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Adaptive Neuro-Fuzzy Inference System for Indoor Air Quality (IAQ) Assessment of a Korean Unlimited Grill Restaurant in Metro Manila

机译:马尼拉大都会无限烧烤餐厅的室内空气质量(IAQ)评估的自适应神经模糊推理系统

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The recent developments in technology, especially in the field of computational intelligence, allows us to use its power in vast applications. Together with this notion, people’s growing curiosity and awareness of indoor air pollution has also risen in the past few years. Consequently, this baseline study was conceptualized to evaluate the IAQ of a Korean unlimited grill restaurant. The study is divided into three phases where phase one is the evaluation of the IAQ. The parameters considered in this the evaluation are the dry bulb temperature, relative humidity (RH), carbon dioxide (CO2) concentration, and particulate matter concentrations (PM2.5 and PM10). An integrated testing instrument was developed using the following equipment: Smart Sensor AR 807 and ASHRAE hygrometer (for dry bulb temperature and RH); Vernier CO2 gas sensor (for CO2); and LanBaoDeYuan’s LB-S06 formaldehyde detector (for PM2.5 and PM10). The second phase is to conduct a baseline assessment to determine if the IAQ parameters are within the standards. Overall results show that indoor temperature readings were above the standard temperature; RH readings exceeded its standard; CO2 concentrations both during lunch time and dinner time were lower than the satisfactory range; and both PM2.5 and PM10 were higher than the ASHRAE 62.1-2016 standard limit The next phase of this study was the development of an adaptive neuro-fuzzy inference system to determine the effective indoor air quality index (EIAQI), an index that was derived from the integration of air quality index and thermal comfort index, using the data gathered from the previous phase. The ANFIS model developed used difference sigmoidal membership function with RMSE of 0.0035. Training and testing validation and evaluation resulted to an average error of 0.0083 and 0.523 respectively.
机译:技术的最新发展,特别是在计算智能领域,使我们能够在广泛的应用程序中使用它的强大功能。伴随着这一概念,人们对室内空气污染的好奇心和意识在过去几年中也有所提高。因此,该基线研究被概念化以评估韩国无限制烧烤餐厅的室内空气质量。该研究分为三个阶段,其中第一阶段是对室内空气质量的评估。评估中考虑的参数是干球温度,相对湿度(RH),二氧化碳(CO 2 )浓度和颗粒物浓度(PM 2.5 和PM 10 )。使用以下设备开发了一种集成的测试仪器:Smart Sensor AR 807和ASHRAE湿度计(用于干球温度和RH);游标公司 2 气体传感器(用于CO 2 );和兰宝德源的LB-S06甲醛检测仪(用于PM 2.5 和PM 10 )。第二阶段是进行基线评估,以确定IAQ参数是否在标准范围内。总体结果表明,室内温度读数高于标准温度。相对湿度读数超出其标准;一氧化碳 2 午餐时间和晚餐时间的浓度均低于令人满意的范围;和两个下午 2.5 和PM 10 高于ASHRAE 62.1-2016标准限值该研究的下一个阶段是开发自适应神经模糊推理系统,以确定有效的室内空气质量指数(EIAQI),该指数是从空气质量综合中得出的指数和热舒适指数,使用从上一阶段收集的数据。开发的ANFIS模型使用差异S形隶属函数,RMSE为0.0035。培训和测试的验证与评估分别产生0.0083和0.523的平均误差。

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