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Penalized sample average approximation methods for stochastic programs in economic and secure dispatch of a power system

机译:电力系统经济安全调度中随机程序的惩罚样本均值逼近方法

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In this paper, we develop a stochastic programming model for economic dispatch of a power system with operational reliability and risk control constraints. By defining a severity-index function, we propose to use conditional value-at-risk (CVaR) for measuring the reliability and risk control of the system. The economic dispatch is subsequently formulated as a stochastic program with CVaR constraint. To solve the stochastic optimization model, we propose a penalized sample average approximation (SAA) scheme which incorporates specific features of smoothing technique and level function method. Under some moderate conditions, we demonstrate that with probability approaching to 1 at an exponential rate with the increase of sample size, the optimal solution of the smoothing SAA problem converges to its true counterpart. Numerical tests have been carried out for a standard IEEE-30 DC power system.
机译:在本文中,我们开发了一种具有运行可靠性和风险控制约束的电力系统经济调度的随机规划模型。通过定义严重性指标函数,我们建议使用条件风险值(CVaR)来测量系统的可靠性和风险控制。随后将经济调度表述为具有CVaR约束的随机程序。为了解决随机优化模型,我们提出了一种结合平滑技术和水平函数方法的特定特征的惩罚样本平均逼近(SAA)方案。在某些适度的条件下,我们证明了随着样本量的增加,概率以指数速率接近1,平滑SAA问题的最优解收敛到其真实对等点。已经对标准IEEE-30直流电源系统进行了数值测试。

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