Despite significant economic and ecological effects, a higher level of renewable energy generation leads to increased uncertainty and variability in power injections, thus compromising grid reliability. In order to improve power grid security, we investigate a joint chance-constrained (CC) direct current (DC) optimal power flow (OPF) problem. The problem aims to find economically optimal power generation while guaranteeing that all power generation, line flows, and voltages simultaneously remain within their bounds with a pre-defined probability. Unfortunately, the problem is computationally intractable even if the distribution of renewables fluctuations is specified. Moreover, existing approximate solutions to the joint CC OPF problem are overly conservative, and therefore have less value for the operational practice. This paper proposes an importance sampling approach to the CC DC OPF problem, which yields better complexity and accuracy than current state-of-the-art methods. The algorithm efficiently reduces the number of scenarios by generating and using only the most important of them, thus enabling real-time solutions for test cases with up to several hundred buses.
翻译:尽管产生了重大的经济和生态影响,但可再生能源发电水平的提高导致电力注入的不确定性和变异性增加,从而损害电网的可靠性。为了改善电网安全,我们调查一个机会限制(CC)直接当前(DC)最佳电流(OPF)的联合问题。问题在于寻找经济上最佳的发电,同时保证所有发电、线路流量和电压都同时处于其范围内,具有预先确定的概率。不幸的是,即使规定了可再生能源的波动分布,问题也是在计算上难以解决的。此外,目前CC OPF联合问题的近似解决办法过于保守,因此对操作实践的价值较低。本文建议对CC DC OPF问题采取重要的抽样方法,因为后者比目前最先进的方法更复杂、更准确。算法通过生成和使用其中最重要的方法来有效减少情景的数量,从而能够实时解决多达几百辆公共汽车的测试案例。