暖通空调
热舒适性
室内空气质量
能源消耗
空调
计算机科学
预测建模
高效能源利用
空气质量指数
工作流程
通风(建筑)
建筑工程
可靠性工程
机器学习
工程类
热力学
电气工程
物理
环境工程
机械工程
气象学
数据库
作者
Kaiyun Jiang,Tianyu Shi,Haowei Yu,Norhayati Mahyuddin,Shifeng Lu
标识
DOI:10.1177/1420326x241258678
摘要
Heating, ventilation and air conditioning (HVAC) systems could significantly impact indoor environmental quality, particularly in terms of thermal comfort and indoor air quality. Achieving a high-quality indoor environment poses challenges to the energy consumption of HVAC systems. Thus, balancing thermal comfort, indoor air quality (IAQ) and energy consumption becomes a challenging task. Currently, indoor environment prediction methods are considered effective solutions to address this issue. However, the published literature usually concentrates on single aspects like thermal comfort, air quality or energy consumption, with multi-aspect prediction methods being rare. The present work reviews research spanning the last decade that employs machine learning methods for predicting indoor environments and HVAC energy consumption through separate and multi-output predictive models. Separate predictive models focus on HVAC systems’ impact on the indoor environment, while multi-output models consider the interplay of various outputs. This article gives a thorough insight into machine learning prediction models’ workflow, detailing data collection, feature selection and model optimization for each research goal. A systematic assessment of methods for data collection of diverse prediction targets, machine learning algorithms and validation approaches for different prediction models is presented. This review highlights the complexities of data management, model development and validation, enriching the knowledge base in indoor environmental quality optimization.
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