Emergent Challenges for Science sUAS Data Management: Fairness through Community Engagement and Best Practices Development
Abstract
:1. Introduction
1.1. Current Use of sUAS in Research
1.2. Current sUAS Data Management
1.3. Opportunities for sUAS Data Management
1.3.1. The Push for Open Science and FAIRness
1.3.2. The Corresponding Maturation of Data Technologies
1.3.3. The Lack of Norms or Legacy sUAS Data
2. Materials and Methods
2.1. Community Engagement
2.1.1. Earth Science Information Partners Federation
2.1.2. Research Data Alliance
2.2. Additional Key Events and Communities
2.2.1. Oceanographic Sciences
2.2.2. Atmospheric Science
2.2.3. Agricultural Sciences
2.2.4. Traditional Remote Sensing
2.2.5. Earth & Space Science Informatics (ESSI)
3. Results
3.1. sUAS Data Are Unique and in Need of Unique Management Infrastructure
3.2. Eight Community Distilled sUAS Data Management Challenges to Be Addressed
- Sensor use procedures: Sensor specific, tested and qualified use procedural best practices and standards are urgently needed in common human and machine readable languages. These best practice methodology and procedural guidelines should be developed and provided either by the manufacturer or the research community and include: mounting requirements on various platforms, calibration, ground truthing, and maintenance procedures, sample rates, flight patterns, and required metadata for data use and publication. The need for these and the aforementioned emphasis on machine and human readability is both for user ease and so as to enable greater automation in the capture of data provenance. As mentioned existing initial work on this issue has already appeared within the atmospheric community [48,49] and the Agricultural Sciences [52]. While these procedures are largely currently not instantiated in open machine readable forms, they represent a direction for others to follow and contribute further to.
- Operational practices: Having best practices regarding operational protocols for scientific research will lower the barrier to entry for new users, allow training materials to be standardized for the many new training courses being created, and reduce the burden on operators which can only lead to safer operations. Further, while many countries have now begun to settle on regulations, many research organizations are still grappling with their own internal policies and protocols. Researcher operational best practices, created based on the experience of those who have been operating for longer, could serve to accelerate organizational protocol deployment in a country agnostic manner. One examples of such that is readily accessible comes from University of Exeter’s Remote Sensing Laboratory [70], and another is the University of California’s risk assessment and operating policy [71].
- Analytics and Error correction procedures: Best practices and acceptable error tolerances for primary sensor taxonomy branches and the associated processes need to be defined so as to avoid unintentional—but easy to introduce—errors [72]. These are needed equally by tool providers (commercial and open source) so as to allow them to build to a standard, and by user community so as ensure correct data interpretation. Defining such will additionally contribute to efforts to define sensor use best practices and metadata creation, capture, and archive tooling.
- Data and metadata data formats: Guidelines regarding best practice metadata and data formats would serve the community, not as any form of restriction, but rather as a simple means of reducing workloads for both research sUAS operators and technical developers of: sensors, sUAS platforms, and the many components necessary in a data management tool stack. Having published recommended open formats based on community experience would similarly lower the barrier to novel experiments and enable both open source and commercial developers to create reusable tools.
- Data and metadata provenance practices: Given that a typical sUAS data capture project involves multiple: sensors, mechanical and electrical platforms, complex data transformations, and stakeholders, and that information regarding each of these commonly has a bearing on how a dataset should be interpreted. The provenance and workflow metadata—the record of the processes that created the data—are particularly important. Definitions of what parameters are required to make a data value, set, or product reusable—in potentially other scenarios than that for which it was originally captured or created—is necessary as both a practical guideline for operations and to facilitate the creation of tools to support the automated capture of this provenance.
- Data product levels: Defining suggested data product levels for various data types would facilitate both data archives and single researchers in determining what data should be archived, at what quality levels, at what resolutions, and with what associated metadata as required for likely reuse. This could be done for various primary parameter taxonomy branches, such for spectral data captured for Agricultural Sciences, and for atmospheric time series for Atmospheric Sciences.A crucial and complex sub-component to data product level definitions is the potential ethics driven policies that will govern sharing sUAS data. FAIR does not require open access, and others are exploring the ethical implications of both FAIR and open data in general [73,74]. Not least because of their historical military associations of sUAS but also due to the potential to easily violate important privacy restrictions with sUAS mounted sensors, the community needs to discuss both locally and internationally, what best practices might be for governing sUAS data’s desirable degree and form of openness.
- Data management and analytics tools: As shown in Figure 3, many of the relevant organizations already have some portion of a sUAS data analytics and management tool stack. However, the tools these bodies offer are only sUAS specific in a minority of cases. Rather, the majority were developed for other data types and are now being adapted for sUAS. More resources and effort are therefore necessary to accelerate these adaptations; and it is noteworthy that by addressing the above challenges, it would becomes significantly easier for resource pooling across development efforts.
- Data management education: As the domain grows there is an increasing demand for introductory information that properly addresses the multitude of new expertise needed to effectively use sUAS. In response many universities and other institutions are beginning to formally train research sUAS operators. An acknowledged but core missing component of these training curricula is any information on comprehensive consideration for science data good practices. Bringing together data management training and sUAS training offers a convenient opportunity, but one that depends heavily on investment being made first in the above challenges.
4. Discussion
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
Abbreviations
sUAS | Small Unmanned Aircraft Systems |
IG | Interest Group |
NASA | The National Aeronautics and Space Administration |
USGS | United States Geological Survey |
USDA | United States Department of Agriculture |
Appendix A
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Wyngaard, J.; Barbieri, L.; Thomer, A.; Adams, J.; Sullivan, D.; Crosby, C.; Parr, C.; Klump, J.; Raj Shrestha, S.; Bell, T. Emergent Challenges for Science sUAS Data Management: Fairness through Community Engagement and Best Practices Development. Remote Sens. 2019, 11, 1797. https://doi.org/10.3390/rs11151797
Wyngaard J, Barbieri L, Thomer A, Adams J, Sullivan D, Crosby C, Parr C, Klump J, Raj Shrestha S, Bell T. Emergent Challenges for Science sUAS Data Management: Fairness through Community Engagement and Best Practices Development. Remote Sensing. 2019; 11(15):1797. https://doi.org/10.3390/rs11151797
Chicago/Turabian StyleWyngaard, Jane, Lindsay Barbieri, Andrea Thomer, Josip Adams, Don Sullivan, Christopher Crosby, Cynthia Parr, Jens Klump, Sudhir Raj Shrestha, and Tom Bell. 2019. "Emergent Challenges for Science sUAS Data Management: Fairness through Community Engagement and Best Practices Development" Remote Sensing 11, no. 15: 1797. https://doi.org/10.3390/rs11151797
APA StyleWyngaard, J., Barbieri, L., Thomer, A., Adams, J., Sullivan, D., Crosby, C., Parr, C., Klump, J., Raj Shrestha, S., & Bell, T. (2019). Emergent Challenges for Science sUAS Data Management: Fairness through Community Engagement and Best Practices Development. Remote Sensing, 11(15), 1797. https://doi.org/10.3390/rs11151797