Data Citation and Acknowledgment
As a condition of using these data, you must cite the use of this data set. Such a practice gives credit to data set producers and advances principles of transparency and reproducibility.
10.5067/NE8CLN3ES5XQ
Ciafone, S., O'Neel, S., Adebisi, N., Zikan, K., Enterkine, J., Van Der Weide, T., Wilder, B., Hoppinen, Z., Filiano, D. & Marshall, H. (2024). SnowEx Mores Creek Summit (MCS) Airborne LiDAR Survey. (SNEX_MCS_Lidar, Version 1). [Data Set]. Boulder, Colorado USA. NASA National Snow and Ice Data Center Distributed Active Archive Center. https://doi.org/10.5067/NE8CLN3ES5XQ. [describe subset used if applicable]. Date Accessed 11-01-2024.
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