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An extended nonlinear primal-dual interior-point algorithm for reactive-power optimization of large-scale power systems with discrete control variables

机译:具有离散控制变量的大型电力系统无功优化的扩展非线性本对偶内点算法

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摘要

This paper presents a new algorithm for reactive-power optimization of large-scale power systems involving both discrete and continuous variables. This algorithm realizes successive discretization of the discrete control variables in the optimization process by incorporating a penalty function into the nonlinear primal-dual interior-point algorithm. The principle of handling these discrete variables by the penalty function, the timing of introducing the penalty function during iterations, and the setting of penalty factors are discussed in detail. To solve the high-dimension linear correction equation speedily and efficiently in each iteration, a novel data structure rearrangement is proposed. Compared with the existing data structures, it can effectively reduce the number of nonzero fill-in elements and does not give rise to difficulty in triangular factorization. The numerical results of test systems that range in size from 14 to 538 buses have shown that the proposed method can give nearly optimum solutions, has good convergence, and is suitable for large-scale system applications.
机译:本文提出了一种用于离散和连续变量的大型电力系统无功优化的新算法。该算法通过将惩罚函数纳入非线性原始对偶内点算法中,从而在优化过程中实现离散控制变量的连续离散化。详细讨论了通过惩罚函数处理这些离散变量的原理,在迭代过程中引入惩罚函数的时间以及惩罚因子的设置。为了在每次迭代中快速高效地求解高维线性校正方程,提出了一种新颖的数据结构重排方法。与现有的数据结构相比,它可以有效地减少非零填充元素的数量,并且不会引起三角分解的困难。规模从14到538总线的测试系统的数值结果表明,所提出的方法可以给出几乎最佳的解决方案,具有良好的收敛性,并且适合于大规模系统应用。

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