appropriate) after excluding those constrained by policy

saturation or limited headroom (e.g., hydrofluorocarbon alternatives

and space-cooling

efficiency). We triangulated the maximum technical

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potential for each strategy (table S3) by comparing emissions saved

from addressing the entire market, with integrated potentials from

Project Drawdown (14), Fuss et al. (32) for CO2 removal, Roe et al. (27)

for land use, and the upper-bound

of deployment within the AR6

database (57).

Calculating the effort required for a wedge

We created a framework of calculations for how much activity would

be required to mitigate 2 GtCO2e in 2050 across each strategy (eqs. S1

to S44). These draw on underpinning parameters taken from four

baseline scenarios (tables S9 to S15) emulated within the Global

Calculator (69), chosen for its transparency and granularity of reporting.

The literature was used to supplement these where needed, particularly

for food and land-use

strategies. We calculated the abatement

potential per unit for each strategy (e.g., the GHG saved by driving 1 km

in an electric vehicle powered by clean electricity versus a conventional

gasoline vehicle). These were inverted to give the scale of deployment

required to yield a wedge and normalized to a share of global

activity (e.g., percentage of total passenger kilometers in 2050) (table

S5). Effort was calculated across the four baselines, with the average

and range presented to represent deep uncertainty. For land-based

strategies, uncertainty was quantified, where possible, using Monte

Carlo sampling across distributions derived from the literature. We

quantified two first-order

interactions between strategies. First, the

competition between strategies within addressable markets (e.g., wind

and solar power displacing power generated from fossil fuels) informs

maximum limits on sectoral deployment. Second, we estimated the

amount of additional clean power required for electrification wedges

(electric vehicles, heat pumps, clean hydrogen, and direct air capture).

Other interactions are left to be considered by users of the framework

to preserve flexibility and tractability. Tables S43 to S73 qualitatively

summarize trade-offs,

synergies, saturation risks, costs, and maturity

of the strategies.

Contextualizing IAM deployment as wedges

We took IAM scenarios from the AR6 database (57), creating pairs of

baseline and mitigation runs by model, scenario family, and policy or

technology category. We focused on 381 vetted pairs that approximately

align with our current policy and decarbonization pathways (fig. S7).

We estimated mitigation per sector from the difference in sectoral

emissions within each pair (figs. S8 to S12), and the deployment of

individual strategies from the difference in activity within each pair

(e.g., EJ of electricity produced by renewables). The latter used our

bottom-up

effort definitions to translate differences in deployment to

wedges (figs. S13 to S29).

Materials and methods are available in the supplementary materials.

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AC KNOWLEDGMENTS

We thank R. Socolow, R. Gross, J. Skea, J. Rogelj, R. Lamboll, A. Foley, A. Hawkes, and

J. van den Heuvel for useful discussions. Funding: N.J. acknowledges funding from the

Engineering and Physical Sciences Research Council (EPSRC) through a doctoral studentship.

N.J. and I.S. acknowledge funding from the Engineering and Physical Sciences Research

Council, grant EP/R045518/1 Author contributions: Conceptualization: N.J., I.S.;

Methodology: N.J., I.S.; Investigation: N.J., I.S.; Visualization: N.J., I.S.; Funding acquisition:

I.S.; Project administration: N.J.; Supervision: I.S.; Writing – original draft: N.J.; Writing –

review & editing: N.J., I.S. Competing interests: The authors declare that they have no

competing interests. Data, code, and materials availability: All code and data needed to

reproduce the results reported in this paper can be found at Zenodo (75). An interactive web

application that implements the climate wedges framework is available at https://

climatewedges.com. License information: Copyright © 2026 the authors, some rights

reserved; exclusive licensee American Association for the Advancement of Science. No claim

to original US government works. https://www.science.org/about/science-licenses-

journal-

article-

reuse.

This research was funded in whole or in part by the UKRI’s Engineering and

Physical Sciences Research Council (EP/R045518/1), a cOAlition S organization; as required,

the author will make the Author Accepted Manuscript (AAM) version available under a CC BY

public copyright license.

SUPPLEMENTA RY MATE RIALS

science.org/doi/10.1126/science.adr2118

Materials and Methods; Supplementary Text; Figs. S1 to S38; Tables S1 to S73;

References (76381)

Submitted 20 June 2024; accepted 14 October 2025

10.1126/science.adr2118

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Democratizing climate change mitigation pathways using modernized stabilization

wedges

Nathan Johnson and Iain Staffell

Science 391 (6789), eadr2118. DOI: 10.1126/science.adr2118

Editor’s summary

The most effective strategy to decide how to mitigate anthropogenic climate change is to break the problem down into

pieces. A well-known example of this kind of deconstruction was developed in 2004 by Pacala and Socolow (10.1126/

science.1100103), who identified a collection of independent actions called “stabilization wedges” that used existing

technology to limit atmospheric carbon dioxide concentrations to below 500 parts per million. Johnson and Staffell

updated this scheme with an expanded portfolio of wedges that provide multiple pathways to limit global warming to

1.5°C above preindustrial level, as advocated by the Paris Agreement (see the Perspective by McJeon and Ou). —

Jesse Smith

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