优化可再生能源集成配电系统:混合泥环算法-量子神经网络方法

IF 3.6 4区 工程技术 Q3 ENERGY & FUELS Energy technology Pub Date : 2024-07-11 DOI:10.1002/ente.202301694
Ajitha priyadarsini S, Rajeev D
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引用次数: 0

摘要

本文提出了一种混合方法,通过整合清洁能源,特别是光伏(PV)和风能(WT),优化配电系统(DS)。所提出的技术结合了泥环算法 (MRA) 和量子神经网络 (QNN),称为 MRA-QNN 技术。其主要目标是最大限度地减少功率损耗并增强电压稳定性。MRA 方法生成变流器的控制信号,而 QNN 方法则根据 MRA 输出预测控制信号。通过对标准 IEEE 33 总线和 69 总线系统的仿真,揭示了该方法的有效性。在 MATLAB 中的实施表明,与现有方法相比,该方法性能优越,功率损耗值较低。系统电压曲线持续上升(在风电和光伏发电情况下,分别为 0.950 和 93 p.u),有功功率(AP)损耗大幅降低(光伏发电为 132.39 kW,风电为 81.23 kW,而有功功率损耗为 362.86 kW)。使用光伏发电时,全年经济损失从 158932.68 美元降至 57996.939 美元,使用风电发电时,全年经济损失降至 56805.479 美元。使用三台光伏发电设备后,年度经济损失和有功功率损失分别降至 30419.871 美元和 69.449 美元,以及 4.27 千瓦和 1875.930 美元。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Optimizing Distribution Systems with Renewable Energy Integration: Hybrid Mud Ring Algorithm-Quantum Neural Network Approach

A hybrid approach is proposed for optimizing distribution systems (DSs) by integrating clean energy sources, specifically photovoltaic (PV) and wind power (WT). The proposed technique combines the mud ring algorithm (MRA) and quantum neural network (QNN), referred to as the MRA-QNN technique. The primary objective is to minimize power loss and enhance voltage stability. The MRA method generates the control signal of the converter, while the QNN method predicts the control signal based on the MRA output. The effectiveness of the approach is revealed through simulations on standard IEEE 33 bus and 69 bus systems. Implementation in MATLAB shows superior performance compared to existing methods, with lower power loss values. There has been a sustained rise in the system voltage profile (In the WT and PV situations, 0.950. and 93 p.u), as well as a considerable reduction in the active power (AP) losses (to 132.39 kW with PV and 81.23 kW with WT from 362.86 kW). With PV, the entire yearly economic loss is lowered from $158932.68 to just $57996.939, and with WT, it is decreased to $56805.479. With three PVs, the yearly economic loss and active power losses are decreased to 30419.871 $ and 69.449, and 4.27 kW and 1875.930 $, respectively.

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来源期刊
Energy technology
Energy technology ENERGY & FUELS-
CiteScore
7.00
自引率
5.30%
发文量
0
审稿时长
1.3 months
期刊介绍: Energy Technology provides a forum for researchers and engineers from all relevant disciplines concerned with the generation, conversion, storage, and distribution of energy. This new journal shall publish articles covering all technical aspects of energy process engineering from different perspectives, e.g., new concepts of energy generation and conversion; design, operation, control, and optimization of processes for energy generation (e.g., carbon capture) and conversion of energy carriers; improvement of existing processes; combination of single components to systems for energy generation; design of systems for energy storage; production processes of fuels, e.g., hydrogen, electricity, petroleum, biobased fuels; concepts and design of devices for energy distribution.
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