利用元启发式算法对电气化铁路牵引网络中抑制低频振荡的控制器参数进行整定

IF 1.9 4区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC IET Electrical Systems in Transportation Pub Date : 2023-04-17 DOI:10.1049/els2.12075
Prasenjit Dey, Phumin Kirawanich, Chaiyut Sumpavakup, Aniruddha Bhattacharya
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引用次数: 0

摘要

由于电力动车组(EMU)和电力牵引网络的相互作用,低频振荡(LFO)出现,导致牵引封锁和整体稳定性相关问题。为了抑制LFO,冠状病毒群体免疫优化器(CHIO),一种最近开发的元启发式算法,已被用于调整控制器参数。控制器参数被调谐以最小化调节DC链路电容器电压的积分时间绝对误差(ITAE)。将使用CHIO获得的结果与使用其他公认算法(如共生生物搜索(SOS)和粒子群优化(PSO))获得的结果进行比较。在不同的操作条件下,CHIO在减轻LFO方面优于其他提到的算法。结果表明,所提出的基于算法的牵引单元的超调为1.0061%,而基于SOS和PSO的算法的超调分别为6.4542%和20.6166%,这是相当高的。CHIO比SOS和PSO更稳定,只需要0.1934s的稳定时间就可以达到稳态,比SOS快50.21%,比PSO快65.03%。此外,对于CHIO、SOS和PSO,牵引变压器(TT)二次侧线路电流的总谐波失真(THD)分别为0.88%、2.17%和12.48%。
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Tuning of controller parameters for suppressing low frequency oscillations in electric railway traction networks using meta-heuristic algorithms

Due to the interaction of electric multiple units (EMUs), and the electric traction networks, low frequency oscillations (LFOs) appear leading to traction blockade and overall stability related issues. For suppressing LFOs, coronavirus herd immunity optimiser (CHIO), a recently developed meta-heuristic, has been applied for tuning controller parameters. Controller parameters are tuned to minimise the integral time absolute error (ITAE) that regulates DC-link capacitor voltage. Results obtained using CHIO are compared with those found using other well-established algorithms like symbiotic organisms search (SOS) and particle swarm optimisation (PSO). The supremacy of CHIO over other mentioned algorithms for mitigating LFOs was demonstrated for a diverse range of operating conditions. Results demonstrates that overshoot for the proposed algorithm-based traction unit is 1.0061% whereas those for SOS and PSO based algorithm are obtained as 6.4542 % and 20.6166%, respectively which are quite high. CHIO is more stable than SOS and PSO and requires settling time of 0.1934 s only to reach steady-state condition, which is 50.21% faster than SOS and 65.03% faster than PSO. Also, the total harmonic distortion (THD) for line currents of the secondary side of traction transformer (TT) are obtained as 0.88%, 2.17%, and 12.48% for CHIO, SOS, and PSO, respectively.

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来源期刊
CiteScore
5.80
自引率
4.30%
发文量
18
审稿时长
29 weeks
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