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Title A Hybrid Recommender System to Improve Circular Economy in Industrial Symbiotic Networks
ID_Doc 20133
Authors Gatzioura, A; Sànchez-Marrè, M; Gibert, K
Title A Hybrid Recommender System to Improve Circular Economy in Industrial Symbiotic Networks
Year 2019
Published Energies, 12, 18
DOI 10.3390/en12183546
Abstract Recently, the need of improved resource trading has arisen due to resource limitations and energy optimization problems. Various platforms supporting resource exchange and waste reuse in industrial symbiotic networks are being developed. However, the actors participating in these networks still mainly act based on predefined patterns, without taking the possible alternatives into account, usually due to the difficulty of properly evaluating them. Therefore, incorporating intelligence into the platforms that these networks use, supporting the involved actors to automatically find resources able to cover their needs, is still of high importance both for the companies and the whole ecosystem. In this work, we present a hybrid recommender system to support users in properly identifying the symbiotic relationships that might provide them an improved performance. This recommender combines a graph-based model for resource similarities, while it follows the basic case-based reasoning processes to generate resource recommendations. Several criteria, apart from resource similarity, are taken into account to generate, each time, the list of the most suitable solutions. As highlighted through a use case scenario, the proposed system could play a key role in the emerging industrial symbiotic platforms, as the majority of them still do not incorporate automatic decision support mechanisms.
Author Keywords hybrid recommender systems; industrial symbiotic networks; case-based reasoning; waste optimization; energy consumption optimization
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:000489101200142
WoS Category Energy & Fuels
Research Area Energy & Fuels
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