利用方差网络优化交直流混合微电网中的电力流以实现成本最小化

Pagidela Yamuna, Visali N
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引用次数: 0

摘要

目前,这项工作为混合微电网运行中的复杂控制方法和决策支持系统奠定了基础,提供了有关集成人工智能以改进微电网控制的深刻信息。本研究提出了一种神经网络(NN)方法,用于基于 IEEE 12 总线的交直流混合微电网的功率流分析。该研究优化了电力调度,最大限度地减少了开支,并最大限度地降低了交流和直流部分的损耗。仿真使用 MATLAB 软件进行,并对结果进行了展示和分析。通过对历史数据的训练和实时观测的验证,证明了有功功率流 NN 预测的准确性。比较预期值和实际值的回归图显示了基于 NN 的分析在实现理想功率分布方面的有效性。
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Optimal Power Flow in Hybrid AC/DC Microgrid using ANN for Cost Minimization
Currently, this work lays the ground work for sophisticated control methods and decision support systems in hybrid microgrid operations by providing insightful information about integrating artificial intelligence for improved microgrid control. In this work, a neural network (NN) method is proposed for power flow analysis in an IEEE 12-bus-based Hybrid AC/DC Microgrid. The study optimizes power dispatch, minimizes expenses, and minimizes losses in both AC and DC components. Simulation is carried using MATLAB software and the results are presented and analysed. The accuracy of the NN’s predictions of active power flows is demonstrated by training it on historical data and validating it on real-time observations. Regression plots comparing anticipated and real values demonstrate the effectiveness of NN-based analysis in reaching the ideal power distribution.
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