Institute of Process Engineering, Chinese Academy of Sciences, Beijing 100190, China; University of Chinese Academy of Sciences, Beijing 100049, China; Artie McFerrin Department of Chemical Engineering, Texas A & M University, College Station, TX 77843, USA; Texas A & M Energy Institute, Texas A & M University, College Station, TX 77843, USA.
Artie McFerrin Department of Chemical Engineering, Texas A & M University, College Station, TX 77843, USA; Texas A & M Energy Institute, Texas A & M University, College Station, TX 77843, USA.
Sci Total Environ. 2019 Apr 1;659:7-19. doi: 10.1016/j.scitotenv.2018.12.242. Epub 2018 Dec 23.
Allocation and management of agricultural land is of emergent concern due to land scarcity, diminishing supply of energy and water, and the increasing demand of food globally. To achieve social, economic and environmental goals in a specific agricultural land area, people and society must make decisions subject to the demand and supply of food, energy and water (FEW). Interdependence among these three elements, the Food-Energy-Water Nexus (FEW-N), requires that they be addressed concertedly. Despite global efforts on data, models and techniques, studies navigating the multi-faceted FEW-N space, identifying opportunities for synergistic benefits, and exploring interactions and trade-offs in agricultural land use system are still limited. Taking an experimental station in China as a model system, we present the foundations of a systematic engineering framework and quantitative decision-making tools for the trade-off analysis and optimization of stressed interconnected FEW-N networks. The framework combines data analytics and mixed-integer nonlinear modeling and optimization methods establishing the interdependencies and potentially competing interests among the FEW elements in the system, along with policy, sustainability, and feedback from various stakeholders. A multi-objective optimization strategy is followed for the trade-off analysis empowered by the introduction of composite FEW-N metrics as means to facilitate decision-making and compare alternative process and technological options. We found the framework works effectively to balance multiple objectives and benchmark the competitions for systematic decisions. The optimal solutions tend to promote the food production with reduced consumption of water and energy, and have a robust performance with alternative pathways under different climate scenarios.
由于土地稀缺、能源和水供应减少以及全球粮食需求不断增加,农业土地的分配和管理成为当务之急。为了在特定的农业土地面积上实现社会、经济和环境目标,人们和社会必须根据粮食、能源和水的需求和供应做出决策。这三个要素相互依存,即粮食-能源-水纽带(FEW-N),需要协同解决。尽管在数据、模型和技术方面进行了全球努力,但仍有研究对多方面的 FEW-N 空间进行了探索,确定了协同效益的机会,并探讨了农业土地利用系统中的相互作用和权衡。以中国的一个实验站为例,我们提出了一个系统工程框架和定量决策工具的基础,用于权衡分析和优化紧张互联的 FEW-N 网络。该框架结合了数据分析和混合整数非线性建模和优化方法,确定了系统中 FEW 要素之间的相互依存关系和潜在的竞争利益,以及政策、可持续性和来自各利益相关者的反馈。引入综合 FEW-N 指标作为促进决策和比较替代工艺和技术选择的手段,采用多目标优化策略进行权衡分析。我们发现,该框架可以有效地平衡多个目标,并为系统决策提供基准竞争。最优解决方案倾向于促进粮食生产,同时减少水和能源的消耗,并在不同气候情景下具有替代途径的稳健性能。