基于单片机的神经网络在电水壶节能中的实现

T. Krongtripop, P. Kirdpipat
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引用次数: 2

摘要

本文介绍了基于Arduino Uno R3单片机的神经网络在办公室电水壶节能中的实现。神经网络采用反向传播技术和levenberg-marquardt算法进行学习和训练。电热水壶的使用日期和使用时间作为学习和训练的输入,直到当用户需要使用电热水壶时,神经网络能够正确地预测和控制操作时间。结果表明,该神经网络可以准确预测和控制电热水壶的使用时间,包括每天的用水量。每天用水量按平均值计算,约760立方厘米。与普通电水壶相比,该神经网络平均节能约49.84%。这种技术也可以应用于其他家庭应用程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of neural network based on the microcontroller for energy saving of electric kettle
This paper presents the implementation of neural network based on Arduino Uno R3 microcontroller for energy saving of electric kettle in the office. The neural network uses back propagation technique and levenberg-marquardt algorithm for learning and training. The day and usage time of electric kettle are inputs for learning and training until the neural network can predict and control the operation time correctly when the user needs to use the electric kettle. As the results, the neural network can predict and control the operation time of electric kettle including amount of water usage for each day accurately. Amount of water usage for each day is based on the average value about 760 cubic centimeters. This neural network can also provide the average of energy saving approximately 49.84 percent as comparing with the general electric kettle. This technique may also apply with the other home applications.
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