Net saving improvement of capacitor banks in power distribution systems by increasing daily size switching number: A comparative result analysis by artificial intelligence

Omid Sadeghian, Ashkan Safari
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Abstract

This paper studies the effect of the number of switching (NOS) per day of capacitor banks on loss reduction in radial distribution systems. To this aim, the daytime (more precisely, 24 h) is divided into different numbers of time segments (equal to the same NOS) for capacitors’ size switching. The resulting non‐linear programming with discontinuous derivatives (called DNLP) model is solved subject to related constraints. The results reveal the impact of hourly switching of capacitor banks on further loss reduction (namely 118.4435, 83.7856, and 101.738 MWh for three IEEE systems) and higher net savings (i.e. k$5.6067, k$4.2772, and k$5.3542 for the same systems) of radial distribution systems compared to daily switching. Then, the hyper‐tuned Random Forest model is trained based on the IEEE 69‐bus network, fine‐tuned by the IEEE 10‐bus network, and fitted by the IEEE 33‐bus network to have an intelligent multi‐classification task with the highest accuracy. Numerical simulation, in both classic and intelligent parts, is presented to demonstrate the performance of DeepOptaCap. For the final step, DeepOptaCast is compared to other intelligent models of Light Gradient Boosting Method (LGBM), Decision Tree, and XGBoost, regarding KPIs of mean absolute percentage error, root mean squared percentage error, mean absolute error, root mean squared error, and coefficient of determination to demonstrate the model's superiority.
通过增加日开关次数提高配电系统中电容器组的净节电率:人工智能比较结果分析
本文研究了电容器组每日投切次数(NOS)对径向配电系统损耗降低的影响。为此,将白天(更准确地说是 24 小时)划分为不同的时间段(等于相同的 NOS)来进行电容器的大小投切。由此产生的非线性编程与不连续导数(称为 DNLP)模型根据相关约束条件进行求解。结果表明,与每日切换相比,每小时切换电容器组可进一步减少径向配电系统的损耗(三个 IEEE 系统分别为 118.4435、83.7856 和 101.738 兆瓦时)和更高的净节约(相同系统分别为 k$5.6067、k$4.2772 和 k$5.3542)。然后,基于 IEEE 69 总线网络训练超调随机森林模型,通过 IEEE 10 总线网络进行微调,并通过 IEEE 33 总线网络进行拟合,从而以最高精度完成智能多分类任务。为了展示 DeepOptaCap 的性能,我们对传统和智能部分进行了数值模拟。最后,DeepOptaCast 与光梯度提升法 (LGBM)、决策树和 XGBoost 等其他智能模型在平均绝对百分比误差、平均平方根百分比误差、平均绝对误差、平均平方根误差和判定系数等 KPI 方面进行了比较,以证明该模型的优越性。
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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