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Automatic Control System for Thermal Comfort Based on Predicted Mean Vote and Energy Saving

机译:基于预测平均投票和节能的热舒适自动控制系统

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摘要

For human-centered automation, this study presents a wireless sensor network using predicted mean vote (PMV) as a thermal comfort index around occupants in buildings. The network automatically controls air conditioning by means of changing temperature settings in air conditioners. Interior devices of air conditioners thus do not have to be replaced. An adaptive neurofuzzy inference system and a particle swarm algorithm are adopted for solving a nonlinear multivariable inverse PMV model so as to determine thermal comfort temperatures. In solving inverse PMV models, the particle swarm algorithm is more accurate than ANFIS according to computational results. Based on the comfort temperature, this study utilizes feedforward–feedback control and digital self-tuning control, respectively, to satisfy thermal comfort. The control methods are validated by experimental results. Compared with conventional fixed temperature settings, the present control methods effectively maintain the PMV value within the range of and energy is saved more than 30% in this study.
机译:对于以人为中心的自动化,该研究提出了一种无线传感器网络,该网络使用预测的平均投票(PMV)作为建筑物中居住者周围的热舒适指数。网络通过更改空调的温度设置自动控制空调。因此,不必更换空调的内部设备。采用自适应神经模糊推理系统和粒子群算法求解非线性多变量逆PMV模型,从而确定热舒适温度。在求解逆PMV模型时,根据计算结果,粒子群算法比ANFIS更精确。基于舒适温度,本研究分别利用前馈-反馈控制和数字自整定控制来满足热舒适性。实验结果验证了该控制方法的有效性。与常规的固定温度设置相比,本研究中的现有控制方法有效地将PMV值保持在的范围内,并且节省了30%以上的能量。

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