Health-Related Beneﬁts of Different Indoor Plant Species in a School Setting

: Humans spend more than 80% of their lives indoors resulting in an increased demand for high indoor air quality (IAQ). At the same time, indoor air tends to be at least twice as polluted as outdoor air, and health threats caused by long-term exposure to indoor air pollution are rising. Few experiments under real-life conditions have demonstrated positive effects of indoor plants on parameters related to IAQ, resulting in improved humidity and temperature, reduced particulate matter concentration and CO 2 levels. Indoor living walls allow the presence of many plants—without taking up valuable ﬂoor area. This article presents the results of conducted measurements on four do-it-yourself green walls planted with different plant species that are typically used for vertical indoor greenery (golden pothos, Boston fern, spider plant and a combination of plants) in a school setting. Besides the parameters of air humidity and temperature, CO 2 , mold spore and particulate matter levels, inﬂuences on room acoustics were investigated. Based on a custom-developed evaluation matrix, the plants were compared with each other and a reference without plants. The results show that no species led to deterioration of IAQ. Golden pothos had the most substantial effect and delivered improvements in all examined parameters.


Introduction
People in present-day society spend 80% to 90% of their time indoors [1]. Hence, living in a healthy indoor environment with satisfying indoor air quality (IAQ) is of vital importance, as suggested by the increasing occurrence of sick building syndrome (SBS) [2]. Between 80% (developed countries) and 90% (EU-28) of the average 250 million liters of air a person breathes in the course of their life (about 10,000 L per day) is sourced from indoors (houses, workplaces, schools, shopping centers, public buildings or means of transport) [3]. The USA Human Activity Pattern Survey similarly disclosed that an average adult spends 86% of their time indoors and an additional 6% inside public transport or private vehicles [4].
Climate change, increasing urbanization and densification in inner-city areas require new ways and approaches to increase the quality of life and living comfort, especially when it comes to school buildings, where young people spend most of their time together in one room with many other students. Urban and indoor green infrastructure has the potential to contribute to a solution by providing removal of pollutants and other effects, which has been proven in numerous international studies such as [5,6]. The indoor concentration of air pollutants might be higher than the outdoor concentration of air pollutants if the outdoorsourced contaminated air enters indoor occupied spaces and combines with indoor-sourced pollutants [7]. For the most part, in highly industrialized or traffic-dense areas, indoor air pollution has not been acknowledged as outdoor air pollution has been. Yet, the health on general wellbeing [28,29]. Recently, a study conducted on three buildings located in Vienna, Austria, with six greened and three reference rooms without greenery, has shown that even when only considering the influence on air humidity, the number of sick leave days per office worker can be decreased. Furthermore, the calculations and analyses have shown that, assuming the mentioned reduction in sick leave, the greenery with standard specifications will be profitable after about 4.5 years [30]. The research was carried out following a previous project which, in a classroom greened by a living wall system that took only about 1% of classroom volume, showed that even in these seemingly negligible proportions, an effect on the indoor climate and IAQ was observable. Furthermore, it showed that the relative air humidity in the greened classroom was higher than in the not greened classroom, which causes a higher comfort level in winter months [31].
Early studies have displayed the significance of potted plants' contribution to air cleansing through their foliage [32]. On the contrary, Godish and Guindon [33] discovered in a lab experiment that the highest air filtration occurs while using defoliated plants. That led them to the conclusion that air filtration might be associated with soil medium factors. Fjeld and Bonnevie [34] stated that plants, alongside roots and microorganisms occupying the root zone, create an ecosystem that may function as an air-purifying system. In addition to that, during the process of photosynthesis, plants release oxygen and consume carbon dioxide. As a result, this might lead to reduced ventilation demand and therefore contribute to a decrease in energy consumption. Scientific research since 1989 has disclosed the significance of plant influence on urban air pollution reduction [35][36][37][38][39][40][41]. However, an insufficient amount of research examining indoor plants' effects on IAQ, humidity and temperature has been based on experiments performed in a daily-living environment. Knowles et al. [42] showed that indoor plants could remove more than 80% of indoor contaminants. Field measurements by Tarran et al. [43], performed on 60 office buildings, confirmed that indoor plants could decrease the total volatile organic compound (TVOC) amount in an indoor environment down to 25%. Pennisi and van Iersel [44] conducted an experiment in order to define the decrease of carbon dioxide amount associated with the use of various indoor plant species. This led to the conclusion that smaller plant species have a worse ability to consume CO 2 quantities compared to larger plant species.
Furthermore, a living wall system is also able to serve as acoustic insulation [45]. Studies show that sound levels can be reduced due to vegetation in three possible ways. The first mechanism is the reflection and dispersion of sound by plant elements, including leaves, branches and trunks. Secondly, sound can be absorbed by vegetation itself. This happens due to plants' mechanical vibrations which are caused by sound waves. Lastly, the growth media cause destructive interference of sound waves, resulting in a reduction of sound levels [46,47]. Hence, there are diverse factors influencing noise reaction in a green-wall system, including materials used as components of structure, growth medium and the overall coverage of foliage and substrate.
The positive effects of indoor greening on human health, especially in urban environments where air quality is usually poorer due to increased sources of pollution, have already been demonstrated. The requirements for IAQ in learning and teaching spaces for pupils of a young age are particularly high so that children and adolescents can grow up in spaces with the healthiest and highest possible quality, as already shown in [48]. Especially for children growing up in the city, plants in the classroom enable them to discover and foster a relationship with nature. Studies of vertical indoor greening as a space-saving green infrastructure in classrooms have not yet been investigated in terms of their impact on IAQ under real-life conditions. Vertical greenery in classrooms, which has been installed so far, is always equipped with a mixture of plants. The plants are selected on the basis of their suitability for use in wall greening and their robustness for use in a school so that students can also take over parts of the care and possibly also propagate the plants as part of the lessons, for example. However, in the past, the selection process has not yet considered which plants perform best in terms of pollutant removal and thus contribute most to better indoor air and better learning and teaching conditions. In this article, the influence of three different plant species-golden pothos (Epipremnum aureum), Boston fern (Nephrolepis exalta) and spider plant (Chlorophytum comosum)-as well as a combination of plants typically used in indoor living walls, planted in do-it-yourself (DIY) green walls on selected parameters were examined. Since, in addition to hygrothermal comfort and pollutant concentrations, room acoustics also contribute to high learning environment quality, the study additionally observed the effect of these plant species in combination with the DIY green wall construction on room acoustics, analyzing their influence on reverberation time and sound absorption. Furthermore, the mold spore concentration in the same room was measured to make sure that no exposure of spores was caused by the living walls.
Everyday life in classrooms is very dynamic, and highlighting the differences of certain measures under real conditions is only possible if as many uncertainties as possible can be cleared up in advance or if optimizations have been carried out in advance. When considering wall greening, plant selection is an extremely important aspect, which has not yet been given any attention in terms of its influence on IAQ, pollutant concentrations and in practice. This research focused on highlighting the differences of variously planted green walls in classrooms as a measure to improve the learning environment. The aim of this experimental study presented was to investigate whether the selected different plants have a measurable effect on selected parameters regarding IAQ, as well as room acoustics with the goal of subsequently being able to make a statement regarding which of the plants should be used for the greatest possible improvement of IAQ in classrooms to create a high-quality learning environment for students. Based on the results from the present research, further long-term studies can then follow to analyze the locally measured impacts for their relevance to the IAQ of the entire area.

Green Infrastructure
In the scope of the research, the green infrastructure used were DIY green walls that were constructed with students and were already developed as a part of a previous research project [49]. For the purpose of this study, four DIY green walls were built, and the selected plants were positioned. A mineral substrate based on natural zeolites, sold under the name "Zeobon ® Zeostrat ® 2/8", was used as the substrate. Figure 1 shows the design of the DIY green walls during the planning phase. The selection criteria of used plant species included the influence of the plant species on room climate, the potential ability to extract particulate matter particles and other air pollutants, and the suitability for use in an automatically irrigated greening system based on zeolite substrate. Table 1 shows the selected plants for the DIY green walls. In order to achieve a comparison of different forms of vegetation, plants with different morphology were selected, and it was ensured that at the beginning of the measurements, all plants in use were of the same relative size and therefore presented similar leaf mass. In the course of the project, the leaf mass was not further influenced by any means, which implies that different growth rates had influence on the results. Tables 2 and 3 show rough estimations of the expected CO 2 and particulate matter removal rates per single potted plant. Due to lack of sufficient data and comparability between different studies, absolute values are not relevant and only the ranking of the plant species is meaningful. In this experiment, each DIY green wall consisted of~25 plants, thus, for example, leading to an expected CO 2 removal of~2000 ppm per hour for golden pothos. However, since the experiments were conducted under real-life circumstances and undefined amounts of CO 2 and particulate matter were brought into the used rooms during measurements, a comparison between the created results and the estimations was not possible. In order to ensure healthy growth and vital appearance, the plants were regularly supplied with water from a 70 L tank via a pump for automatic irrigation through adjustable drippers. In addition, fertilizer for green plants was added manually at regular intervals using a watering can. The watering intervals were adjusted in the course of the project according to the observed needs of the individual plant species. Figure 2 shows the DIY green walls with the respective plant species in week 13 2020. To supply additional light to the plants, lamps (brand: MCIX) with a power consumption of 60 W, divided into 5 LED strips, were installed above the individual troughs. Throughout the duration of the project, it soon turned out that the plant lamps, due to the short distance to the plants and the simultaneous generation of heat, led to damage of the plants and were removed accordingly. As a result, the influence of lamps was not investigated. During the course of the experiment, it was observed that golden pothos, followed by the combination of plants and Boston fern, showed the least sensitivity to external influences such as under-or overwatering. Golden pothos and Boston fern showed general robustness with close to no losses due to withering. On the other hand, the advantage of the combination of plants was the fact that if any problems occurred, only specific plant species, such as spider plant, withered. Furthermore, all specimens of spider plant had to be exchanged with peace lily after all measurements were accomplished because significant losses due to withering were observed repeatedly and specimens of spider plant had to be replaced weekly.

Measuring Devices
For air quality measurements, devices, developed and sold under the name "AirSensEUR", were installed. Mentioned devices are part of an open-source project, partially funded by the European Union. In [45], a detailed guide about the setup and use, aswell as schematics and diagrams can be found. These devices, from now on referred to as "Air Quality Monitoring Devices (AQMDs)", were selected primarily because of their open architecture and comparatively inexpensive purchase. In comparison to traditional measuring devices, devices such as this offer the possibility of installing a dense network of sensors at various points for an extended period of time, without taking up a lot of space. For comparative measurements of particulate matter concentrations, such as those carried out in this project, however, the correlation of the individual sensors to one another or to a series of measurements at a reference measuring point with high accuracy must be determined and the measured values must be adjusted accordingly. Table 4 shows the individual utilized sensors of the "AQMDs" with the respective sensor name, the associated measurements carried out and the accuracy according to the manufacturer. Table 4. Sensors used in AQMD.

Measurement Sensor Name Accuracy
Particulate matter (PM10, PM2.5) Alphasense OPC-N 3 no data available, see Table 6  Carbon dioxide (CO 2 ) ELT D-300G-3V ±30 ppm ± 3% of reading To determine the local effects of the various plant species on parameters of IAQ, AQMDs were installed at a distance of approx. 20 cm to the planted troughs, as shown in Figure 3. In addition, a fifth measuring device on a non-planted construction at the same height, as shown in Figures 3 and 4, was used as a reference to get an indication of the local IAQ without influence of a green wall. The aim of the research carried out was to highlight the differences between the plants used and to show if plants are capable of reducing the total pollutant concentration without considering concrete exposure scenarios that would affect users. The location for the measuring devices was therefore chosen on the DIY green walls in direct proximity to the plants. Since measurements close to the green walls are hardly representative of all the air in the corresponding room, mean values were used to calculate the results so that airflow also had influence on the presented values. Further investigation on the present airflow was not executed because of the limitations that came with measuring in a frequently used classroom and limited time constraints.  To begin with, the DIY green walls were placed together in a rarely used corridor, on the one hand, to give the plants time to get used to the conditions and, on the other hand, to determine to what extent the exact location in a room influences the measurements. It was found that the proximity to radiators and passageways, or open doors, in particular, interfered with the measurements. In order to be able to compare the plant species, it was decided to place the DIY green walls together in a larger classroom during the measuring period. This ensured that influences affecting the entire room (ventilation, type and time of use) were more likely to be eliminated and results could be compared. The door of the class was mostly kept closed and was only opened during breaks. Table 5 gives an overview of locations and corresponding time periods of the green walls during the examination. Table 5. Overview of the locations of the greening systems.

Period of Time Location Comment
Week 50 (2019)-Week 8 (2020) Corridor in front of the music room Week 9 (2020)-Week 25 (2020) Classroom 121 Week 25 (2020)-Week 27 (2020) Room 101 Reverberation time and mold spores Week 28 (2020)-Week 2 (2021) Classroom 121 Week 2 (2021)-Week 3 (2021) Room 101 Mold spores For the evaluation of the collected data, the measuring devices were compared to a recorded series of measurements from the reference measuring point "Taborstrasse", managed by the "Municipal Department 22-Environmental Protection in Vienna (MA 22)", shown in Figure 5. Reference data series were only available for particulate matter, temperature and humidity. To check the accuracy, the measuring devices were positioned next to each other at the reference point for 7 days, data were recorded, and the correlation was calculated by linear regression. The corresponding values are shown in Table 6 and Figure 6 shows the course of temperature and humidity during calibration as an example. Data that were recorded in the school were corrected according to the calculations and used for evaluations afterward. For the particulate matter sensors, a fixed intercept-value of 0 was chosen for calculation to increase the linear fit. As a demonstration, the correlation of the particulate matter sensors (OPCs) and the reference measuring point "Taborstrasse" are shown in Figure 7.    However, since the investigations on the effects of the green walls were carried out indoors, absolute concentration values of particulate matter concentration should not be used for conclusions, and only relative comparison between the different green walls is meaningful.

Evaluation Matrix
In order to gain an overview of the results obtained from the individual studies on the different plant species, a simple, custom evaluation matrix was created. Appropriate criteria and a grading system were selected. Since a comparison of the plant species with one another and with an option without plants was to be achieved, the average percentage difference to the reference without plants was evaluated for the hygrothermal comfort and the particulate matter/CO 2 concentrations by ranking the values and then assigning points to each position. The ranking of the four variants assigns 4 points for 1st place, 3 points for 2nd place and so on. For the results of the reverberation time and the sound absorption coefficient, this evaluation was carried out for each examined frequency band, and then an overall evaluation was calculated.
The methods for the corresponding evaluations of the individual parameters and measurements performed are explained in the respective Results and Discussion Section (Section 3) for a more compact presentation.

Results and Discussion
Due to the different room-use scenarios of school classes and the fact that the examined room was partly unused due to COVID-19-related "home schooling", the data were selected in such a way that the days on which the PM10 of all measuring devices reached a daily mean value (DMV) of at least 10 µg/m 3 were considered. This way only days where usual utilization of the school and rooms was happening were analyzed. Table 7 shows the dimensions of the examined rooms and Table 8 shows the selected days accordingly.    Table 9 shows the evaluation matrix with the corresponding results of all considered parameters. The plant species golden pothos, followed by Boston fern, had the highest overall effect. The combination of plants and spider plant followed in third and fourth place. As observed in the table, compared to Boston fern, golden pothos offers a higher "performance", especially with particulate matter, CO 2 and acoustics.

Effects on Humidity and Air Temperature
From the measurements of air temperature and relative humidity carried out in oneminute-long intervals, 15 min average values were calculated. Before the actual evaluation, the recorded data were adjusted with the help of the calculated correlation factors, followed by data processing. The 15 min mean values were used directly to display the course; on the other hand, daily mean values (DMVs) were determined for statistical analysis. The evaluation of the measurement data of air temperature and relative air humidity in the preliminary project was based on the definition of hygrothermal comfort according to Frank [52]. Since the DIY green walls were located at a modest distance from each other in the room during the measurement data collection, no significant differences in the comfort diagram between the individual plants were to be expected. Therefore, the gain in absolute humidity was calculated according to Equation (1).
Equation (1) The data considering air temperature and relative air humidity are presented and evaluated in Figure 8. Observing this data set, it is noticeable that changes due to influences such as ventilation occur at the same time and the measured values constantly deviate from each other, which indicates that measurement uncertainty and variability are greater than the investigated green walls' ability to cool their surroundings by transpiration. Since the relative humidity depends largely on the temperature, the absolute humidity was also calculated according to Equation (1). The values shown in Table 10 were calculated in order to describe the series of measurements statistically. Figure 9 shows the course of the absolute humidity on the selected example day.  Taking into account measurement uncertainty, the differences between the plants are not significant; however, golden pothos, followed by Boston fern and spider plant, reproducibly led to the greatest increases in (absolute) humidity in all measurement series, and the combination of plants does not seem to have any influence on humidity. The statistical analysis of the air temperature measurements, as shown in Table 11, is quite similar to the absolute humidity statistics. It is noticeable that Boston fern followed by golden pothos and spider plant consistently had a slight cooling effect, probably due to evapotranspiration; however, DIY green wall No. 4, the combination of plants, showed no influence. In conclusion, measurement uncertainty was greater than the measurable influence of the plants, and the suggested evapotranspiration could not be verified.  For further evaluation, the results of the humidity and temperature were considered independently of one another and the individual variants were ranked from large to small according to the value "% difference to no plants" and the points were assigned according to the ranking. Thus, considering absolute humidity, plant species got assigned the following points: golden pothos 4, Boston fern 3, spider plant 2 and combination of plants 1; considering temperature, the following points were assigned: Boston fern 4, spider plant 3, golden pothos 2 and combination of plants 1 point.

Effects on the Particulate Matter Concentration
The particulate matter concentration was measured with an "OPC", optical particle counter. The theoretical basics of these measurements and the evaluations carried out can be found in detail in [53]. However, since only series of measurements for the PM10 and PM2.5 fraction were recorded for the calibration of the sensors, the evaluation was limited to these fractions. Before the actual evaluation, the recorded data were adjusted with the help of the calculated correlation factors, and the comparison of the plant species was carried out depending on the respective measurement series.
For the representation of the concentration as a function of time, 1 h mean values (HMVs) were calculated from the data recorded at intervals of one minute. To calculate the relative differences between the examined plant species, daily mean values (DMVs) were compared with one another.
The evaluation and presentation of the particulate matter concentration were also based on the time periods listed in Table 6. While observing the course of the 1 h mean values of the particulate matter concentration PM10 fraction on an exemplary day, it can be seen that a concentration of approx. 40 µg/m 3 was already present after two hours of use of the room and increased up to 160 µg/m 3 , as shown in Figure 10. A similar trend can be seen when observing the PM2.5 fraction, with the absolute concentrations being lower and the effect of the greening being even more clearly recognizable. On the day shown in Figure 11, spider plant, in particular, seems to have a high effect, which is also visible in the statistical analysis shown in Table 12. Essentially, a lower concentration of particulate matter than the reference without plants was measured for all plant species with a similar prevalence. Measurement series 1 and 2 show a very similar picture: particles from fraction PM2.5 are reduced by up to 24% (spider plant) compared to the DMV, particles from fraction PM10 could be reduced by up to approx. 8%, and the effect seen in series 1 is significantly stronger.   Figures 12 and 13 show another exemplary day on which the course of both particulate matter fractions looks very similar. This confirms a strong correlation between room use and particulate matter concentration. Thus, the comparatively low average concentrations in series 2 and 3 for both particulate matter fractions, as shown in Table 12, can also be explained. During this period (May and June), the classrooms presumably were regularly ventilated, which resulted in overall lower daily concentrations. The air humidity has a significant influence on the agglomeration and deposition of particles, whereby, for example, small, hygroscopic particles can grow into larger ones through absorption of water, and thus not only the effect of the greening but also weather might have had a significant influence. In the overall assessment, it is noticeable that all variants offer a comparable effect, but the combination of plants had the most balanced effect on both particulate matter fractions.  For the evaluation matrix, the results of both fractions were considered independently of one another and the individual variants were ranked from large to small according to the value "% difference to mean value no plants", and then points were assigned according to the placement. Thus, with PM2.5, plants received the following points: Boston fern 4, golden pothos 3, spider plant 2 and combination of plants 1; with PM10, the following points were assigned: golden pothos 4, Boston fern 3, spider plant 2 and combination of plants 1 point.

Effects on CO 2 Concentration
The measurement of the CO 2 levels in the immediate vicinity of the plants was carried out with the aid of infrared sensors from the brand "ELT". To represent the course, 15 min mean values of data recorded each minute were calculated. In order to calculate the relative differences between the examined plant species, daily mean values were compared with one another.
As was already established in [53], it is not possible to reliably quantify the influence of greenery on the basis of long-term measurements that were carried out in real school life. However, since the recording of the real conditions in a school class offers valuable information and conclusions about the microclimatic and measurement-related conditions and challenges, such measurements were carried out again.
For the evaluation and presentation of the CO 2 data, the days listed in Table 8 were initially used. Almost over the entire measuring range, the measured CO 2 concentration on the DIY green walls was below the reference variant (no plants). In Figure 14, it can be seen that the CO 2 concentration for golden pothos, Boston fern and the combination of plants is up to 200 ppm lower than the variant without plants. In order to get a better picture of the long-term measured values, these were subjected to statistical evaluation, as can be seen in Table 13.
It was observed that series 1 shows a significantly lower reduction in CO 2 concentration than series 2 and 3. This is probably due to the advanced growth of the plants, as well as probably dependent on the weather conditions, temperature and the incidence of light. This can be clearly seen in the case of Boston fern: In measurement series 1, the CO 2 concentration was reduced by an average of 1%, but in measurement series 2, a reduction of 13% was measured. Overall, spider plant caused the smallest reduction in CO 2 concentration. In measurement series 1, the concentration was increased by spider plant both during the day and the night.  Table 14 gives an overview of studies that examined the CO 2 reduction of individual plant species under laboratory conditions. Suhaimi et. al. [50] found that, for example, the plant species Chlrophytum comosum, i.e., spider plant, increased the CO 2 concentration in the test chamber by 0.1% even with an illumination of 700 Lux. Table 14. Literature on the CO 2 consumption of various plant species.

Author Plant Species Reference
Suhaimi et al.
Syngonium sp., Anthurium sp., Chlorophytum comosum, Maranta leuconeura, Asplenium sp., Dieffenbachia sp. [50] Sevik et al. Ficus sp., Dieffenbachia sp., Spathiphyllum sp., Yucca sp. [54] According to the evaluation matrix, the plants were assigned the following points: golden pothos 4, combination of plants 3, Boston fern 2 and spider plant 1 point. Since the combination of plants and Boston fern caused the same reduction on average during the day, they were also rated according to their performance at night: Boston fern −9% CO 2 , combination −12% CO 2 .

Effects on Room Acoustics
To determine the effects on the room acoustics, the reverberation time was measured based on ISO 3382-3 [55] in room 101. This room was chosen to increase the ratio of room volume to green-wall surface area and make the results more significant. Figure 15 shows the examined room with the DIY green wall and measuring equipment. In further studies, it should be investigated if the results are also applicable to larger rooms when scaling the green walls up accordingly. In [53], the theoretical fundamentals of acoustics and measurement of the reverberation time, as well as the calculation of the degree of sound absorption, are shown. For the measurements, the DIY green walls were brought into the room individually, and the reverberation time was determined using combinations of two microphone and two pulse positions for each of the species, as shown in Figure 16.  Specifically, two "Norsonic Nor140" sound analyzers were used as "microphones" for the measurements, distributed as asymmetrically as possible in the room according to the conditions, and the burst of a balloon filled with air was used as an "impulse". To ensure uniformity between measurements, a hand pump and a specific volume of air were used.
The results are presented as a function of the frequency, and the relative deviation of the individual plant species from one another was calculated. In addition, the degree of sound absorption of the different plants was calculated and compared.

Reverberation Time
For the direct comparison of the measured values, as shown in Figure 17, the octave bands of the center frequencies 125 Hz, 250 Hz, 500 Hz, 1000 Hz, 2000 Hz and 4000 Hz were used in accordance with ÖNORM 8115-3 [56]. It can be seen that the reverberation time in the examined room is slightly shorter when equipped with green walls than without greening, which essentially confirms the results from [53]. Furthermore, the upper and lower limits according to ÖNORM 8115-3 [56] are shown.  Tables 15 and 16 show the relative differences between the green walls with different plant species and the measurements without green walls. A positive value means a reduction in the reverberation time; a negative value indicates that no improvement in the room acoustics could be achieved. The greatest reduction can be seen in the case of golden pothos and Boston fern, whereby spider plant and combination of plants also cause a reduction in reverberation time. Only with impulse position 2 and sound analyzer (microphone) 1, deterioration of the reverberation time was observed in all plant variants at 250 Hz, which was the lowest with golden pothos followed by Boston fern, combination of plants and spider plant.

Sound Absorption Coefficient
The sound absorption coefficient was calculated according to [53], for each plant species and the examined room without a green wall. In order to get a better overview of the data, the mean value for each of the plant species and for each pulse position was calculated from the values measured by devices and then compared. An analysis of the maximum values was then used to determine which plant had the greatest degree of absorption at the corresponding frequency band.
As already described in [53], values for the degree of sound absorption that are greater than 1 mean that theoretically more than 100% of the incoming sound energy was absorbed. In practice, this occurs when sound reaches a strongly absorbing sample and is therefore hardly reflected. The discontinuity in the wave field at the edge of the sample creates a diffraction effect that changes the sound field. This makes the sample a quarter of a wavelength larger for sound. The area increases and absorbs more sound energy per wall area than would have reached the wall. As can be seen in Table 17, golden pothos and Boston fern have the greatest effect in all frequency bands except at 4000 Hz, with clear differences between the pulse positions, which can be attributed to the fact that more direct sound is reflected in position 2 due to the proximity to the wall. Spider plant has the greatest sound absorption at 4000 Hz in both pulse positions. At pulse position 1, depicted in Figure 18, no clear pattern was recognized for the sound absorption coefficient over all frequency bands due to the distribution of values. At pulse position 2, shown in Figure 19, the sound absorption coefficient is particularly high in the audible range (around 1000 Hz). The lowest absorption takes place in the lower frequency ranges. Low-frequency bands only interact with heavier components, while higher frequencies also interact with lighter ones (such as plants or leaves) [53]. As a result, plant species with a large surface area and/or a growth habit that results in the construction being heavily covered should have a greater degree of sound absorption.

Effects on Mold Spore Concentration
The mold spore concentration, determined and calculated as "Colony-forming units (CFU) per m 3 of air", was measured similarly to the reverberation time in room 101, which, with its area and room height, represents a room volume suitable for the investigations. For this purpose, the DIY green walls were introduced into the room one after the other, left in the unventilated room for 24 h, and then the room air was sampled with the help of an air sampler, shown in Figure 20, based on DIN ISO 16000-18 [57]. The loaded growing media was incubated at approx. 23 • C and 40% relative humidity, and the number of colony-forming units was counted after 3, 5 and 10 days. Malt extract agar and DG18 agar were used as growing media to determine the total spore count.
The correct execution of sampling the air essentially depends on the selected sample volume. The first series of measurements, with a sample volume of 300 or 150 L, partially led to an overload of the growing media (number of CFUs greater than 100 [58]). A second measurement campaign was carried out in January 2021 under the same conditions but with adapted sample volumes of 50 or 100 L. Since the investigations, carried out in this project, focused on the quantitative impact of the plants, the colony-forming units (CFUs) per m 3 of room air were calculated for the individual measurements and then for assessment, compared with a value from the guidelines for prevention, recording and remediation of mold infestation in buildings of the Indoor Air Hygiene Commission of the German Federal Environment Agency [59].
These benchmarks were calculated from a variety of empirical data and are reported as the 95th percentile. This means that 95% of the measurement results were less than or equal to the specified value. Table 18 shows the corresponding values from the guidelines for the prevention, detection and remediation of mold infestation in buildings [59].

Indoor air summer (IL-S) 743
Indoor air winter (IL-W) 589 For measurement 1, the benchmark for the interior in winter and for measurement 2 in summer was used. The results are shown together with their standard deviation (e.g., ±46) and the number of measurements (e.g., n = 1) in Tables 19 and 20. The appropriate guideline value was not exceeded for any plant species and, in comparison to the reference measurement, it can generally be stated that the DIY green walls, regardless of the type of plant used, did not represent a source of mold spores.

Conclusions and Outlook
As the measurements and analysis showed, the DIY green walls built and set with the students represent an alternative in comparison to commercial greening systems. Due to simplicity and modular character of the construction, as well as the good availability of the necessary materials, such systems are easily adapted by schools and built as a part of or during the lessons.
The effect of such systems on specific pollutant concentrations and microclimate in the immediate vicinity of the plants was determined using metrological investigations. Because of these measurements and evaluations, it was shown that golden pothos, followed by Boston fern, had the highest positive influence on the examined parameters. However, due to high measurement variability and several uncertainties such as airflow, temperature gradient and limitation to the measurement of local effects, no clear result was reached, and the method of investigation needs to be improved when measuring under real-life circumstances.
Considered in more detail and if uncertainties are neglected, golden pothos had the greatest effect and delivered improvements in all measured parameters. Boston fern, in comparison, had worse performance in terms of particulate matter and CO 2 . The wall, planted with the combination of plants, on the other hand, only performed well in terms of particulate matter and CO 2 . Lastly, spider plant showed better effects in terms of temperature and humidity than the combination of plants. However, this plant performed overall worse, mainly due to the lack of effect on the reverberation time, CO 2 and particulate matter concentration (PM2.5). In total, no clear winner was found due to the lack of reliable data.
Further, the green walls of golden pothos, Boston fern and combination of plants proved to be particularly robust and suitable for everyday school life. Spider plant, on the other hand, was more sensitive and therefore showed a greater need for care and was replaced with peace lily after the experiment.
The DIY green walls (regardless of the type of plant used) had no negative impact on the concentration of mold spores in the chosen test room, and none of the plant species had a significant impact on the total number of spores in the air. The measured concentrations also fell below the selected guide values of the Federal Environment Agency Germany, which confirms that the DIY green walls did not lead to any significant exposure or accumulation of mold spores.
Vertical indoor green structures thus make a valuable contribution to improving physical parameters associated with IAQ and human health. This type of green infrastructure therefore could be an important adaptation measure in schools to create healthy indoor learning spaces with high comfort and air quality. However, to measure the actual health impact of these structures on health in situ, a larger amount of measuring devices that are calibrated to the indoor environment is needed. To represent real-exposure scenarios, no investigation of IAQ or related parameters should be carried out without analyzing airflow around the examined green walls when measuring in the direct proximity of the plants. Furthermore, it should be noted that reference measurements have to be carried out in a (separate) room with no plants present to negate any cross-influences between plants and the reference. Supplementary data regarding the amount of light, watering and ventilation should also be recorded to quantify cost and energy efficiency and make green walls comparable to conventional air cleaning devices such as filters. Additionally, test setups should be adapted from earlier studies to make estimations of pollutant removal viable and comparison between studies possible.
Besides improving measurement methodology, as a next step regarding IAQ in general, investigating green infrastructure in combination with ventilation technology and integration of plants as a building service could be viable, since a combination and synergy will potentially lead to increased efficiency and effectiveness. With that, an analysis and comparison of the price/impact ratio are also needed. Furthermore, other air-quality-defining parameters, such as the TVOC, should be investigated to determine potential applications in environments with high VOC exposure, such as new buildings and workspaces. At the same time, research should focus on relatively cheap and affordable greening systems to increase accessibility of green infrastructure in general. In addition, the optimization of the combination of plants used in greening systems should also be examined further in real-life situations to give planners the possibility to choose plant species more easily. To achieve seamless integration in existing buildings, a guideline for the application of such systems could also be developed in a further step. To make sure that not only the effects on IAQ and hygrothermal comfort are considered but also the influence on, for example, acoustics is optimized, the design process of green infrastructure and further research regarding it should be carried out in multidisciplinary teams.

Data Availability Statement:
The data presented in this study are available on request from the corresponding author. The data are not publicly available due to privacy and legal constraints.