Optimal Synthesis of Algal Biorefineries for Biofuel Production Based on Techno-Economic and Environmental Efficiency

A. Culaba, J. Juan, P. M. Ching, A. Mayol, E. Sybingco, A. Ubando
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引用次数: 7

Abstract

Biomass derived from microalgae is an emerging technology and attractive alternative source for biofuels. However, its exclusive production cannot be feasibly commercialized because of economic and environmental sustainability issues. The biorefinery concept allows microalgae to be efficiently converted into biofuels and other high-valued products, such as cosmetics, nutraceuticals, and pharmaceuticals. Nonetheless, this venture would require large capital investments that must be strategically scheduled across the lives of the investments, while keeping a reliable forecast of market growth. A multi-period multi-objective mixed integer non-linear programming (MINLP) model is proposed in this study to determine optimal investment schedule and operational decisions that would simultaneously maximize the net present value (NPV) and minimize the greenhouse gas (GHG) emissions of an algal biorefinery. An illustrative case study and scenario analyses demonstrate the validity and the capabilities of the proposed model.
基于技术经济和环境效率的生物燃料生产藻类生物精炼厂的优化合成
从微藻中提取的生物质是一种新兴技术,也是一种有吸引力的生物燃料替代来源。然而,由于经济和环境可持续性问题,其独家生产无法实现商业化。生物炼制概念允许微藻有效地转化为生物燃料和其他高价值产品,如化妆品、保健品和药品。尽管如此,这个项目需要大量的资本投资,这些投资必须在投资的整个生命周期内进行战略规划,同时保持对市场增长的可靠预测。本文提出了一个多周期多目标混合整数非线性规划(MINLP)模型,以确定藻生物精炼厂的最佳投资计划和运营决策,同时使净现值(NPV)最大化,温室气体(GHG)排放最小化。一个说明性的案例研究和场景分析证明了所提出模型的有效性和能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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