多目标优化整合电动汽车和风能的电力网络

Peifang Liu , Jiang Guo , Fangqing Zhang , Ye Zou , Junjie Tang
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引用次数: 0

摘要

在不断发展的电力网络中,包括电动汽车(EV)和风能等可再生能源在内的多种能源的整合已变得越来越重要。随着插电式电动汽车(PEV)的迅速普及,其最佳利用取决于如何协调相互冲突和适应性强的目标,包括促进车联网(V2 G)或与更广泛的能源生态系统相协调。与此同时,风能资源不可阻挡地融入电力网络,凸显了优化生产和降低成本的多用途规划的迫切需要。本研究结合电动汽车的存在和概率风力资源模型,应对这一多方面的挑战。针对问题的复杂性,我们设计了一种基于集体竞争的多用途方法,有效降低了计算复杂性,并通过帕累托前沿优化点创造性地提高了模型性能。为了辨别理想对策,我们采用了模糊理论。所建议的模式在两个成熟的 IEEE 电网(30 和 118 总线)上进行了严格测试,测试场景多种多样,包括风车和 PEV 生财有道图库,结果表明我们的多用途框架在解决这一复杂问题的同时,还能兼顾不确定性。
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Multi-objective optimization of power networks integrating electric vehicles and wind energy
In the ever-evolving landscape of power networks, the integration of diverse sources, including electric vehicles (EVs) and renewable energies like wind power, has gained prominence. With the rapid proliferation of plug-in electric vehicles (PEVs), their optimal utilization hinges on reconciling conflicting and adaptable targets, including facilitating vehicle-to-grid (V2 G) connectivity or harmonizing with the broader energy ecosystem. Simultaneously, the inexorable integration of wind resources into power networks underscores the critical need for multi-purpose planning to optimize production and reduce costs. This study tackles this multifaceted challenge, incorporating the presence of EVs and a probabilistic wind resource model. Addressing the complexity of the issue, we devise a multi-purpose method grounded in collective competition, effectively reducing computational complexity and creatively enhancing the model's performance with a Pareto front optimality point. To discern the ideal response, fuzzy theory is employed. The suggested pattern is rigorously tested on two well-established IEEE power networks (30- and 118-bus) in diverse scenarios featuring windmills and PEV producers, with outcomes showcasing the remarkable excellence of our multi-purpose framework in addressing this intricate issue while accommodating uncertainty.
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