Charlotte Degot: A more accurate way to calculate emissions | TED

40,876 views ・ 2022-01-06

TED


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Transcriber: Leslie Gauthier Reviewer:
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For decades now,
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we’ve been saying we should reduce our emissions,
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but they’ve kept increasing.
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One of the key reasons is we don’t measure accurately
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the climate impact of our actions.
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Imagine trying to save money,
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but when you go shopping,
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there is no price tag on any item ...
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or trying to lose weight,
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but you cannot measure the portion sizes and the calories.
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You would be bound to fail.
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This level of blindness is close to the one we have
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when it comes to our climate impact.
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Measuring greenhouse gas emissions is hard.
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It has no color,
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it has no smell;
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it’s invisible.
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We cannot put sensors everywhere,
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on every building,
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every track,
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every field,
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every cow --
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so most of the time,
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we give up and we don’t measure.
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And when we do measure,
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we are reduced to relying on estimations
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and conversion factors.
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The consequence is we end up working with highly incomplete
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and inaccurate estimations of our emissions.
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Often we have a margin of error of 30 to 60 percent.
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This means targets and action plans are set
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based on inaccurate data.
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If we look at the corporations
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that report their progress on climate to the CDP,
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which is a nonprofit organization that runs a global disclosure system
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for environmental impacts,
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what we see is striking:
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more than two-thirds of the companies
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are not accurately measuring their emissions,
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and only seven percent of those companies
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are ultimately reducing their impact in some way.
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You cannot reduce what you cannot measure.
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It is key for corporations to be able to measure across all activities,
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all sources that drive carbon up or down.
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In a way,
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that’s just putting the same rigor to carbon measurements
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that we have for financial accounting.
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It took more than 100 years to put modern, automated financial accounting in place.
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We don’t have 100 years when it comes to climate.
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But this is crucial for corporations to set meaningful targets
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and successful action plans.
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One of the most powerful tools we have
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to help us accelerate on this journey is artificial intelligence.
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Artificial intelligence can process data automatically
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from diverse, unstructured sources
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like invoices, consumer behavior data.
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It can work by modeling to better estimate the missing information.
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It can simulate and ultimately optimize emissions.
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Let me share an example of how this could work.
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A wine and spirits international company:
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billions of sales,
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hundreds of brands,
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consumers across the globe.
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When they want to measure their impact,
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they need to measure across the entire set of their emissions.
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This means direct emissions from facilities,
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purchased electricity,
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raw materials,
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leased assets,
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IT emissions
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business travel,
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transportation,
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waste,
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product end of life,
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etcetera, etcetera.
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That’s a huge amount of information to collect.
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And most of it is actually inaccessible to the company itself
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because it comes from outside its direct scope of activity.
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For example,
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from suppliers that are not yet able to calculate their emissions either.
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So when the sustainability team calculates their impact,
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they have no choice but to do rough estimates.
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Let’s examine the glass for bottles.
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The way they calculate glass emissions is the following.
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They take the total amount of glass bought last year --
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let’s say 1,000 tons.
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They multiply it by a conversion factor,
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which represents the average kilos of CO2 equivalent for one ton of glass --
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let’s say 950.
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950 x 1000 makes 950,000.
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Of course this is hugely inaccurate
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because it does not take into account
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all the numerous factors that impact actual emissions,
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so it’s hard to set targets and action plans.
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This is where the sustainability team calls data scientists
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to come in and process detailed data about the type of glass,
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the color of the glass,
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the recycling share,
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the supplier country of origin,
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the transportation mode,
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by brand,
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by product.
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They can simulate the design and the supply chain
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and integrate in the calculation
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the importance of the glass color --
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1.5 times more emissions for a clear bottle
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versus a green bottle;
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the importance of the country of origin --
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twice the amount of emissions for one country versus another one,
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depending on the energy mix;
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the importance of the design itself --
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for the same total weight,
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1.5 times more emissions for one design versus another one.
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Instead of having one big, average number,
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you now have a model which correlates and calculates emissions
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at a granular level.
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With this type of methodology,
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the emissions figure is typically corrected by 30 to 50 percent.
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And more importantly,
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the company can now move to action
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as they can, one, set meaningful targets,
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two, identify very concrete initiatives,
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and three,
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recalculate emissions over time and measure their progress.
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Let me share another example:
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cement.
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Cement is a massive CO2 emitter.
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If cement were a country,
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it would rank as the third-largest emitter,
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right after China and the US,
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in front of the European Union and India.
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Most of the emissions come from the process of producing clinker,
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the key ingredient in cement.
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To produce clinker,
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you need to maintain a temperature of over 1,400 degrees Celsius.
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It requires a lot of fuel,
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and it’s really just carbon containing the whole materials.
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So the secret sauce is to produce cleaner and higher quality clinker,
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because the higher the quality of the clinker,
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the less of it you will need to produce cement ultimately,
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and therefore the less emissions you will generate.
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But producing high-quality clinker is a complex science.
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It depends on multiple factors that influence each other.
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For example, the process parameters,
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like the rotation speed of the machine,
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how quickly you fill it,
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the type of fuel you use,
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the raw materials and their exact chemical composition.
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This is where artificial intelligence can again have an enormous impact.
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On-site operational teams are trying to manually maintain
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the best set of parameters possible.
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AI can help by measuring better through different sources,
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like direct measurements,
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material and mass balance,
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etcetera ...
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simulate all the potential decisions
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and recommend the optimal ones to the operators.
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These techniques implemented in a cement production process
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enable a substantial emissions reduction
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in a matter of months.
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There is an infinity of applications possible.
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There is no company,
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no industry that cannot derive significant climate impact
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from the use of artificial intelligence.
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I’m not saying artificial intelligence alone will save us.
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But artificial intelligence,
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by helping us measure accurately,
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simulate
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and optimize,
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enables significant emissions reduction
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in a quite fast, cheap and easy way.
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We cannot miss this opportunity.
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Thank you.
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