A decision support system for eco-efficient biorefinery process comparison using a semantic approach

Abstract : Enzymatic hydrolysis of the main components of lignocellulosic biomass is one of the promising methods to further upgrading it into biofuels. Biomass pre-treatment is an essential step in order to reduce cellu- lose crystallinity, increase surface and porosity and separate the major constituents of biomass. Scientific literature in this domain is increasing fast and could be a valuable source of data. As these abundant sci- entific data are mostly in textual format and heterogeneously structured, using them to compute biomass pre-treatment efficiency is not straightforward. This paper presents the implementation of a Decision Support System (DSS) based on an original pipeline coupling knowledge engineering (KE) based on semantic web technologies, soft computing techniques and environmental factor computation. The DSS allows using data found in the literature to assess environmental sustainability of biorefinery sys- tems. The pipeline permits to: (1) structure and integrate relevant experimental data, (2) assess data source reliability, (3) compute and visualize green indicators taking into account data imprecision and source reliability. This pipeline has been made possible thanks to innovative researches in the coupling of ontologies, uncertainty management and propagation. In this first version, data acquisition is done by experts and facilitated by a termino-ontological resource. Data source reliability assessment is based on domain knowledge and done by experts. The operational prototype has been used by field experts on a realistic use case (rice straw). The obtained results have validated the usefulness of the system. Further work will address the question of a higher automation level for data acquisition and data source reliabil- ity assessment.
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Article dans une revue
Computers and Electronics in Agriculture, Elsevier, 2016, 127, pp.351-367. 〈10.1016/j.compag.2016.06.020〉
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https://hal-lirmm.ccsd.cnrs.fr/lirmm-01346685
Contributeur : Isabelle Gouat <>
Soumis le : mardi 19 juillet 2016 - 14:29:04
Dernière modification le : samedi 27 janvier 2018 - 01:30:43

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Charlotte Lousteau-Cazalet, Abdellatif Barakat, Jean-Pierre Belaud, Patrice Buche, Guillaume Busset, et al.. A decision support system for eco-efficient biorefinery process comparison using a semantic approach. Computers and Electronics in Agriculture, Elsevier, 2016, 127, pp.351-367. 〈10.1016/j.compag.2016.06.020〉. 〈lirmm-01346685〉

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