A Neural Network Model to Control Greenhouse Environment

R. Salazar, I. Lopez, A. Rojano
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引用次数: 14

Abstract

This research was developed in a greenhouse located in Mexico, in which there are big variations in temperature and relative humidity, generating production losses. Consequently a good greenhouse control tool was necessary to keep these variables inside of the optimal levels. Black box models have been applied in this greenhouse to predict temperature and relative humidity, however they fail in relative humidity predictions because of non linear relationships in the variables. Therefore an Artificial Neural Network (ANN) was implemented because it excel at uncovering patterns or relationships in data and it is also a powerful non-linear estimator. A total number of 14,490 data patterns were available 50% for training, 25% for verification, and 25% for testing. The ANN developed demonstrates a highly accurate estimation for both variables which can be used to forecast the conditions inside of the greenhouse and consequently take actions ahead of time, avoiding economical losses.
温室环境控制的神经网络模型
这项研究是在墨西哥的一个温室里进行的,那里的温度和相对湿度变化很大,会造成生产损失。因此,一个好的温室控制工具是必要的,以保持这些变量在最佳水平。黑箱模型已应用于该温室预测温度和相对湿度,但由于变量之间的非线性关系,它们在相对湿度预测中失败。因此,人工神经网络(Artificial Neural Network, ANN)在揭示数据中的模式或关系方面表现出色,并且是一种强大的非线性估计器。总共有14490个数据模式可供使用,50%用于训练,25%用于验证,25%用于测试。开发的人工神经网络对这两个变量进行了高度准确的估计,可用于预测温室内部的情况,从而提前采取行动,避免经济损失。
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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