基于斑马优化算法和多模态自适应时空图神经网络的三相并网电动汽车有功与无功控制

IF 4.2 Q2 ENERGY & FUELS
E. Shiva Prasad , S.V. Evangelin Sonia , Kokkirapati Naga Suresh , T.G. Shivapanchakshari
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引用次数: 0

摘要

三相并网电动汽车(ev)对于优化能量流、管理充放电的有功功率(AP)以及控制无功功率(RP)以确保电压调节至关重要。这些特性增强了电网的可靠性,并支持大规模电动汽车与电网的无缝集成。然而,不可预测的充电频率带来了诸如电压波动和电网不平衡等挑战,对电能质量(PQ)和稳定性产生不利影响。为了解决这些问题,本研究提出了一种三相并网电动汽车的AP和RP混合控制方法。新型的ZOA-MASTGNN技术将斑马优化算法(ZOA)与多模态自适应时空图神经网络(MASTGNN)相结合。ZOA可以动态优化系统参数,改善电源管理,降低总谐波失真(THD),增强电网稳定性。同时,在电网交互电动汽车系统中,MASTGNN可以预测最优控制行为,减轻谐波,动态调节电压,并适应不断变化的运行条件。该方法在MATLAB平台上实现,并与现有的弹性导向物理信息神经网络(RPINN)、Elman神经网络(ENN)、多层前馈神经网络(ML-FFNN)、深度神经网络(DNN)和粒子群优化人工神经网络(PSO-ANN)等方法进行了比较。结果表明,改进效果显著,负载电流THD达到19.36%,源电流THD达到3.52%,效率和有效性均优于其他方法。该框架解决了大规模电动汽车集成的关键挑战,为可持续电网运营提供了可扩展和实用的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Active and Reactive Power Control in Three-Phase Grid-Connected Electric Vehicles using Zebra Optimization Algorithm and Multimodal Adaptive Spatio-Temporal Graph Neural Network
Three-phase grid-connected Electric Vehicles (EVs) are critical for optimizing energy flow, managing Active Power (AP) for charging and discharging, and controlling Reactive Power (RP) to ensure voltage regulation. These features enhance grid reliability and support the seamless integration of large-scale EVs into power grids. However, the unpredictable frequency of charging sessions creates challenges such as voltage fluctuations and grid imbalances, adversely affecting power quality (PQ) and stability. To address these issues, this study proposes a hybrid approach for AP and RP control in three-phase grid-connected EVs. The novel ZOA-MASTGNN technique integrates the Zebra Optimization Algorithm (ZOA) with the Multimodal Adaptive Spatio-Temporal Graph Neural Network (MASTGNN). The ZOA dynamically optimizes system parameters, improving power management, reducing Total Harmonic Distortion (THD), and enhancing grid stability. Meanwhile, MASTGNN predicts optimal control actions, mitigating harmonics, regulating voltage dynamically, and adapting to changing operational conditions in grid-interactive EV systems. The suggested method was implemented on the MATLAB platform and evaluated with existing approaches, including Resiliency-Guided Physics-Informed Neural Networks (RPINN), Elman Neural Networks (ENN), Multilayer Feed Forward Neural Networks (ML-FFNN), Deep Neural Networks (DNN), and Particle Swarm Optimization-Artificial Neural Networks (PSO-ANN). Results showed significant improvements, achieving 19.36% load current THD and 3.52% source current THD, while outperforming other approaches in efficiency and effectiveness. This framework addresses key challenges in large-scale EV integration, offering scalable and practical solutions for sustainable power grid operations.
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来源期刊
Renewable Energy Focus
Renewable Energy Focus Renewable Energy, Sustainability and the Environment
CiteScore
7.10
自引率
8.30%
发文量
0
审稿时长
48 days
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