2019
DOI: 10.1007/978-3-030-32327-1_15
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An Open Source Dataset and Ontology for Product Footprinting

Abstract: Product footprint describes the environmental impacts of a product system. To identify such impact, Life Cycle Assessment (LCA) takes into account the entire lifespan and production chain, from material extraction to final disposal or recycling. This requires gathering data from a variety of heterogeneous sources, but current access to those is limited and often expensive. The BONSAI project, instead, aims to build a shared resource where the community can contribute to data generation, validation, and managem… Show more

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Cited by 6 publications
(11 citation statements)
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“…Given the complex nature of the production chain of any product, to perform reliable LCSA, analysts need access to data from a variety of heterogeneous sources across countries, scientific and economic sectors, and institutions. To enable the integration of diverse data sources, previous efforts [6] designed an ontology and corresponding open database to allow multiple organizations and researchers to share LCSA data and to make use of such data to produce analysis and models. These efforts lay the foundations of a platform where domain experts can both freely access data to compute and produce new models, but also re-share their results within the same framework.…”
Section: Introductionmentioning
confidence: 99%
“…Given the complex nature of the production chain of any product, to perform reliable LCSA, analysts need access to data from a variety of heterogeneous sources across countries, scientific and economic sectors, and institutions. To enable the integration of diverse data sources, previous efforts [6] designed an ontology and corresponding open database to allow multiple organizations and researchers to share LCSA data and to make use of such data to produce analysis and models. These efforts lay the foundations of a platform where domain experts can both freely access data to compute and produce new models, but also re-share their results within the same framework.…”
Section: Introductionmentioning
confidence: 99%
“…While the ontology design patterns have elements of overlap with the ontology presented here, especially with regard to "spatio-temporal scope" of processes, their concepts are tightly bound to the LCA modelling approach. More recently, the BONSAI project [8] has been developing a broader ontology which aims to catalogue a range of datasets relevant to sustainability assessment. They acknowledge the problems of working with actual data points defined with differing terminology, but also stop short of harmonising individual data points.…”
Section: Related Workmentioning
confidence: 99%
“…In addition, the lack of well-defined data models for this type of data is limiting to data reuse and holding back academic research [19,9]. While progress has been made in developing shared data models [17,18,11,8] and data catalogues [16,14], which improve access to and reuse of relevant datasets, they do not yet confront the fundamental challenge of resolving conflicts where individual datasets are defined in inconsistent ways.…”
Section: Introductionmentioning
confidence: 99%
“…mass, volume, and calories), and assumptions made are not always clear or well-documented, make it difficult for nonexperts to interpret, use, and apply this content to more comprehensive studies like those about healthy and sustainable food. Recently, Ghose et al, (2019) and Ghose (2020) proposed NLP methods for semantic investigation of LCA databases. However, while the sustainability data might be available for individual ingredients, it is still rare for entire recipes.…”
Section: Introductionmentioning
confidence: 99%