Evaluating the effects of indoor air quality on teacher performance using artificial neural network

IF 2.6 Q1 ENGINEERING, MULTIDISCIPLINARY
Hamdan Alzahrani, M. Arif, A. Kaushik, M. Rana, H. Aburas
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引用次数: 1

Abstract

Purpose A building's Indoor Air Quality (IAQ) has a direct impact on the health and productivity on its occupants. Understanding the effects of IAQ in educational buildings is essential in both the design and construction phases for decision-makers. The purpose of this paper is to outline the impact air quality has on occupants' performance, especially teachers and students in educational settings. Design/methodology/approach This study aims to evaluate the effects of IAQ on teachers' performances and to deliver air quality requirements to building information modelling-led school projects. The methodology of the research approach used a quasi-experiment through questionnaire surveys and physical measurements of indoor air parameters to associate correlation and deduction. A technical college building in Saudi Arabia was used for the case study. The study developed an artificial neural network (ANN) model to define and predict relationships between teachers' performance and IAQ. Findings This paper contains a detailed investigation into the impact of IAQ via direct parameters (relative humidity, ventilation rates and carbon dioxide) on teacher performance. Research findings indicated an optimal relative humidity with 65%, ranging between 650 to 750 ppm of CO2, and 0.4 m/s ventilation rate. This ratio is considered optimum for both comfort and performance Originality/value This paper focuses on teacher performance in Saudi Arabia and used ANN to define and predict the relationship between performance and IAQ. There are few studies that focus on teacher performance in Saudi Arabia and very few that use ANN in data analysis.
利用人工神经网络评价室内空气质量对教师绩效的影响
目的建筑物的室内空气质量(IAQ)直接影响居住者的健康和生产力。对于决策者来说,了解室内空气质量在教育建筑中的影响在设计和施工阶段都至关重要。本文的目的是概述空气质量对居住者表现的影响,尤其是教育环境中的教师和学生。设计/方法/方法本研究旨在评估室内空气质量对教师表现的影响,并为建筑信息建模主导的学校项目提供空气质量要求。研究方法采用准实验的方法,通过问卷调查和室内空气参数的物理测量来关联相关性和推断。案例研究使用了沙特阿拉伯的一所技术学院大楼。该研究开发了一个人工神经网络(ANN)模型来定义和预测教师绩效和IAQ之间的关系。研究结果本文通过直接参数(相对湿度、通风率和二氧化碳)详细调查了室内空气质量对教师表现的影响。研究结果表明,最佳相对湿度为65%,二氧化碳含量在650至750ppm之间,通风速度为0.4m/s。这一比例被认为是舒适度和表现的最佳比例原创/价值本文关注沙特阿拉伯的教师表现,并使用人工神经网络来定义和预测表现与IAQ之间的关系。很少有研究关注沙特阿拉伯的教师表现,也很少有研究在数据分析中使用人工神经网络。
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来源期刊
Journal of Engineering Design and Technology
Journal of Engineering Design and Technology ENGINEERING, MULTIDISCIPLINARY-
CiteScore
6.50
自引率
21.40%
发文量
67
期刊介绍: - Design strategies - Usability and adaptability - Material, component and systems performance - Process control - Alternative and new technologies - Organizational, management and research issues - Human factors - Environmental, quality and health and safety issues - Cost and life cycle issues - Sustainability criteria, indicators, measurement and practices - Risk management - Entrepreneurship Law, regulation and governance - Design, implementing, managing and practicing innovation - Visualization, simulation, information and communication technologies - Education practices, innovation, strategies and policy issues.
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