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Model predictive control and improved low-pass filtering strategies based on wind power fluctuation mitigation

机译:基于风电波动缓解的模型预测控制及改进的低通滤波策略

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The rapid development of renewable energy sources such as wind power has brought great challenges to the power grid. Wind power penetration can be improved by using hybrid energy storage (ES) to mitigate wind power fluctuation. We studied the strategy of smoothing wind power fluctuation and the strategy of hybrid ES power distribution. Firstly, an effective control strategy can be extracted by comparing constant-time low-pass filtering (CLF), variable-time low-pass filtering (VLF), wavelet packet decomposition (WPD), empirical mode decomposition (EMD) and model predictive control algorithms with fluctuation rate constraints of the identical grid-connected wind power. Moreover, the mean frequency of ES as the cutoff frequency can be acquired by the Hilbert Huang transform (HHT), and the time constant of filtering algorithm can be obtained. Then, an improved low-pass filtering algorithm (ILFA) is proposed to achieve the power allocation between lithium battery (LB) and supercapacitor (SC), which can overcome the over-charge and over-discharge of ES in the traditional low-pass filtering algorithm (TLFA). In addition, the optimized LB and SC power are further obtained based on the SC priority control strategy combined with the fuzzy control (FC) method. Finally, simulation results show that wind power fluctuation can be effectively suppressed by LB and SC based on the proposed control strategies, which is beneficial to the development of wind and storage system.
机译:风电等可再生能源的快速发展为电网带来了极大的挑战。通过使用混合能量存储来缓解风力波动,可以提高风力渗透。我们研究了平滑风电波动的策略和混合ES配电策略。首先,通过比较恒定时间低通滤波(CLF),可变时间低通滤波(VLF),小波包分解(WPD),经验模式分解(EMD)和模型预测控制,可以通过比较有效的控制策略来提取有效的控制策略具有相同网格连接风电的波动率约束的算法。此外,作为截止频率的ES的平均频率可以由Hilbert Huang变换(HHT)获取,并且可以获得过滤算法的时间常数。然后,提出了一种改进的低通滤波算法(ILFA)来实现锂电池(LB)和超级电容器(SC)之间的功率分配,这可以克服传统低通中ES的过充电和过度放电过滤算法(TLFA)。另外,基于与模糊控制(FC)方法相结合的SC优先控制策略进一步获得优化的LB和SC功率。最后,仿真结果表明,基于所提出的控制策略,LB和SC可以有效地抑制风电波动,这有利于风和储存系统的发展。

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