In South Korea, the total electricity consumption in 2018 reached 545 TWh, a 34% increase compared to 2008 [
40]. Specifically, residential electricity consumption experienced a 20% growth from 56 TWh to 68 TWh during the same period. Data from KEPCO indicates that the average electricity consumption per household in Daegu metropolitan city for 2018, 2019, and 2020 was 240 kWh, 233 kWh, and 241 kWh, respectively [
41]. Analyzing the electricity consumption of the reference building in 2019 using RETScreen software revealed that it deviated significantly from the benchmark set by average residential buildings in Daegu, as shown in
Figure 3. Notably, the highest electricity consumption occurred in December, with monthly consumption of 600 kWh, followed by January, with 441 kWh, as depicted in
Figure 4. This energy performance abnormality suggests irregularity in the building’s electricity consumption patterns. In Korea, electricity is typically used for space cooling during the summer months (June to August), while gas is commonly used for space heating during winter. Therefore, when space heating is needed, the reference building’s higher consumption during the winter indicates an anomaly in its energy performance.
4.1. Regression Analysis before the Measures
The regression analysis of the complete data established the correlation connecting the heating degree days (HDD) and electricity consumed in the building, as shown in the time-series graph in
Figure 5. The HDD is an estimation outline to assess the demand for energy needed to heat a building during summer, which did not follow the same pattern as the consumption. It is worth noting that the heating requirements for a specific building at a particular place are directly proportional to the number of HDDs at that location. However, from the time-series graph, the HDD in the facility location went down in the last quarter of 2019, and invariably the energy consumed in the building went up, citing an abnormality in the energy performance in the building. In addition, the line graph of the actual electricity consumed using the regression analysis agrees with the baseline predicted until December 2019, when the actual electricity consumed skyrocketed more than predicted, as given in
Figure 6. This is shown in
Figure 7, where the cumulative sum graph (CUSUM) changed direction in December 2019. The CUSUM graph of the building energy consumption has two equal parts with opposites slopes. The first part of the graph on the left indicates that the energy consumed in the referenced building is more than the baseline predicted by the system. Hence, the slope is positive because the system is under-predicted.
On the contrary, the graph on the right side indicates that the energy consumed in the building is less than the baseline predicted. This means that the system over-predicted, making the slope to be negative. For a building to conserve energy, the actual energy consumed should be less than the baseline predicted. However, the opposite was the case for the first part of the graph in
Figure 7 because it indicates that the building consumed more energy in 2019, with the highest consumption in December. This means that the system is under-predicted, making the slope positive. It should be noted that the slope of the graph changed at a reference year, which took place in January 2020. This was when the occupants introduced some retrofitting measures into the building.
4.2. Regression Analysis before the Measures
Retrofitting is carried out to improve the energy performance of buildings because they provide comfort without compromising functional needs [
42]. These needs include but are not limited to thermal, visual, and acoustic. In January 2020, the reference building underwent retrofitting by implementing simple energy conservation measures (ECMs). The retrofit included changing the heating and cooling systems and four minor retrofitting measures on the lighting, equipment, hot water, and building envelope. In
Table 5, the simulation model considered level 1 of the light pane, as the retrofitting measures for lighting were relatively minor compared to level 2. Data regarding floor area, lighting load per unit area, and operating hours were collected for the base case.
In contrast, information for the proposed case was added to achieve desired energy savings. The proposed measure involved requesting occupants to reduce the operating hours of lighting from 50 h per week to 40 h per week. The reduction was ensured through effective occupancy monitoring and raising awareness about energy conservation benefits resulting in 20% energy savings for the building, corresponding to the conservation of 1377 kWh of electricity.
For the electrical equipment, six pieces of equipment were proposed to the occupant for a behavioral change in the building. This was ensured through effective occupancy monitoring and raising awareness about energy conservation benefits. The television operating hours of 28 h per week and duty cycle of 100%, having a power rating of 120 Watts were reduced to 21 h per week and 75%, respectively. In addition, different measures were taken, such as refrigerator, computer, iron, microwave oven, and bread toaster, as shown in
Table 6. The standard introduced saved 767 kWh of electricity consumed in the building by the equipment, equivalent to 42% of the total energy saved.
Furthermore, the boiler used in the building was changed from an inefficient boiler to a more efficient heating system having a seasonal efficiency of 80% with an initial incremental cost of USD 1500. The boiler change saved an estimated 1202 kWh of energy after adjusting the hot water temperature from 60 °C to 55 °C and reducing the operating hours from 12 to 8 h per day shown in
Table 7. This was achieved after estimating the occupancy rate and the daily hot water consumed by the occupants.
Also, the cooling system in the building was changed, replacing it with an energy-efficient air conditioner featuring a coefficient of performance (COP) of 4. This modification incurred an initial additional cost of USD 400. The selected air conditioner operates in an energy-conserving manner by automatically shutting off the compressor and fan once the desired temperature is reached. It is an energy-efficient model with a smart thermostat for remote control, multi-stage cooling, and advanced air purification technology. The AC also features a sleep mode, eco-friendly refrigerant, quiet operation, and an energy usage monitoring system for optimizing electricity consumption.
Significant energy savings were achieved by reducing the air change rate to 0.9 air changes per hour (ac/h) through caulking measures around the door and window frames to eliminate gaps and cracks.
Table 8 details the energy saved, with a total of 6005 kWh conserved. Considering the building’s status as an older residential structure, a recommended air change rate of 0.9 ac/h was suggested, corresponding to the fresh air volume’s introduction into the building [
43]. This rate equates to 634 cubic meters of natural air infiltration per hour. The comprehensive caulking and air leakage prevention measures involved an initial additional cost of USD 500 but resulted in substantial energy savings of 52.8%.
Implementing retrofitting measures involved changes to the building envelope played a crucial role in reducing energy consumption and enhancing energy efficiency. Specifically, the retrofitting addressed issues like cracks and gaps in windows and doors that negatively affected natural air infiltration. Materials such as window veils, caulking guns, and sealants were utilized to address these concerns, resulting in a total cost of USD 500, including labor. In context, the initial investment for upgrading the air conditioner was USD 400, and an additional USD 500 was allocated for the building envelope retrofitting. As mentioned, these investments were essential to significantly improve the building’s energy performance, leading to substantial energy savings and reduced greenhouse gas emissions. Through these combined efforts, the building now operates with enhanced energy efficiency, ensuring a greener and more sustainable future.
Implementing the simple retrofitting measures significantly reduced energy consumption, as indicated in
Table 9. The building envelope retrofitting saved 2098 kWh in heating equipment and 6307 kWh in cooling equipment, incurring an initial additional cost of USD 500. This led to fuel cost savings of USD 306 and a payback period of 1.6 years. The fuel cost savings for the heating and cooling equipment were USD 234 and USD 101, respectively, with 6.4 years and 4 years of payback periods. The occupants took 2.6 years to recover the total initial investment of USD 2400 in retrofitting measures, resulting in a total electricity savings of 2144 kWh.
Furthermore, the analysis included calculating the annual gross reduction in greenhouse gas (GHG) emissions and comparing the base case and proposed case systems. Before implementing any measures, the building emitted 8.8 tons of CO
2 per year. After retrofitting, the emissions were reduced to 5.5 tons of CO
2 per year, resulting in a gross annual reduction of 3.3 tons of CO
2 emissions. This reduction is equivalent to the energy savings achieved by 3.3 individuals reducing their energy consumption by 20%.
Figure 8 provides a visual representation of these emissions reductions.
4.3. Regression Analysis before the Measures
It is a fact that old residential buildings in Korea were built without proper energy measures [
19]. Most buildings were designed with little consideration of energy efficiency measures [
44,
45]. Understanding a building’s energy use is essential to collecting data and analyzing electricity bills [
46]. This is followed by considering the building envelope, heating, cooling, ventilation, lighting, and electronic equipment when sourcing ways to reduce energy consumption [
47,
48]. Since the energy saved in a building cannot be measured directly because it represents the absence of energy consumption. A baseline period was set to establish the relationship between energy consumption and factors influencing consumption. The relationship was used to estimate energy consumption. The predicted values were compared to the actual energy consumption in the building after implementing the ECM with the difference given the energy savings. To calculate the energy saved after the measure, the electricity bills for 2020 and 2021 were collected from the occupants to run the analysis. As shown below in
Figure 9, the building consumed less energy than predicted after undergoing simple retrofitting measures. This is due to the change in the system because of a change in the slope of the graph.
A cumulative sum (CUSUM) is a difference between the actual electricity consumed in the building and the electricity predicted by the system for each period. It represents all the reduction in the energy consumed by the building compared to what the building would have consumed if it acted according to the baseline amount. It should be noted that the cumulative sum is zero at the end of the baseline period, where the chart’s slope starts to go down. Hence, when the differences are added together, it creates a running total known as the cumulative total savings of the electricity consumed in the building.
According to [
19], the Measurement and Verification analysis (M&V) is the process of planning, measuring, collecting, and analyzing data to verify and report energy savings within an individual facility resulting from implementing ECMs. Through the Measurement and Verification analysis (M&V), as shown in
Figure 10, the actual net savings recorded from the building is 1604 kWh. This is 25% (540 kWh) less than the actual electricity savings obtained during the measures. The difference is due to many factors, including COVID-19, which restrains the occupants from going to the office due to social distance rules in Korea. Another reason is climate change, which necessitates using more energy in the building. The final reason is due to the occupants’ behavioral change that is dynamic and not static.
4.4. Monitoring and Validation (M&V) Analysis
Following the retrofitting of the building, an energy monitoring and verification (M&V) analysis was conducted to track its energy usage. This comparative study aimed to assess the effectiveness of the retrofitting measures and obtain accurate information on the building’s energy performance. The actual energy consumption was verified and compared with simulated results by installing an energy monitoring device. During the analysis, it was observed that the highest daily electricity consumption reached 9 kWh, with total energy consumption of 265 kWh in August and 252 kWh in July. These months correspond to the summer period in Korea, characterized by increased electricity usage for space cooling.
Figure 11 compares the actual data obtained from the installed device and the simulated data for 2021. The two datasets exhibited a close resemblance throughout the consumption period, except for slight deviations in October and December. The experiment comprised 50 simulations conducted with varying operation parameters. Among these simulations, we meticulously identified the one that demonstrated the most promising convergence and delivered highly accurate results. To ensure robustness in our analysis, we employed statistical analysis techniques, specifically focusing on the coefficient of correlation. This allowed us to assess the strength of the linear relationship between the data obtained from measurements and the actual data. As a result of our rigorous analysis, we achieved a Pearson correlation coefficient of 0.92, signifying a robust and significant correlation between the actual values and the simulated results. This strong correlation provides a solid foundation for the validity and reliability of our simulation outcomes.
Additionally, the regression analysis of the dataset (
Figure 12) further confirms the strong correlation between the actual and simulated values. These findings highlight the reliability and predictive capability of the software in analyzing the energy performance of retrofitted buildings. The close alignment between the actual and simulated data, supported by the high Pearson correlation coefficient, validates the software’s accuracy in predicting energy consumption.