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Technical Note

Operational Study of Drone Spraying Application for the Disinfection of Surfaces against the COVID-19 Pandemic

by
Higinio González Jorge
1,*,
Luis Miguel González de Santos
2,
Noelia Fariñas Álvarez
1,
Joaquin Martínez Sánchez
2 and
Fermin Navarro Medina
3
1
Department of Natural Resources and Environmental Engineering, School of Aerospace Engineering, University of Vigo, 32004 Ourense, Spain
2
CINTECX, GeoTECH Group, Campus Universitario de Vigo, University of Vigo, As Lagoas, Marcosende, 36310 Vigo, Spain
3
Department of Mechanical Engineering, Thermal Machines and Motors, and Fluids, School of Aerospace Engineering, University of Vigo, 32004 Ourense, Spain
*
Author to whom correspondence should be addressed.
Submission received: 29 January 2021 / Revised: 25 February 2021 / Accepted: 4 March 2021 / Published: 7 March 2021
(This article belongs to the Special Issue Drones for Medicine Delivery and Healthcare Logistics)

Abstract

:
The COVID-19 pandemic has shown the need to maximize the cleanliness of outside public services and the need to disinfect these areas to reduce the virus transmission. This work evaluates the possibilities of using unmanned aircraft systems for disinfection tasks in these aeras. The operational study focuses on evaluating the static and dynamic behavior, as well as the influence of the flying height, mission speed and flow of spraying. The most recommended height for correct spraying with the drone system under study is 3.0 m. The dynamic test shows that the lower height, 3.0 m, also provides the most adequate spraying footprint, achieving 2.2 m for a speed of 0.5 m/s. The operational behavior is evaluated on three different scenarios, a skatepark with an area around 882.7 m2, an outdoor gym with an area around 545.0 m2 and a multisport court with an area around 2025.7 m2. The cleaning time evaluates the flying duration, battery change and tank refill and results in 41 min for the skatepark (5 tank refills and 2 battery changes), 28.6 min for the outdoor gym (3 tank refills and 2 battery changes) and 96.4 min for the multisport court (11 tank refills and 5 battery changes). Each battery change and each tank refill are estimated to take 4 min each, with a drone autonomy of 7 min. The technology appears competitive compared to other forms of cleaning based, for example, on human operators.

1. Introduction

Unmanned aircraft systems (UAS), also called drones, are a technology that has extended its use in recent years to many applications such as the audiovisual sector, surveying, infrastructure inspection, agriculture, forestry management and logistics, among others [1,2,3,4,5,6]. This technology shows advantages such as avoiding the use of helicopters in many aerial works, greatly decreasing the cost of operation. Imagery from UAS also increases the spatial resolution in comparison with other solutions based on satellites, due to the greater proximity between the optical sensor and the scanned surface. In addition, they give safe accessibility to complicated parts of large structures and avoid the use of human workers at height with the need for harnesses, cranes or winches.
One of the operational segments of activity where UAS are expected to continue growing in the incoming years is drone spraying. Some countries such as South Korea spray about the 30% of their agricultural area with drones. Unmanned helicopters, such as the Yamaha RMax [7], pioneered drone spraying in Japan, dating back the mid-1990s, whilst others were recently introduced in the market, such as DJI Agras MG-1 [8] in 2016. Legal and technical barriers must be addressed to increase the scope of drone spraying. Legislation needs to be updated to accommodate the use of pesticides in some countries [9]. Among technical parameters, altitude control is a critical aspect to be considered in drone spraying to achieve a balanced fluid application to the entire agricultural parcel [10].
Even though drone spraying has been oriented mainly to agricultural work, the current coronavirus pandemic has shown other applications related to cleaning public spaces with drones. In those cases, water is mixed with a disinfectant fluid that is dispersed on a surface. Although there are various press reports regarding its application [11,12,13], no serious scientific studies are presented on its real viability.
The aim of the present work is to study the potential use of drones in surface cleaning, considering different technical parameters. Virucidal dilutions can be prepared following the recommendations of the Spanish Health Service [14]. Aspects such as the adequate flying height, mission speed, spraying flow or time requirements are analyzed in the manuscript. The manuscript is focused on the liquid coverage in the field, not on the effectiveness of the disinfectant process. The manuscript is organized as follows: Section 2 shows the Material and Methods part, where drone characteristics are presented, as well as the study area and spraying testing methodology. Section 3 depicts the results and discussion. Section 4 exhibits the conclusions.

2. Materials and Methods

2.1. Spraying Drone

The used spraying drone was the MX405 (Figure 1) [15]. It uses a flight control system, K3A Pro, with four 24″ propellers and 6125/340kv brushless motors. The frame is made of carbon fiber. Whilst the folding size is 472 × 472 × 444 mm, the distance between propeller axes is 1000 mm when unfolded, producing a product size of 776 × 776 × 444 mm. The tank capacity is 5.5 L with a maximum takeoff weight of 14 kg. The working time is 7 min with a maximum working area of 20.000 m2 (2 Ha). Fluid spaying was conducted using a brushless pump with a pressure nozzle. It uses a 6S 22,000 mAh LiPo battery as the energy source. The maximum tilt is 30°, maximum yaw speed is 150°/s and maximum vertical speed is 6 m/s.

2.2. Testing Sites and Weather

Testing sites were defined in order to perform outdoor operations with global navigation satellite system (GNSS) coverage. This fact facilitates the navigation of the drone and the path planning. If possible, GNSS RTK (global navigation satellite system—real time kinematics) is preferred to ensure accurate navigation and guarantee no areas without cleaning treatment. In addition, a RADAR system is also important to provide flying stability and keep a constant drone–ground distance. Local drone rules should be taken into account (i.e., pilot license, operator license, maximum takeoff weight of the drone, flight height). In addition, the regulations in Europe forbid the presence of people under the drone flying area during operations. This is the general scenery applicable to this work.
Three testing sites with potential interest for the disinfection of surfaces with drones in the Galicia region (northwest Spain) were selected: a skatepark and an outdoor gym in the municipality of Nigrán, and a multisport court in the municipality of Mondariz (Figure 2). The skatepark had an area around 882.7 m2, the outdoor gym had an area of 525.0 m2 and the multisport court had an area of 2036.7 m2. To obtain the geometrical information and an aerial image of the areas under study, photogrammetric flights using the DJI Mavic Mini drone [16] were performed. The flights were conducted with 80% overlap in the along-track direction and 50% in the cross-track direction. The DJI Mavic Mini drone only weight 249 g and it is highly portable. It has a 12 MP digital camera with a field of view of 83° and a 35 mm equivalent, 24 mm lens (f/2.8). Photogrammetric reconstructions were conducted using the Agisoft Metashape software suite [17]. Control points to provide real dimensions were marked using the Leica GS15 GNSS in RTK mode with accuracies of 5 (horizontal) and 10 mm (vertical) [18]. The first testing site (skatepark; Nigrán municipality) was used for the study and calibration of the drone spraying features. The two additional sites were used for an operational study of the technology, based on the previous evaluated drone spraying features.
Wind speed data during the drone spraying testing at the skatepark in Nigrán municipality were obtained from the weather stations of Meteogalicia, situated in the surrounding area [19]. This service has a dense network of weather stations in the Galician territory and provides accurate information of wind speed at 10 m height, which is applicable to this study. Wind speed for the testing day (Nov 21 2020) was 2.2 km/h. Due to the small size of the dispersed droplets, low wind speed is crucial during drone operation. This ensures that the applied liquid reaches the ground below the drone and does not disperse in the air. Other meteorological aspects, such as the absence of rain to guarantee the application of the product in the appropriate concentration, or the absence of fog to guarantee visibility, must be taken into account.

2.3. Testing Methodology

The testing methodology started with the evaluation of the spraying flow. The spraying flow of the system could be set up in the mobile app provided by the manufacturer. To verify this flow, a test was carried out which consisted of introducing a known volume of liquid in the drone container and measuring the time it takes the system to disperse all the fluid. The test was conducted by introducing 2 L into the tank. The spraying time up to emptying the tank was 70 s. The spraying flow calculated was 1.7 L/min.
After this calculation, the static and dynamic footprints of the drone spraying were evaluated. In both cases, a plastic container of known dimensions was used to take fluid from the ground (Figure 3). The system shows a surface of 753.7 cm2.
The static footprint defines the surface affected by the fluid during a hover spraying at different heights. Time during spraying was 30 s and heights involved were 3.0, 5.0 and 7.0 m. Two containers were placed on the ground on the spraying surface, one in the same X-Y coordinates of the drone hovering and the other one at 1.0 m distance.
The dynamic footprint defines the behavior of drone spraying at a pre-defined mission speed. In this case, the test consisted of moving the drone linearly at a speed of 0.5 m/s and defining the ground footprint. The same containers used in previous tests were also used to measure the fluid recovered from the ground. Flying heights over the ground were also 3.0, 5.0 and 7.0 m.

3. Results and Discussion

Figure 4 shows an example of the static footprint at 3.0, 5.0 and 7.0 m on the skate park of Nigrán municipality. Table 1 shows the fluid volume recovered in each container at different flight heights during the static footprint test. As it was expected, the footprint dimensions increase with height, but the container’s volume of fluid decreases. In addition, although the wind speed was slow during the tests (2.2 km/h), it decreased the accuracy of the footprint with the height increase.
Figure 5 depicts an example of the dynamic footprint at 3.0, 5.0 and 7.0 m on the same previous place. Table 2 shows the width of the footprint during the dynamic test and the volume of fluid recovered from the containers. The footprint loses uniformity with the increasing height. At a height of 7.0 m, no fluid is recovered from the container and the footprint is narrow, making any form of cleaning with the system difficult.
As shown in the tests carried out with the system, the dispersion is greatly affected by the wind, both in the footprint position and width. In view of these results, the optimal height to ensure that the dispersed liquid covers the entire desired surface uniformly is 3 m. Furthermore, with the tank capacity of 5.5 L and the dispersion flow of the system, which is 1.7 L/min, the drone could fly at 96.1 m, dispersing liquid at a speed of 0.5 m/s. Flying at a height of 3.0 m and considering the width of the footprint obtained in the dynamic test, it can be concluded that the system covers an area of 228.8 m² with the 5.5 L tank.
Considering the previous study, assumed as the calibration of the technology, an operational study was performed for all the testing sites under study (Table 3). A flight height of 3 m over the places was selected, with a 2.2 m footprint to guarantee maximum coverage and overlap between the different strips. The other operational parameters such as speed and spraying flow were the same as those previously tested (0.5 m/s and 1.7 L/min, respectively). Figure 6 shows an example of the cleaning mission simulated that requires seven strips to clean all of the surface. Table 3 shows the results for all the sites under study. Total flight distance was calculated as the sum of strips’ length plus the width of the rectangle. The required number of tanks to perform all the spraying task was estimated taking into account the length of 96.1 m, the drone speed of 0.5 m/s and the spraying flow of 1.7 L/min. Flying time is calculated from the speed of the mission and the total length for spraying. Considering the autonomy of the system (7 min), the number of battery changes to perform the complete mission is automatically obtained. Battery replacement operation is estimated based on authors’ previous experience of needing 4 min, and the tank refill adds another 4 min to the operation. These data added to the flight time provide the total time for the cleaning mission. The correlation between the cleaning area and time is evaluated and represented by the following equation: T o t a l   t i m e   ( min ) = 0.0456 · A r e a   ( m 2 ) + 2.95 .

4. Conclusions

A spraying drone system was tested for disinfection purposes in open scenarios usually shared by people as an outdoor gym, a multisport court with stands and a skatepark. The disinfection of these locations is challenging with other methodologies (humans with spraying backpack or spraying trucks), especially in some areas such as the stands of the multisport court or some elements of the outdoor gym. Man-made works are slow and cannot carry large volumes of fluid. Due to their nature, they also do not guarantee that the work is performed as a systematic procedure. On the other hand, the use of trucks generates an accessibility problem since they cannot reach many spaces.
The experiments performed show how the use of drones appears as reliable and efficient. They provide an accurate spraying that could be parameterized and cost evaluated. Static and dynamic tests were performed. Static tests show a great influence in the footprint quality with the wind, even for lower wind speeds. This influence increases with the increasing flight height. The most recommended height for correct spraying with the drone system under study is 3 m. Dynamic tests show that the lower height also provides the most adequate spraying footprint, achieving 2.4 m for a speed of 0.5 m/s.
The characteristics of the operation were evaluated in the three different scenarios. It can be concluded that the cleaning of the skatepark needs 41.0 min, the outdoor gym needs 28.6 min and the multisport court needs 96.4 min. In addition, it must be noted that the operation could be performed using only one drone pilot, which makes it cost-competitive against other cleaning methodologies.
For future work, it would be of interest to study other drones in the market that can load larger volumes of liquid, such as the DJI Agras or the YamahaR-Max. They would surely increase the productivity of the method, since one of the greater delays in the procedure is related to the deposit recharge time. The development of an automatic ground refill station could also contribute to improving this limitation, maybe in combination with drone battery recharging stations. On the other hand, there are open issues that require more research in future. At the biochemical level, the appropriate drop size for disinfection with this type of system, the optimal thickness of the water sheet that is generated on the ground or what type of cleaning solution is most recommended should be determined. There are other open issues related to the lack of GNSS signal and the operation in indoor environments, as well as the management of unforeseen obstacles such as railing and cables.

Author Contributions

Conceptualization, H.G.-J., J.M.-S., F.N.-M.; methodology, H.G.-J., L.M.G.-S., N.F-A.; testing, L.M.G.-S., N.F.-A.; results analysis, H.G.-J., J.M.-S., F.N.-M.; writing and editing, H.G.-J., J.M.-S. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the Galician Innovation Agency (GAIN) from the regional government of Xunta de Galicia, Spain.

Acknowledgments

Authors thank Miguel Angel González-deSantos for all support given during the flight operations.

Conflicts of Interest

The authors declare no conflict of interest.

References

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Figure 1. MX405 drone. Image (A) and drawing (B). Length in mm.
Figure 1. MX405 drone. Image (A) and drawing (B). Length in mm.
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Figure 2. Testing site orthoimages: (A) skatepark (Nigrán municipality); (B) outdoor gym (Nigrán municipality); (C) multisport court (Mondariz municipality).
Figure 2. Testing site orthoimages: (A) skatepark (Nigrán municipality); (B) outdoor gym (Nigrán municipality); (C) multisport court (Mondariz municipality).
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Figure 3. Plastic container to collect liquid during testing.
Figure 3. Plastic container to collect liquid during testing.
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Figure 4. Example of static footprint (darker gray area) on the skatepark in Nigrán municipality. (A) 3.0 m height, (B) 5.0 m height, (C) 7.0 m height. Red point on container 1 indicates the X-Y position of the drone.
Figure 4. Example of static footprint (darker gray area) on the skatepark in Nigrán municipality. (A) 3.0 m height, (B) 5.0 m height, (C) 7.0 m height. Red point on container 1 indicates the X-Y position of the drone.
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Figure 5. Example of dynamic footprint (darker gray area) on the skatepark in Nigrán municipality. (A) 3.0 m height, (B) 5.0 m height, (C) 7.0 m height. Red arrow indicates the X-Y position of the drone path.
Figure 5. Example of dynamic footprint (darker gray area) on the skatepark in Nigrán municipality. (A) 3.0 m height, (B) 5.0 m height, (C) 7.0 m height. Red arrow indicates the X-Y position of the drone path.
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Figure 6. Example of mission planning for drone spraying cleaning at the skatepark in Nigrán municipality. Red arrows indicate drone strips.
Figure 6. Example of mission planning for drone spraying cleaning at the skatepark in Nigrán municipality. Red arrows indicate drone strips.
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Table 1. Static footprint test results. Spraying time: 70 s.
Table 1. Static footprint test results. Spraying time: 70 s.
Flight Height (m)Footprint Dimensions (m)Container 1 Volume (mL)Container 2 Volume (mL)
32.9 × 2.5338
54.0 × 3.5312
75.1 × 4.113
Table 2. Dynamic footprint results.
Table 2. Dynamic footprint results.
Flight Height (m)Footprint Width (m)Container 1 Volume (mL)Container 2 Volume (mL)
32.42-
52.11-
7---
Table 3. Results of operational study for spray cleaning using a drone.
Table 3. Results of operational study for spray cleaning using a drone.
ParametersSkate ParkOutdoor GymMultisport Court
Area (m2)882.7525.02036.7
Length (m)53.535.046.5
Width (m)16.515.043.8
Strips7720
Total flight distance (m): length · strips + width391.0260.0973.8
Number of tank refills5311
Disinfectant volume (L)22.314.855.7
Flying time (min)13.08.632.4
Battery changes (autonomy 7 min)225
Total time (min): Flying time + battery changes time + tank refill time41.028.696.4
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MDPI and ACS Style

González Jorge, H.; González de Santos, L.M.; Fariñas Álvarez, N.; Martínez Sánchez, J.; Navarro Medina, F. Operational Study of Drone Spraying Application for the Disinfection of Surfaces against the COVID-19 Pandemic. Drones 2021, 5, 18. https://0-doi-org.brum.beds.ac.uk/10.3390/drones5010018

AMA Style

González Jorge H, González de Santos LM, Fariñas Álvarez N, Martínez Sánchez J, Navarro Medina F. Operational Study of Drone Spraying Application for the Disinfection of Surfaces against the COVID-19 Pandemic. Drones. 2021; 5(1):18. https://0-doi-org.brum.beds.ac.uk/10.3390/drones5010018

Chicago/Turabian Style

González Jorge, Higinio, Luis Miguel González de Santos, Noelia Fariñas Álvarez, Joaquin Martínez Sánchez, and Fermin Navarro Medina. 2021. "Operational Study of Drone Spraying Application for the Disinfection of Surfaces against the COVID-19 Pandemic" Drones 5, no. 1: 18. https://0-doi-org.brum.beds.ac.uk/10.3390/drones5010018

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