Intelligent system for efficient management of electrical energy

M. ChristianG.Quintero, Yoly P. Trivino Barrios, Eduardo R. Terraza Rivera
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引用次数: 0

Abstract

This paper presents an intelligent system based on Back Propagation (BP) Neural Network implementation that aids to decrease power consumption in three different environments: Residential, Commercial and Industrial. A graphical interface was designed to provide the user with detailed information on consumption of the devices installed in each of the above environments, and allows the modification of parameters such as number of devices, power consumption associated to the levels specified for each device, environmental conditions, among others. Implementing the system developed in different environments, power consumption was lower than the one generated by implementing models without intelligent management. Additionally, we could estimate the savings in wear life of the devices, compared to the implementation of the system without intelligent management.
高效管理电能的智能系统
本文介绍了一种基于反向传播(BP)神经网络实现的智能系统,该系统有助于降低住宅,商业和工业三种不同环境的功耗。设计了一个图形界面,为用户提供安装在上述每种环境中的设备消耗的详细信息,并允许修改参数,如设备数量、与每个设备指定的级别相关的功耗、环境条件等。实现在不同环境下开发的系统,功耗低于实现无智能管理的模型所产生的功耗。此外,与没有智能管理的系统实施相比,我们可以估计设备磨损寿命的节省。
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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