Applications of Unmanned Aerial Vehicles in Cryosphere: Latest Advances and Prospects
Abstract
:1. Introduction
Search Methods
2. Cryospheric Applications
2.1. UAVs for Snow Research
2.2. UAVs for Glaciology
2.3. UAVs for Other Polar Applications
3. Hardware, Software, and Regulations
3.1. UAVs
3.2. Sensors
3.3. Software
3.4. Flying Regulations
4. Discussion and Recommendations
- (1)
- Absolute referencing with placed GCPs measured with differential GNSS.
- (2)
- Relative referencing with natural reference points that are well visible in snow-free and snow-covered imagery.
- (3)
- Absolute referencing of one DSM with differential GNSS and then relative referencing of the second DSM by identifying visible points in the second DSM.
- (4)
- Record zero to five GCPs in support of on-board Post-Processing Kinematic (PPK) and Real-Time Kinematic (RTK) technology.
5. Conclusion
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Study | Location | UAV Platform | Highlights |
---|---|---|---|
Lucieer et al. (2014) [7] | Windmill Islands, Antarctica | MikroKopter OktoKopter | Performed a single flight to capture micro-topography (bryophytes and lichens) of moss beds. |
Turner et al. (2014) [8] | Windmill Islands, Antarctica | MikroKopter OktoKopter | Flew multiple sensors to investigate physiological state of moss ecosystems including a visible camera (1 cm/pixel), a 6 band multispectral camera (3 cm/pixel), and a thermal infrared camera (10 cm/pixel). |
Bollard-Breen et al. (2015) [9] | McMurdo Dry valleys, Antarctica | Custom-built fixed wing | Used a UAV to identify cyanobacterial mats, estimate their extent and discriminate between different mat types. They were able to detect human disturbances on the mat and recommended using this technology to monitor human impact on the fragile ecosystem. |
Goebel et al. (2015) [10] | Cape Shirreff, Antarctica | Microdrone md4-1000, Aerial Imaging Solutions APQ-18, Aerial Imaging Solutions APH-22 | Tested three UAV and camera systems to compare performance in collecting abundance and disturbance information on a few penguin and seal population samples. |
Vander Jagt et al. (2015) [11] | Tasmania, Australia | Doidworx SkyJiB | Used imagery obtained from UAS in conjunction with photogrammetric techniques to resolve spatially continuous snow depths using snow-covered and snow-free RGB images. |
Jonassen et al. (2015) [12] | Weddell Sea, Antarctica | Multiplex and Mavionics custom Fixed Wings and a custom quadcopter | Used multirotor and fixed wing UAVs to collect stratified air samples and physical properties for atmospheric boundary layer profiling above sea ice. |
Steiner et al. (2015) [13] | Liring Glacier, Nepal | Swinglet CAM | Utilized updated meteorological and in situ measurements to model ice cliff backwasting with the aid of a DSM produced by previously published flights [14]. |
Cimoli 2015, Cimoli et al. (2017) [15,16] | Longyearbyen, Svalbard | Walkera X350 Pro, DJI S900, custom-built octocopter | Sought to assess the feasibility of UAS SfM for depicting snow depth variability. Expected to fly at six locations but only completed one due to "UAS failure." Suggested pilots to be prepared to fly manually in Arctic locations. |
Westoby et al. (2015. 2016) [17,18] | Patriot Hills, Antarctica | Unspecified fixed wing | Orthomosaic and DSM produced by a UAV flight to aid in upscaling from patch scale sedimentological characterization and quantify short-term surface evolution of a moraine complex. |
De Michele et al. (2015, 2016)* [19,20] | Val Grosina Vallu, Italy | SenseFly Swinglet CAM | Investigated UAV capability of detecting centimeter-resolution snow depth distribution compared to ground measurements for an alpine region. |
Stuchlik et al. (2016) [21] | Nordenskiöldbreen glacier, Svalbard | Custom multirotor | Created example products to demonstrate possible uses of UAVs including an RGB and IR orthomosaic of a proglacial river system. This is a proof-of-concept manuscript. |
Buri et al. (2016) [22] | Liring Glacier, Nepal | Swinglet CAM | Created a gridded cliff backwasting model including DSM produced from previously published flights [14]. |
Pederson et al. (2016) [23] | Zackenberg, Greenland | Unspecified | Used a UAV-derived DSM to describe landscape features for investigating variations in snow distribution amongst vegetation types. |
Boesch et al. (2016) [24] | Brämabühl, Switzerland | Ascending Technologies (AscTec) Falcon 8 | Investigated practical upgrades with the evolution of RGB + NIR sensor hardware and SfM software for UAV and manned aircraft for improved reconstructions of snow height in an Alpine area. |
Ewertowski et al. (2016) [25] | Nordenskiöldbreen glacier, Svalbard | Unspecified quadcopter | Used a UAV to produce a detailed map of complex flutings to supplement a study on the geomorphology of terrestrial margins within the foreland of a tidewater polythermal glacier. |
Evans et al (2016) [26] | Fláajökull glacier, Iceland | Unspecified quadcopter | A single UAV survey was flown to map submarginal landforms that have recently evolved (since 1989) at a glacier snout. |
Tonkin et al. (2016) [27] | Austre Lovénbreen, Svalbard | DJI S800 | UAV imagery used to investigate the degradation of an ice-cored lateral-frontal moraine. |
Harder et al. (2016) [28] | Canadian Rocky Mountains and Saskatchewan | Sensefly eBee | Quantified snow depth using a UAV with RTK technology on different terrain types (prairie and alpine) and tested accuracy. |
Vincent et al. (2016) [29] | Changri Nup Glacier, Nepal | Sensefly eBee | Glacier surface mass balance is modeled combining UAV, terrestrial photogrammetry, satellite, and in situ measurements to investigate debris-cover influence using data from previously published flights (i.e. [29]). |
Kraaijenbrink et al. (2016) [30] | Liring Glacier, Nepal | Sensefly eBee | Collected optical RGB and thermal data on separate flights surveying a debris-covered glacier and compared to in situ and satellite sources. |
Brun et al. (2016, 2018) [31,32] | Liring Glacier, Changri Nup Glacier, Nepal | Sensefly Swinglet CAM, Sensefly eBee | Quantified total contribution of ice cliff backwasting to the net ablation of a glacier tongue via UAV-collected backwasting and surface thinning based on data from previously published flights (i.e. [13,29]). |
Bühler et al. (2016, 2017) [33,34] | Davos, Switzerland and Lizum, Austria | Ascending Technologies (AscTec) Falcon 8, Multiplex Mentor Elapor | Photogrammetrically estimated snow depth with UAVs on various surfaces including exposed alpine peak, sheltered valley area, and homogenous snow surfaces and discussed UAV performance in several scenarios |
Rümmler et al. (2016, 2018) [35,36] | South Shetland Islands, Antarctica | Mikrokopter MK ARF Okto XL | Recorded behavioral reactions of Gentoo and Adélie penguins to a UAV flown at different altitudes. Disturbance was visible when flown at a upper level of 30 m and 50 m above ground respectively. |
Lambiel et al. (2017) [37] | La Roussette rock glacier, Switzerland | SenseFly eBee RTK | Preliminary results of orthomosaics collected of a remote, difficult to reach, rapidly moving, newly discovered rock glacier within the Valais Alps. |
Dall’Asta et al. (2017) [38] | Valtournenche Valley, Italy | Swinglet CAM, SenseFly eBee RTK | Discussed the performance of GCP and RTK derived UAV products for depicting displacement and characteristics of a rock glacier. |
Telg et al. (2017) [39] | Ny-Alesund, Svalbard | Manta fixed wing | Sensors mounted on a UAV collected several aerosol properties using a condensation nuclei counter, chemical filter sampler, three-wavelength aerosol absorption photometer, printed optical particle spectrometer, miniature scanning sun photometer, HC2 temperature and relative humidity probe. |
Miziński and Niedzielski (2017) [40] | Izerskie Mountains, Poland | Sensefly eBee and Swinglet CAM | Tested a novel method for on-demand snow depth mapping that omitted artificial GCPs though the method was found to be less accurate than including GCPs. |
Phillips et al. (2017) [41] | Kvíárjökull glacier, Iceland | Unspecified multirotor | Mixed methods study including terrestrial LiDAR, satellite, ground penetrating radar, and high-resolution maps from RGB-flown UAV to analyze activity of a pulsing glacier. |
Nehyba et al. (2017) [42] | Nordenskiöldbreen glacier, Svalbard | Unspecified multirotor | UAV orthophoto and DSM supplemented QuickBird imagery to provide information on surficial deposits and associated landforms (i.e., fluvio-deltaic terraces) to support study on an ice-dammed lake. |
Mustafa et al. (2017, 2018) [43,44] | South Shetland Islands, Antarctica | Mikrokopter MK ARF Okto XL | Tested census techniques of penguin populations and found that NIR can be useful for distinguishing guano once vegetation signals are removed using NDVI, which has been helpful for identifying individual breeding pairs. Also reviewed wildlife responses to UAV activities. |
Liang et al. (2017) [45] | Tibetan Plateau, China | DJI Inspire 1 Pro | Three fractional snow cover mapping algorithms were tested on UAV and satellite data. A back-propagation artificial neural network model performed the best in the plateau’s complex terrain. |
Smith et al. (2017) [46] | Kangerlussuaq, Greenland | Skywalker X8 | RGB flight data that originally appeared in Ryan et al. [47] provided catchment boundaries, surface drainage patterns, and snow cover for Rio Behar. |
Busker (2017) [48] | Langtang Glacier, Nepal | Sensefly eBee | A thesis using the flights previously provided by Kraaijenbrink to investigate methodology on measuring ice cliff backwasting. |
Ader and Axelsson (2017) [49] | Tarfala, Sweden | DJI Phantom 4 | A thesis exploring the possibility of physically using UAVs for Arctic research. Includes interviews with UAV industry representatives and scientists, and test flights performed by unexperienced pilots as a measure of ease in applicability. |
Lovitt et al. (2017) [50] | Alberta, Canada | Aeryon Scout | UAV was used to reproduce ground elevations in peatland area and evaluate the role of vegetation and surface complexity. |
Burkhart et al. (2017) [51] | Summit, Greenland | Cryowing | Collected UAV-derived albedo over the Greenland ice sheet coincident with the MODIS sensor overpass for validation. |
Bernard et al. (2017, 2017) [52,53] | Austre Lovén glacier, Svalbard | DJI Phantom 3 | Used UAVs to analyze ice, snowpack and moraine dynamics with hydrology through repeated UAV survey a few days apart to capture a quickly changing environment. |
Ely et al. (2017) [54] | Isfallsglaciären, Sweden | Custom hexactopter | Mapped a polythermal glacier for geomorphological characteristics including moraines, fans, channels and flutes. |
Krause et al. (2017) [55] | Cape Shirreff, Antarctica | Aerial Imaging Solutions APH-22 | Flew a UAV to identify mass and body conditions of pinnipeds at target altitudes of 23, 30 and 45 m above ground level. |
Malenovský et al. (2017) [56] | Windmill Islands, Antarctica | Custom-built octocopter | Collected hyperspectral high-resolution imagery to estimate moss bed health via machine-learning support vector regressions. |
Dąbski et al. (2017) [57] | King George Island, Antarctica | PW-ZOOM | Detect and quantified periglacial landforms such as scarps, taluses, a protalus rampart, solifuction sheets, bedrock outcrops, and more from an orthomosaic and DSM. |
Jouvet et al. (2017) [58] | Bowdoin Glacier, Greenland | Skywalker | Combined UAV and satellite imagery with ice flow modelling to analyze calving activity of a marine-terminating glacier. |
Wigmore and Mark (2017) [2] | Llaca Glacier, Peru | Custom-built hexacopter | Found heterogenous patterns of glacial volume change, surface velocities, and proglacial lake changes via a hexacopter designed for high-altitude missions. |
Seier et al. (2017) [59] | Pasterze Glacier, Austria | QuestUAV | Used a UAV along with electrical resistivity tomography for surface change detection of a glacier terminus. Provided a great example of careful accuracy assessment for UAV DSMs. |
Gindraux et al. (2017) [60] | Multiple glaciers, Switzerland | Sensefly eBee | Collected glacier DSMs in summer, autumn, and winter to investigate the accuracy of UAV-derived DSMs. Found that GCPs increase accuracy until a threshold is met and the presence of fresh snow decreased DSM accuracy. |
Ryan et al. (2017) [61] | Kangerlussuaq, Greenland | Skywalker X8 | Obtained accurate fine-scale resolution of albedo over a sample of the Greenland ice sheet. |
Scaioni et al. (2017, 2018) [62,63] | Forni Glacier, Italy | SenseFly Swinglet CAM | Sought to understand precursory signals of an observed collapse of glacier tongue and discussed challenges of SfM applications for alpine glacier change. |
Weimerskirch et al. (2018) [64] | Crozet Islands, South Indian Ocean | DJI Phantom 3 | Assessed samples of eleven seabird species behavioral reaction to UAV flown within close vicinity at different altitudes. Found reactions above 50 m relative to individuals provided negligible impacts. |
Lousada et al. (2018) [65] | Adventdalen, Svalbard | Unspecified | Compared UAV flown RGB to aerial RGB + NIR imagery for identifying morphometric and topological features of ice-wedge polygonal networks. |
Jones et al. (2018) [66] | Isunguata Sermia, Greenland | Skywalker X8 | Flew over the lower 16 km ablation area of a glacier at an altitude of 800 m to describe the structural, geomorphological and hydrological features of terminus. |
Cooper et al. (2018)* [67,68] | Kangarussuaq Greenland | Unspecified quadcopter | UAV supplied a supplementary orthomosaic and DSM for study on cryoconite holes. |
Yang et al. (2018)* [69,70] | Kangerlussuaq, Greenland | Skywalker X8 | RGB flight data that originally appeared in [47] assisted in validating accuracy of supraglacial stream-river delineations from satellite imagery. |
de Boer et al. (2018) [71] | Oliktok Point, Alaska, USA | QuestUAV DataHawk and Pilatus | Described the UAV-enabled tasks performed under the US DOE Atmospheric Radiation Measurement program, including data collected on atmospheric aerosols, thermodynamics, and albedo over sea ice. |
Fugazza et al. (2018) [72] | Forni Glacier, Italy | Sensefly Swinglet CAM and custom quadcopter | Analyzed multi-year surveys to evaluate glacier thinning rate and for mapping hazards related to a collapse event. |
Jouvet et al. (2018) [73] | Bowdoin Glacier, Greenland | Firefly 6 vertical take-off and landing hybrid UAV | Flown twice a day for twelve days over Bowdoin Glacier to monitor non-linear plume dynamics at the calving front. |
Alfredson et al. (2018) [74] | Trondheim, Norway | DJI Phantom 3 | Subtracted a UAV DSM from a previously available DSM to estimate river ice thickness. Orthomosaic produced to map river ice for an ice jam and anchor ice dams. |
Mather et al. (2018) [75] | Leeden Tor, UK | DJI Phantom 3, Sensefly eBee | Evaluated methodologies for automated mapping of relict, sorted patterned ground characteristic of mature periglacial landforms using off-the-shelf fixed wing and multirotor systems. |
Tan et al. (2018) [76] | Scott Base, Antarctica | Unspecified multirotor | Preliminary results of an investigation into feasibility to utilize airborne radar onboard a UAV to map out snow depth on sea ice in Antarctica. |
Gonzalez et al. (2018) [77] | Tuktoyaktuk Coastal Plain, Canada | Unspecified | Preliminary results of quantitative morphological description of pingos (conical ice-cored hills) via UAV and satellite imagery. |
Midgley et al. (2018) [78] | Midtre Lovénbreen glacier, Svalbard | DJI S800 | Compared a LiDAR topographic dataset to a UAV DSM to study moraine evolution and glacial landform response to climate. |
Florinsky and Bliakharskii (2018) [79] | Progress Station, Antarctica | Geoscan 201 fixed wing | Presented a novel approach for revealing hidden crevasses based on geomorphometric treatment of high-resolution glacier DSMs. |
Bliakharskii and Florinsky (2018) [80] | Progress Station, Antarctica | Geoscan 201 fixed wing | Based on the same flight that appears in Florinsky and Bliakharskii [79], expands on crevasse identification and observations of a surface collapse event of Dålk Glacier. |
Isacsson (2018) [81] | Tarfala, Sweden | DJI Phantom 4** **Discussed the DJI Phantom 4 throughout the paper. One sentence stated the imagery used was collected by a DJI Phantom 3, we assume here this was a typographic error. | A sibling thesis to Ader and Axelssson [46], investigated the performance of UAVs in mapping snow surface distance and snow layer depth estimation comparing Agisoft Photoscan and Pix4d reconstructions with various sensors. |
Attalla and Tang (2018) [82] | Tarfala, Sweden | N/A | A thesis that more thoroughly described engineering aspects of applying LiDAR and ultrasonic sensor on a UAV for measuring heights of ablation stakes. Sensors were tested in a lab setting and a UAV was not flown. |
Adams et al. (2018) [83] | Tuxer Alps, Austria | Multiplex Mentor Elapor | Twelve UAV flights of a snow-covered slope confirmed that both RGB and NIR UAV-derived DSMs provide highest accuracy under full sunlight conditions, while NIR provided more accurate snow DSMs under poorly illuminated conditions. |
Luo et al. (2018) [84] | Kunlun Mountains, China | DJI Inspire 1 | Measured the thermal influence of power transmission poles and railroads on permafrost slopes via an RGB and IR-enabled UAV. They recorded variability of heat transfer that could create unstable foundations for the infrastructure. They recommend image overlap to be at least 90% for successful thermal mosaicking. |
Barnas et al. (2018) [85] | Manitoba, Canada | Trimble UX5 | Opportunistically observed the behavior of three adult male polar bears and discussed the use and challenges of UAVs use for surveying polar bears. |
Zmarz et al. (2018) [4] | King George Island, Antarctica | PW-ZOOM | Flew a UAV beyond line of site to identify fauna, flora, and landforms to successfully monitor key elements of a polar ecosystem on the remote Penguin Island. |
Rossini et al. (2018) [86] | Morteratsch Glacier, Switzerland | DJI Phantom 4 | Collected information on surface velocity, brightness, roughness, and DSM differencing of the ablation region of Morteratch Glacier. |
Kraaijenbrink et al. (2018) [87] | Liring Glacier, Nepal | Sensefly eBee | UAV was flown with both RGB and IR to improve UAV surveying potential for estimating glacial debris thickness via thermal signatures. |
Kraaijenbrink 2018 [88] | Liring Glacier, Nepal | Sensefly Swinglet CAM | Two field campaigns flown to assess the magnitude of the downwasting of a debris-covered glacial tongue and the average glacier movement over the monsoon season. |
Kim and Kim (2018) [89] | East Siberian Sea | DJI multirotor (unspecified) | Proposed a method of detecting incorrect matches among images prior to correcting DSMs derived from UAV flown over sea ice. |
Kizyakov et al. (2018) [90] | Siberia, Russia | Unspecified | Mapped impact hollows resulting from gas emission craters in permafrost zones using a UAV. |
van der Sluijs et al. (2018) [91] | Northwest Territories, Canada | A Sensefly, 2 Badatech, 2 DJI UAVs | Quantified permafrost thaw slump dynamics, estimated volumes of downslope sediment transfer and identified stratification features along a headwall. |
Avanzi et al. (2018) [92] | Belvedere glacier, Italy | Custom hexacopter | Compared snow depth measurements of UAV with a high-resolution MultiStation laser-scanner, found similar results within centimeter accuracy of spatial distribution of seasonal, dense snowpack. |
Korczak-Abshire et al. (2018) [93] | King George Island, Antarctica | PW-ZOOM | Based on the same flight data in [4], this study further provided a census of local seabird and seal populations on Antarctic islands that would otherwise be difficult to access. |
Fernandes et al. (2018) [94] | Gatineau and Acadia, Canada | DJI Phantom 3 | Investigates accuracy of multitemporal snow depth measurements over diverse microtopographic and vegetation cover terrain in relation to photogrammetric theory. |
Schirmer and Pomeroy (2018)* [95,96] | Canadian Rocky Mountains | Sensefly eBee | Used SfM to develop maps of snow depth and snow cover to use as proxies for snow water equivalent, ablation rates, and snow cover depletion using data from previously published flights (i.e. [26]). |
Cook et al. (2018) [97] | Western Greenland | DJI Phantom 2 | Extracted still images from UAV-collected RGB video to obtain frequency, coverage, and geometric data of cryoconite holes. |
Bash et al. (2018, 2019)* [98,99,100] | Fountain Glacier, Canada | MikroKopter | Measured daily and total glacial ablation via UAV reconstructions of a glacier. Later tested an enhanced temperature index model of glacier surface melt from this data. |
Jenssen et al. (2018, 2019) [101,102] | Multiple sites, Norway | Foxtech Kraken | Flew a radar to resolve snow stratigraphy and a dry snowpack and tested its capability of detecting a person buried under 1.5 m of wet snow. |
Léger et al. (2019) [103] | Seward Peninsula, Alaska | 3DR Solo UAV | Vegetation and topography information collected by UAV was combined with additional sensors to analyze permafrost parameters. |
Rohner et al. (2019) [104] | Eqip Sermia Glacier, Greenland | Sensefly eBee | Compared satellite SAR, terrestrial radar interferometer, and UAV-derived velocity fields of a marine terminating glacier. |
Lendzioch et al. (2019) [105] | Šumava National Park, Czech Republic | MicroKopter ARF-Okto XL | Subtracted snow-free from snow-covered UAV-derived DSMs during different snow conditions for snow depth calculations in a forest environment and additionally related this to leaf area index. |
Hendrickx et al. (2019) [106] | Cliosses rock glacier, Switzerland | Custom DJI F550 | Created multiple reconstructions of a rock glacier with identical inputs to test Agisoft Photoscan SfM variation among outputs. |
Lamsters et al. (2019) [107] | Greenland, Antarctica, Iceland | DJI Phantom 3, DJI Phantom 4, DJI Mavic Air | Discussed a collection of experiences and recommendations for using off-the-shelf DJI multirotors for DSM and orthomosaic production in polar environments. |
Cook et al. (2019) * [108,109] | Western Greenland | Steadidrone Mavrik | Applied a novel supervised classification to a UAV-collected multispectral orthomosaic to map algae cover on the surface of the Greenland ice sheet. |
Key Topics | |||
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Lower Atmosphere | Oceanic and Sea Ice Processes | Glacier and Ice Cap Dynamics | Ecosystem Resilience |
Aerosols and Black Carbon | Sea-ice properties | Glacier mass balance | Terrestrial |
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Clouds | Ocean properties | Glacier dynamics | Marine |
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Surface energy fluxes | Ocean color | ||
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Meteorology | Energy Transport | ||
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Methane, carbon dioxide and nitrous oxide concentrations | |||
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Share and Cite
Gaffey, C.; Bhardwaj, A. Applications of Unmanned Aerial Vehicles in Cryosphere: Latest Advances and Prospects. Remote Sens. 2020, 12, 948. https://doi.org/10.3390/rs12060948
Gaffey C, Bhardwaj A. Applications of Unmanned Aerial Vehicles in Cryosphere: Latest Advances and Prospects. Remote Sensing. 2020; 12(6):948. https://doi.org/10.3390/rs12060948
Chicago/Turabian StyleGaffey, Clare, and Anshuman Bhardwaj. 2020. "Applications of Unmanned Aerial Vehicles in Cryosphere: Latest Advances and Prospects" Remote Sensing 12, no. 6: 948. https://doi.org/10.3390/rs12060948
APA StyleGaffey, C., & Bhardwaj, A. (2020). Applications of Unmanned Aerial Vehicles in Cryosphere: Latest Advances and Prospects. Remote Sensing, 12(6), 948. https://doi.org/10.3390/rs12060948