室内热分配智能控制系统的实现

N. Tasmurzayev, B. Amangeldy, E. S. Nurakhov, A. Mukhanbet, Zh. Yeltay
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引用次数: 1

摘要

本文讨论了一种用于预测和控制房间最佳热分布的智能分布式系统的硬件和软件实现。系统从传感器收集数据并将其发送到服务器,以进一步监控和训练神经网络。预测是基于预训练的神经网络模型。现代空调的工作原理是将室内温度保持在一定的温度。空调通过预冷或加热产生气流。当温度达到要求值时,空调关闭(进入睡眠模式),继续采集空气温度值,当温度发生变化时,再次开启。该系统利用一维热传导问题的计算结果对训练好的神经模型进行校正,并根据预测的数据做出关于开/关和改变某台空调温度状态的决定。在这些方法中,仅使用空调本身的温度传感器计算出靠近空调的温度,而这并不能给我们一个完整的房间温度分布情况。位于空调上的温度传感器本身并不能反映温度分布的全貌,而且由于房间的特点,不同区域的温度差异很大。同时,空调的运行不考虑其他空调的运行,每台空调的运行是自主的,仅根据相关温度传感器的读数进行控制。
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 An Intelligent Control System For Heat Distribution In Rooms
This scientific article discusses the hardware and software implementation of an intelligent distributed system for predicting and controlling optimal heat distribution in a room. The system collects data from sensors and sends it to the server for further monitoring and training of the neural network. Prediction is based on a pre-trained neural network model. The principle of operation of modern air conditioners is based on maintaining the room temperature at a given temperature. The air conditioner generates a stream of air by pre-cooling or heating it. When the temperature reaches the required value, the air conditioner turns off (goes to sleep mode), continues to take the air temperature values, and when the temperature changes, it turns on again. The system uses the results of calculating a one-dimensional heat conduction problem to correct the trained neural model and makes a decision about switching on/off and changing the temperature regime of a certain air conditioner depending on the predicted data. In these methods, only the temperature close to the air conditioner is calculated using the temperature sensor of the air conditioner itself, and this does not give us a complete picture of the temperature distribution in the room. The temperature sensor located on the air conditioner itself does not reflect the general picture of the temperature distribution and, due to the characteristics of the room, the temperature in different areas can vary greatly. Also, the operation of the air conditioner does not take into account the operation of other air conditioners, the operation of each air conditioner is autonomous and is controlled only based on the readings of the associated temperature sensor.
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