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Article

Technical-Economic Evaluation of the Effectiveness of Measures Applied to the Artificial Lighting System of a School

1
Department of Engineering for Innovation, University of Salento, 73100 Lecce, Italy
2
Department of Engineering, University of Palermo, 90128 Palermo, Italy
*
Author to whom correspondence should be addressed.
Appl. Sci. 2021, 11(14), 6664; https://doi.org/10.3390/app11146664
Submission received: 23 June 2021 / Revised: 16 July 2021 / Accepted: 16 July 2021 / Published: 20 July 2021
(This article belongs to the Special Issue Recent Advances in Lighting for Energy Efficiency and Sustainability)

Abstract

:
Ensuring optimum interior lighting is a topic of great importance, as this influences not only the well-being of users but also the optimal performance of visual tasks. Lighting can be natural, but if not sufficient, it can be compensated with artificial lighting. This study highlights a methodology for designing a new lighting system that takes into account both technical and economic aspects. The method was applied to an existing school located in southern Italy, in which the electricity consumption is related to the current lighting system. The school is chosen as being representative of the construction type and layout of many local schools. In addition, the coexistence of several visual tasks with different design requisites (e.g., illuminance levels) makes the school a very complex environment. The school lighting is modelled in Google SketchUp and imported into Daysim to simulate the yearly and hourly daylight indoor contribution. Dialux Evo has been used to simulate and design artificial lighting. The results show a reduction of energy consumption of 33% with the simple replacement of fluorescent luminaires with LEDs, while the LED lamp dimming and modulation for rows of luminaires leads to a 95% reduction in energy consumption compared with the current state.

1. Introduction

Nowadays, the topic of energy efficiency plays a central role in the research world. The climate is constantly changing, and it is thought that designing buildings with high-energy performance can mitigate its impact. In general, designing zero-energy buildings means to focus the attention on their high-energy performance, comfort conditions, and excellent levels of air quality [1]. Many buildings suffer from high electricity consumption, mainly related to the lighting system. A proper design of the lighting system allows for achieving excellent results in terms of comfort perceived within the spaces [2] and from energy and economic points of view [3]. So, the optimization of artificial lighting can provide many advantages in indoor and outdoor spaces [4]. Furthermore, the design of artificial lighting systems cannot disregard the perception of natural light within the environment. Indeed, the windows, while being a weak element with regard to energy dispersion [5], if positioned and sized well, can provide good lighting inside the rooms, disincentivizing the abundant use of artificial lighting systems. The main difference between the exploitation of daylighting compared with artificial ones is the quality. For instance, the performance of natural light in the perception of colour is superior to other sources, even if, in recent decades, new technologies can provide light with characteristics increasingly similar to daylight. In addition, visible radiation from the sun and sky adds natural dynamics to the lighting conditions of an environment through the temporal variations in colour, contrast, and illuminance of each surface. Such effects can hardly be simulated using artificial sources [6].
The retrofitting of schools is a topic of great importance, given their large presence and the poor quality in which many of these buildings are found [7]. In addition, school buildings account for 19% of overall energy consumption [8]. Many studies have been directed at improving the energy performance of school buildings, considering actions aimed at both the building envelope and the air conditioning system [9,10].
As far as the lighting aspect is concerned, a school is a very complex environment, as it is made up of numerous areas with different uses and therefore different requirements to be met. Optimizing lighting in a school means allowing students and staff to perform their visual tasks to their full potential without visual stress. Light plays an important role at the psychophysical level; the visual capacity is the result of the adaptation of human eyes to light over time [11]. The lighting analysis of working spaces allows for knowing in a precise way the amount of artificial and daylight that occurs in the spaces, evaluating the illuminance, which is defined as the amount of light flow that affects a surface. Inadequate illuminance causes objects in the room to be seen incorrectly and causes eyestrain.
In the literature, there are numerous studies focused on these issues.
Lee et al. [12] established a probabilistic approach useful for evaluating the most frequent risks of retrofitted lighting measures, such as replacing existing luminaires and installing lighting control systems. In addition, they considered factors that may affect energy performance such as occupancy hours, daylight contribution, and the condition of lighting sources and luminaires.
The work of Michael et al. [13] led to potential improvements in visual comfort for schools in Cyprus and other areas in southern Europe with similar characteristics and climatic conditions.
Doulos et al. [14] applied their research in a public school. They examined a range of lighting technologies (with AC and DC power) first using a stand-alone photosensor per luminaire and then using a sensor per control zone.
In [15], an optimal lighting control strategy is proposed to minimize light energy consumption by adjusting the brightness of multiple lighting sources separately and applying the PID method to ensure the desired lighting level.
The purpose of this work is to present a useful methodology to address retrofitted design actions in lighting systems. This is applied to a public school located in a little city in southern Italy characterized by the Mediterranean climate. The study starts from dynamic analysis on an hourly and annual basis of the perception of daylight inside the school. The present artificial lighting system is analysed, and several implementation scenarios are proposed and subsequently analysed from both a technical and economic point of view.

2. Materials and Methods

The analysed building is a public school located in a Mediterranean city in southern Italy. The school was chosen as a representative because it has a similar building type and geometric distribution to other schools in the area. First of all, the perception of daylighting inside the school was analysed by considering the geometry of each room and the characteristics of the building materials and windows. This assessment was carried out by dynamic yearly calculation on an hourly basis using Daysim software [16]. For this purpose, a set of indices to analyse the daylight contribution was calculated. The two main indices calculated were the daylight autonomy (DA) and the continuous daylight autonomy (conDA) [17] (defined in Section 2.2).
Climate data were imported from Energy Plus weather data files [18].
Regarding the current state of the artificial lighting, it consists of linear fluorescent lamps characterized by different absorbed power for the various rooms. The study of artificial light was carried out by using Dialux Evo software [19]. First, only the artificial light (withour daylight contribution) was considered in the room to be analysed thus in the worst condition to obtain the power, and the exact number of luminaires needed to meet the regulatory requirements was found [20].
Then, three different scenarios were proposed, of which both the technical and economic aspects were evaluated.

2.1. Cases Study

The building analysed is the “Vincenzo Lilla” public high school. It is located in Francavilla Fontana (BR), a city in the southeast of Italy which belongs to climate zone C of the Italian climatic classification. It is classified as Csa (hot summer Mediterranean climate) by the international Köppen climate classification [21,22]. As shown in Figure 1, the school (highlighted in red) is located in the centre of town. It dates back to the early 1700s but, over time, it has undergone partial renovation and expansion.
The building complex has a plan of an irregular shape with an internal courtyard. It is spread over three levels above ground. Figure 2 shows the ground floor plan; the other floors are very similar. The building has load-bearing masonry consisting of walls in blocks of tuff, whose thickness is 60 cm, plastered on the inside surface. The coverage is flat and consists of internal plaster, insulated cement brick slab, sloping screed, waterproofing bituminous sheath, and local stone flooring laid with mortar. The rooms highlighted in the plans are those that will be explored in more detail later.
On average, the school is used 9 h per day on weekdays, while school use during vacations is occasional and related solely to the presence of events.
As shown in Figure 3, the electrical energy consumption of the building is primarily related to the current lighting system. The school is currently equipped with a large number of T8 linear fluorescent lamps of different absorbed power for the various rooms. The presence of numerous fluorescent lamps results in high energy consumption. Technological and computer systems also constitute a considerable electrical load (about 14% of electrical consumption referred to the base load) together with food or beverage dispensers.

2.2. Daylighting Analysis

Analysis of the daylighting within the school was performed using Daysim. As was mentioned earlier, by using Daysim, a set of indices was calculated. Daylight autonomy (DA) is a daylight availability metric that corresponds to the percentage of occupied time when the target illuminance at a point in a space is met by daylight. The continuous daylight autonomy is the fraction of time in an annual simulation that an analysis point meets or exceeds a specified illuminance level, with proportional credit given for daylight contributions that partially meet this level. Energy Plus meteorological data files were imported into Daysim. Figure 4 shows the modelling of the entire building carried out in SketchUp. The calculation grid was set with a step of 0.50 m and placed 0.80 m from the floor in order to know the values on the workplane.
Table 1 shows the values set for the simulation concerning the reflection coefficients of the building envelope materials. The reflection coefficient of the glass was set equal to 10%, while the transmittance was set equal to 90%.
The calculation points set in SketchUp were used by the Daysim software to calculate the average DAav (average of daylight autonomy), DAmin (minimum value of daylight autonomy), and cDA (continuous daylight autonomy) for each room. Table 2 shows for each room on the ground floor the net area, the number of calculation points set, and the resulting values of DAav (average of the DA values), DAmin, and cDA.av (average of the cDA values). The same values for the second and third floors are shown in Appendix A.1 and Appendix A.2. The values of DAav were different for each room, ranging from a minimum of 0% to a maximum of 96.27% and varying for each floor. The DAav was zero in rooms where there were no windows. Indeed, as it is possible to see, the rooms and the libraries had the highest daylight contributions, while the closets and the bathroom had the lowest daylight contribution. The rooms in bold below will be highlighted as s.
Figure 5 shows the daylighting inside the classrooms (red line), the daylighting outside the school (blue line), and the minimum illuminance value required to ensure comfort (green line) according to UNI EN 12464-1, whose limit values are reported in Table 3. Since the study reported a large number of data, this section will highlight the improvement strategies for four rooms located on the ground floor which were characterized by different orientations and different intended uses: room 5 (south), library 1 (west), gym (east), bathroom (north).

2.3. Indoor Lighting System

Table 4 shows the number of luminaires present in the pre-intervention phase of the school, distinguished according to type, power, composition, and annual consumption based on hours of use. There were no automatic dimming systems. There were 18 W, 36 W, 58 W, 70 W fluorescent luminaires with 1 or 2 lamp compositions. The characteristics of the luminaires are shown in Appendix A.3.
Each analysed room was studied using Dialux software, and the number of luminaires for each room to be proposed as an improvement was calculated. Table 5 shows the number of luminaires and their characteristics proposed for the post-intervention phase. The characteristics of the new luminaires installed are shown in Appendix A.4.
Table 6 shows for each room on the ground floor the characteristics of the luminaires installed in the pre-intervention and post-intervention phases. Appendix A.5 and Appendix A.6 show the values for the first and second floors. There were 10 W, 24 W, and 39 W luminaires. The 24 W lamp was also used in two-piece ceiling lights. All the sources were characterized by a correlated colour temperature of 4000 K. Furthermore, in order to take into account the possible decrease of the luminous flux, a maintenance factor (MF) of 0.8 was set. As well in this table, the rooms in bold below will be highlighted as samples.
Table 7 reports the illuminance values calculated with Dialux, considering the rooms to be completely dark and thus in the worst case. The values were reported only for the selected rooms, considering the pre- and post-intervention phases, with fluorescent luminaires and LEDs, respectively. All illuminance values were verified.

3. Results

This section proposes three post-intervention scenarios applied to artificial lighting systems. Once the replacement of fluorescent luminaires was defined, the following options focused specifically on LED lighting management were proposed:
  • Case 1—Manual on/off switch-on
  • Case 2—LED lamp dimming with single modulation
  • Case 3—LED lamp dimming with modulation for rows of luminaires
The three cases were analysed both from a technical and economic point of view, assessing compliance with the current regulations.

3.1. Case 1—Manual On/Off Switch-On

Once the number and absorbed power of the appliances to be installed in the interior spaces were determined, the manual on/off system was analysed. The devices installed are those proposed in Table 6 (post-intervention, LED).
Table 8 shows the level of daylighting perceived within the spaces. As an example, the analysis was carried out for the four selected spaces. In this case, the lamps were turned off, and the objective was to evaluate in the three time periods—at 8:00 a.m., 12:00 p.m., and 4:00 p.m.—on 21 December the level of daylighting. Since this scenario included a manual luminaire on/off switch in the system, the lamps were only used when the daylighting did not meet the minimum lighting requirements. As the rooms analysed had different orientations, it was possible to see how the daylighting varied according to their layouts. The verification of illuminance was carried out (negative checks in red) according to the intended use of each room. This table suggests manually turning on the light when there is not enough daylight to positively verify illuminance values.
Table 9 shows the level of illuminance for the four rooms selected in the time periods, considering the contributions of both the lamps (lamps on) and the daylight. All the iluminance values were verified.
At 8:00 a.m., the lamps needed to be turned on in the library and bathroom to meet regulatory limits. When turning on the lights at 8:00 a.m., it can be seen that 888 lx was achieved in the library due to the artificial lighting system, and 296 lx was achieved in the bathroom.
At 12:00 p.m., the daylight was sufficient to achieve useful illuminance on the work surfaces in all rooms. When the artificial light was on, the minimum values of illuminance were exceeded for the simultaneous presence of natural and artificial light.
At 4:00 p.m., the daylight was very weak; therefore, it would be necessary to turn on the lamps in all the rooms. The minimum value of illuminance was not verified in any room; therefore, the presence of the lighting system was necessary. This happened because we analysed the worst day of the year, 21 December, when the sun set very early.

3.2. Case 2—LED Lamp Dimming with Single Modulation

The installation in the rooms of the photosensors or dimmers allowed for modulating the power of the luminaires according to the daylight inside the room itself. This led to a reduction in consumption, as will be seen later in the economic analysis. In this second case, the modulation of the lamps was unique. In the room, there was only one dimmer that captured daylight and varied the power of the luminaires in such a way as to meet the minimum regulatory requirements but not exceed them by too much.
Table 10 shows for the four spaces analysed in the three time periods what could be a dimming solution to check the regulatory requirements. These hypotheses were based on the observations of Case 1. The total switching off of the artificial light is highlighted in pink (which means that the daylighting met the requirements), the dimming with the respective value of dimmer reduction is highlighted in grey, and in green the light was turned on without dimming. All the average illuminances were verified.
At 8 a.m., in the classroom and in the gym, the luminaires were observed to be off because the useful illuminance was given by sunlight. In the library, the luminaires were observed to have their power reduced by 55%, corresponding to 17.55 W of power being absorbed. In the bathroom, absorbed power of 13.2 W was observed, reducing the initial power of 24 W by 45%.
At 12:00 p.m. in all rooms, the luminaires would assume zero power (i.e., the photosensor did not allow the lamps to turn on).
At 4:00 p.m., one can see that power reduction occurred in the library, gym, and bathroom. In the classroom, on the other hand, the luminaires would operate at 39 W of power because it was necessary to achieve minimum lighting.

3.3. Case 3—LED Lamp Dimming with Modulation for Rows of Luminaires

The design of the modular rows of luminaires implied that the luminaires would not all reduce their power by the same amount, but rather that they would do so gradually. For each row of luminaires, a dimmer was inserted that would gradually reduce the power, considering the LEDs closest to the window.
As shown in Figure 6, the luminaires inside the rooms were divided into control groups of luminaires with different colours: blue (group 1), green (group 2), and red (group 3). It was considered from the observations of case 1 and case 2 that group modulation was not necessary for the classroom.
Table 11 shows the results obtained for the four rooms by dividing the luminaires into different groups. As in Table 10, the total time off, dimming, and total time on have been highlighted with different colours.
At 8:00 a.m., in the classroom and gym, the lighting system was turned off, so again the power was equal to zero. In the other two rooms, however, three groups of luminaires were considered as well as two in the bathroom. In the library, the groups were reduced by 95%, 45%, and 28%, respectively, and those in the bathroom were reduced by 88% and 56%.
At 12:00 p.m., in all rooms, the power absorbed was zero; therefore, the photosensors did not allow the lamps to be turned on.
At 4:00 p.m., it was shown that in the library, gym, and men’s bathroom, control of the luminous flux took place. In the classroom, all luminaires operated at full power. Specifically, the installation of the photosensors could reduce the lamp output by 72% and 60% in the rows farthest from the window, while the first row would be completely turned off. In the gym, a reduction of 80%, 50%, and 35% could be achieved, in contrast to the bathroom, where a reduction of 90% and 45% could be achieved.

3.4. Economic Analysis

In this section, the three scenarios are investigated from an economic point of view to show the technical and economic feasibility of each intervention. Table 12 shows the unit costs for the replacement of the LEDs and the installation of the dimmer. These costs were applied to each replacement and installation intervention. They were based on local market research.
Table 13 highlights the total consumption, intervention costs, energy savings, and payback time for each intervention applied to the entire school.
According to UNI EN 15193-1:2017 [23], it is possible to assess the electricity consumption attributable to artificial lighting in the presence of control systems through the Lighting Energy Numeric Indicator (LENI), which is calculated as follows:
L E N I = E A     [ kWh / m 2   year ]
where E is the energy consumed on an annual basis by the plant (kWh/year) and A is the useful surface of the considered area (m2).
Figure 7 shows the results in reduced energy consumption, increased economic savings, and reduced LENI for all three cases.

4. Conclusions

Lighting is an important aspect in spaces where the optimal performance of visual activities must be guaranteed.
This study has taken a school as a case study. Schools are composed of numerous spaces which require different qualities of light inside them. The chosen school is located in a small town in the southeast of Italy and is characterized by a Mediterranean climate. The school can be considered representative of the area for geometry and construction techniques. Initially, it was noted that most of the electrical consumption of this school was due to the lighting system, consisting of fluorescent luminaires with manual on and off switching. This study proposed a methodology to enhance retrofitting strategies to compensate for daylight and therefore not overestimate the light inside the rooms. Several scenarios have been proposed. First, the existing lamp system was replaced with a system of LED luminaires designed for each room of the school. Once the replacement of fluorescent luminaires was defined, the following options, focused specifically on LED lighting management, were proposed:
  • Case 1—Manual on/off switch-on
  • Case 2—LED lamp dimming with single modulation
  • Case 3—LED lamp dimming with modulation for rows of luminaires
The three cases were analysed both from technical and economic points of view, assessing compliance with the current regulations.
The data useful to determine the values of daylight and artificial lighting were obtained through the use of software, starting with Google SketchUp for the school modelling and calculation grid positioning. Daysim was used to derive the values of illuminance due to daylight for each room, and Dialux Evo was used to design the artificial lighting.
By analysing the data obtained, it was observed that with the simple replacement of fluorescent luminaires with LED luminaires, there was a high level of energy saving. The results showed a reduction in energy consumption compared with the current state of 33% (case 1), 52% (case 2), and 95% (case 3), respectively.
Overall, case 3 (Lamp dimming with modulation for rows of luminaires) resulted in reduced energy consumption, increased economic savings, and a reduced LENI. It has to be emphasized that LED technology has some disadvantages. One of them is related to their delicate power electronics. For this reason, the LED lamps having high sensitivity to forward current is a double-edged sword. It gives lighting systems superior controllability but also makes drive current regulation enormously challenging. Another problem is the dissipation of heat. If the device junction temperature is not maintained below a set limit, this may accelerate the kinetics of failure mechanisms and generate degradation of the components of the fixtures. These disadvantages can cause failure problems and, consequently, an increase in costs. The latter was not considered in the economic analysis presented in this paper. Moreover, it must be emphasized that the reactive power was not considered in the final cost of electricity for simplicity. This is because this is relevant mainly in the case of outdoor lighting systems. If the contribution of the light load to monthly consumption is not so high, then an increase in the absorption of reactive power is not able to significantly change the average monthly power factor, for which the penalties are calculated for the users of the electricity system.
Based on the results obtained from this work, it is clear that designing a structure that favours the entry of daylight into the rooms as much as possible brings considerable energy and economic savings. Future studies could take interest in the building envelope to further reduce the economic consumption regarding summer and winter air conditioning.

Author Contributions

Conceptualization, C.B., M.B. (Marina Bonomolo), P.M.C., and M.B. (Marco Beccali); methodology, C.B., M.B. (Marina Bonomolo), P.M.C., and M.B. (Marco Beccal); software, C.B., M.B. (Marina Bonomolo), and S.A.; formal analysis, C.B., M.B. (Marina Bonomolo), and S.A.; investigation, C.B., and M.B. (Marina Bonomolo); data curation, C.B., and M.B. (Marina Bonomolo); writing—original draft preparation, C.B., and M.B. (Marina Bonomolo); writing—review and editing, C.B., and M.B. (Marina Bonomolo); visualization, C.B., M.B. (Marina Bonomolo), P.M.C., and M.B. (Marco Beccali); supervision, C.B., M.B. (Marina Bonomolo), P.M.C., and M.B. (Marco Beccal). All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Appendix A.1. Daylighting on the First Floor

SpacesArea (m2)N° Calculation PointsDAav (%)DAmin (%)cDA.av (%)
Library47.44892.087996.29
Informatic Lab.46.84293.178996.81
Room 146.84293.368896.86
Room 246.84293.318996.79
Room 347.44892.48196.36
Room 443.864581.444091.76
Room 536.453882.414591.66
Women’s Bathroom18.022070.43086.2
Men’s Bathroom18.022467.52886.42
Professor’s Room53.635893.028096.72
Presidency31.23286.16092.28
Registry34.83487.327994.26
Archive27.162788.378194.78
Closet 13.324008
Closet 24.42554.23678.4
Bathroom 314.281550.47069.27
Access23.262293.918797.36
Great Hall128.6113384.72092.17
Hallway182.5321544.94065.05

Appendix A.2. Daylighting on the Second Floor

SpacesArea (m2)N° Calculation PointsDAav (%)DAmin (%)cDA.av (%)
Language Lab.47.44892.358096.4
Room 146.84293.318996.9
Room 246.84293.558997
Room 346.84293.558996.93
Room 447.44892.588196.49
Room 543.864582.894892.53
Room 636.453879.742991.51
Women’s Bathroom18.0220692685.85
Men’s Bathroom18.022468.252387.08
Scientific Lab. 153.635893.478397.02
Scientific Lab. 231.23286.59092.47
Chemical Lab.63.766290.538495.69
Closet3.325000
Room 721.442182.76090.67
Bathroom 38.07734.57039.14
Access38.234027.16034.63
Repair Shop 130.553288.91093.56
Repair Shop 232.763391.368696.52
Multiporpose Room41.494586.91092.09
Hallway182.5321443.66060.69

Appendix A.3. Pre-Intervention Fluorescent Luminaires

Applsci 11 06664 i0011 × Linear fluorescent T8 (26 mm)
Nominal power18 WShape and size
Flow1350 lmLenght618 mm
Light emission58 lm/WWidth51 mm
Total flow1099 lmHeight88 mm
Total power19 WDegree of protectionIP: 20
Applsci 11 06664 i0022 × Linear fluorescent T8 (26 mm)
Nominal power36 wShape and size
Flow3350 lmlenght1250 mm
Light emission51 lm/Wwidth202 mm
Total flow1842 lmheight85 mm
Total power36 WDegree of protectionIP: 20
Applsci 11 06664 i0032 × Linear fluorescent T8 (26 mm)
Nominal power58 WShape and size
Flow5200 lmLenght1550 mm
Light emission62 lm/WWidth202 mm
Total flow6803 lmHeight85 mm
Total power110 WDegree of protectionIP: 20

Appendix A.4. Post-Intervention, LED Luminaires

Applsci 11 06664 i004LED
Nominal power10 WShape and size
Flow75 lmDiameter97 mm
Light emission4 lm/WHeight90 mm
Total flow41 lm
Total power10 WDegree of protectionIP: 20
Applsci 11 06664 i005LED
Nominal power24 WShape and size
Total flow2230 lmLenght1250 mm
Light emission93 lm/WWidth80 mm
Total power24 lmHeight90 mm
Degree of protectionIP: 65
Applsci 11 06664 i006LED
Nominal power24 WShape and size
Total flow163 lmDiameter350 mm
Light emission7 lm/WHeight102 mm
Total power24 lm
Degree of protectionIP: 65
Applsci 11 06664 i007LED
Nominal power39 WShape and size
Total flow3861 lmLenght1500 mm
Light emission99 lm/WWidth60 mm
Total power39 lmHeight55 mm
Degree of protectionIP: 20

Appendix A.5. First Floor, Pre-Intervention and Post-Intervention Lamp Configurations

Pre-Intervention. Fluorescent LuminairesPost-Intervention. LED
SpacesArea (m2)N° Calculation PointsDAmedio (%)DAmin (%)cDA.medio (%)N° LuminairesComposition of LuminairesOperating Hours (h)Power (W)N° LuminairesComposition of LuminairesOperating Hours (h)Power (W)
Library47.44892.087996.298295882939
Informatic Lab.46.84293.178996.818295882939
Room 146.84293.368896.868295882939
Room 246.84293.318996.798295882939
Room 347.44892.48196.368295882939
Room 443.84581.444091.768295882939
Room 536.43882.414591.668295882939
Women’s Bathroom182070.43086.26193661924
Men’s Bathroom182467.52886.426193661924
Professor’s Room53.65893.028096.7210295882939
Presidency31.23286.16092.286295882939
Registry34.83487.327994.266295862939
Archive27.22788.378194.784293642924
Closet 13.3240081191811910
Closet 24.42554.23678.41191811910
Bathroom 314.31550.47069.273193641924
Access23.32293.918797.362193621924
Great Hall128.613384.72092.17162936162939
Hallway182.521544.94065.05262936262924

Appendix A.6. Second Floor, Pre-Intervention and Post-Intervention Lamp Configurations

Pre-Intervention. Fluorescent LuminairesPost-Intervention. LED
SpacesArea (m2)N° Calculation PointsDAmedio (%)DAmin (%)cDA.medio (%)N° LuminairesCompos. of LuminairesOperating Hours (h)Power (W)N° Lumin.Composit. of LuminairesOperating Hours (h)Power (W)
Language Lab.47.44892.358096.48295882939
Room 146.84293.318996.98295882939
Room 246.84293.5589978295882939
Room 346.84293.558996.938295882939
Room 447.44892.588196.498295882939
Room 543.864582.894892.538295882939
Room 636.453879.742991.518295882939
Women’s Bathroom18.0220692685.856193661924
Men’s Bathroom18.022468.252387.086193661924
Scientific Lab. 153.635893.478397.026295862939
Scientific Lab. 231.23286.59092.478295882939
Chemical Lab.63.766290.538495.69122958122939
Closet3.3250001191811910
Room 721.442182.76090.678295882939
Bathroom 38.07734.57039.143193631924
Access38.234027.16034.634193641924
Repair Shop 130.553288.91093.564293642924
Repair Shop 232.763391.368696.524293642924
Multiporpose Room41.494586.91092.098295882939
Hallway182.5321443.66060.69262936262924

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Figure 1. Building location.
Figure 1. Building location.
Applsci 11 06664 g001
Figure 2. Ground floor plan distribution.
Figure 2. Ground floor plan distribution.
Applsci 11 06664 g002
Figure 3. Load distribution.
Figure 3. Load distribution.
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Figure 4. School representation realized in SketchUp.
Figure 4. School representation realized in SketchUp.
Applsci 11 06664 g004
Figure 5. Indoor and outdoor illuminance.
Figure 5. Indoor and outdoor illuminance.
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Figure 6. LED luminaires divided into modulation groups.
Figure 6. LED luminaires divided into modulation groups.
Applsci 11 06664 g006
Figure 7. Energy consumption, economic saving, and LENI of all scenarios.
Figure 7. Energy consumption, economic saving, and LENI of all scenarios.
Applsci 11 06664 g007
Table 1. Reflection coefficients of the opaque materials.
Table 1. Reflection coefficients of the opaque materials.
Reflection Coefficients
Ceiling86.1%
Walls86.1%
Floor70.3%
Table 2. Daylighting of the ground floor.
Table 2. Daylighting of the ground floor.
SpacesArea (m2)N° Calculation PointsDAav (%)DAmin (%)cDA.av (%)
Room 147.44890.297095.60
Room 246.84292.028996.45
Room 346.84291.298595.83
Room 446.84291.868696.26
Room 547.44890.657295.81
Room 642.144578.983490.47
Storage area36.453878.674098
Disabled bathroom6.12873.635488.13
Women’s bathroom11.91236.92047.75
Men’s bathroom18.022447.58072.08
Library 131.23186.237893.90
Library 261.86187.548194.44
Closet 16.016007.5
Closet 23.63001
Bathroom 319.041945.68064.32
Access23.1322000.95
Gym128.6112871.891986.75
Hallway178.6121236.99051.92
Table 3. Limit values in accordance with UNI EN 12464-1 [20].
Table 3. Limit values in accordance with UNI EN 12464-1 [20].
SpacesMinimum Illuminance (lx)
Room 500
Library 500
Gym300
Bathroom200
Table 4. Pre-intervention indoor lighting system of the entire school.
Table 4. Pre-intervention indoor lighting system of the entire school.
Lamp TypeNumber of Lighting FixturesPower of Lighting FixturesIlluminating Organ Lamp TrainingEstimated Switch-On Time (Hours/Year)Estimated Energy Consumption (kWh/Year)
Linear fluorescent6181 × 1820022
Linear fluorescent38361 × 36200274
Linear fluorescent57722 × 36200821
Linear fluorescent1661162 × 58120023107
Table 5. Post-intervention indoor lighting system of the entire school.
Table 5. Post-intervention indoor lighting system of the entire school.
Lamp TypeNumber of Lighting FixturesPower of Lighting Fixtures (W)Illuminating Organ Lamp TrainingEstimated Switch-On Time (Hours/Year)
LED5101 × 10200
LED56241 × 24200
LED98482 × 24200
LED273391 × 39200
Table 6. Ground floor pre-intervention and post-intervention lamp configurations.
Table 6. Ground floor pre-intervention and post-intervention lamp configurations.
Pre-Intervention, Fluorescent LuminairesPost-Intervention, LED
SpacesN° LuminairesComposition of LuminairesOperating Hours (h)Power (W)N° LuminairesComposition of LuminairesOperating Hours (h)Power (W)
Room 18295882939
Room 28295882939
Room 38295882939
Room 48295882939
Room 58295882939
Room 68295882939
Storage area8293682924
Disabled bathroom1193611924
Women’s bathroom6193661924
Men’s bathroom6193661924
Library 16295862939
Library 2122958122939
Closet 11191811910
Closet 21191811910
Bathroom 34193641924
Access2193621924
Gym182958152939
Hallway262936262924
Table 7. Illuminance values.
Table 7. Illuminance values.
Average Illuminance (lx)
SpacesPre-Intervention, Fluorescent LuminairesPost-Intervention, LED
Room 5726789
Library 1988804
Gym635567
Men’s bathroom205249
Table 8. Case 1—Evaluation of illuminance with LED lamps off.
Table 8. Case 1—Evaluation of illuminance with LED lamps off.
LED LAMPS OFF (Daylighting Contribution)
Average Illuminance (lx)
Spaces8 a.m.12 p.m.4 p.m.
Room7438850239
Library1891538346
Gym530299188.8
Men’s bathroom88.423380.5
Table 9. Case 1—Evaluation of illuminance with LED lamps on.
Table 9. Case 1—Evaluation of illuminance with LED lamps on.
LED LAMPS ON (Lamps and Daylighting Contribution)
SpacesN° LuminairesSingle Lamp Power (W)Average Illuminance (lx)
8 a.m.12 p.m.4 p.m.
Room83914239548505
Library63988821671043
Gym153910473488611
Men’s bathroom624296443288
Table 10. Case 2—Evaluation of LED lamp dimming with single modulation.
Table 10. Case 2—Evaluation of LED lamp dimming with single modulation.
8 a.m.12 p.m.4 p.m.
SpacesN° LuminairesReduced Single Lamp Power (W)Average Illuminance (lx)Reduced Single Lamp Power (W)Average Illuminance (lx)Reduced Single Lamp Power (W)Average Illuminance (lx)
Room807430885039505
Library617.5550208888.97502
Gym1505300299115.99302
Men’s bathroom613.2202023313.92200
Applsci 11 06664 i008Switched off; Applsci 11 06664 i009Dimming; Applsci 11 06664 i010Switched on.
Table 11. Case 3—Evaluation of LED lamp dimming with modulation for rows of luminaires.
Table 11. Case 3—Evaluation of LED lamp dimming with modulation for rows of luminaires.
8 a.m.12 p.m.4 p.m.
SpacesDimming GruopsN° LuminairesReduced Single Lamp Power (W)Average Illuminance (lx)N° LuminairesReduced Single Lamp Power (W)Average Illuminance (lx)N° LuminairesReduced Single Lamp Power (W)Average Illuminance (lx)
Room 80743808850839505
LibraryGroup 121.955026088820503
Group 2221.45210.92
Group 3228.08215.6
GymGroup 1150530150299177.8301
Group 2419.5
Group 3425.35
Men’s bathroomGroup 132.882016023331.2202
Group 2313.44314.4
Table 12. Unit costs.
Table 12. Unit costs.
Unit Cost (€)
LED 39 W50
LED 24 W30
LED 10 W10
Dimmer200
Table 13. Energy consumption and energy costs of all scenarios.
Table 13. Energy consumption and energy costs of all scenarios.
Total Consumpition Luminaires (kWh/Year)ActionIntervention Costs (€)Total Cost (€)Energy Saving (kWh/Year)Energy Cost (€/kWh)Economic Saving (€/Year)Return Time (Years)
CURRENT STATE37,830.24
CASE 1 25,237.17Replacement16,98016,98012,593.070.182266.75267.5
CASE 2 18,170.76Replacement16,98027,78019,659.480.183538.70647.8
Dimmer10,800
CASE 31890.26Replacement16,98046,98035,939.980.186469.19647.3
Dimmer30,000
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Baglivo, C.; Bonomolo, M.; Congedo, P.M.; Beccali, M.; Antonaci, S. Technical-Economic Evaluation of the Effectiveness of Measures Applied to the Artificial Lighting System of a School. Appl. Sci. 2021, 11, 6664. https://doi.org/10.3390/app11146664

AMA Style

Baglivo C, Bonomolo M, Congedo PM, Beccali M, Antonaci S. Technical-Economic Evaluation of the Effectiveness of Measures Applied to the Artificial Lighting System of a School. Applied Sciences. 2021; 11(14):6664. https://doi.org/10.3390/app11146664

Chicago/Turabian Style

Baglivo, Cristina, Marina Bonomolo, Paolo Maria Congedo, Marco Beccali, and Simona Antonaci. 2021. "Technical-Economic Evaluation of the Effectiveness of Measures Applied to the Artificial Lighting System of a School" Applied Sciences 11, no. 14: 6664. https://doi.org/10.3390/app11146664

APA Style

Baglivo, C., Bonomolo, M., Congedo, P. M., Beccali, M., & Antonaci, S. (2021). Technical-Economic Evaluation of the Effectiveness of Measures Applied to the Artificial Lighting System of a School. Applied Sciences, 11(14), 6664. https://doi.org/10.3390/app11146664

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