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Context-based Control Strategies for Improving Energy Efficiency in Multi-zone Buildings : 건물 에너지 효율 향상을 위한 상황별 제어 전략

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dc.contributor.advisor박문서-
dc.contributor.author송권식-
dc.date.accessioned2017-10-27T16:32:18Z-
dc.date.available2017-10-27T16:32:18Z-
dc.date.issued2017-08-
dc.identifier.other000000146020-
dc.identifier.urihttps://hdl.handle.net/10371/136699-
dc.description학위논문 (박사)-- 서울대학교 대학원 공과대학 건축학과, 2017. 8. 박문서.-
dc.description.abstractWith the increasing concern about energy saving, demand-side management has been widely implemented during the building life cycle. In the design phase of buildings, technical improvements in the insulation of its envelope and the efficiency of mechanical and electrical equipment significantly contribute to energy saving in building. Also, the energy-efficient operation of mechanical and electrical equipment is a permanent solution to achieve energy saving in the operation phase of buildings. Among these alternatives, recent efforts have focused on the operational solution due to a significant energy saving potential with relatively less effort.

Due to the importance of control strategies in demand-side management, a substantial amount of studies has been conducted to investigate the amount of energy saving from heating, ventilating and air conditioning (HVAC) scheduling techniques in buildings. Unfortunately, despite the previous achievement, the two main problems still exist in establishing optimal HVAC control strategies in multi-zone buildings. First, almost all studies have scheduled the operation of HVAC systems at the zone level. Although the zone-based HVAC scheduling provides a significant reduction in energy consumption, there still remain limitations in maintaining occupants thermal comfort. This is because a zone may consist of multiple rooms having different energy use patterns. Furthermore, its practical applications are limited due to a time-consuming process to set up control parameters in multiple zones. Second, little is known regarding the effect of contextual variables on energy saving from HVAC scheduling techniques in multi-zone buildings. Although only few studies have investigated how dynamic environment-related variables affect energy saving from HVAC scheduling techniques, they assumed that all zones have identical energy use patterns. Thus, it is impossible to establish optimal control strategies that can maximize energy saving from HVAC scheduling techniques in in multi-zone buildings.

As an effort to address these problems, this research aims to investigate how temporal and weather variables affect energy saving from HVAC scheduling techniques in multi-zone buildings. In order to achieve this objective, representative end-user groups (EUG) are identified in dormitory buildings of a university in Seoul, South Korea. Then, the following two models are developed depending on their purposes. First, a data mining-based model is constructed to predict baseline energy consumption for EUGs. Second, a thermodynamic model is developed to simulate post-retrofit energy consumption under controlled conditions by HVAC scheduling techniques. Then, based on the developed models, energy performance simulation is conducted to evaluate the amount of energy saving from HVAC scheduling techniques in different temporal and weather contexts.

From the results of energy performance simulation, the two key findings are summarized as follow. First, global temperature and on/off control of HVAC systems, as HVAC scheduling alternatives, produce the significant amount of energy saving in the case buildings. This implies that the buildings exhibit characteristics of low energy efficiency in heating seasons. Second, the HVAC scheduling techniques produce different energy saving potentials depending on outdoor temperature and course period. In other words, this indicates that establishing optimal control strategies is dependent on the given contexts. However, there is not always a consistent relationship between contextual variables and optimal HVAC control strategies in multi-zone buildings.

The main contribution of this research is to improve our understanding of the effect of temporal and weather variables on energy saving from HVAC scheduling techniques in multi-zone buildings. More specifically, this research provides a first look into the contextual behavior of representative end-user groups in multi-zone buildings. Additionally, this research contributes to an enhancement of the knowledge about how the characteristics of representative end-user groups affect the performance of building energy use prediction. Lastly, the developed models enable facility managers to schedule the energy-efficient operation of HVAC systems without compromising occupants thermal comfort in multi-zone buildings.
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dc.description.tableofcontentsChapter1 Introduction 1
1.1 Research Background 1
1.2 Problem Statement 4
1.3 Research Objectives and Framework 8
1.4 Dissertation Structure 11
Chapter2 Preliminary Research 15
2.1 Demand-side Management in Buildings 15
2.1.1 Overview of Demand-side Management in Buildings 16
2.1.2 Demand-side Management Planning Framework 19
2.2 HVAC Control Strategies 21
2.2.1 HVAC Scheduling Techniques 21
2.2.2 HVAC Controller Algorithms 24
2.3 Building Energy Use Prediction 27
2.4 Summary 31
Chapter3 Conceptual Framework for Energy Performance Evaluation 33
3.1 Decomposition Approach for Energy Saving Estimation 33
3.2 Data Collection and Preprocessing 35
3.3 Energy Performance Evaluation Methods 38
3.3.1 k-means Algorithm 38
3.3.2 Artificial Neural Network and k-nearest Neighbor 41
3.3.3 Simulation-based Prediction 45
3.4 Summary 48
Chapter4 End-user Group Identification in Multi-zone Buildings 49
4.1 Issues in End-user Group Identification 49
4.2 Identification Method 52
4.2.1 Data Reduction and Transformation 52
4.2.2 Identification Process 56
4.3 Results and Discussions 60
4.3.1 Representative End-user Groups 60
4.3.2 Energy Consumption by End-user Group 64
4.3.3 Percentage of Total Rooms by End-user Groups 69
4.3.4 Discussions 80
4.4 Summary 82
Chapter5 Baseline Energy Use Prediction using Occupancy-related Characteristics 83
5.1 Importance of Occupancy-related Characteristics in Building Energy Use Prediction 83
5.2 Model Development 85
5.2.1 Input Variable Selection 86
5.2.2 Structure of Data Mining-based Prediction Model 93
5.3 Model Validation 98
5.3.1 Experimental Results 101
5.3.2 Discussions 109
5.4 Summary 113
Chapter6 Post-retrofit Energy Use Prediction using Thermodynamic Modeling 115
6.1 Basic Requirements for Thermodynamic Modelling 115
6.2 Model Development 117
6.2.1 Heat Transfer Calculation 118
6.2.2 PMV Calculation 125
6.2.3 Structure of Thermodynamic Model 127
6.3 Model Validation 138
6.3.1 Experimental Results 140
6.3.2 Discussions 143
6.4 Summary 144
Chapter7 Energy Performance Simulation for Multi-zone Buildings 147
7.1 Simulation Design and Process 147
7.2 Simulation Results by Outdoor Temperature 150
7.2.1 Overview of End-user Groups 150
7.2.2 Energy Saving from HVAC Scheduling Alternatives 155
7.3 Simulation Results by Course Period 162
7.3.1 Overview of End-user Groups 162
7.3.2 Energy Saving from HVAC Scheduling Alternatives 167
7.4 Discussions 174
7.5 Summary 178
Chapter8 Conclusions 179
8.1 Research Results 179
8.2 Contributions 182
8.3 Future Research 185
Bibliography 187
Appendices 201
Abstract (Korean) 221
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dc.formatapplication/pdf-
dc.format.extent27515256 bytes-
dc.format.mediumapplication/pdf-
dc.language.isoen-
dc.publisher서울대학교 대학원-
dc.subjectEnergy Saving-
dc.subjectDemand-Side Management-
dc.subjectMulti-Zone Building-
dc.subjectControl Strategy-
dc.subjectData Mining-
dc.subjectMachine Learning-
dc.subjectEnergy Simulation-
dc.subject.ddc690-
dc.titleContext-based Control Strategies for Improving Energy Efficiency in Multi-zone Buildings-
dc.title.alternative건물 에너지 효율 향상을 위한 상황별 제어 전략-
dc.typeThesis-
dc.contributor.AlternativeAuthorKwonsik Song-
dc.description.degreeDoctor-
dc.contributor.affiliation공과대학 건축학과-
dc.date.awarded2017-08-
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