Comparison of methods for state prediction: Power Flow Decomposition (PFD), AC Power Transfer Distribution factors (AC-PTDFs), and Power Transfer Distribution factors (PTDFs)

T. Leveringhaus, L. Hofmann
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引用次数: 21

Abstract

The precise prediction of changes in load flows, currents and voltage magnitudes due to changes in power is important for forecasting and managing grid congestions, voltage deviations and minimizing grid losses for example. This paper describes three different methods and further variants of those for state prediction and compares their approximations, neglects and quality of prediction. Since PTDFs and PFD modify the characteristics of the non-linear load flow equations by approximations and neglects, their qualities of prediction are less than those of the AC-PTDFs. To consider the way changings in grid losses are counteracted by the grid a new variant to consider secondary control reserve in the prediction is established. The AC-PTDFs deliver the highest quality of current and loss prediction, the most comprehensive mathematical approximation of the non-linear load flow equations, and the most potential for further development like optimized management of multiple congestions and Optimal Power Flow.
功率流分解(PFD)、交流功率传输分配因子(AC-PTDFs)和功率传输分配因子(PTDFs)状态预测方法的比较
准确预测由于功率变化而引起的负载流、电流和电压幅度的变化对于预测和管理电网拥塞、电压偏差和最小化电网损失等非常重要。本文介绍了三种不同的状态预测方法及其进一步的变体,并比较了它们的近似值、忽略值和预测质量。由于ptdf和PFD通过近似和忽略来修正非线性负荷流方程的特性,它们的预测质量不如ac - ptdf。为了考虑电网对电网损失变化的抵消方式,提出了在预测中考虑二次控制储备的新方法。ac - ptdf提供最高质量的电流和损耗预测,最全面的非线性负荷流方程的数学近似,以及最具潜力的进一步发展,如优化管理多个拥塞和最优潮流。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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