论文标题
使用机器学习将小型电力系统的单位承诺问题包含在单位承诺问题中
Inclusion of Frequency Nadir constraint in the Unit Commitment Problem of Small Power Systems Using Machine Learning
论文作者
论文摘要
由于目的是减少热产生的量并增加清洁能量的份额,因此由于惯性水平降低,电力系统越来越容易受到频率不稳定的影响。为了解决此问题,调度过程中包含频率约束,这确保在任何意外情况下可容忍的频率偏差。在本文中,提出了一种方法,将非线性频率NADIR约束集成到单位承诺问题中,并使用机器学习。首先生成合成训练数据集。然后提出了两种可用的经典机器学习方法,即逻辑回归和支持向量机,以预测频率最低点。为了能够将机器学习方法与传统的频率约束单位承诺方法进行比较,对La Palma Island的电力系统进行了模拟,并针对提议的方法以及频率NADIR的分析线性化公式进行了模拟。我们的结果表明,基于机器学习的频率NADIR约束的单位承诺问题要比分析公式快得多,同时仍能在中断后达到可接受的频率响应质量。
As the intention is to reduce the amount of thermal generation and to increase the share of clean energy, power systems are increasingly becoming susceptible to frequency instability after outages due to reduced levels of inertia. To address this issue frequency constraints are being included in the scheduling process, which ensure a tolerable frequency deviation in case of any contingencies. In this paper, a method is proposed to integrate the non-linear frequency nadir constraint into the unit commitment problem, using machine learning. First a synthetic training dataset is generated. Then two of the available classic machine learning methods, namely logistic regression and support vector machine, are proposed to predict the frequency nadir. To be able to compare the machine learning methods to traditional frequency constrained unit commitment approaches, simulations on the power system of La Palma island are carried out for both proposed methods as well as an analytical linearized formulation of the frequency nadir. Our results show that the unit commitment problem with a machine learning based frequency nadir constraint is solved considerably faster than with the analytical formulation, while still achieving an acceptable frequency response quality after outages.