Method to Enable Reduced Sensor Capacitor Voltage Estimation in Modular Multilevel Converters

Eugene Tinjinui Ndoh, Seongsu Byeon, Lotz Marc, Soeren Ehlers
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Abstract

Bulk power applications such as shipping increasingly consider multilevel converter topologies such as modular multilevel converters (MMC), which offers the advantages of scalability, good power quality, and reconfigurability. The internal functioning of MMC requires complete knowledge of the capacitor voltages that make up their submodules meaning a large number of sensors are needed and thus a high number of potential points of failure exist. To increase reliability and reduce investment costs, state estimation techniques such as KALMAN filters have been employed to replace the physical sensors. Analytical techniques based on the knowledge of arm current, arm voltage, and submodule states have also been developed. These techniques exploit the fact that at an insertion index of 1, the arm voltage equals the capacitor voltage on the submodule which permits the estimation algorithm to refresh periodically with measured data thereby increasing the accuracy. This method requires a long refresher time, especially when many submodules are used per arm. In this study, we propose an improved analytical estimation by not only using unity insertion indices, but also exploiting transitions between two successive insertion indices. The study was carried out on a 4 submodule per arm MMC system. The estimated capacitor voltages were then compared with sensor-based voltage measurements confirming the validity of the proposed method. It was then integrated into a complete MMC controller including the inner controls such as circulating current and capacitor voltage balancing.
模块化多电平转换器中减少传感器电容器电压估计的方法
航运等大宗电力应用越来越多地考虑多电平转换器拓扑结构,如模块化多电平转换器(MMC),它具有可扩展性、良好的电能质量和可重新配置性等优点。模块化多电平转换器(MMC)的内部功能要求完全了解构成其子模块的电容器电压,这意味着需要大量传感器,因此存在大量潜在故障点。为了提高可靠性和降低投资成本,人们采用了 KALMAN 滤波器等状态估计技术来替代物理传感器。此外,还开发了基于臂电流、臂电压和子模块状态知识的分析技术。这些技术利用了一个事实,即在插入指数为 1 时,臂电压等于子模块上的电容器电压,这使得估计算法可以定期刷新测量数据,从而提高精度。这种方法需要较长的刷新时间,尤其是在每个臂使用多个子模块的情况下。在本研究中,我们提出了一种改进的分析估算方法,不仅使用统一的插入指数,还利用了两个连续插入指数之间的转换。研究是在每臂 4 个子模块的 MMC 系统上进行的。然后将估算的电容器电压与基于传感器的电压测量结果进行了比较,证实了所提方法的有效性。然后,它被集成到一个完整的 MMC 控制器中,包括内部控制,如循环电流和电容器电压平衡。
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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