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Design and Implementation of Genetic Fuzzy Controller for Split Air-Conditioner Control Based on Fanger's PMV Index

机译:基于Fanger PMV指数的分体式空调控制遗传模糊控制器的设计与实现

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This paper reports the design and implementation of genetically optimized fuzzy logic controller (GAFLC) for split air-conditioner based on the principle of Fanger's Predicted Mean Vote (PMV) index. The proposed control strategy is aimed at improving the indoor thermal environment (ITE) at houses, offices, libraries, hotels, etc. because it plays a vital role in determining the health, physical and mental productivity of the occupants. The GAFLC has been implemented in MATLAB Simulink for computer simulation and also on hardware platform using the commercially available 8-bit ATmega-328 microcontroller through embedded C-coding for real practice. One part of the designed control algorithm examines the values of activity level, clothing insulation, air velocity, and relative humidity and decides the comfort temperature value to be set such that the PMV and PPD indices get satisfied. The other part generates a control signal to the air-conditioner compressor to maintain that temperature. From the simulation results it is seen that the generated comfort temperature values are in the range of 24.4°— 26.55℃ for various combinations of environmental and personal parameters, which are well above the general temperature set value of 20℃. This indicates the scope for reducing energy consumption to a greater extent. Also the PMV index lies in the range of —0.23 to + 0.36 with untuned fuzzy inference system (FIS), and in the range of —0.32 to + 0.14 with genetic algorithm (GA)-tuned FIS, which are acceptable comfort levels that human physiology can endure with more satisfaction. The experimental results show that GAFLC has generated a comfort temperature value for specified input parameters and also maintained the room temperature at that value to keep the thermal ambience more satisfactorily.
机译:本文基于Fanger预测均值(PMV)指标原理,对分体式空调器的遗传优化模糊逻辑控制器(GAFLC)进行了设计和实现。提议的控制策略旨在改善房屋,办公室,图书馆,旅馆等的室内热环境(ITE),因为它在确定居住者的健康,身体和心理生产力方面起着至关重要的作用。 GAFLC已经在MATLAB Simulink中实现了用于计算机仿真,并且还在硬件平台上使用了商用8位ATmega-328微控制器通过嵌入式C编码实现了实际应用。设计的控制算法的一部分检查活动水平,衣物隔热,空气速度和相对湿度的值,并确定要设置的舒适温度值,以使PMV和PPD指标得到满足。另一部分向空调压缩机生成控制信号以维持该温度。从仿真结果可以看出,环境和个人参数的各种组合所产生的舒适温度值在24.4°-26.55℃的范围内,远高于一般温度设定值20℃。这表明了更大程度地降低能耗的范围。同样,未调整的模糊推理系统(FIS)的PMV指数在-0.23至+ 0.36的范围内,而对于遗传算法(GA)调整的FIS在PMV指数的范围在-0.32至+ 0.14的范围内,这是人类可接受的舒适水平生理可以更满意地忍受。实验结果表明,GAFLC已针对指定的输入参数生成了舒适温度值,并将室温保持在该值,以保持令人满意的热环境。

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