2019
DOI: 10.1016/j.apenergy.2019.01.195
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Planning strategies to address operational and price uncertainty in biodiesel production

Abstract: The use of low-cost feedstocks such as waste cooking oils has gained prominence in biodiesel production due to its potential economic and environmental advantages. Since these feedstocks are derived from multiple sources, its compositional variability has led to quality concerns that may significantly limit its utilization. One potential strategy to address this concern is to use stochastic blending models to optimize the mixing of secondary and primary oils (e.g., palm, canola, or soya).In this paper, we pres… Show more

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Cited by 13 publications
(6 citation statements)
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“…A two-stage stochastic linear mixed-integer programming was used to minimize predicted system cost while integrating yield uncertainty in strategic level decisions related to the production of biomass and investment in the biorefinery. Caldeira et al [48] developed a stochastic blending model by considering feedstock price uncertainty. The stochastic blending model embeds a chanceconstrained algorithm to compensate for variation in composition and uses time-series approaches to resolve volatility in feedstock prices.…”
Section: The Robust Optimization In Related Mathematical Models In To Biofuelsmentioning
confidence: 99%
“…A two-stage stochastic linear mixed-integer programming was used to minimize predicted system cost while integrating yield uncertainty in strategic level decisions related to the production of biomass and investment in the biorefinery. Caldeira et al [48] developed a stochastic blending model by considering feedstock price uncertainty. The stochastic blending model embeds a chanceconstrained algorithm to compensate for variation in composition and uses time-series approaches to resolve volatility in feedstock prices.…”
Section: The Robust Optimization In Related Mathematical Models In To Biofuelsmentioning
confidence: 99%
“…Although the above-mentioned functionalized organic polymers and porous coordination polymers demonstrate excellent catalytic performance for biodiesel synthesis, they are nondegradable and relatively expensive. Therefore, envisaging the increasing future demands of local but available worldwide, inexpensive, and renewable materials that might serve as the basis for catalysts for large-scale applications. In this regard, some existing biomass-based green catalysts, such as bamboo-based acid, rice husk char acid, and bagasse-derived acid, were synthesized through the high-temperature carbonization or incomplete carbonization of sucrose, cellulose, or starch followed by sulfonation . However, relatively harsh preparation conditions during the carbonization and sulfonation were usually employed.…”
Section: Chemo-modified Natural Organic Biopolymersmentioning
confidence: 99%
“…To remedy the feed disturbance because of different sources of waste cooking oils, the robust design of the biodiesel substitute production problem was modeled with chance-constrained programming, and the performance of optimal solutions was evaluated with technical and cost and cost variations. 45 A multiobjective robust possibilistic programming approach was also employed in optimal design of a lignocellulosic bioethanol production to incorporate market prices, biofuel demands, and environmental impact uncertainties, whose solutions outperformed the corresponding deterministic solutions. 46 It should be pointed out that the conservatism properties of the aforementioned robust optimization approaches are restricted by the uncertainty set representations or the approximated decision rules.…”
Section: Introductionmentioning
confidence: 99%
“…In detail, uncertain conversion rates were represented by uncertain scenarios, while the uncertain demand was described as an interval uncertainty set. To remedy the feed disturbance because of different sources of waste cooking oils, the robust design of the biodiesel substitute production problem was modeled with chance-constrained programming, and the performance of optimal solutions was evaluated with technical and cost and cost variations . A multiobjective robust possibilistic programming approach was also employed in optimal design of a lignocellulosic bioethanol production to incorporate market prices, biofuel demands, and environmental impact uncertainties, whose solutions outperformed the corresponding deterministic solutions .…”
Section: Introductionmentioning
confidence: 99%