论文标题

具有非covex多相最佳功率流的分布式能源系统的离散最佳设计

Discrete Optimal Designs for Distributed Energy Systems with Nonconvex Multiphase Optimal Power Flow

论文作者

De Mel, Ishanki, Klymenko, Oleksiy V., Short, Michael

论文摘要

在网格连接的分布式能源系统(DES)中,小规模技术的最佳选择,尺寸和位置可以降低碳排放,消费者成本和网络失衡。这是第一个提出优化框架的研究,用于获得与网格连接的DES设计的离散技术尺寸和选择,同时考虑多相最佳功率流(MOPF)的约束,以准确代表不平衡的低压分布网络。开发了一种算法来求解所得的混合企业非线性编程(MINLP)公式。它采用了基于混合企业线性编程(MILP)和非线性编程(NLP)的分解,并利用整数削减和互补性重新恢复来获得离散的设计,这些设计在网络约束方面也是可行的。还提出了对原始算法的启发式修改以提高计算速度。还提出了改进的配方,以选择可行的空气源热泵(ASHP)和热水储物罐的可行组合。该算法的表现优于现有的最新商业MINLP求解器,该算法在两种情况下未能找到任何解决方案。尽管在所有情况下都获得了可行的解决方案,但并非所有人都能达到融合,尤其是对于涉及较大网络的人。在融合的地方,具有启发式修饰的算法的结果比原始算法快70%。案例研究的结果表明,与燃气锅炉相比,包括ASHP的可再生能源发电能力高达16%,尽管ASHP投资成本更高。优化框架和结果可用于告知利益相关者,例如政策制定者和网络运营商,以增加可再生能源容量并帮助国内供暖系统的脱碳。

The optimal selection, sizing, and location of small-scale technologies within a grid-connected distributed energy system (DES) can contribute to reducing carbon emissions, consumer costs, and network imbalances. This is the first study to present an optimisation framework for obtaining discrete technology sizing and selection for grid-connected DES design, while simultaneously considering multiphase optimal power flow (MOPF) constraints to accurately represent unbalanced low-voltage distribution networks. An algorithm is developed to solve the resulting Mixed-Integer Nonlinear Programming (MINLP) formulation. It employs a decomposition based on Mixed-Integer Linear Programming (MILP) and Nonlinear Programming (NLP), and utilises integer cuts and complementarity reformulations to obtain discrete designs that are also feasible with respect to the network constraints. A heuristic modification to the original algorithm is also proposed to improve computational speed. Improved formulations for selecting feasible combinations of air source heat pumps (ASHPs) and hot water storage tanks are also presented. The algorithms outperform the existing state-of-the-art commercial MINLP solver, which fails to find any solutions in two instances. While feasible solutions were obtained for all cases, convergence was not achieved for all, especially for those involving the larger network. Where converged, the algorithm with the heuristic modification has achieved results up to 70% faster than the original algorithm. Results for case studies suggest that including ASHPs can support up to 16% higher renewable generation capacity compared to gas boilers, albeit with higher ASHP investment costs. The optimisation framework and results can be used to inform stakeholders such as policy-makers and network operators, to increase renewable energy capacity and aid the decarbonisation of domestic heating systems.

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