KIEAE Journal
[ Research Articles ]
Journal of the Korea Institute of Ecological Architecture and Environment - Vol. 16, No. 5, pp.13-20
ISSN: 2288-968X (Print) 2288-9698 (Online)
Print publication date Oct 2016
Received 10 Aug 2016 Revised 18 Oct 2016 Accepted 23 Oct 2016
DOI: https://doi.org/10.12813/kieae.2016.16.5.013

Mobile application to evaluate existing university buildings using building information

Chung, Min-Hee*
*School of Architecture, Chung-Ang University, South Korea mhloveu@cau.ac.kr


©Copyright Korea Institute of Ecological Architecture and Environment

Abstract

Purpose

The purpose of this study is to provide information on building’s energy consumption and efficiency for general building users through a mobile application.

Method

This paper presents a mobile application process and building energy assessment models for general users to understand easily. There are two assessment models, one is based on the energy consumption. The other is based on the architectural planning factors of a building. The assessment models are proposed to understand buildings’ energy efficiency and to compare the energy consumption level for general users. The applicability of proposed application has been evaluated by conducting a case study. The case study is targeting university buildings.

Result

Energy efficiency potentials were proposed using weighting factor which was calculated by the impact on energy consumption of a building according to parameters. The mobile application used the simple energy assessment model by energy efficiency potentials and was developed for a smartphone By using the mobile application, numerous general users of smartphones can easily and conveniently access information pertaining to buildings, energy consumption, and reductions in energy consumption. The proposed application enables user to find more energy efficient buildings by comparing energy status and energy efficiency potential by given information.

Keywords:

Mobile application, Energy assessment, University campus, Energy efficiency potential, Simple assessment, Energy consumption

1. Introduction

Greenhouse gas emissions are mainly caused by energy consumption. In Korea, 25% of all greenhouse gas emissions are discharged from the operational processes of buildings, and the building sector accounts for 21.2% of total energy consumption, so reductions in greenhouse gas emissions and energy consumption should be made essential.1) Accordingly, the Government enacted the Green Building Composition Supporting Act in order to reduce greenhouse gas emissions by systematically strengthening the policies and regulations related to building energy. It has also been implementing ways of bringing about energy savings and reductions in greenhouse gas emissions in the building sector, such as its “Total quantity control system in building energy consumption”, a “Certification system in building energy consumption”, in its “Mandatory requirements of energy efficiency grade assessments”, and so on. In addition, efforts at energy saving are being made by building owners and users, with their growing interests in building energy management and due to the mandatory requirements which have been imposed regarding submission of energy-saving plans and mandatory certification of 2016 building energy efficiency grades. Voluntary participation has been encouraged by providing preferential treatments in the application of floor area ratio or financial incentives such as the Green Card System when putting energy-saving efforts into practice.

As stated in the national survey report of the total energy consumption,2) educational buildings such as university buildings are one of the biggest energy consumers among large structures. University complexes consist of multiple buildings with various purposes such as libraries, research centers, social and administrative facilities, athletic complex , and housings whose occupancy schedule and ratio of occupants also differ from each other.3) Having multiple users at the same time makes controlling the energy use of these buildings difficult. In order to encourage renovation of existing buildings to low-energy buildings, not only the specialist but also all general occupants shold be made aware of a building’s energy consumption, by having access to relevant information such as monthly energy consumption data and causes of energy consumption.4)

The building energy consumption is determined by its architectural design characteristics and the use characteristics of its occupants. However, energy assessments are made on the basis of the final energy consumption, so it is difficult to assess the building characteristics and the occupants’ characteristics separately. For the assessment of the energy consumption characteristics of a building, it is necessary to conduct assessments of building energy efficiency potential by assessing the architectural design characteristics of the building.5)

In addition, to encourage the construction of low-energy buildings, the easy understanding of and access to the relevant information should be provided for ordinary users who are not specialists in building energy matters.6) Recently, due to the widespread development of the IT industry and of smart devices, mobile applications have enabled users to obtain a variety of information, providing easy and simple features to make their use convenient; they are widely used in various fields. Using a mobile application as a tool for performance evaluation can provide users with relevant information quickly and easily, in a convenient and simple way.

Mobile applications are being developed in many fields and are already being used in the building sector in such areas as information visualization, digital content development, construction management, design support, and building environment analysis and control. Kvan7) conducted an experimental study into employing Augmented Reality (AR) as a training aid in architectural design, urban planning, structural planning, etc. Uddin proposed an energy monitoring system using a smart phone and evaluated the feasibility of energy monitoring system of home appliances.8) Jumphon9) utilized AR technology in construction process management as well as in building simulation; Ryu placed residential buildings under 3D environment in a residential complex and utilized AR technology in examining the actual realization or not in the real environment via experiments.10) Malkawi conducted a study providing actual gas stream flow patterns on the screen.11) Weiss12) built a web based the smart electricity meter and developed a mobile phone interface to allows users to monitor and control their appliance. By providing users the electricity feedback users have an opportunity to decease their energy consumption.

This study attempts to contribute to the realization of a low-carbon green society through promoting savings in building energy usage, and improving awareness of energy usage by presenting building energy consumption and building assessment information to ordinary users via mobile applications. To this end, the study presents a building energy assessment process through mobile applications and proposes a database assessment model of building energy consumption and architectural design factors. The study implemented the proposed assessment model through mobile applications and conducted case studies, using the results obtained to verify the applicability and feasibility of mobile applications.


2. Development of the Pilot Application

2.1. Energy consumption potential assessment model

Energy consumption data reflecting all parameters including climate, physical features of a building, and occupant characteristics, is the key indicator for the evaluation of energy consumption. It is also the most used and easily understood indicator for general users, who obtain energy consumption information from energy bills. Users must first know the current status of energy consumption in order to save energy; however, in university buildings, users do not have access to this information. To tackle this problem, the final energy consumption level of a building was compared with that of the other buildings within the same campus and also the buildings in other universities. Since university buildings operate according to a different curriculum each semester, the standards for energy efficiency rating for a general office or residential building cannot be applied. Therefore, in line with a previous study, the actual average energy consumption of 190 kWh/m2yr, presented in the report of the total energy survey, was used as the standard energy consumption level.13) If the actual average consumption of a building is within ±10% of the standard,14) the building is classified as average. Buildings are classified as excellent, good, poor, or very poor, based on their deviation from the standard. (Table 1).

Classification by Final Energy Consumption

The energy consumption of a building depends on two types of factors.15) One relates to architectural planning such as building orientation, window area ratio by each orientation, and thermal performance of windows and envelope. The other relates to equipment factors such as type, capacity, or efficiency of air-conditioning system and lighting density. Building energy consumption is synthetically influenced by various parameters such as the thermal properties of the building skin, the occupancy schedule and load of each room, and the heating and cooling systems needed to keep the indoor environment comfortable. It is difficult for general occupants to estimate the potential energy usage based on simple but essential parameters without the required technical knowledge. Given this, the input parameters of the building energy use analysis simulation tools are investigated to utilize the main parameters when the energy assessment model is developed.16)Table 2 shows the list of essential input parameters of the energy analysis program. These parameters present three levels: energy guzzling, average, and energy efficient, based on the effect of each variable on energy consumption. This is because the energy consumption by buildings are influenced by complicated interactions of various factors. Since quantity and quality of data are obtained by parameters during the collection of information of parameters, the data should be divided into three steps and evaluated. The energy efficiency potential grades according to the parameters in a previous study17) are listed in Table 3. The energy efficiency potentials according to parameters have indicators that are different from those of energy consumption. Thus, it is difficult for general occupants estimate energy consumption of a building based on the information from indicators. In order to represent the energy grade according to the parameters as one measure, a single indicator system was proposed, which assign weights by the number of factors affecting energy consumption. Table 4 shows the differences in energy consumption between the grades according to parameters, obtained from a study by Park.18) The weights according to parameters show a perfect consistency scale and are assigned. By combining scores according to parameters, buildings were divided into three levels: above 30% as energy efficient, 30%~70% as average and below 30% as energy guzzling.

Parameters Related with Energy Consumption

Energy Efficiency Potential by Parameters

Weighting Factor of Energy Parameters


3. Process of Mobile Applications to the Building Energy Assessment Model

The application is to provide building information and energy performance information for ordinary users, and is developed in the form of the mobile applications available on smart phones. The hardware, software, wireless communication function, etc. required for Augmented Reality (AR) have all been built in the mobile sector, so AR has been actively developing there lately. High-performance information processing chips as well as cameras and GPS communication functions are embedded in smart phones, which provides the best environment for the combination of real information and virtual information. In addition, the expansion of smart phone penetration has enabled users to easily access the information they seek; and the needs of customers seeking real-time information on the ‘visible’ objects at the site have been enlarged more and more; so applications using mobile technologies are expected to be highly utilized.

It is assumed that the application will address complexes consisting of multiple building groups (e.g. energy village, condominium complex, university campus, etc). Building energy performance assessments are divided into two areas; one is the assessment using the building database, and the other is the assessment from actual energy consumption. Providing this in the form of an application using mobile technology enables users to easily find the energy level of the building and to determine the energy level of the building through comparison with similar buildings. Fig. 1 shows the process of the application which is proposed in a previous study.19)

Fig. 1.

The Process of Application.

The application proceeds through the following three stages: first, the building information calling stage; second, the energy consumption assessment stage; and third, the building database evaluation stage. In the building information calling stage, the building or complex under analysis is displayed on the screen of the smart device through maps and cameras (Fig. 2 and 3); when one of the displayed buildings is selected, its basic information will be presented. This can be divided into the building information detail and the energy consumption assessment stage and building database assessment stage. When a screen is called through maps or cameras, the building to be analyzed will be displayed on the screen, and when the icon is selected, the basic information about the building will be displayed (Fig. 4). The building information detail will display usage, location, size (building area, floor area, number of stories, etc.), year of construction, HVAC system (operating control system and equipment), and other information when moving from the basic information screen to the information detail screen. Special features such as the application (or not) of renewable energy systems in the building shall be included with the other information (Fig. 5).

Fig. 2.

Information Access Mode by a Map.

Fig. 3.

Information Access Mode by a Camera

Fig. 4.

The Outline of the Building.

Fig. 5.

Monthly Energy Data

A comparative analysis shall be made through presentation of the annual energy consumption of the building in the energy consumption assessment stage (the second of the three stages) (Fig. 5). Energy analysis is based on the building’s consumption of electricity and gas; comparison of its energy consumption shall be made with other buildings by presenting the energy consumption per unit of floor area. The average energy consumptions of the buildings under analysis is presented; based on the data, the energy consumptions are divided into five grades and the monthly energy consumption of the building shall be assessed.

The building database assessment stage is an applied technology of the building that can be secured from the drawings and literature of the building and will be used when conducting the comparative analysis of the factors which affect the energy consumption directly and indirectly (Fig. 6). The assessment parameters, consisting of the previously set architectural design elements and equipment elements, will present the grades compared to the properties of each corresponding item. As in the energy consumption assessment, the mean values of the building data (where available) shall be presented to conduct the comparison of the levels between the applied technologies of the buildings.

Fig. 6.

Energy Efficiency Potential Assessment.


4. Case Study

4.1. Overview of the case study

The case study applied the energy assessment model by conducting an energy consumption and building database assessment mainly on complexes consisting multiple building groups. The university campus was selected as the complex on which the case study shall be conducted. The university campus comprises various buildings such as training facilities, dormitories, lecture buildings, research buildings, etc. Most of the large buildings, as heavy consumers of energy, had shown a decrease in energy consumption while the university campus as a whole exhibited an increase. Hence, an assessment of energy consumption and the introduction of energy saving in the university campus were already considered to be required; so it was chosen as the subject of the case study. Excluding the buildings in which energy consumption was measured in conjunction with a neighboring building, 10 university buildings in which energy consumption was individually measured were selected as the subjects of the case study. An overview of those 10 buildings is given in Table 5.

The Building Characteristics of the Case Study.

The construction dates of the buildings were found to be diverse, from the 1960s to the 2010s. The average energy use intensity was shown to be 237.5kWh/m2, which is similar to the average energy consumption of the education buildings, 190 kWh/m2. Energy consumption according to the building showed large variations, from 101.5 kWh/m2 to 460.1 kWh/m2 depending on the purpose of the buildings. It is considered that energy consumption was higher in some buildings due to the use of laboratory equipment in addition to the teaching and administrative duties. Classified according to the five grades system mentioned above, the assessments of the 10 buildings were: 1 excellent, 1 good, 3 average, 1 poor, and 4 very poor results.

4.2. Standard Energy Demand Analysis

Since the actual energy consumption reflects both the occupants’ characteristics and building characteristics, it is very difficult to predict accurately the energy consumption of a building linking to the building characteristics through the actual energy consumption. In this context, the study analyzed the standard energy demand of buildings using e-QUEST to assess the energy consumption implicit in the buildings themselves. The annual energy demand of target buildings in the simulation(shown in Table 6) was shown to be 219.0 kWh/m2,which was less than the actual consumption, 237.5kWh/m2.

Standard Energy Demand of the Case Study Building Group (unit:kWh/m2)

Comparison between Energy Consumption and Simple Assessment

It is expected that the variations in energy consumption between the buildings are due to the varied functions of the rooms in the buildings. The buildings with the longest hours of operation and greater internal heat gain, such as laboratories and computer rooms, showed the greatest differences. This is considered to be because a standard occupancy schedule was applied in the simulation, whereas buildings have variable actual operating schedules and variable occupancy patterns.

4.3. Comparative Analysis of Building Energy Efficiency Potential Assessments by a Simple Assessment

A comparison was made between actual energy consumption and standard energy demand in order to assess the energy efficiency potential of the buildings, using a comprehensive evaluation index of a simple assessment. The standard energy demand reflected standard schedules rather than the actual schedules of the occupants and their usage of the rooms. Therefore, the buildings having higher proportions of rooms with longer occupancy schedules and greater energy loads of internal equipment, such as labs and computer rooms and graduate labs, exhibited higher actual energy consumption compared to the standard energy demand.

Building-05 was constructed with a curtain wall structure and the heat transmission coefficient of the skin facade was low, so it was shown to be lower in the simple assessment grading. In addition, most of the buildings displayed lower grades in the comparison between the simple assessment and the standard energy demand. This revealed that there were little buildings satisfying the excessively high requirements of the lower energy grade, and there was the limitation that the design of the external wall affects the energy requirements, but the simple assessment could not reflect it.


5. Conclusions

As interest in building energy has been growing lately, the demand for information about energy consumption and energy saving in buildings is increasing among ordinary users as well as construction professionals. Thus, the study attempted to present an energy assessment model for development of a building energy assessment program, using mobile applications to facilitate easy access to information on building energy.

The energy assessment model is intended to assess the energy level through the energy consumption and to assess the energy level by reference to the building information. The assessment of the energy level using the building information (that is, the building drawings and the equipment status) is intended to predict and evaluate the energy consumption of buildings by considering the factors affecting the energy loads. Apart from this, actual energy consumption linked to the building operation was assessed. The building information-based energy assessment model and the energy consumption-based assessment model have a close relationship, but even if the building information-based energy assessments are similar, energy consumption might vary depending on the actual usage patterns of the buildings and their users. Therefore, studies on the correlation will be required with regard to the assessment of future energy consumption and the securing or not of the building information.

In addition, from the assessment conducted, applying a simplified energy assessment model to the actual buildings, the prior availability or unavailability of building information is considered to be of importance in the energy assessment in the building information-based energy efficiency potential assessment. However, it was difficult to conduct an accurate assessment of any building long after it was built, due to the difficulty in securing the building information. The reliability of the building energy assessment will be considered to be higher if good quality data on the building can be secured through drawing analysis and actual measurements at the construction stage. The application enables users to find the energy consumption status of buildings by providing them with information on the energy consumption levels of buildings. Future works will propose the energy-saving strategies and guidelines for bad performance buildings and present energy saving effect. The energy saving measures will be proposed with a stage-by-stage. The application will enable users to choose which component technologies to apply, and subsequently displays the scope and effects of such applications. It can be expected to be used in the information transport about buildings and education of energy savings through this.

Acknowledgments

This research was supported by Basic Science Research Program through the National Research Foundation of Korea(NRF) funded by the Ministry of Education, Science and Technology (2011-0024597)

Notes

1) Korea Energy Economics Institute, Energy Consumption Survey, Korea, Ministry of Knowledge Economy: Seoul, Korea, 2015.
2) Korea Energy Economics Institute, Energy Consumption Survey, Korea, Ministry of Knowledge Economy: Seoul, Korea, 2015.
3) Davis, J.A., Nutter, D.W. “Occupancy diversity factors for common university building types” Energy and Buildings, Vol. 42, 2010
4) Fischer, C. “Feedback on household electricity consumption: a tool for saving energy?” Energy Efficiency, Vol. 1, No. 9, 2010

Darby, S. The effectiveness of feedback on energy consumption. Technical Report ; Environmental Change Institute: University of Oxford, Oxford, United Kingdom, 2006 Available online: http://www.eci.ox.ac.uk/research/energy/downloads/smart-metering-report.pdf(assessed on 15 May 2015).

Chen, H.M., Lin, C.W., Hsieh, S.H., Chao, H.F., Chen, C.S., Shiu, R.S., Ye, S.R., Deng, Y.C. “Persuasive feedback model for inducing energy conservation behaviors of building users based on interaction with a virtual object” Energy and Buildings, Vol. 45 2012

Sait, H.H. “Auditing and analysis of energy consumption of an educational building in hot and humid area” Energy Conversion and Management, Vol. 66 2013

5) Mahlia, T.M.I., Masjuki, H.H., Choudhury, I.A. “Potential electricity savings by implementing energy labels for room air conditioner in Malaysia” Energy Conversion and Management, Vol. 43 No. 16, 2002
6) Mahlia, T.M.I., Masjuki, H.H., Choudhury, I.A. “Potential electricity savings by implementing energy labels for room air conditioner in Malaysia” Energy Conversion and Management, Vol. 43 No. 16, 2002
7) Kvan, T. “Debating Opportunities Learning Design through Different Structures” In Mixed Reality In Architecture, Design And Construction, 1st ed.; Wang, W., Schnabel, M. A. Eds.; Springer: Netherlands, 2009. pp. 227-234.
8) Uddin, M., Nadeem, T. “EnergySniffer: Home energy monitoring system using smart phones” Wireless Communications and Mobile Computing Conference (IWCMC), 2012 8th International. IEEE, (2012) pp.159-164.
9) Jumphon, L., Han, S.Y., Choi, J.W. “Construction management system using the mobile augmented reality techniques” Journal of the Architectural Institute of Korea Structure & Construction, Vol. 22 No. 2, 2006
10) Ryu, J.R., Choo, S.Y., Jo, J.S. “An application method of augmented reality technology for layout planning of housing complex” Journal of the Korean Housing Association, Vol. 21 No. 4, 2010
11) Malkawi, A.M., Srinivasan, R.S. “A new paradigm for human building interaction: the use of CFD and augmented reality” Automation in Construction, Vol. 14 No. 1, 2005
12) Weiss, M., Mattern, F., Graml, T., Staake, T., Fleisch, E. “Handy feedback: Connecting smart meters with mobile phones” Proceedings of MUM '09 Proceedings of the 8th International Conference on Mobile and Ubiquitous Multimedia, 2009.

Chung, M.H., Lee, B.Y., Kim, Y., Rhee, E.K. “Development of mobile application for energy consumption assessment of university buildings” World Academy of Science, Engineering and Technology, Vol. 82, 2013

13) Chung, M.H., Lee, B.Y., Kim, Y., Rhee, E.K. “Development of mobile application for energy consumption assessment of university buildings” World Academy of Science, Engineering and Technology, Vol. 82, 2013
14) Korea Energy Economics Institute, Energy Consumption Survey, Korea, Ministry of Knowledge Economy: Seoul, Korea, 2015.
15) Chung, M.H., Lee, B.Y., Kim, Y., Rhee, E.K. “Development of mobile application for energy consumption assessment of university buildings” World Academy of Science, Engineering and Technology, Vol. 82, 2013
16) Hirsch, J.J. and Associates, eQuest Introductory tutorial, version 3.63, Simulation research group Lawrence Berkely National Laboratory CA: University of California, CA, USA, 2009.

Crawley, D.B., Lawrie, L.K., Winkelmann, F.C., Buhl, W.F., Huang, Y.J., Pedersen, C.O., Strand, R.K., Liesen, R.J., Fisher, D.E., Witte, M.J., Glazer, J. “EnergyPlus: creating a new-generation building energy simulation program” Energy and Buildings, Vol. 33, 2001

Klein, S.A., Beckman, W.A., Mitchell, J.W., Duffie, J.A., Duffie, N.A., Freeman, T.L., Mitchell, J.C.,, Braun, J.C., Evans, B.L., Kummert, J.P. TRNSYS 16–A TRaNsient system simulation program, user manual, Solar Energy Laboratory. Madison: University of Wisconsin-Madison, 2004.

17) Park, B.R., Lee, B.Y., Chung, M.H., Rhee, E.K. “Development of resident-based energy evaluation model(REEM) for implementation of mobile applications” Journal of the Architectural Institute of Korea Planning& Design, Vol. 29, No. 5, 2013
18) Park, B.R. A Study on development of building energy evaluation application by using augmented reality. M.Sc. Thesis, Chung-Ang University, Seoul, Korea, 2013.
19) Chung, M.H., Lee, B.Y., Kim, Y., Rhee, E.K. “Development of mobile application for energy consumption assessment of university buildings” World Academy of Science, Engineering and Technology, Vol. 82, 2013

References

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  • Chen, H.M., Lin, C.W., Hsieh, S.H., Chao, H.F., Chen, C.S., Shiu, R.S., Ye, S.R., Deng, Y.C., “Persuasive feedback model for inducing energy conservation behaviors of building users based on interaction with a virtual object”, Energy and Buildings, 45, (2012). [https://doi.org/10.1016/j.enbuild.2011.10.029]
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  • Uddin, M., Nadeem, T., “EnergySniffer: Home energy monitoring system using smart phones”, Wireless Communications and Mobile Computing Conference (IWCMC), (2012), 8th International, IEEE, (2012), p159-164.
  • Jumphon, L., Han, S.Y., Choi, J.W., “Construction management system using the mobile augmented reality techniques”, Journal of the Architectural Institute of Korea Structure & Construction, 22(2), (2006).
  • Ryu, J.R., Choo, S.Y., Jo, J.S., “An application method of augmented reality technology for layout planning of housing complex”, Journal of the Korean Housing Association, 21(4), (2010). [https://doi.org/10.6107/JKHA.2010.21.4.089]
  • Malkawi, A.M., Srinivasan, R.S., “A new paradigm for human building interaction: the use of CFD and augmented reality”, Automation in Construction, 14(1), (2005). [https://doi.org/10.1016/j.autcon.2004.08.001]
  • Weiss, M., Mattern, F., Graml, T., Staake, T., Fleisch, E., “Handy feedback:Connecting smart meters with mobile phones”, Proceedings of MUM '09 Proceedings of the 8th International Conference on Mobile and Ubiquitous Multimedia, (2009).
  • Weiss, M., Loock, C.M., Staake, T., Mattern, F., Fleisch, E., “Evaluating Mobile Phones as Energy Consumption Feedback Devices, In Mobile and Ubiquitous Systems: Computing, Networking, and Services, Sénac, P., Ott , M., Seneviratne , A. Eds., Springer, Heidelberg Dordrecht London New York, (2012), 72, p62-77.
  • Chung, M.H., Lee, B.Y., Kim, Y., Rhee, E.K., “Development of mobile application for energy consumption assessment of university buildings” World Academy of Science, Engineering and Technology, 82, (2013).
  • Hirsch, J.J., and Associates, eQuest Introductory tutorial, version 3.63, Simulation research group Lawrence Berkely National Laboratory, CA: University of California, CA, USA, (2009).
  • Crawley, D.B., Lawrie, L.K., Winkelmann, F.C., Buhl, W.F., Huang, Y.J., Pedersen, C.O., Strand, R.K., Liesen, R.J., Fisher, D.E., Witte, M.J., Glazer, J., “EnergyPlus: creating a new-generation building energy simulation program”, Energy and Buildings, 33, (2001). [https://doi.org/10.1016/S0378-7788(00)00114-6]
  • Klein, S.A., Beckman, W.A., Mitchell, J.W., Duffie, J.A., Duffie, N.A., Freeman, T.L., Mitchell, J.C.,, Braun, J.C., Evans, B.L., Kummert, J.P., TRNSYS 16–A TRaNsient system simulation program, user manual, Solar Energy Laboratory, Madison: University of Wisconsin-Madison, (2004).
  • Park, B.R., Lee, B.Y., Chung, M.H., Rhee, E.K., “Development of resident-based energy evaluation model(REEM) for implementation of mobile applications”, Journal of the Architectural Institute of Korea Planning& Design, 29(5), (2013).
  • Park, B.R., A Study on development of building energy evaluation application by using augmented reality, M.Sc. Thesis, Chung-Ang University, Seoul, Korea, (2013).

Fig. 1.

Fig. 1.
The Process of Application.

Fig. 2.

Fig. 2.
Information Access Mode by a Map.

Fig. 3.

Fig. 3.
Information Access Mode by a Camera

Fig. 4.

Fig. 4.
The Outline of the Building.

Fig. 5.

Fig. 5.
Monthly Energy Data

Fig. 6.

Fig. 6.
Energy Efficiency Potential Assessment.

Table 1.

Classification by Final Energy Consumption

Class Scope Energy Consumption per Unit Area (kWh/m2yr)
Excellent -30% or less Less than 133
Good -10~-30% 133~171
Average -10~+10% 171~209
Poor +10~+30% 209~247
Very Poor 30% or more Greater than 247

Table 2.

Parameters Related with Energy Consumption

Criteria Parameters
Basic information • Orientation
• Gross area & building area
• Total number of stories
• Height
Materials scheme • Thermal properties of envelope assembly
• Window area ratio
• Window U-factor & SHGC
• Infiltration/ventilation rate
• Installation of shadings
Occupancy information • Occupancy ratio
• Schedules and load of occupancy, plugs, lights, thermostat and so on
Mechanical scheme • Types of HVAC system
• HVAC zoning area
• Source energy
• HVAC system efficiency and capacity
• Design temperature
• Operating schedule and load

Table 3.

Energy Efficiency Potential by Parameters

Criteria Energy Efficient Level Average Level Energy Guzzling Level
Orientation S/SSE/SSW SE/SW/ESE/WSW E/W
Surface area to volume ratio 10% 10~20% 20%~
U-factor: Wall ~0.15 W/m2K 0.15~0.47 W/m2K 0.47 W/m2K~
U-factor: Roof ~0.15 W/m2K 0.15~0.29 W/m2K 0.29 W/m2K~
U-factor: Floor ~0.15 W/m2K 0.15~0.41 W/m2K 0.41 W/m2K~
U-factor: Window ~1.8 W/m2K 1.8~2.3 W/m2K 2.3 W/m2K~
Window ratio ~50% 50%~70% 70%~
Shadings Installation - None
Lights LED lamp/ dimming control A fluorescent lamp within ballast stabilizer Incandescent/ halogen/ fluorescent lamp
Heating & cooling equipment Ground source heat pump EHP/GHP/Absorption chiller heater/radiant floor Steam boiler/Gas furnace/Packaged air conditioner

Table 4.

Weighting Factor of Energy Parameters

Criteria The difference of energy efficient level and energy guzzling level (kWh/m2yr) Weighting factor
Heating & cooling equipment 78.3 1
U-factor: window 43.3 0.5
Lights 36.2 0.5
Window wall ratio 21.0 0.25
Orientation 19.5 0.25
U-factor: wall, roof, floor 9.3 0.125
Surface area to volume ratio 5.9 0.125
Shading devices 0.6 0

Table 5.

The Building Characteristics of the Case Study.

Building ID Building area(m2) Gross area(m2) Number of floor The year of construction HVAC type
01 1,228 7,861 6(B2) 1974 EHP
02 813 3,707 5(B1) 2005 GHP
03 858 9,122 6 1961 Gas furnace, packaged air conditioner
04 641 3,674 5(B1) 1991 EHP
05 3,163 14,258 7(B1) 2009 (remodeling) EHP
06 2,490 22,145 7(B1) 1969 Gas furnace, EHP
07 1,777 11,894 9(B3) 1999 Absorption chiller heater (F.C.U)
08 767 5,299 5(B3) 1991 GHP
09 3,733 35,119 14(B3) 2007 Steam boiler (F.C.U), GHP
10 2,397 19,164 15(B2) 2010 EHP, Radiant Floor

Table 6.

Standard Energy Demand of the Case Study Building Group (unit:kWh/m2)

Building ID JAN FEB MAR APR MAY JUN JUL AUG SEP OCT NOV DEC
01 11.3 10.1 16.9 13.3 13.3 14.2 17.1 16.9 13.1 12.9 17.2 26.3
02 14.1 21.0 34.7 32.5 34.8 35.8 35.2 34.9 33.5 32.5 34.5 44.3
03 31.0 22.3 14.0 5.9 5.0 6.5 7.9 7.8 5.3 4.6 18.4 25.4
04 35.8 26.1 23.8 15.7 19.6 24.3 26.4 25.6 20.4 15.1 27.7 42.7
05 19.3 15.8 14.1 12.4 11.3 8.9 9.2 8.9 10.6 12.4 14.8 18.9
06 11.6 9.4 17.9 13.5 13.1 14.1 16.9 16.6 13.0 12.9 18.4 29.2
07 14.9 13.1 23.1 17.3 17.3 16.0 18.1 18.1 17.1 17.3 23.1 33.3
08 39.0 29.2 30.6 14.7 14.8 22.9 23.5 25.6 17.8 10.2 18.8 30.9
09 9.9 8.7 12.2 10.9 11.0 11.0 14.7 14.4 10.6 10.8 12.0 15.9
10 19.9 14.0 14.8 11.5 11.7 12.1 12.5 12.3 10.6 10.2 16.6 23.3

Table 7.

Comparison between Energy Consumption and Simple Assessment

Building ID Actual consumption Standard energy demand Energy efficiency potential
Energy consumption (kwh/m2) Grade Energy demand (kwh/m2) Grade Weighted total score Grade
01 181.7 Average 182.5 Average 81 High Energy
02 460.1 Very Poor 387.9 Very Poor 73 High Energy
03 101.5 Excellent 154.1 Good 65 High Energy
04 338.0 Very Poor 303.2 Very Poor 85 Average
05 157.4 Good 156.6 Good 73 High Energy
06 279.2 Very Poor 186.7 Average 90 Average
07 229.6 Poor 229.0 Poor 89 Average
08 278.5 Very Poor 278.0 Very Poor 98 Average
09 171.7 Average 142.2 Good 90 Average
10 176.9 Average 169.6 Good 95 Average