Development of Sustainable Indoor Air Quality for Air-Conditioning System Using Smart Control Techniques

Tosin T. Oye, N. Gupta, Keng Goh, Toyosi K. Oye
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引用次数: 1

Abstract

Air-conditioning as a technical solution to protect inhabitants from excessive heat exposure creates the challenge of expanding indoor health effects. While air-conditioning has mostly been applied as an improvement to living conditions, health and environmental problems associated with its use frequently occurs. Therefore, this paper challenges and extends existing knowledge on sustainability related to the smart air-conditioning systems. The decrease of CO2 level in building requires an intelligent control system because energy utilisation has been legitimately connected with wellbeing and eventually to operational expenses. A building’s indoor environmental essential factors of comfort are IAQ, visual and thermal. Through an appropriate structured controller, the performance of indoor control system can be altogether improved. It merits creating innovative control techniques to optimise the indoor environment quality for air-conditioning system. The newly proposed backpropagation neural network was optimised using Matlab to control the CO2 level appropriately while carefully taking into account the performance of system controllers such as the stability, adaptability, speed response and overshoot. The controller of indoor environment was designed, and the proportional-integral-derivative control was utilised as a result of its suitability. The smart controllers were designed to regulate the parameters automatically to ensure the optimised control output. The indoor CO2 possesses an appropriate time constant and settling time of 2.1s and 27.3s, respectively. Therefore, utilising smart control techniques to exterminate various indoor health effects is expected to produce sustainable living conditions.
基于智能控制技术的空调系统室内空气质量可持续发展研究
空调作为一种技术解决方案,保护居民免受过度的热量暴露,这带来了扩大室内健康影响的挑战。虽然空调的应用主要是为了改善生活条件,但与使用空调有关的健康和环境问题经常发生。因此,本文挑战并扩展了与智能空调系统相关的可持续性的现有知识。建筑中二氧化碳水平的降低需要一个智能控制系统,因为能源利用已经与健康联系在一起,最终与运营费用联系在一起。一个建筑的室内环境舒适的基本因素是室内空气质量,视觉和热。通过适当的结构控制器,可以全面提高室内控制系统的性能。为了优化空调系统的室内环境质量,需要创新控制技术。利用Matlab对新提出的反向传播神经网络进行优化,在仔细考虑系统控制器的稳定性、适应性、速度响应和超调等性能的同时,适当地控制CO2水平。设计了室内环境控制器,考虑到比例-积分-导数控制的适用性,采用了比例-积分-导数控制。设计了智能控制器,自动调节参数,以确保最优的控制输出。室内CO2适宜的时间常数为2.1s,沉降时间为27.3s。因此,利用智能控制技术消除各种室内健康影响有望产生可持续的生活条件。
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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