带嵌入式储能器的风电场并网 MMC 的详细非线性建模和高保真并行仿真

IF 3.3 Q3 ENERGY & FUELS IEEE Open Access Journal of Power and Energy Pub Date : 2024-04-22 DOI:10.1109/OAJPE.2024.3392246
Bingrong Shang;Ning Lin;Venkata Dinavahi
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引用次数: 0

摘要

可再生能源的整合越来越普遍,但其随机性可能会影响电力系统的稳定性。本文介绍了基于嵌入式储能模块化多电平转换器(MMC-EES)的高压直流(HVDC)链路模型,并利用图形处理器(GPU)的大规模并行计算功能,研究了其在补偿变化的风力发电量方面的功效。通过将带 EES 的 DC-DC 转换器纳入其子模块,在逆变器控制中确定了恒功率方向。高保真电磁瞬态建模有助于深入了解变流器控制和能量管理。为获得高精度,对非线性模型进行了完全迭代求解。由于中央处理器(CPU)的顺序数据处理方式很容易在元件数量增加一个数量级后出现超长模拟,因此利用了 GPU 的大规模并发线程。通过分离非线性的电路分区,MMC 电路的复杂性所带来的计算挑战得到了有效解决。同时,尽管存在非均质性,但相同属性的组件被设计为一个内核。所提出的建模和计算方法被应用于带风电场的多端直流系统,与基于 CPU 的仿真相比,速度显著提高,其准确性也得到了离线仿真工具 PSCAD 的验证。
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Detailed Nonlinear Modeling and High-Fidelity Parallel Simulation of MMC With Embedded Energy Storage for Wind Farm Grid Integration
Integration of renewable energy is increasingly prevalent, yet its stochasticity may compromise the stability of the power system. In this paper, a high-voltage dc (HVDC) link model based on the modular multilevel converter with embedded energy storage (MMC-EES) is presented and, utilizing the massively parallel computing feature of the graphics processing unit (GPU), its efficacy in compensating a varying wind energy generation is studied. Constant power is oriented in the inverter control by incorporating a DC-DC converter with EES into its submodules. High-fidelity electromagnetic transient modeling is conducted for insights into converter control and energy management. A fully iterative solution is carried out for the nonlinear model for high accuracy. Since the sequential data processing manner of the central processing unit (CPU) is prone to an extremely long simulation following an increase of component quantity with even one order of magnitude, the massively concurrent threading of the GPU is exploited. The computational challenges posed by the complexity of the MMC circuit are effectively tackled by circuit partitioning which separates nonlinearities. In the meantime, components of an identical attribute are designed as one kernel despite inhomogeneity. The proposed modeling and computing method is applied to a multi-terminal DC system with wind farms, and significant speedups over CPU-based simulation are achieved, with the accuracy validated by the offline simulation tool PSCAD.
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来源期刊
CiteScore
7.80
自引率
5.30%
发文量
45
审稿时长
10 weeks
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