Automated Smart Home Controller Based on Adaptive Linear Neural Network

Puji Catur Siswipraptini, Rosida Nur Aziza, Iriansyah B. M. Sangadji, Indrianto Indrianto, R. Siregar
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引用次数: 6

Abstract

The purpose of this research is to model a smart home appliances control system using a neural network method. This control system consists of several components i.e. rain sensor, temperature sensor, light sensor, stepper motor and LCD on Arduino. Adaptive linear neural networks called Adaline algorithm is used for the training process of artificial neural networks. The inputs and targets are trained with a network that has been built to get the learning weights to be used as the basis for calculations on the next incoming training data. Adaline algorithm is used for the training process of Artificial Neural Networks. The results of the output of light intensity are 0, 150, 300, 400 with lux units and the results of the intensity of rain are 0, 250, 400, 700 in mm units of each water humidity simulated in light and rain sensors. The input obtained will be processed into an output that will move the motor to the position that has been set. Contribution of the results of this study, a proposed neural network-based multi-control system model based on criteria values of Adaline.
基于自适应线性神经网络的自动化智能家居控制器
本研究的目的是利用神经网络方法对智能家电控制系统进行建模。该控制系统由雨水传感器、温度传感器、光传感器、步进电机和Arduino上的LCD组成。自适应线性神经网络称为Adaline算法,用于人工神经网络的训练过程。输入和目标是用一个已经建立的网络来训练的,这个网络用来获得学习权值,作为计算下一个输入训练数据的基础。Adaline算法用于人工神经网络的训练过程。光、雨传感器模拟的每种水湿度的光强输出结果分别为0、150、300、400勒克斯单位,雨强输出结果分别为0、250、400、700毫米单位。所获得的输入将被处理成输出,该输出将使电机移动到已设置的位置。基于本研究成果,提出了一种基于Adaline准则值的神经网络多控制系统模型。
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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