论文标题
低碳能源系统优化的模型自适应聚类方法
A Model-Adaptive Clustering Method for Low-Carbon Energy System Optimization
论文作者
论文摘要
从几分钟到几年的电源系统的设计和运行中,风和太阳能等间歇性可再生能源构成了多个时间尺度的极大不确定性。已经开发了能源系统优化模型,以找到将不确定性与灵活性资源匹配的最小成本解决方案。但是,捕获这种多时间尺度不确定性的输入数据以很长的时间范围来表征,并在解决优化模型方面带来了极大的困难。在这里,我们根据优化模型的决策变量提出了一种自适应聚类方法,以减轻计算复杂性,其中能量系统在选定的代表性时间段而不是全日制范围内优化了能量系统。所提出的聚类方法适应各种能源系统优化模型或设置,因为它从优化模型中提取功能。结果表明,与传统的聚类方法相比,提出的聚类方法可以显着降低与全日制范围近似解决方案的误差。
Intermittent renewable energy resources like wind and solar pose great uncertainty of multiple time scales, from minutes to years, on the design and operation of power systems. Energy system optimization models have been developed to find the least-cost solution to matching the uncertainty with flexibility resources. However, input data that capture such multi-time-scale uncertainty are characterized with a long time horizon and bring great difficulty to solving the optimization model. Here we propose an adaptive clustering method based on the decision variables of optimization model to alleviate the computational complexity, in which the energy system is optimized over selected representative time periods instead of the full time horizon. The proposed clustering method is adaptive to various energy system optimization models or settings, because it extracts features from the optimization models. Results show that the proposed clustering method can significantly lower the error in approximating the solution with the full time horizon, compared to traditional clustering methods.