Mir Abdul Saleem, Senroy Nilanjan
IEEE Trans Neural Netw Learn Syst. 2020 Jan;31(1):136-147. doi: 10.1109/TNNLS.2019.2899904. Epub 2019 Mar 18.
An adaptive neural predictive controller (ANPC) is proposed for an ultrabattery energy storage system (UBESS) to enable its operation as a virtual synchronous machine (VSM) in an autonomous wind-diesel power system. The proposed VSM emulates the inertial response and oscillation damping capability of a typical synchronous machine (employed in conventional power plants) by adaptively controlling the power electronic interface of the UBESS. The control objective is to support the network frequency while ensuring efficient/economic use of the UBESS energy. During the load-generation mismatch, ANPC continuously searches for optimal VSM parameters to minimize the actual frequency variations, their rate of change of frequency (ROCOF), and the power flow through the UBESS while maintaining the state of the charge (voltage) of the ultrabattery bank to tackle subsequent disturbances. Simulations confirm that the proposed self-tuning VSM achieves similar performance as that of other VSM control schemes while substantially reducing the power flow through the UBESS and, hence, uses significantly less energy per hertz improvement (in frequency). An index is used to evaluate the performance of the proposed scheme. In addition, the self-tuning VSM has a better dynamic response (quantified as a reduction in ROCOF and settling times) while attenuating the frequency excursions for all simulated cases.
针对超电池储能系统(UBESS)提出了一种自适应神经预测控制器(ANPC),以使其在自主风力 - 柴油发电系统中作为虚拟同步机(VSM)运行。所提出的VSM通过自适应控制UBESS的电力电子接口,模拟典型同步机(用于传统发电厂)的惯性响应和振荡阻尼能力。控制目标是在确保高效/经济使用UBESS能量的同时支持电网频率。在负载 - 发电不匹配期间,ANPC持续搜索最优VSM参数,以最小化实际频率变化、频率变化率(ROCOF)以及通过UBESS的功率流,同时保持超电池组的荷电状态(电压)以应对后续干扰。仿真结果证实,所提出的自整定VSM实现了与其他VSM控制方案相似的性能,同时大幅减少了通过UBESS的功率流,因此,每提高一赫兹频率所使用的能量显著减少。使用一个指标来评估所提出方案的性能。此外,自整定VSM具有更好的动态响应(量化为ROCOF和稳定时间的减少),同时在所有模拟情况下都能减弱频率偏移。