This disclosure asks an organisation to explain the method it used for scenario analysis and the main inputs and assumptions behind it. In practice, that means setting out how the scenarios were built, what time horizons were considered, what data or parameters were used, and any key judgement calls that shaped the analysis. The aim is to make clear how the organisation tested climate-related risks and opportunities under different possible futures.
The practical focus is on transparency and consistency: a reader should be able to understand what was included, what was left out, and how robust the analysis is. Organisations should be clear about the scope of coverage across the business, such as whether the analysis applies to the whole group, selected operations, or only certain assets or sites, and whether the same approach was used across those areas or tailored in different ways.
This LRA educational guidance supports disclosure preparation. For the exact requirements, always refer to the official IFRS source.
A quick mental checklist before you prepare this disclosure — tick each as you settle it.
Key datapoints to prepare
How to prepare it
Request the scenario analysis pack from Strategy / Risk
Translate the disclosure into an internal business question — then adapt it to your organisation's own language.
Please use your organisation’s own terms first, then map them to the disclosure labels. For example, if you call this work a climate stress test, resilience review or planning case, keep that language in the request and only translate it to the reporting label at the end. This is a training template only; adapt it to your organisation and check the source material before sign-off.
Please provide the scenario analysis information for the disclosure, including the method, inputs and assumptions.
Why it fails: This uses reporting jargon that may not match how the team works day to day, and it does not say what evidence is needed, which period is in scope, what parts of the business were covered, or which assumptions and source materials should be returned.
Please send the latest climate scenario analysis pack for [period], including the scenario cases used, the main policy / market / technology assumptions, the parts of the business covered, whether physical risks, transition risks, or both were assessed, the time horizons used, and the note explaining why these cases were relevant. Include the source file or link, version/date, and the person who prepared and reviewed it. Use your team’s own labels if different; we will map them for reporting.
Notes that turn data into a disclosure
LRA training templates — adapt them to your organisation, and check the official source before sign-off.
Start by stating which scenarios were used, where they came from, which assumptions were applied, which parts of the business were included, and the time periods covered, so readers can see the basis of the analysis.
Explain what the scenario work is intended to show for the business, including how the chosen scenarios help assess climate-related exposure across the operations in scope and over the selected horizons.
If the analysis changed from the prior period, note whether the shift came from different scenarios, updated assumptions, a wider or narrower scope, or a change in the time horizons reviewed.
Preparation tools & forms
Professional preparation tools for s2-22-b — free with an LRA Community membership. Register once (it's free) and every download unlocks, together with the Disclosure Library, templates and the LRA AI-assistant.
For each claim, check the evidence
Evidence pack to prepare
Common reporting gaps
Mistakes to avoid when collecting the data
Where judgement is often needed
Illustrative examples
Synthetic, written by LRA — not from a company report, not text from any standard.
We used a Paris-aligned pathway to test our 2025 reporting year, looking across our owned plants and contracted power assets in the UK and EU, with a 2030, 2040 and 2050 view for both weather-related and market-shift risks. The scenario pack came from a mix of public climate pathways and our own operating assumptions, including fuel prices, carbon costs, demand trends, technology uptake and plant availability; we judged this analysis relevant because it covers the parts of the business most exposed to policy change, extreme weather and lower-carbon competition. - The review covered 92% of our revenue base and 95% of our asset value, with 88% of revenue and 90% of asset value assessed under the weather-related pathway, and 84% of revenue and 87% of asset value assessed under the market-shift pathway. - The same scenario set was used for both pathways, and the figures above are internally consistent and rounded.
This synthetic disclosure shows how a company can explain the period reviewed, the parts of the business included, the time windows considered, the scenario sources used, the main assumptions applied, and why the exercise matters to the business.
For our 2024 reporting year, we assessed our own factories, distribution centres and key agricultural sourcing regions in the UK, Spain and Brazil against a Paris-aligned pathway, using 2030 and 2040 as the main short- and medium-term checkpoints and 2050 for the longer view. We drew on a public climate scenario set and our internal planning inputs, including crop yield trends, water stress, energy prices, carbon charges, logistics costs and adoption rates for lower-emission equipment; we considered the exercise relevant because it captures the places and activities most likely to be affected by heat, drought, supply disruption and changing customer demand. - The analysis covered 78% of our direct operations and 81% of our purchased-input spend, with 70% of direct operations and 74% of purchased-input spend tested for weather-related effects, and 66% of direct operations and 69% of purchased-input spend tested for transition effects. - These results are based on one scenario set used across the full review, and all percentages are rounded from internally consistent underlying figures.
This synthetic disclosure illustrates how a company can describe the year reviewed, the business footprint included, the time horizons used, the scenario sources and assumptions, the Paris-aligned framing, and the reason the analysis is useful.
How companies report s2-22-b
Real reports where this topic is disclosed. These are report practice, not exact disclosure templates to copy.

Scenarios to work through
A manufacturer has run a climate scenario exercise for its main plants and distribution network. The team used one pathway from a recognised climate model, but the draft note only says the exercise was done and does not explain why that pathway was chosen or what business areas were included.
A retailer has modelled both flood disruption and a rapid policy shift on carbon pricing. The draft wording mentions the two scenario types, but it does not say whether the analysis looked at both short and longer time periods, or how the assumptions were set for policy, market and technology change.
An energy company has used a Paris-aligned pathway for part of its transition planning and a separate physical-risk case for its coastal assets. The draft report says the scenarios were “aligned with climate goals” and “covered risks”, but it does not say whether the analysis included both transition and physical effects, or why those choices were relevant to the company.
A diversified group has prepared a scenario analysis for the current reporting year, but the draft note mixes together assumptions from last year’s model with new assumptions from this year’s planning cycle. It also leaves out the period the analysis relates to, making it hard to tell which year the results describe.
Related framework references
How this disclosure maps across the major reporting frameworks.
Questions this page answers
Start with the plain-language explainer, then work through the step-by-step preparation section, the datapoints to prepare, and the draft-output ideas. The page is designed to help you turn source data into a first draft, not to act as an official source.
The page points you to policy and technology assumptions, Paris pathway use, hazard and transition coverage, why it matters, the analysis period, scenario set and sources, operational scope, and forecast horizons. Use those as the core inputs for your data request and evidence pack.
Use the page’s guidance on operational scope, forecast horizons, analysis period, scenario set and sources, and the way Paris pathway use is described. Keep the methodology tied to the specific assumptions and sources you can evidence.
The page is written for sustainability/ESG managers, HR or data owners, and assurance reviewers, so ownership should sit with the people who can explain the assumptions, sources, and supporting evidence. The step-by-step preparation section and evidence pack are the best places to align responsibilities.
The page includes an evidence pack with five items and six assurance claims to verify, each framed around claim, risk, and evidence. Use those to build a file set that shows how the disclosure was prepared and what supports the numbers and narrative.
The page lists common reporting gaps and mistakes, so use that section as a pre-submission check. It is especially useful for spotting missing scope, unclear assumptions, or weak support for the narrative and figures.
The Download Centre includes a Prep & Assurance workbook in .xlsx format and a printable Library Card in .pdf. Use the workbook to organise the preparation steps, evidence, and draft output before you finalise the disclosure.
The page includes synthetic illustrative example disclosures, including a quantitative table, to show how the disclosure can be presented. Treat them as format and structure examples only, and make sure any numbers you use are internally consistent and based on your own data.
Use the draft-output section, which gives visualisation ideas, narrative starters, and a content-index line. That section is there to help you convert prepared data into a readable draft without having to invent the structure yourself.
The page notes ESRS E1 (Climate Change) as the closest correspondence, so the same underlying data may be reusable across both contexts. It does not say the requirements are identical, so check the other framework separately before relying on the same wording or mapping.
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