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  1. AU="Scholl, Victoria"
  2. AU="Sulejczak, Dorota"
  3. AU="Carvalho, Ana C"
  4. AU="Guo, Mengmeng" AU="Guo, Mengmeng"
  5. AU="Boehler, Michael"
  6. AU="Mirfakhraei, Mahdi"
  7. AU="de Jongste, Johan C"
  8. AU="Holmgren, A Jay"
  9. AU="Mićanović, S"
  10. AU="Chiu, Joanne S"
  11. AU=D'Amora Paulo
  12. AU="Jansen, Hans"
  13. AU=Beukes Eldre W
  14. AU="Francis, Sarah"
  15. AU="Camara, Amadou K.S."
  16. AU="Chaudhari, Sachin R."
  17. AU="Ovchinnikova, Tatiana V"
  18. AU="Aït Ali, F"
  19. AU="Jeong, Jae Cheon"
  20. AU="Luca Baldassari"
  21. AU="Wakfie-Corieh, C G"
  22. AU="Desouza, Cyrus V"
  23. AU="Esaka, Naoki"
  24. AU="Haruka Wada"
  25. AU="Klouda, Timothy"
  26. AU="Olsson-Brown, Anna C."
  27. AU="Schmauß, Max"
  28. AU="Raza, Syed Tasleem"
  29. AU="Humphreys, H"
  30. AU="Robert A Casero Jr"
  31. AU="Marinec, Paul S"
  32. AU="Rajebhosale, Prithviraj"

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  1. Artikel: Fusion neural networks for plant classification: learning to combine RGB, hyperspectral, and lidar data.

    Scholl, Victoria M / McGlinchy, Joseph / Price-Broncucia, Teo / Balch, Jennifer K / Joseph, Maxwell B

    PeerJ

    2021  Band 9, Seite(n) e11790

    Abstract: Airborne remote sensing offers unprecedented opportunities to efficiently monitor vegetation, but methods to delineate and classify individual plant species using the collected data are still actively being developed and improved. The Integrating Data ... ...

    Abstract Airborne remote sensing offers unprecedented opportunities to efficiently monitor vegetation, but methods to delineate and classify individual plant species using the collected data are still actively being developed and improved. The Integrating Data science with Trees and Remote Sensing (IDTReeS) plant identification competition openly invited scientists to create and compare individual tree mapping methods. Participants were tasked with training taxon identification algorithms based on two sites, to then transfer their methods to a third unseen site, using field-based plant observations in combination with airborne remote sensing image data products from the National Ecological Observatory Network (NEON). These data were captured by a high resolution digital camera sensitive to red, green, blue (RGB) light, hyperspectral imaging spectrometer spanning the visible to shortwave infrared wavelengths, and lidar systems to capture the spectral and structural properties of vegetation. As participants in the IDTReeS competition, we developed a two-stage deep learning approach to integrate NEON remote sensing data from all three sensors and classify individual plant species and genera. The first stage was a convolutional neural network that generates taxon probabilities from RGB images, and the second stage was a fusion neural network that "learns" how to combine these probabilities with hyperspectral and lidar data. Our two-stage approach leverages the ability of neural networks to flexibly and automatically extract descriptive features from complex image data with high dimensionality. Our method achieved an overall classification accuracy of 0.51 based on the training set, and 0.32 based on the test set which contained data from an unseen site with unknown taxa classes. Although transferability of classification algorithms to unseen sites with unknown species and genus classes proved to be a challenging task, developing methods with openly available NEON data that will be collected in a standardized format for 30 years allows for continual improvements and major gains for members of the computational ecology community. We outline promising directions related to data preparation and processing techniques for further investigation, and provide our code to contribute to open reproducible science efforts.
    Sprache Englisch
    Erscheinungsdatum 2021-07-29
    Erscheinungsland United States
    Dokumenttyp Journal Article
    ZDB-ID 2703241-3
    ISSN 2167-8359
    ISSN 2167-8359
    DOI 10.7717/peerj.11790
    Datenquelle MEDical Literature Analysis and Retrieval System OnLINE

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  2. Artikel: Integrating National Ecological Observatory Network (NEON) Airborne Remote Sensing and In-Situ Data for Optimal Tree Species Classification

    Scholl, Victoria M / Cattau, Megan E / Joseph, Maxwell B / Balch, Jennifer K

    Remote Sensing. 2020 Apr. 30, v. 12, no. 9

    2020  

    Abstract: Accurately mapping tree species composition and diversity is a critical step towards spatially explicit and species-specific ecological understanding. The National Ecological Observatory Network (NEON) is a valuable source of open ecological data across ... ...

    Abstract Accurately mapping tree species composition and diversity is a critical step towards spatially explicit and species-specific ecological understanding. The National Ecological Observatory Network (NEON) is a valuable source of open ecological data across the United States. Freely available NEON data include in-situ measurements of individual trees, including stem locations, species, and crown diameter, along with the NEON Airborne Observation Platform (AOP) airborne remote sensing imagery, including hyperspectral, multispectral, and light detection and ranging (LiDAR) data products. An important aspect of predicting species using remote sensing data is creating high-quality training sets for optimal classification purposes. Ultimately, manually creating training data is an expensive and time-consuming task that relies on human analyst decisions and may require external data sets or information. We combine in-situ and airborne remote sensing NEON data to evaluate the impact of automated training set preparation and a novel data preprocessing workflow on classifying the four dominant subalpine coniferous tree species at the Niwot Ridge Mountain Research Station forested NEON site in Colorado, USA. We trained pixel-based Random Forest (RF) machine learning models using a series of training data sets along with remote sensing raster data as descriptive features. The highest classification accuracies, 69% and 60% based on internal RF error assessment and an independent validation set, respectively, were obtained using circular tree crown polygons created with half the maximum crown diameter per tree. LiDAR-derived data products were the most important features for species classification, followed by vegetation indices. This work contributes to the open development of well-labeled training data sets for forest composition mapping using openly available NEON data without requiring external data collection, manual delineation steps, or site-specific parameters.
    Schlagwörter artificial intelligence ; automation ; data collection ; forests ; labor ; lidar ; models ; prediction ; raster data ; remote sensing ; species diversity ; tree crown ; trees ; vegetation index ; Colorado
    Sprache Englisch
    Erscheinungsverlauf 2020-0430
    Erscheinungsort Multidisciplinary Digital Publishing Institute
    Dokumenttyp Artikel
    ZDB-ID 2513863-7
    ISSN 2072-4292
    ISSN 2072-4292
    DOI 10.3390/rs12091414
    Datenquelle NAL Katalog (AGRICOLA)

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  3. Artikel: Democratizing macroecology: Integrating unoccupied aerial systems with the National Ecological Observatory Network

    Koontz, Michael J. / Scholl, Victoria M. / Spiers, Anna I. / Cattau, Megan E. / Adler, John / McGlinchy, Joseph / Goulden, Tristan / Melbourne, Brett A. / Balch, Jennifer K.

    Ecosphere. 2022 Aug., v. 13, no. 8

    2022  

    Abstract: Macroecology research seeks to understand ecological phenomena with causes and consequences that accumulate, interact, and emerge across scales spanning several orders of magnitude. Broad‐extent, fine‐grain information (i.e., high spatial resolution data ...

    Abstract Macroecology research seeks to understand ecological phenomena with causes and consequences that accumulate, interact, and emerge across scales spanning several orders of magnitude. Broad‐extent, fine‐grain information (i.e., high spatial resolution data over large areas) is needed to adequately capture these cross‐scale phenomena, but these data have historically been costly to acquire and process. Unoccupied aerial systems (UAS or drones carrying a sensor payload) and the National Ecological Observatory Network (NEON) make the broad‐extent, fine‐grain observational domain more accessible to researchers by lowering costs and reducing the need for highly specialized equipment. Integration of these tools can further democratize macroecological research, as their strengths and weaknesses are complementary. However, using these tools for macroecology can be challenging because mental models are lacking, thus requiring large up‐front investments in time, energy, and creativity to become proficient. This challenge inspired a working group of UAS‐using academic ecologists, NEON professionals, imaging scientists, remote sensing specialists, and aeronautical engineers at the 2019 NEON Science Summit in Boulder, Colorado, to synthesize current knowledge on how to use UAS with NEON in a mental model for an intended audience of ecologists new to these tools. Specifically, we provide (1) a collection of core principles for collecting high‐quality UAS data for NEON integration and (2) a case study illustrating a sample workflow for processing UAS data into meaningful ecological information and integrating it with NEON data collected on the ground—with the Terrestrial Observation System—and remotely—from the Airborne Observation Platform. With this mental model, we advance the democratization of macroecology by making a key observational domain—the broad‐extent, fine‐grain domain—more accessible via NEON/UAS integration.
    Schlagwörter case studies ; ecology ; energy ; equipment ; models ; Colorado
    Sprache Englisch
    Erscheinungsverlauf 2022-08
    Erscheinungsort John Wiley & Sons, Inc.
    Dokumenttyp Artikel
    Anmerkung JOURNAL ARTICLE
    ZDB-ID 2572257-8
    ISSN 2150-8925
    ISSN 2150-8925
    DOI 10.1002/ecs2.4206
    Datenquelle NAL Katalog (AGRICOLA)

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  4. Artikel ; Online: Data science competition for cross-site individual tree species identification from airborne remote sensing data.

    Graves, Sarah J / Marconi, Sergio / Stewart, Dylan / Harmon, Ira / Weinstein, Ben / Kanazawa, Yuzi / Scholl, Victoria M / Joseph, Maxwell B / McGlinchy, Joseph / Browne, Luke / Sullivan, Megan K / Estrada-Villegas, Sergio / Wang, Daisy Zhe / Singh, Aditya / Bohlman, Stephanie / Zare, Alina / White, Ethan P

    PeerJ

    2023  Band 11, Seite(n) e16578

    Abstract: Data on individual tree crowns from remote sensing have the potential to advance forest ecology by providing information about forest composition and structure with a continuous spatial coverage over large spatial extents. Classifying individual trees to ...

    Abstract Data on individual tree crowns from remote sensing have the potential to advance forest ecology by providing information about forest composition and structure with a continuous spatial coverage over large spatial extents. Classifying individual trees to their taxonomic species over large regions from remote sensing data is challenging. Methods to classify individual species are often accurate for common species, but perform poorly for less common species and when applied to new sites. We ran a data science competition to help identify effective methods for the task of classification of individual crowns to species identity. The competition included data from three sites to assess each methods' ability to generalize patterns across two sites simultaneously and apply methods to an untrained site. Three different metrics were used to assess and compare model performance. Six teams participated, representing four countries and nine individuals. The highest performing method from a previous competition in 2017 was applied and used as a baseline to understand advancements and changes in successful methods. The best species classification method was based on a two-stage fully connected neural network that significantly outperformed the baseline random forest and gradient boosting ensemble methods. All methods generalized well by showing relatively strong performance on the trained sites (accuracy = 0.46-0.55, macro F1 = 0.09-0.32, cross entropy loss = 2.4-9.2), but generally failed to transfer effectively to the untrained site (accuracy = 0.07-0.32, macro F1 = 0.02-0.18, cross entropy loss = 2.8-16.3). Classification performance was influenced by the number of samples with species labels available for training, with most methods predicting common species at the training sites well (maximum F1 score of 0.86) relative to the uncommon species where none were predicted. Classification errors were most common between species in the same genus and different species that occur in the same habitat. Most methods performed better than the baseline in detecting if a species was not in the training data by predicting an untrained mixed-species class, especially in the untrained site. This work has highlighted that data science competitions can encourage advancement of methods, particularly by bringing in new people from outside the focal discipline, and by providing an open dataset and evaluation criteria from which participants can learn.
    Mesh-Begriff(e) Humans ; Remote Sensing Technology ; Data Science ; Neural Networks, Computer ; Ecosystem
    Sprache Englisch
    Erscheinungsdatum 2023-12-21
    Erscheinungsland United States
    Dokumenttyp Journal Article
    ZDB-ID 2703241-3
    ISSN 2167-8359 ; 2167-8359
    ISSN (online) 2167-8359
    ISSN 2167-8359
    DOI 10.7717/peerj.16578
    Datenquelle MEDical Literature Analysis and Retrieval System OnLINE

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  5. Artikel: Preliminary Outcomes of Combined Treadmill and Overground High-Intensity Interval Training in Ambulatory Chronic Stroke.

    Boyne, Pierce / Doren, Sarah / Scholl, Victoria / Staggs, Emily / Whitesel, Dustyn / Carl, Daniel / Shatz, Rhonna / Sawyer, Russell / Awosika, Oluwole O / Reisman, Darcy S / Billinger, Sandra A / Kissela, Brett / Vannest, Jennifer / Dunning, Kari

    Frontiers in neurology

    2022  Band 13, Seite(n) 812875

    Abstract: Purpose: Locomotor high-intensity interval training (HIIT) is a promising intervention for stroke rehabilitation. However, overground translation of treadmill speed gains has been somewhat limited, some important outcomes have not been tested and ... ...

    Abstract Purpose: Locomotor high-intensity interval training (HIIT) is a promising intervention for stroke rehabilitation. However, overground translation of treadmill speed gains has been somewhat limited, some important outcomes have not been tested and baseline response predictors are poorly understood. This pilot study aimed to guide future research by assessing preliminary outcomes of combined overground and treadmill HIIT.
    Materials and methods: Ten participants >6 months post-stroke were assessed before and after a 4-week no-intervention control phase and a 4-week treatment phase involving 12 sessions of overground and treadmill HIIT.
    Results: Overground and treadmill gait function both improved during the treatment phase relative to the control phase, with overground speed changes averaging 61% of treadmill speed changes (95% CI: 33-89%). Moderate or larger effect sizes were observed for measures of gait performance, balance, fitness, cognition, fatigue, perceived change and brain volume. Participants with baseline comfortable gait speed <0.4 m/s had less absolute improvement in walking capacity but similar proportional and perceived changes.
    Conclusions: These findings reinforce the potential of locomotor HIIT research for stroke rehabilitation and provide guidance for more definitive studies. Based on the current results, future locomotor HIIT studies should consider including: (1) both overground and treadmill training; (2) measures of cognition, fatigue and brain volume, to complement typical motor and fitness assessment; and (3) baseline gait speed as a covariate.
    Sprache Englisch
    Erscheinungsdatum 2022-02-04
    Erscheinungsland Switzerland
    Dokumenttyp Journal Article
    ZDB-ID 2564214-5
    ISSN 1664-2295
    ISSN 1664-2295
    DOI 10.3389/fneur.2022.812875
    Datenquelle MEDical Literature Analysis and Retrieval System OnLINE

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  6. Artikel ; Online: Functional magnetic resonance brain imaging of imagined walking to study locomotor function after stroke.

    Boyne, Pierce / Doren, Sarah / Scholl, Victoria / Staggs, Emily / Whitesel, Dustyn / Maloney, Thomas / Awosika, Oluwole / Kissela, Brett / Dunning, Kari / Vannest, Jennifer

    Clinical neurophysiology : official journal of the International Federation of Clinical Neurophysiology

    2020  Band 132, Heft 1, Seite(n) 167–177

    Abstract: Objective: Imagined walking has yielded insights into normal locomotor control and could improve understanding of neurologic gait dysfunction. This study evaluated brain activation during imagined walking in chronic stroke.: Methods: Ten persons with ...

    Abstract Objective: Imagined walking has yielded insights into normal locomotor control and could improve understanding of neurologic gait dysfunction. This study evaluated brain activation during imagined walking in chronic stroke.
    Methods: Ten persons with stroke and 10 matched controls completed a walking test battery and a magnetic resonance imaging session including imagined walking and knee extension tasks. Brain activations were compared between tasks and groups. Associations between activations and composite gait score were also calculated, while controlling for lesion load.
    Results: Stroke and worse gait score were each associated with lesser overall brain activation during knee extension but greater overall activation during imagined walking. During imagined walking, the stroke group significantly activated the primary motor cortex lower limb region and cerebellar locomotor region. Better walking function was associated with less activation of these regions and greater activation of medial superior frontal gyrus area 9.
    Conclusions: Compared with knee extension, imagined walking was less sensitive to stroke-related deficits in brain activation but better at revealing compensatory changes, some of which could be maladaptive.
    Significance: The identified associations for imagined walking suggest potential neural mechanisms of locomotor adaptation after stroke, which could be useful for future intervention development and prognostication.
    Mesh-Begriff(e) Adult ; Aged ; Aged, 80 and over ; Brain/diagnostic imaging ; Brain/physiology ; Female ; Gait/physiology ; Humans ; Imagination/physiology ; Locomotion/physiology ; Magnetic Resonance Imaging ; Male ; Middle Aged ; Stroke/diagnostic imaging ; Stroke/physiopathology ; Walking/physiology
    Sprache Englisch
    Erscheinungsdatum 2020-11-21
    Erscheinungsland Netherlands
    Dokumenttyp Journal Article ; Research Support, N.I.H., Extramural ; Research Support, Non-U.S. Gov't
    ZDB-ID 1463630-x
    ISSN 1872-8952 ; 0921-884X ; 1388-2457
    ISSN (online) 1872-8952
    ISSN 0921-884X ; 1388-2457
    DOI 10.1016/j.clinph.2020.11.009
    Datenquelle MEDical Literature Analysis and Retrieval System OnLINE

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  7. Artikel ; Online: Locomotor training intensity after stroke: Effects of interval type and mode.

    Boyne, Pierce / Scholl, Victoria / Doren, Sarah / Carl, Daniel / Billinger, Sandra A / Reisman, Darcy S / Gerson, Myron / Kissela, Brett / Vannest, Jennifer / Dunning, Kari

    Topics in stroke rehabilitation

    2020  Band 27, Heft 7, Seite(n) 483–493

    Abstract: Background and ... ...

    Abstract Background and Objectives
    Mesh-Begriff(e) Aged ; Exercise Therapy/methods ; Female ; Gait Disorders, Neurologic/etiology ; Gait Disorders, Neurologic/rehabilitation ; High-Intensity Interval Training/methods ; Humans ; Male ; Middle Aged ; Paresis/etiology ; Paresis/rehabilitation ; Stroke/complications ; Stroke/therapy ; Stroke Rehabilitation/methods ; Treatment Outcome
    Sprache Englisch
    Erscheinungsdatum 2020-02-16
    Erscheinungsland England
    Dokumenttyp Journal Article ; Research Support, N.I.H., Extramural ; Research Support, Non-U.S. Gov't
    ZDB-ID 1213112-x
    ISSN 1945-5119 ; 1074-9357
    ISSN (online) 1945-5119
    ISSN 1074-9357
    DOI 10.1080/10749357.2020.1728953
    Datenquelle MEDical Literature Analysis and Retrieval System OnLINE

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  8. Artikel ; Online: Ten simple rules for working with high resolution remote sensing data

    Mahood, Adam L. / Joseph, Maxwell B. / Spiers, Anna I. / Koontz, Michael J. / Ilangakoon, Nayani / Solvik, Kylen K. / Quarderer, Nathan / McGlinchy, Joe / Scholl, Victoria M. / St. Denis, Lise A. / Nagy, Chelsea / Braswell, Anna / Rossi, Matthew W. / Herwehe, Lauren / Wasser, Leah / Cattau, Megan E. / Iglesias, Virginia / Yao, Fangfang / Leyk, Stefan /
    Balch, Jennifer K.

    Peer Community Journal, Vol 3, Iss , Pp - (2023)

    2023  

    Abstract: Researchers in Earth and environmental science can extract incredible value from high- resolution (sub-meter, sub-hourly or hyper-spectral) remote sensing data, but these data can be difficult to use. Correct, appropriate and competent use of such data ... ...

    Abstract Researchers in Earth and environmental science can extract incredible value from high- resolution (sub-meter, sub-hourly or hyper-spectral) remote sensing data, but these data can be difficult to use. Correct, appropriate and competent use of such data requires skills from remote sensing and the data sciences that are rarely taught together. In practice, many researchers teach themselves how to use high-resolution remote sensing data with ad hoc trial and error processes, often resulting in wasted effort and resources. In order to implement a consistent strategy, we outline ten rules with examples from Earth and environmental science to help academic researchers and professionals in industry work more effectively and competently with high-resolution data.
    Schlagwörter Archaeology ; CC1-960 ; Science ; Q
    Sprache Englisch
    Erscheinungsdatum 2023-01-01T00:00:00Z
    Verlag Peer Community In
    Dokumenttyp Artikel ; Online
    Datenquelle BASE - Bielefeld Academic Search Engine (Lebenswissenschaftliche Auswahl)

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  9. Artikel: Harnessing the NEON data revolution to advance open environmental science with a diverse and data‐capable community

    Nagy, R. Chelsea / Balch, Jennifer K. / Bissell, Erin K. / Cattau, Megan E. / Glenn, Nancy F. / Halpern, Benjamin S. / Ilangakoon, Nayani / Johnson, Brian / Joseph, Maxwell B. / Marconi, Sergio / O’Riordan, Catherine / Sanovia, James / Swetnam, Tyson L. / Travis, William R. / Wasser, Leah A. / Woolner, Elizabeth / Zarnetske, Phoebe / Abdulrahim, Mujahid / Adler, John /
    Barnes, Grenville / Bartowitz, Kristina J. / Blake, Rachael E. / Bombaci, Sara P. / Brun, Julien / Buchanan, Jacob D. / Chadwick, K. Dana / Chapman, Melissa S. / Chong, Steven S. / Chung, Y. Anny / Corman, Jessica R. / Couret, Jannelle / Crispo, Erika / Doak, Thomas G. / Donnelly, Alison / Duffy, Katharyn A. / Dunning, Kelly H. / Duran, Sandra M. / Edmonds, Jennifer W. / Fairbanks, Dawson E. / Felton, Andrew J. / Florian, Christopher R. / Gann, Daniel / Gebhardt, Martha / Gill, Nathan S. / Gram, Wendy K. / Guo, Jessica S. / Harvey, Brian J. / Hayes, Katherine R. / Helmus, Matthew R. / Hensley, Robert T. / Hondula, Kelly L. / Huang, Tao / Hundertmark, Wiley J. / Iglesias, Virginia / Jacinthe, Pierre‐Andre / Jansen, Lara S. / Jarzyna, Marta A. / Johnson, Tiona M. / Jones, Katherine D. / Jones, Megan A. / Just, Michael G. / Kaddoura, Youssef O. / Kagawa‐Vivani, Aurora K. / Kaushik, Aleya / Keller, Adrienne B. / King, Katelyn B. S. / Kitzes, Justin / Koontz, Michael J. / Kouba, Paige V. / Kwan, Wai‐Yin / LaMontagne, Jalene M. / LaRue, Elizabeth A. / Li, Daijiang / Li, Bonan / Lin, Yang / Liptzin, Daniel / Long, William Alex / Mahood, Adam L. / Malloy, Samuel S. / Malone, Sparkle L. / McGlinchy, Joseph M. / Meier, Courtney L. / Melbourne, Brett A. / Mietkiewicz, Nathan / Morisette, Jeffery T. / Moustapha, Moussa / Muscarella, Chance / Musinsky, John / Muthukrishnan, Ranjan / Naithani, Kusum / Neely, Merrie / Norman, Kari / Parker, Stephanie M. / Perez Rocha, Mariana / Petri, Laís / Ramey, Colette A. / Record, Sydne / Rossi, Matthew W. / SanClements, Michael / Scholl, Victoria M. / Schweiger, Anna K. / Seyednasrollah, Bijan / Sihi, Debjani / Smith, Kathleen R. / Sokol, Eric R. / Spaulding, Sarah A. / Spiers, Anna I. / St. Denis, Lise A. / Staccone, Anika P. / Stack Whitney, Kaitlin / Stanitski, Diane M. / Stricker, Eva / Surasinghe, Thilina D. / Thomsen, Sarah K. / Vasek, Patrisse M. / Xiaolu, Li / Yang, Di / Yu, Rong / Yule, Kelsey M. / Zhu, Kai

    Ecosphere. 2021 Dec., v. 12, no. 12

    2021  

    Abstract: It is a critical time to reflect on the National Ecological Observatory Network (NEON) science to date as well as envision what research can be done right now with NEON (and other) data and what training is needed to enable a diverse user community. NEON ...

    Abstract It is a critical time to reflect on the National Ecological Observatory Network (NEON) science to date as well as envision what research can be done right now with NEON (and other) data and what training is needed to enable a diverse user community. NEON became fully operational in May 2019 and has pivoted from planning and construction to operation and maintenance. In this overview, the history of and foundational thinking around NEON are discussed. A framework of open science is described with a discussion of how NEON can be situated as part of a larger data constellation—across existing networks and different suites of ecological measurements and sensors. Next, a synthesis of early NEON science, based on >100 existing publications, funded proposal efforts, and emergent science at the very first NEON Science Summit (hosted by Earth Lab at the University of Colorado Boulder in October 2019) is provided. Key questions that the ecology community will address with NEON data in the next 10 yr are outlined, from understanding drivers of biodiversity across spatial and temporal scales to defining complex feedback mechanisms in human–environmental systems. Last, the essential elements needed to engage and support a diverse and inclusive NEON user community are highlighted: training resources and tools that are openly available, funding for broad community engagement initiatives, and a mechanism to share and advertise those opportunities. NEON users require both the skills to work with NEON data and the ecological or environmental science domain knowledge to understand and interpret them. This paper synthesizes early directions in the community’s use of NEON data, and opportunities for the next 10 yr of NEON operations in emergent science themes, open science best practices, education and training, and community building.
    Schlagwörter biodiversity ; education ; environmental science ; Colorado
    Sprache Englisch
    Erscheinungsverlauf 2021-12
    Erscheinungsort John Wiley & Sons, Ltd
    Dokumenttyp Artikel
    Anmerkung JOURNAL ARTICLE
    ZDB-ID 2572257-8
    ISSN 2150-8925
    ISSN 2150-8925
    DOI 10.1002/ecs2.3833
    Datenquelle NAL Katalog (AGRICOLA)

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