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A Variable Reduction Method for Large-Scale Unit Commitment

机译:大型机组组合的变减法

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Efficient solution methods for large-scale unit commitment (UC) problems have long been an important research topic and a challenge, especially in market clearing computation. For large-scale UC, the Lagrangian relaxation methods (LR) and the mixed integer programming methods (MIP) are most widely adopted. However, LR usually suffers from slow convergence; and the computational burden of MIP is heavy when the binary variable number is large. In this paper, a variable reduction method is proposed. First, the time-coupled constraints in the original UC problem are relaxed, and many single-period UC problems (s-UC) are obtained. Second, LR is used to solve the s-UCs. Different from traditional LR with iterative subgradient method, the optimal multipliers and the approximate UC solutions of the s-UCs are obtained by solving linear programs. Third, a criterion for choosing and fixing the UC variables in the UC problem is established; hence, the number of binary variables is reduced. Finally, the UC with reduced binary variables is solved to obtain the final UC solution. The proposed method is tested on the IEEE 118-bus system and a 6484-bus system. The results show the method is very efficient and effective.
机译:长期以来,针对大规模机组承诺(UC)问题的有效解决方法一直是重要的研究课题和挑战,尤其是在市场清算计算中。对于大型UC,拉格朗日松弛法(LR)和混合整数规划法(MIP)被最广泛地采用。但是,LR通常会收敛缓慢。当二进制变量数较大时,MIP的计算负担很大。本文提出了一种变量约简方法。首先,放宽了原始UC问题中的时间耦合约束,并获得了许多单周期UC问题(s-UC)。其次,LR用于求解s-UC。 s-UCs的最优乘数和近似UC解与传统的LR迭代次梯度法不同,是通过求解线性程序来获得的。第三,建立在UC问题中选择和固定UC变量的准则。因此,减少了二进制变量的数量。最后,求解具有减少的二进制变量的UC,以获得最终的UC解。该方法在IEEE 118总线系统和6484总线系统上进行了测试。结果表明该方法非常有效。

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