Decoupling the complexities of air-conditioning cooling energy use in express hotels by data mining approaches

IF 3.2 3区 工程技术 Q2 CONSTRUCTION & BUILDING TECHNOLOGY Indoor and Built Environment Pub Date : 2023-09-14 DOI:10.1177/1420326x231199956
Shuqin Chen, Xinyue Li, Yuhang Ma, Zhichao Wang
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Abstract

The air-conditioning (AC) energy use in express hotels is stochastic with the high coupling relationships amongst AC usage, indoor temperature and energy consumption. Such complexities and stochasticity make it hard to facilitate energy saving with clear effect on indoor environment. However, lacking analyses of high-resolution occupants’ energy use makes it difficult to achieve such goals due to the split form of ACs and various thermal comfort of guests in express hotels. Therefore, this study made a serial analysis on the AC energy use in a more detailed scope. The stochastic AC usage, indoor temperature and AC energy consumption were quantified by proposed typical patterns with the cluster method. The stochasticity was described by four typical patterns for each aspect. After the quantifications, the relationships amongst these three aspects were decoupled by the proposed energy use decoupling model. Two data mining methods, namely, random forest method and decision tree method, were employed to achieve this purpose, respectively. With these models, the impacts of each variable on AC energy consumption and explicit relationships of operation rules for management are presented. Strictly limiting set point temperature higher than 23°C is the effective way to save energy for most of AC usage patterns. This study can provide a deeper understanding of AC energy use in express hotels, and benefits energy saving and facility operation in express hotels.
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利用数据挖掘方法解耦高速酒店空调制冷能源使用的复杂性
高速酒店空调能耗具有随机性,空调能耗与室内温度、能耗之间存在高度耦合关系。这种复杂性和随机性使得节能难以在对室内环境有明显影响的情况下进行。然而,由于空调的分裂形式和快速酒店客人的热舒适不同,缺乏高分辨率的居住者能源使用分析,很难实现这一目标。因此,本研究在更详细的范围内对交流能源使用进行了系列分析。采用聚类方法对随机空调使用量、室内温度和空调能耗进行了定量分析。每个方面的随机性用四种典型模式来描述。量化后,利用提出的能源利用解耦模型对三者之间的关系进行解耦。本文分别采用随机森林和决策树两种数据挖掘方法来实现这一目的。通过这些模型,给出了各变量对交流能耗的影响以及管理操作规则之间的明确关系。严格限制设定点温度高于23°C是大多数交流使用模式节能的有效途径。通过本研究,可以更深入地了解快运酒店的交流能源使用情况,有利于快运酒店的节能和设施运营。
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来源期刊
Indoor and Built Environment
Indoor and Built Environment 环境科学-工程:环境
CiteScore
6.40
自引率
25.00%
发文量
130
审稿时长
2.6 months
期刊介绍: Indoor and Built Environment publishes reports on any topic pertaining to the quality of the indoor and built environment, and how these might effect the health, performance, efficiency and comfort of persons living or working there. Topics range from urban infrastructure, design of buildings, and materials used to laboratory studies including building airflow simulations and health effects. This journal is a member of the Committee on Publication Ethics (COPE).
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