EIOLCA

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An economic input-output life-cycle assessment, or EIO-LCA involves the use of aggregate sector-level data to quantify the amount of environmental impact that can be directly attributed to each sector of the economy and how much each sector purchases from other sectors in producing its output. Combining such data sets can enable accounting for long chains (for example, building an automobile requires energy, but producing energy requires vehicles, and building those vehicles requires energy, etc.), which somewhat alleviates the scoping problem of traditional Life-cycle assessments. EIO-LCA analysis traces out the various economic transactions, resource requirements and environmental emissions (including all the various manufacturing, transportation, mining and related requirements) required for producing a particular product or service.

Life-cycle assessment is a technique to assess environmental impacts associated with all the stages of a product's life from raw material extraction through materials processing, manufacture, distribution, use, repair and maintenance, and disposal or recycling. Designers use this process to help critique their products. LCAs can help avoid a narrow outlook on environmental concerns by:

Contents

EIO-LCA relies on sector-level averages that may or may not be representative of the specific subset of the sector relevant to a particular product. To the extent that the good or service of interest is representative of a sector, EIOLCA can provide very fast estimates of full supply chain implications for that good or service.

Background

Economic input-output analysis was developed by the Nobel Prize-winning economist Wassily Leontief. It quantifies the interrelationships among sectors of an economic system, enabling identification of direct and indirect economic inputs of purchases. This concept was extended by including data about environmental and energy analysis from each sector to account for supply chain environmental implications of economic activity. [1]

The Nobel Memorial Prize in Economic Sciences, commonly referred to as the Nobel Prize in Economics, is an award for outstanding contributions to the field of economics, and generally regarded as the most prestigious award for that field. The award's official name is The Sveriges Riksbank Prize in Economic Sciences in Memory of Alfred Nobel.

Wassily Leontief Russian economist

Wassily Wassilyevich Leontief, was a Russian-American economist known for his research on input-output analysis and how changes in one economic sector may affect other sectors.

Supply chain system of organizations, people, activities, information, and resources involved in moving a product or service from the point where it is manufactured to where it is consumed

A supply chain is a system of organizations, people, activities, information, and resources involved in moving a product or service from supplier to customer. Supply chain activities involve the transformation of natural resources, raw materials, and components into a finished product that is delivered to the end customer. In sophisticated supply chain systems, used products may re-enter the supply chain at any point where residual value is recyclable. Supply chains link value chains.

Theory

Input-output transactions tables, which track flows of purchases between sectors, are collected by the federal government in the United States. EIO works as follows: If represents the amount that sector purchased from sector in a given year and is the "final demand" for output from sector (i.e., the amount of output purchased for consumption, as opposed to purchased by other businesses as supplies for more production), then the total output from sector includes output to consumers plus output sold to other sectors:

If we define as the normalized production for each sector, so that , then

In vector notation

This result indicates that knowing only the final demand from each sector and the normalized IO matrix , one can calculate the total implied production from each sector of the economy. If data are available on a particular emissions release (or other attribute of interest) from each sector of the economy, then a matrix can be compiled to represent various releases (columns) per $ output from each sector (rows). Total additional emissions associated with additional final demand of can then be calculated as:

This simple result enables very quick analysis, taking into account releases associated with the entire supply chain requirements needed to provide a specific final demand, on average. The equations are based on average data in the current economy, but they can be used to make predictions for marginal changes in output (such as one more unit of a particular product) if

  1. average output and marginal output are assumed to be sufficiently close (i.e., the impact of one more unit = the impact of the average unit), and
  2. the marginal change in final output is representative of the product of interest (ex: if the product will use electricity from wind energy exclusively, then using the electricity sector, which is dominated by coal, would yield a poor estimate).

Finally, if the researcher has estimates for valuation of externality costs associated with each item in (or, alternatively, if weighting coefficients are available that represent the relative importance of each item in , using ecological indicators, for example) then the externality costs (or weights) per unit of releases could be compiled into a vector in order to calculate the scalar "environmental impact metric" :

Externality an impact on any party not involved in a given economic transaction or act

In economics, an externality is the cost or benefit that affects a party who did not choose to incur that cost or benefit.

Ecological indicators are used to communicate information about ecosystems and the impact human activity has on ecosystems to groups such as the public or government policy makers. Ecosystems are complex and ecological indicators can help describe them in simpler terms that can be understood and used by non-scientists to make management decisions. For example, the number of different beetle taxa found in a field can be used as an indicator of biodiversity.

Generally there is wide uncertainty associated with estimates of , so such aggregation should be done only with care, including sensitivity analysis. Typically, researchers examine specific elements of rather than attempting to aggregate.

Sensitivity analysis is the study of how the uncertainty in the output of a mathematical model or system can be apportioned to different sources of uncertainty in its inputs. A related practice is uncertainty analysis, which has a greater focus on uncertainty quantification and propagation of uncertainty; ideally, uncertainty and sensitivity analysis should be run in tandem.

The big picture result is that by collecting data on average economic sector transactions and average sector emissions , it is possible to make quick predictions about the full supply chain emissions associated with a product of interest by representing the product as marginal changes in production from relevant sectors .

Software

Researchers at the Green Design Institute of Carnegie Mellon University began developing a web-based tool for performing an EIO-LCA in the 1990s. The underlying software [2] traces out the various economic transactions, resource requirements and environmental emissions associated with the production of a particular product or service. The model captures all the various manufacturing, transportation, mining and related requirements to produce a product or service. For example, one might wish to trace out the implications of purchasing $ 46,000 of reinforcing steel and $ 104,000 of concrete for a kilometer of roadway pavement. Environmental implications of these purchases can be estimated using EIO-LCA. The current (2002) model is based upon the Department of Commerce's 428 sector industry input-output model of the US economy.

Carnegie Mellon University private research university in Pittsburgh, Pennsylvania, United States

Carnegie Mellon University (CMU) is a private research university based in Pittsburgh, Pennsylvania. Founded in 1900 by Andrew Carnegie as the Carnegie Technical Schools, the university became the Carnegie Institute of Technology in 1912 and began granting four-year degrees. In 1967, the Carnegie Institute of Technology merged with the Mellon Institute of Industrial Research to form Carnegie Mellon University. With its main campus located 3 miles (5 km) from Downtown Pittsburgh, Carnegie Mellon has grown into an international university with over a dozen degree-granting locations in six continents, including campuses in Qatar and Silicon Valley, and more than 20 research partnerships.

In 2018, VitalMetrics Group, an environmental consultancy, developed a web-based Spend Analysis Tool [3] for quantifying the environmental impacts associated with an organization’s entire upstream supply chain. It is compliant with the approach for quantifying spend-based impacts defined in the Greenhouse Gas Protocol Corporate Value Chain Accounting and Reporting Standard. The tool utilizes the Comprehensive Environmental Data Archive (CEDA) [4] , a peer-reviewed EIO-LCA database with a base year of 2014. CEDA represents 389 industrial sectors, the commodities and the linkages between them, and over 2,700 environmental exchanges arising from them, including extraction of various natural resources, water consumption, land use, and emissions to air, water and soil.

This article uses text from Design Decisions Wiki under the GFDL.

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References

  1. Hendrickson, C. T., Lave, L. B., and Matthews, H. S. (2005) Environmental Life Cycle Assessment of Goods and Services: An Input-Output Approach, Resources for the Future Press. ISBN   978-1-933115-24-5
  2. www.eiolca.net
  3. www.vitalmetricsgroup.com/sustainability-tools/
  4. Suh, S., 2005: Developing Sectoral Environmental Database for Input-Output Analysis: Comprehensive Environmental Data Archive of the U.S., Economic Systems Research, 17 (4), 449 – 469] https://www.tandfonline.com/doi/abs/10.1080/09535310500284326