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A new approach to load flow analysis using Krylov subspace methods for well conditioned systems

机译:利用Krylov子空间方法对流量分析进行良好条件系统的新方法

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Power system load flow analysis mainly utilizes the Gauss-Seidel method, the Newton-Raphson method, and the Fast Decoupled Load Flow method. All these stationary iterative algorithms assure convergence for a limited class of well-conditioned matrices, and require a good enough estimate of nodal voltages at all system busbars under consideration, to provide assured convergence. The Krylov subspace methods are widely generalized in their approach, and work by forming an orthogonal basis of the sequence of successive matrix powers times the initial residual (the Krylov sequence). The prototypical method in this class is the conjugate gradient method (CG). In this work, we propose to apply the conjugate gradient algorithm to the sparse systems; we encounter these in the system admittance matrices, and we will search for a numerical solution to this system using the locally optimal steepest descent method. The system admittance matrices for an IEEE 30-bus or 57-bus system(s) are too large to be handled by direct methods like the Cholesky decomposition method. Hence, we will make use of the flexible preconditioned conjugate-gradient method, which makes use of sophisticated preconditioners, leading to variable preconditioning that change between successive iterations. The Polak-Ribière formula, a highly efficient preconditioner, is applied to the system, to yield drastic improvements in convergence. Our experimental results include a comparison of the Krylov subspace method with traditional methods, assuming the IEEE five-busbar, seven-line reference system as the common basis for all load-flow analysis. The system base quantities are VAbase = 100 MVA and Vbase = 132 kV. The results show an overall better assurance of convergence for all general systems, a lesser dependence on starting voltage profiles assumption and a robustness and efficiency of computation for well-conditioned systems.
机译:电力系统负荷流量分析主要利用高斯 - 赛德尔方法,牛顿 - 拉申方法,以及快速分离的载荷法。所有这些静止迭代算法确保了一类有限的良好条件矩阵的收敛,并且需要足够好的估计所考虑的所有系统母线上的节点电压,以提供保证的会聚。 Krylov子空间方法在其方法中广泛推广,通过形成初始残留(Krylov序列)的连续矩阵功率序列的正交基础。该类中的原型方法是共轭梯度法(CG)。在这项工作中,我们建议将共轭梯度算法应用于稀疏系统;我们在系统进入矩阵中遇到这些,我们将使用局部最佳速度下降方法搜索该系统的数值解决方案。 IEEE 30-SCAL或57总线系统的系统导纳矩阵太大而无法通过像Cholesky分解方法等直接方法来处理。因此,我们将利用柔性预配置的共轭梯度方法,这使得使用复杂的预处理器,导致可变预处理,在连续的迭代之间发生变化。 Polak-Ribière公式是一种高效的预处理器,适用于系统,从而产生剧烈改善。我们的实验结果包括与传统方法的Krylov子空间方法进行比较,假设IEEE五母线,七行参考系统作为所有负载流分析的常见基础。系统基数为VA 底座 = 100 MVA和V 底座 = 132 kV。结果表明,对所有通用系统的收敛性更好地保证,对启动电压简档假设的较小依赖性以及用于良好的条件系统的计算稳健性和效率。

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