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Research on Temperature Control System of Central Air-conditioning based on Artificial Neural Network

机译:基于人工神经网络的中央空调温度控制系统研究

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the results of the thermal environment shows that the human thermal comfort in the environment is composed of the thermal environment parameters (such as the temperature, humidity, wind speed and mean radiant temperature, etc.) The results of the combined effects are on the human body. The effect can be integrated by Professor Hanger's PMV (The Average Forecast votes of Predicted Mean Vote) indicators to measure. This paper has established the PMV index based on BP neural network model, and then takes this model to PMV value of input constructed by the artificial neural system can achieve direct control of PMV index method, which can dynamically adjust the indoor temperature in real time and wind speed. The simulation results can be seen to meet the thermal comfort of the premise. It is not only for the role of air-conditioning system control in a timely manner, but it can also control the comfort range for PMV index.
机译:热环境的结果表明,人类在环境中的热舒适度由热环境参数(例如温度,湿度,风速和平均辐射温度等)组成。身体。可以通过Hanger教授的PMV(预测的平均投票的平均预测票数)指标对效果进行衡量。本文建立了基于BP神经网络模型的PMV指标,然后将该模型应用于人工神经系统构建的输入的PMV值,可以实现PMV指标方法的直接控制,可以实时动态地调节室内温度,并且风速。可以看出仿真结果满足了前提的热舒适性。它不仅对空调系统起到及时控制的作用,而且还可以控制PMV指数的舒适范围。

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