A Practical Approach to Construct a Digital Twin of a Power Grid using Harmonic Spectra

H. Cai, Xinya Song, Yuelin Zeng, T. Jiang, S. Schlegel, D. Westermann
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Abstract

The electrical energy system is transforming itself into a sustainable energy supply in response to the decline in fossil fuels. This conversion is driving the expansion of renewable energy facilities such as photovoltaic plants and wind power plants. Except for large hydropower plants and offshore wind farms, the integration of renewable energies takes place predominantly in the medium- and low-voltage distribution networks. This leads to a lack of observability and increasing grid complexity. Consequently, distribution network operators are constantly faced with a challenge in terms of observability. A comprehensive installation of measuring instruments in the medium- and low-voltage networks has proved economically unviable. An alternative approach to network state monitoring within the framework of power grid digital twin (DT) is therefore developed in this paper. The patterns of the electrical energy system are detected and modeled employing an artificial neural network (ANN) in connection with the associated harmonic spectra. Based on this DT model, the active powers of renewable energy facilities are estimated through the measured voltage data. In this regard, this work is first devoted to the modeling of an ANN-based DT estimator. The proposed power state estimation is then validated with the measured data from a field test. The accuracy of the estimation will be investigated according to the different influencing factors.
利用谐波谱构建电网数字孪生的实用方法
为了应对化石燃料的减少,电力能源系统正在转变为可持续能源供应。这种转变正在推动光伏发电厂和风力发电厂等可再生能源设施的扩张。除大型水电站和海上风电场外,可再生能源的整合主要发生在中低压配电网络中。这导致缺乏可观察性和增加网格的复杂性。因此,配电网运营商不断面临着可观测性方面的挑战。在中低压电网中全面安装测量仪器已被证明在经济上是不可行的。因此,本文提出了一种在电网数字孪生(DT)框架内进行网络状态监测的替代方法。利用人工神经网络(ANN)结合相关谐波谱对电能系统的模式进行检测和建模。基于该DT模型,通过实测电压数据估计可再生能源设施的有功功率。在这方面,本工作首先致力于基于人工神经网络的DT估计器的建模。然后用现场测试的测量数据验证了所提出的功率状态估计。根据不同的影响因素对估计的准确性进行研究。
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