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Coupling biogeochemical simulation and mathematical optimisation towards eco-industrial energy systems design

机译:耦合生物地球化学仿真与生态工业能源系统设计的数学优化

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摘要

Process industry remains one of the difficult-to-decarbonise sectors globally. To mitigate industrial greenhouse gas (GHGs) emissions, an eco-industrial energy systems (e-IES) optimisation framework is proposed by coupling mathematical optimisation with clustering algorithms and first principle modelling. Within the framework, a rooftop farming database was developed using biogeochemical simulations, which models seven crop growth in response to 10 cultivation conditions. Clustering algorithm was applied to analyse energy system data, along with the rooftop farming database, to inform the optimisation model. A Mixed Integer Linear Programming optimisation model was developed to optimize system design considering the trade-off between economic and environmental objectives. The implications of rooftop design on e-IES and their interactive effects on industrial decarbonisation were addressed. A case study at an industrial park in Suzhou China reveals that rooftop farming could generate mutual benefits from both cost and GHG reduction perspectives. Planting lettuce indicates a costefficient solution, and planting tomato could contribute the most to GHG emission reduction. Compared to the rooftop PV and the spare rooftop, 2.4% and 5.6% cost savings, as well as 10.2% and 16.3% emission savings, could be achieved respectively by implementing rooftop farming. Overall, this study demonstrates an emerging perspective on decarbonising the industrial sector by coupling biogeochemical simulation and energy system optimisation and adopting cross-disciplinary approaches.
机译:工艺业仍然是全球难以脱碳的境界之一。为了减轻工业温室气体(GHG)排放,通过将数学优化与聚类算法和第一个原理建模耦合,提出了一种生态工业能源系统(E-IES)优化框架。在框架内,使用生物地球化学模拟开发了一种屋顶养殖数据库,其响应于10种培养条件,七种作物增长。应用聚类算法用于分析能量系统数据以及屋顶农业数据库,以通知优化模型。开发了一种混合整数线性规划优化模型,以优化经济和环境目标之间的权衡的系统设计。解决了屋顶设计对E-I​​ES及其对工业脱碳的互动影响的影响。苏州中国工业园区案例研究揭示了屋顶养殖可以从成本和GHG减少观点产生互利。种植莴苣表明成本效果溶液,种植番茄可能对温室气体减排产生最大贡献。与屋顶PV和备用屋顶相比,节省2.4%和5.6%,也可以通过实施屋顶耕作来实现10.2%和16.3%的排放节约。总体而言,本研究表明,通过耦合生物地理化仿真和能量系统优化和采用跨学科方法来阐述工业部门的新出现的视角。

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