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Ökobilanzierer auf Datensuche

Neuronale Netze zur Umweltwirkungsbewertung von Chemikalien

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Abstract

Data gaps are a challenge for the majority of life cycle assessments. This paper describes how a database, containing pre-calculated values for cumulated energy demand, carbon footprint and Eco-indicator for over 14 000 chemicals was realized. The FineChem-Tool was used to calculate the indicators by artificial neural networks.

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Notes

  1. Die Richtlinien der IUPAC (International Union of Pure and Applied Chemistry) regeln die Namensgebung chemischer Stoffe.

  2. CAS: Abk. für Chemical Abstracts Service. Jeder CAS-Nummer kann über die CAS-Datenbank eindeutig ein chemischer Stoff zugeordnet werden.

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Correspondence to Mieke Klein.

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Klein, M., Stock, M. Ökobilanzierer auf Datensuche. uwf 24, 25–28 (2016). https://doi.org/10.1007/s00550-016-0393-8

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  • DOI: https://doi.org/10.1007/s00550-016-0393-8

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