TY - JOUR
T1 - Fuzzy mixed integer non-linear programming model for the design of an algae-based eco-industrial park with prospective selection of support tenants under product price variability
AU - Ubando, Aristotle T.
AU - Culaba, Alvin B.
AU - Aviso, Kathleen B.
AU - Tan, Raymond R.
AU - Cuello, Joel L.
AU - Ng, Denny K.S.
AU - El-Halwagi, Mahmoud M.
N1 - Funding Information:
The financial support of the Fulbright Philippine Agriculture Scholarship Program through the Philipine-American Educational Foundation , the Philippine Commission on Higher Education through the PHERNet program and the Faculty Development Program of De La Salle University for the Ph.D. studies of the first author is gratefully acknowledged.
Publisher Copyright:
© 2016 Elsevier Ltd
PY - 2016/11/10
Y1 - 2016/11/10
N2 - Eco-industrial parks provide a platform for the application of industrial symbiosis where the synergistic network of companies reuse portions of their by-products to reduce disposed waste, reduce environmental emissions, and improve plant efficiency. However, designing a complex network of material and energy exchanges between companies in an industrial park while satisfying multiple conflicting objectives require a systematic design methodology. In addition, strategic decision-making in an eco-industrial park involves the selection of prospective companies (i.e., support tenants), which complement the existing companies (i.e., anchor tenants). In this study, a fuzzy mixed-integer non-linear programming model is proposed to select prospective support tenants in an eco-industrial park while satisfying the product demand, minimizing the environmental footprint of the eco-industrial park, and also maximizing the annualized profit of each company in the eco-industrial park. A hypothetical but realistic case study involving an algae-based eco-industrial park is used to demonstrate the application of the model. The results demonstrate the selection of the appropriate support tenants for the algae-based eco-industrial park together with the optimal plant configuration. Sensitivity analysis is used to assess the performance of the algae-based eco-industrial park with respect to the changes in prices of the by-products. The developed model thus aid the planners of an eco-industrial park in assessing which among the prospective support tenants would best complements an existing anchor tenant. Furthermore, the model can also identify price negotiation points between tenants for some product streams which may show sensitivity on the plant capacity of each tenant.
AB - Eco-industrial parks provide a platform for the application of industrial symbiosis where the synergistic network of companies reuse portions of their by-products to reduce disposed waste, reduce environmental emissions, and improve plant efficiency. However, designing a complex network of material and energy exchanges between companies in an industrial park while satisfying multiple conflicting objectives require a systematic design methodology. In addition, strategic decision-making in an eco-industrial park involves the selection of prospective companies (i.e., support tenants), which complement the existing companies (i.e., anchor tenants). In this study, a fuzzy mixed-integer non-linear programming model is proposed to select prospective support tenants in an eco-industrial park while satisfying the product demand, minimizing the environmental footprint of the eco-industrial park, and also maximizing the annualized profit of each company in the eco-industrial park. A hypothetical but realistic case study involving an algae-based eco-industrial park is used to demonstrate the application of the model. The results demonstrate the selection of the appropriate support tenants for the algae-based eco-industrial park together with the optimal plant configuration. Sensitivity analysis is used to assess the performance of the algae-based eco-industrial park with respect to the changes in prices of the by-products. The developed model thus aid the planners of an eco-industrial park in assessing which among the prospective support tenants would best complements an existing anchor tenant. Furthermore, the model can also identify price negotiation points between tenants for some product streams which may show sensitivity on the plant capacity of each tenant.
KW - Bioenergy
KW - Eco-industrial parks
KW - Fuzzy set theory
KW - Microalgae
KW - Mixed-integer non-linear programming
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U2 - 10.1016/j.jclepro.2016.04.143
DO - 10.1016/j.jclepro.2016.04.143
M3 - Article
AN - SCOPUS:84976490030
SN - 0959-6526
VL - 136
SP - 183
EP - 196
JO - Journal of Cleaner Production
JF - Journal of Cleaner Production
ER -