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A Unified Approach for Power System Predictive Operations Using Viterbi Algorithm

机译:基于维特比算法的电力系统预测运行统一方法

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摘要

A paradigm shift in the renewable energy proliferation in the U.S. necessitates a paradigm shift in power system operations to accommodate large-scale intermittent power while keeping the grid reliable and secure. Energy management systems (EMS) will benefit from an auxiliary function, which integrates the wind and load forecasting to state estimation and forecasting. This auxiliary function will create a predictive database for the power system states using the historical states as well as wind and load forecasts. The predictive database can be utilized to provide pseudo-measurements to a static state estimator in the case of loss of observability and bad data processing, or it can be used for short-term congestion and ramping predictions. This paper proposes an auxiliary tool for look-ahead power system state forecasting in electrical power systems with high intermittent renewable energy penetration. The method utilizes Markov models (MMs) and the Viterbi algorithm (VA) with a grid of feasible power system states obtained and updated by using the past states. The proposed algorithm is evaluated on the IEEE 14-bus and 118-bus systems using wind and load data available from the Bonneville Power Administration (BPA). The results show good correlation between the predictions and the actual power system states.
机译:美国可再生能源扩散的范式转变要求电力系统运行发生范式转变,以适应大规模的间歇性电力,同时保持电网的可靠性和安全性。能源管理系统(EMS)将受益于辅助功能,该功能将风电和负荷预测与状态估计和预测集成在一起。该辅助功能将使用历史状态以及风力和负荷预测为电力系统状态创建一个预测数据库。在缺乏可观察性和不良数据处理的情况下,可以利用预测数据库为静态估计器提供伪测量,或者可以将其用于短期拥塞和斜坡预测。本文提出了一种辅助工具,用于具有高间歇性可再生能源渗透的电力系统中的超前电力系统状态预测。该方法利用马尔可夫模型(MMs)和维特比算法(VA)以及通过使用过去状态获得和更新的可行电力系统状态网格。可以使用Bonneville电力局(BPA)提供的风力和负荷数据在IEEE 14总线和118总线系统上对提出的算法进行评估。结果表明,预测与实际电力系统状态之间具有良好的相关性。

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