Tran Phuc M, O'Neill Eric G, Maravelias Christos T
Department of Chemical and Biological Engineering, Princeton University, Princeton, New Jersey 08540, United States of America.
Andlinger Center for Energy and the Environment, Princeton University, Princeton, New Jersey 08540, United States of America.
Ind Eng Chem Res. 2025 Jun 12;64(25):12724-12736. doi: 10.1021/acs.iecr.5c00439. eCollection 2025 Jun 25.
The size and complexity of energy system optimization models have increased significantly in recent years, driven by the availability of high-resolution spatial data. We present complexity reduction and solution methods that enable us to efficiently represent high-resolution spatial data in the network design of large-scale energy systems. We aim to reduce the size and enhance the computational efficiency of network design models without sacrificing solution accuracy. Specifically, we first present how to aggregate highly granular data into larger resolutions without averaging out their specific properties through a composite-curve-based approach and then develop a method to linearly represent these curves. Second, we utilize a general clustering method to determine groups of geographically proximate biomass fields and establish a single transportation arc for all of them, reducing the number of transportation-related variables while maintaining an accurate representation of the system. Finally, we introduce a two-step algorithm that decomposes large-scale network design problems into two smaller, more manageable subproblems. We demonstrate the application of our methods using a case study of switchgrass-to-biofuels network design in the eight states of the U.S. Midwest, using realistic and highly explicit spatial data.
近年来,在高分辨率空间数据可用性的推动下,能源系统优化模型的规模和复杂性显著增加。我们提出了复杂度降低和求解方法,使我们能够在大规模能源系统的网络设计中有效地表示高分辨率空间数据。我们旨在在不牺牲求解精度的情况下,减小网络设计模型的规模并提高其计算效率。具体而言,我们首先介绍如何通过基于复合曲线的方法将高粒度数据聚合为更大的分辨率,而不将其特定属性平均化,然后开发一种线性表示这些曲线的方法。其次,我们利用一种通用聚类方法来确定地理上相邻的生物质场组,并为它们建立一条单一的运输弧,减少与运输相关的变量数量,同时保持对系统的准确表示。最后,我们引入一种两步算法,将大规模网络设计问题分解为两个更小、更易于管理的子问题。我们通过对美国中西部八个州柳枝稷转化为生物燃料的网络设计进行案例研究,使用真实且高度明确的空间数据,展示了我们方法的应用。