Matches in SemOpenAlex for { <https://semopenalex.org/work/W3175261774> ?p ?o ?g. }
- W3175261774 endingPage "293" @default.
- W3175261774 startingPage "281" @default.
- W3175261774 abstract "Abstract Industrial Ecology Virtual Laboratories (IELabs) enable the construction of national‐to‐local‐scale multi‐regional input–output (MRIO) models. These IELabs have been proven to be especially important for analyzing research questions that warrant sub‐national spatial detail. The field of industrial ecology has clearly progressed from the time of national‐only input–output tables. Here, we present a newly developed tool called NLab—“nested IELab”—that nests sub‐national MRIO tables within global country‐scale MRIOs. This capability allows for the investigation of interactions between sub‐national production and consumption systems, with global systems interlinked via international trade. We provide a technical and mathematical roadmap for construction of nested input–output tables in the NLab, and demonstrate this capability through a real‐world assessment of the Western Australian wine industry. Our results suggest that nested MRIO tables provide an added layer of detail at a regional level, when undertaking consumption‐based footprint assessments, leading to improved assessment of quantification of regional impacts. The NLab presented in this work provides tools for analysis of complex trade linkages between industries at various scales, which has the further potential to open avenues for policy‐makers to analyze the implications of local decisions at a global level, and vice versa." @default.
- W3175261774 created "2021-07-05" @default.
- W3175261774 creator A5013950932 @default.
- W3175261774 creator A5015514719 @default.
- W3175261774 creator A5017498403 @default.
- W3175261774 creator A5040650446 @default.
- W3175261774 creator A5046172737 @default.
- W3175261774 creator A5058179400 @default.
- W3175261774 creator A5060434375 @default.
- W3175261774 creator A5080136481 @default.
- W3175261774 date "2021-06-23" @default.
- W3175261774 modified "2023-10-15" @default.
- W3175261774 title "Creating multi‐scale nested MRIO tables for linking localized impacts to global consumption drivers" @default.
- W3175261774 cites W1590488950 @default.
- W3175261774 cites W1906176694 @default.
- W3175261774 cites W1967879531 @default.
- W3175261774 cites W1975092843 @default.
- W3175261774 cites W1986946785 @default.
- W3175261774 cites W1990488717 @default.
- W3175261774 cites W2003348373 @default.
- W3175261774 cites W2015189584 @default.
- W3175261774 cites W2044813743 @default.
- W3175261774 cites W2058153538 @default.
- W3175261774 cites W2121752161 @default.
- W3175261774 cites W2126088542 @default.
- W3175261774 cites W2128405303 @default.
- W3175261774 cites W2314675513 @default.
- W3175261774 cites W2342273644 @default.
- W3175261774 cites W2461441799 @default.
- W3175261774 cites W2479877152 @default.
- W3175261774 cites W2513450011 @default.
- W3175261774 cites W2557211290 @default.
- W3175261774 cites W2585832707 @default.
- W3175261774 cites W2602861553 @default.
- W3175261774 cites W2606115354 @default.
- W3175261774 cites W2608321268 @default.
- W3175261774 cites W2616875255 @default.
- W3175261774 cites W2617308230 @default.
- W3175261774 cites W2617382745 @default.
- W3175261774 cites W2617743665 @default.
- W3175261774 cites W2618604058 @default.
- W3175261774 cites W2625055030 @default.
- W3175261774 cites W2766153967 @default.
- W3175261774 cites W2770249901 @default.
- W3175261774 cites W2781937795 @default.
- W3175261774 cites W2802730814 @default.
- W3175261774 cites W2947355371 @default.
- W3175261774 cites W2968730968 @default.
- W3175261774 cites W2985539471 @default.
- W3175261774 cites W2994716441 @default.
- W3175261774 cites W2997402897 @default.
- W3175261774 cites W2999762634 @default.
- W3175261774 cites W3007038821 @default.
- W3175261774 cites W4212876008 @default.
- W3175261774 doi "https://doi.org/10.1111/jiec.13165" @default.
- W3175261774 hasPublicationYear "2021" @default.
- W3175261774 type Work @default.
- W3175261774 sameAs 3175261774 @default.
- W3175261774 citedByCount "5" @default.
- W3175261774 countsByYear W31752617742021 @default.
- W3175261774 countsByYear W31752617742022 @default.
- W3175261774 countsByYear W31752617742023 @default.
- W3175261774 crossrefType "journal-article" @default.
- W3175261774 hasAuthorship W3175261774A5013950932 @default.
- W3175261774 hasAuthorship W3175261774A5015514719 @default.
- W3175261774 hasAuthorship W3175261774A5017498403 @default.
- W3175261774 hasAuthorship W3175261774A5040650446 @default.
- W3175261774 hasAuthorship W3175261774A5046172737 @default.
- W3175261774 hasAuthorship W3175261774A5058179400 @default.
- W3175261774 hasAuthorship W3175261774A5060434375 @default.
- W3175261774 hasAuthorship W3175261774A5080136481 @default.
- W3175261774 hasBestOaLocation W31752617741 @default.
- W3175261774 hasConcept C10138342 @default.
- W3175261774 hasConcept C127413603 @default.
- W3175261774 hasConcept C134560507 @default.
- W3175261774 hasConcept C139719470 @default.
- W3175261774 hasConcept C144024400 @default.
- W3175261774 hasConcept C144133560 @default.
- W3175261774 hasConcept C162324750 @default.
- W3175261774 hasConcept C18903297 @default.
- W3175261774 hasConcept C202444582 @default.
- W3175261774 hasConcept C205649164 @default.
- W3175261774 hasConcept C2776916960 @default.
- W3175261774 hasConcept C2778348673 @default.
- W3175261774 hasConcept C2778755073 @default.
- W3175261774 hasConcept C30772137 @default.
- W3175261774 hasConcept C33923547 @default.
- W3175261774 hasConcept C36289849 @default.
- W3175261774 hasConcept C40700 @default.
- W3175261774 hasConcept C41008148 @default.
- W3175261774 hasConcept C42475967 @default.
- W3175261774 hasConcept C58640448 @default.
- W3175261774 hasConcept C66204764 @default.
- W3175261774 hasConcept C70401792 @default.
- W3175261774 hasConcept C83516724 @default.
- W3175261774 hasConcept C86803240 @default.
- W3175261774 hasConcept C9652623 @default.
- W3175261774 hasConceptScore W3175261774C10138342 @default.