Actionable insights with less data: guiding early building design decisions with streamlined probabilistic life cycle assessment

Abstract Purpose Two obstacles that impede wider use of life cycle assessment (LCA) are its time- and data-intensiveness and the credibility surrounding its results—challenges that grow with the complexity of the product being analyzed. To guide the...

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Main Authors: Hester, Joshua, Miller, T. R, Gregory, Jeremy, Kirchain, Randolph
Other Authors: Massachusetts Institute of Technology. Department of Civil and Environmental Engineering
Format: Article
Language:English
Published: Springer Berlin Heidelberg 2021
Online Access:https://hdl.handle.net/1721.1/131393
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author Hester, Joshua
Miller, T. R
Gregory, Jeremy
Kirchain, Randolph
author2 Massachusetts Institute of Technology. Department of Civil and Environmental Engineering
author_facet Massachusetts Institute of Technology. Department of Civil and Environmental Engineering
Hester, Joshua
Miller, T. R
Gregory, Jeremy
Kirchain, Randolph
author_sort Hester, Joshua
collection MIT
description Abstract Purpose Two obstacles that impede wider use of life cycle assessment (LCA) are its time- and data-intensiveness and the credibility surrounding its results—challenges that grow with the complexity of the product being analyzed. To guide the critical early-design stages of a complicated product like a building, it is important to be able to rapidly estimate environmental impacts with limited information, quantify the resulting uncertainty, and identify critical parameters where more detail is needed. Methods The authors have developed the Building Attribute to Impact Algorithm (BAIA) to demonstrate the use of streamlined (not scope-limiting), probabilistic LCA for guiding the design of a building from early stages of the design process when many aspects of the design are unknown or undecided. Early-design uncertainty is accommodated through under-specification—characterizing the design using the available level of detail—and capturing the resulting variability in predicted impacts through Monte Carlo simulations. Probabilistic triage with sensitivity analyses identifies which uncertain attributes should be specified further to increase the precision of the results. The speed of the analyses allows for sequentially refining key attributes and re-running the analyses until the predicted impacts are precise enough to inform decision-making, such as choosing a preferable design alternative. Results and discussion Twelve design variants for a hypothetical single-family residential building are analyzed. As information is sequentially added to each variant, the significance of the difference in performance between each variant pair is calculated to determine when enough information has been added to resolve the designs (identify which design is preferable) with high confidence. At the sixth step in the analysis, all variant pairs whose mean impacts differ by at least 4% are resolvable with 90% confidence, even though only six attributes are specified and dozens of attributes remain under-specified. Furthermore, the comparative results for each variant pair are validated against a set of conventional LCA results, showing that BAIA identifies the correct preferable design among each resolvable pair at this step. Conclusions Iterative specification guided by probabilistic triage can help identify promising early-design alternatives even when details are only provided for key attributes. The analysis of hypothetical design variants demonstrates that BAIA is both efficient (arrives at statistically defensible conclusions from design variant comparisons based on few pieces of information) and effective (identifies the same preferable design variants as conventional LCAs).
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spelling mit-1721.1/1313932023-09-19T18:36:55Z Actionable insights with less data: guiding early building design decisions with streamlined probabilistic life cycle assessment Hester, Joshua Miller, T. R Gregory, Jeremy Kirchain, Randolph Massachusetts Institute of Technology. Department of Civil and Environmental Engineering Abstract Purpose Two obstacles that impede wider use of life cycle assessment (LCA) are its time- and data-intensiveness and the credibility surrounding its results—challenges that grow with the complexity of the product being analyzed. To guide the critical early-design stages of a complicated product like a building, it is important to be able to rapidly estimate environmental impacts with limited information, quantify the resulting uncertainty, and identify critical parameters where more detail is needed. Methods The authors have developed the Building Attribute to Impact Algorithm (BAIA) to demonstrate the use of streamlined (not scope-limiting), probabilistic LCA for guiding the design of a building from early stages of the design process when many aspects of the design are unknown or undecided. Early-design uncertainty is accommodated through under-specification—characterizing the design using the available level of detail—and capturing the resulting variability in predicted impacts through Monte Carlo simulations. Probabilistic triage with sensitivity analyses identifies which uncertain attributes should be specified further to increase the precision of the results. The speed of the analyses allows for sequentially refining key attributes and re-running the analyses until the predicted impacts are precise enough to inform decision-making, such as choosing a preferable design alternative. Results and discussion Twelve design variants for a hypothetical single-family residential building are analyzed. As information is sequentially added to each variant, the significance of the difference in performance between each variant pair is calculated to determine when enough information has been added to resolve the designs (identify which design is preferable) with high confidence. At the sixth step in the analysis, all variant pairs whose mean impacts differ by at least 4% are resolvable with 90% confidence, even though only six attributes are specified and dozens of attributes remain under-specified. Furthermore, the comparative results for each variant pair are validated against a set of conventional LCA results, showing that BAIA identifies the correct preferable design among each resolvable pair at this step. Conclusions Iterative specification guided by probabilistic triage can help identify promising early-design alternatives even when details are only provided for key attributes. The analysis of hypothetical design variants demonstrates that BAIA is both efficient (arrives at statistically defensible conclusions from design variant comparisons based on few pieces of information) and effective (identifies the same preferable design variants as conventional LCAs). 2021-09-20T17:16:53Z 2021-09-20T17:16:53Z 2018-01-08 2020-09-24T21:04:00Z Article http://purl.org/eprint/type/JournalArticle https://hdl.handle.net/1721.1/131393 en https://doi.org/10.1007/s11367-017-1431-7 Article is made available in accordance with the publisher's policy and may be subject to US copyright law. Please refer to the publisher's site for terms of use. Springer-Verlag GmbH Germany, part of Springer Nature application/pdf Springer Berlin Heidelberg Springer Berlin Heidelberg
spellingShingle Hester, Joshua
Miller, T. R
Gregory, Jeremy
Kirchain, Randolph
Actionable insights with less data: guiding early building design decisions with streamlined probabilistic life cycle assessment
title Actionable insights with less data: guiding early building design decisions with streamlined probabilistic life cycle assessment
title_full Actionable insights with less data: guiding early building design decisions with streamlined probabilistic life cycle assessment
title_fullStr Actionable insights with less data: guiding early building design decisions with streamlined probabilistic life cycle assessment
title_full_unstemmed Actionable insights with less data: guiding early building design decisions with streamlined probabilistic life cycle assessment
title_short Actionable insights with less data: guiding early building design decisions with streamlined probabilistic life cycle assessment
title_sort actionable insights with less data guiding early building design decisions with streamlined probabilistic life cycle assessment
url https://hdl.handle.net/1721.1/131393
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AT gregoryjeremy actionableinsightswithlessdataguidingearlybuildingdesigndecisionswithstreamlinedprobabilisticlifecycleassessment
AT kirchainrandolph actionableinsightswithlessdataguidingearlybuildingdesigndecisionswithstreamlinedprobabilisticlifecycleassessment