LAPSE:2023.28293
Published Article

LAPSE:2023.28293
Tools for Optimization of Biomass-to-Energy Conversion Processes
April 11, 2023
Abstract
Biomasses are renewable sources used in energy conversion processes to obtain diverse products through different technologies. The production chain, which involves delivery, logistics, pre-treatment, storage and conversion as general components, can be costly and uncertain due to inherent variability. Optimization methods are widely applied for modeling the biomass supply chain (BSC) for energy processes. In this qualitative review, the main aspects and global trends of using geographic information systems (GISs), linear programming (LP) and neural networks to optimize the BSC are presented. Modeling objectives and factors considered in studies published in the last 25 years are reviewed, enabling a broad overview of the BSC to support decisions at strategic, tactical and operational levels. Combined techniques have been used for different purposes: GISs for spatial analyses of biomass; neural networks for higher heating value (HHV) correlations; and linear programming and its variations for achieving objectives in general, such as costs and emissions reduction. This study reinforces the progress evidenced in the literature and envisions the increasing inclusion of socio-environmental criteria as a challenge in future modeling efforts.
Biomasses are renewable sources used in energy conversion processes to obtain diverse products through different technologies. The production chain, which involves delivery, logistics, pre-treatment, storage and conversion as general components, can be costly and uncertain due to inherent variability. Optimization methods are widely applied for modeling the biomass supply chain (BSC) for energy processes. In this qualitative review, the main aspects and global trends of using geographic information systems (GISs), linear programming (LP) and neural networks to optimize the BSC are presented. Modeling objectives and factors considered in studies published in the last 25 years are reviewed, enabling a broad overview of the BSC to support decisions at strategic, tactical and operational levels. Combined techniques have been used for different purposes: GISs for spatial analyses of biomass; neural networks for higher heating value (HHV) correlations; and linear programming and its variations for achieving objectives in general, such as costs and emissions reduction. This study reinforces the progress evidenced in the literature and envisions the increasing inclusion of socio-environmental criteria as a challenge in future modeling efforts.
Record ID
Keywords
biomass supply chain, energy processes, mathematical programming, optimization models
Subject
Suggested Citation
Batista RM, Converti A, Pappalardo J, Benachour M, Sarubbo LA. Tools for Optimization of Biomass-to-Energy Conversion Processes. (2023). LAPSE:2023.28293
Author Affiliations
Batista RM: Departamento de Engenharia Química, Universidade Federal de Pernambuco (UFPE), Av. dos Economistas, s/n, Recife 50740-590, Pernambuco, Brazil; Instituto Avançado de Tecnologia e Inovação (IATI), Rua Potyra, n. 31, Prado, Recife 50751-310, Pernambuco,
Converti A: Instituto Avançado de Tecnologia e Inovação (IATI), Rua Potyra, n. 31, Prado, Recife 50751-310, Pernambuco, Brazil; Dipartimento di Ingegneria Civile, Chimica e Ambientale, Università degli Studi di Genova (UNIGE), Pole of Chemical Engineering, Via Op [ORCID]
Pappalardo J: Instituto Avançado de Tecnologia e Inovação (IATI), Rua Potyra, n. 31, Prado, Recife 50751-310, Pernambuco, Brazil
Benachour M: Departamento de Engenharia Química, Universidade Federal de Pernambuco (UFPE), Av. dos Economistas, s/n, Recife 50740-590, Pernambuco, Brazil; Instituto Avançado de Tecnologia e Inovação (IATI), Rua Potyra, n. 31, Prado, Recife 50751-310, Pernambuco, [ORCID]
Sarubbo LA: Departamento de Engenharia Química, Universidade Federal de Pernambuco (UFPE), Av. dos Economistas, s/n, Recife 50740-590, Pernambuco, Brazil; Instituto Avançado de Tecnologia e Inovação (IATI), Rua Potyra, n. 31, Prado, Recife 50751-310, Pernambuco, [ORCID]
Converti A: Instituto Avançado de Tecnologia e Inovação (IATI), Rua Potyra, n. 31, Prado, Recife 50751-310, Pernambuco, Brazil; Dipartimento di Ingegneria Civile, Chimica e Ambientale, Università degli Studi di Genova (UNIGE), Pole of Chemical Engineering, Via Op [ORCID]
Pappalardo J: Instituto Avançado de Tecnologia e Inovação (IATI), Rua Potyra, n. 31, Prado, Recife 50751-310, Pernambuco, Brazil
Benachour M: Departamento de Engenharia Química, Universidade Federal de Pernambuco (UFPE), Av. dos Economistas, s/n, Recife 50740-590, Pernambuco, Brazil; Instituto Avançado de Tecnologia e Inovação (IATI), Rua Potyra, n. 31, Prado, Recife 50751-310, Pernambuco, [ORCID]
Sarubbo LA: Departamento de Engenharia Química, Universidade Federal de Pernambuco (UFPE), Av. dos Economistas, s/n, Recife 50740-590, Pernambuco, Brazil; Instituto Avançado de Tecnologia e Inovação (IATI), Rua Potyra, n. 31, Prado, Recife 50751-310, Pernambuco, [ORCID]
Journal Name
Processes
Volume
11
Issue
3
First Page
854
Year
2023
Publication Date
2023-03-13
ISSN
2227-9717
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Original Submission
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PII: pr11030854, Publication Type: Review
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LAPSE:2023.28293
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https://doi.org/10.3390/pr11030854
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Apr 11, 2023
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