并网蓄电池储能系统动态等效电路模型预测性能的实验评估

Emil Namor, F. Sossan, E. Scolari, R. Cherkaoui, M. Paolone
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引用次数: 7

摘要

本文讨论了并网兆瓦级电池电流-电压动态电路模型的模型辨识、验证和实验测试。该模型以一个公用事业规模的720 kVA/560 kWh电池储能系统(BESS)为例,在模型预测控制框架中用于预测电池直流电压随电流轨迹的变化。该模型是使用专用实验会话的测量来确定的,其中BESS由伪随机二进制信号(PRBS)控制,以在广谱上激发系统。确定的模型依赖于电池是单个电池的假设。为了验证这一假设并评估预测的质量,我们通过使用来自实际电力系统应用的第二组数据集来测试模型的性能,其中BESS用于调度一组随机产消者(需求和光伏发电)的运行。实验结果表明,在10秒~ 10分钟的预测时间范围内,表现最好的两时间常数模型(TTC)的电压预测均方根误差小于0.55%,在所有考虑的预测范围内都优于持续预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Experimental Assessment of the Prediction Performance of Dynamic Equivalent Circuit Models of Grid-Connected Battery Energy Storage Systems
The paper discusses the model identification, validation and experimental testing of current-to-voltage dynamic circuit models for a grid-connected MW-class battery. The model refers to an utility-scale 720 kVA/560 kWh battery energy storage system (BESS) and is used in a model predictive control framework to forecast the evolution of the battery DC voltage as a function of the current trajectory. The model is identified using measurements from a dedicated experimental session where the BESS is controlled with a pseudo random binary signal (PRBS) to excite the system on a broad spectrum. The identified model relies on the assumption that the battery is a single cell. To test this assumption and assess the quality of predictions, we test the model performance by using a second data set coming from a real-life power system application, where the BESS is used to dispatch the operation of a group of stochastic prosumers (demand and PV generation). Experimental results show that the root mean square voltage prediction error of the best performing model (i.e. two time constant model, TTC) is less than 0.55 % for look-ahead times in the range 10 seconds-l0 minutes and better than persistence for all considered forecasting horizons.
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