基于神经网络估计的单相功率因数校正电容组操作系统

S. Shakya
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引用次数: 0

摘要

从小型住宅用电负荷到重型工业用电负荷,所有地方都存在电力浪费。千伏安无功(KVAR)功率计量装置在工业应用中用于测量能源利用率,同时也测量能源的浪费。这也促使消费者为未利用或浪费的能源付费。为了避免这种情况,某些电容器组单元连接到工业应用电机单元。正确选择电容额定值有助于减少KVAR表中观测功率的浪费。从功率因数计算的角度分析了电容器额定值的选择。功率因数是电力系统中工作功率对视在功率的推导。电气系统应保持的最佳功率因数为1。所提出的工作的动机是通过选择在各种负载条件下电力系统运行的最佳电容器组来保持功率因数。对电容器组值的要求随着电力系统负载的变化而变化。采用基于神经网络的预测模型估计电容器组的正确选择。验证了该方法的有效性,与传统的电容器组操作系统相比,效果较好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient Capacitor Bank Operating System for Single Phase Power Factor Correction using Neural Network Estimations
Wastage of electricity occurs in all places starting from a small house electrical loading to a heavy industrial electrical loading. KiloVolt-Ampere Reactive (KVAR) power metering devices are employed in industrial applications for measuring the energy utilization which measure the energy wastage along with it. This urges a consumer to pay for the unutilized or wasted energy as well. To avoid this, certain capacitor bank units are connected to the industrial application motor units. The right choice of capacitor rating are helpful in minimizing the wasted power observation in the KVAR meters. The selection of capacitor rating is analysed with respect to the power factor calculation. The power factor is a derivation of working power to the apparent power in an electrical system. An optimum power factor to be maintained in an electrical system is 1. The motive of the proposed work is to maintain the power factor by selecting an optimum capacitor bank on the operation of an electrical system at various load conditions. The requirement of capacitor bank values get changed with respect to the load given to an electrical system. A neural network based prediction model is employed in the work for estimating the right choice of capacitor bank. The efficiency of the proposed work is verified and found satisfied with a traditional capacitor bank operating system.
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