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Optimization and Allocation of Spinning Reserves in a Low-Carbon Framework

机译:低碳框架中纺丝储备的优化和分配

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摘要

Low-carbon electric power systems are often characterized by high shares of renewables, such as wind power. The variable nature and limited predictability of some renewables will require novel system operation methods to properly size and cost-efficiently allocate the required reserves. The current state-of-the-art stochastic unit commitment models internalize this sizing and allocation process by considering a set of scenarios representing the stochastic input during the unit commitment optimization. This results in a cost-efficient scheduling of reserves, while maintaining the reliability of the system. However, calculation times are typically high. Therefore, in this paper, we merge a state-of-the-art probabilistic reserve sizing technique and stochastic unit commitment model with a limited number of scenarios in order to reduce the computational cost. Results obtained for a power system with a 30% wind energy penetration show that this hybrid approach allows to approximate the expected operational costs and reliability of the resulting unit commitment of the stochastic model at roughly one thirtieth of the computational cost. The presented hybrid unit commitment model can be used by researchers to assess the impact of uncertainty on power systems or by independent system operators to optimize their unit commitment decisions taking into account the uncertainty in their system.
机译:低碳电力系统通常以风能等可再生能源的比例较高为特征。一些可再生能源的可变性质和有限的可预测性将需要新颖的系统操作方法,以适当地确定规模并以经济有效的方式分配所需的储量。当前的最新随机单位承诺模型通过考虑代表单位承诺优化过程中随机输入的一组场景来内部化此规模和分配过程。这样就可以以经济高效的方式调度储备,同时保持系统的可靠性。但是,计算时间通常很高。因此,在本文中,我们将最新的概率储备大小确定技术和随机单位承诺模型与有限数量的场景合并在一起,以降低计算成本。对于风能渗透率为30%的电力系统所获得的结果表明,这种混合方法可以近似于预期运行成本和所产生的随机模型单位承诺的可靠性,而计算成本仅为其三分之一。研究人员可以使用提出的混合单位承诺模型来评估不确定性对电力系统的影响,也可以由独立的系统运营商根据系统不确定性来优化单位承诺决策。

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