Works Published in 2016

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Displaying works 41 - 60 of 228 in total

Sorted by most recent date added to the index first, which may not be the same as publication date order.

2016 journal article

The Theory and Practice of Citizen Science: Launching a New Journal

Citizen Science: Theory and Practice, 1(1), 1.

Source: ORCID
Added: October 15, 2020

2016 article

River profile response to normal fault growth and linkage: An example from the Hellenic forearc of south-central Crete, Greece

Gallen, S. F., & Wegmann, K. W. (2016, November 8). (Vol. 11). Vol. 11.

By: S. Gallen & K. Wegmann*

UN Sustainable Development Goal Categories
14. Life Below Water (OpenAlex)
Source: ORCID
Added: September 22, 2020

2016 journal article

Paleotopography and erosion rates in the central Hangay Dome, Mongolia: Landscape evolution since the mid-Miocene

Journal of Asian Earth Sciences, 125, 37–57.

By: S. Smith n, K. Wegmann n, L. Ancuta*, J. Gosse* & C. Hopkins*

Source: ORCID
Added: September 22, 2020

2016 journal article

Source-to-sink sedimentary systems and global carbon burial: A river runs through it

Earth-Science Reviews, 153, 30–42.

By: E. Leithold n, N. Blair* & K. Wegmann n

UN Sustainable Development Goal Categories
14. Life Below Water (OpenAlex)
Source: ORCID
Added: September 22, 2020

2016 journal article

A new seasonal-deciduous spring phenology submodel in the Community Land Model 4.5: impacts on carbon and water cycling under future climate scenarios

Global Change Biology, 22(11), 3675–3688.

author keywords: carbon cycle; climate change; Community Land Model; ecosystem services; PhenoCam; phenology; water
MeSH headings : Carbon; Climate; Forests; Seasons; Trees
TL;DR: The revised model substantially outperformed the standard CLM seasonal-deciduous spring phenology submodel and does a better job of representing recent (decadal) phenological trends observed globally by MODIS, as well as long-term trends in the PEP725 European phenology dataset. (via Semantic Scholar)
Sources: Crossref, NC State University Libraries
Added: September 16, 2020

2016 journal article

Species traits and catchment-scale habitat factors influence the occurrence of freshwater mussel populations and assemblages

Freshwater Biology, 61(10), 1671–1684.

By: T. Pandolfo n, T. Kwak n, W. Cope n, R. Heise*, R. Nichols* & K. Pacifici n

author keywords: Bayesian hierarchical modelling; imperfect detection; rare species; species richness; unionid
TL;DR: Catchment-scale abiotic variables and species traits influenced the occurrence of mussel assemblages more than reach- or microhabitat-scale features and indicate that habitat restoration alone may not be adequate for mussel conservation. (via Semantic Scholar)
UN Sustainable Development Goal Categories
14. Life Below Water (Web of Science)
15. Life on Land (Web of Science; OpenAlex)
Sources: Crossref, NC State University Libraries
Added: September 15, 2020

2016 journal article

Use of Limited Data to Model Lake Water Clarity from Remote Sensed Data in Lake Mattamuskeet, North Carolina

Journal of Earth Science Research, 12, 43–54.

By: S. Ozen, S. Nelson*, S. Khorra, M. Moorman & H. Cakir

Sources: Crossref, NC State University Libraries
Added: September 13, 2020

2016 chapter

Processing and Applications of Remotely Sensed Data

In Handbook of Satellite Applications (pp. 1–30).

By: S. Khorram, S. Nelson*, C. van der Wiele & H. Cakir

Sources: Crossref, NC State University Libraries
Added: September 13, 2020

2016 chapter

Fundamentals of Remote Sensing Imaging and Preliminary Analysis

In Handbook of Satellite Applications (pp. 1–36).

By: S. Khorram*, S. Nelson n, C. van der Wiele* & H. Cakir*

Sources: Crossref, NC State University Libraries
Added: September 13, 2020

2016 book

Principles of Applied Remote Sensing

By: S. Khorram*, C. van der Wiele*, F. Koch*, S. Nelson n & M. Potts*

Sources: Crossref, NC State University Libraries
Added: September 13, 2020

2016 journal article

Restoring forest structure and process stabilizes forest carbon in wildfire-prone southwestern ponderosa pine forests

Ecological Applications, 26(2), 382–391.

author keywords: climate change mitigation; forest carbon; forest restoration; LANDIS-II; ponderosa pine; wildfire
MeSH headings : Arizona; Carbon / physiology; Computer Simulation; Fires; Forests; Models, Biological; Pinus ponderosa / physiology
TL;DR: It is found that thinning and burning treatments initially reduced total ecosystem carbon (TEC) and increased net ecosystem carbon balance (NECB) in the absence of wildfire, but in the presence of wildfire this reversed and TEC increased by both mean wildfire severity and its variability. (via Semantic Scholar)
Sources: Crossref, NC State University Libraries
Added: September 4, 2020

2016 journal article

Wildfire risk as a socioecological pathology

Frontiers in Ecology and the Environment, 14(5), 276–284.

By: A. Fischer*, T. Spies*, T. Steelman*, C. Moseley*, B. Johnson*, J. Bailey*, A. Ager*, P. Bourgeron* ...

UN Sustainable Development Goal Categories
15. Life on Land (OpenAlex)
Source: Crossref
Added: February 24, 2020

2016 journal article

Multisite analysis of land surface phenology in North American temperate and boreal deciduous forests from Landsat

Remote Sensing of Environment, 186, 452–464.

By: E. Melaas*, D. Sulla-Menashe*, J. Gray*, T. Black*, T. Morin*, A. Richardson*, M. Friedl*

author keywords: Landsat; Phenology; PhenoCam; Eddy covariance; Temperate forests; Boreal forests
Sources: Crossref, NC State University Libraries
Added: February 24, 2020

2016 chapter

Soundscapes and Larval Settlement: Characterizing the Stimulus from a Larval Perspective

In The Effects of Noise on Aquatic Life II (pp. 637–645).

By: A. Lillis n, D. Eggleston n & D. Bohnenstiehl n

author keywords: Estuarine sounds; Acoustic cue; Drifting hydrophone; Bivalve settlement
MeSH headings : Acoustic Stimulation; Acoustics; Animals; Ecosystem; Larva / physiology; Models, Theoretical; Ostreidae; Sound
TL;DR: An overview of the approaches developed to characterize an estuarine soundscape as it relates to larval processes is provided, and a conceptual framework is provided for how habitat-related sounds may influence larval settlement, using oyster reef soundscapes as an example. (via Semantic Scholar)
UN Sustainable Development Goal Categories
14. Life Below Water (Web of Science; OpenAlex)
Source: Crossref
Added: February 24, 2020

2016 chapter

Soundscapes and Larval Settlement: Larval Bivalve Responses to Habitat-Associated Underwater Sounds

In The Effects of Noise on Aquatic Life II (pp. 255–263).

By: D. Eggleston n, A. Lillis n & D. Bohnenstiehl n

author keywords: Clams; Estuarine soundscape; Habitat-specific sounds; Larval settlement; Oysters
MeSH headings : Animals; Crassostrea / physiology; Ecosystem; Larva / physiology; Mercenaria / physiology; Seawater; Sound
TL;DR: Field experiments showed that oyster larval settlement in "larval housings" suspended above oyster reefs was significantly higher compared with off-reef sites, and clam larval settlements did not vary according to sound treatments. (via Semantic Scholar)
UN Sustainable Development Goal Categories
14. Life Below Water (Web of Science; OpenAlex)
Source: Crossref
Added: February 24, 2020

2016 journal article

Comment

Journal of the American Statistical Association, 111(515), 936–942.

By: Q. Guan n, E. Laber n & B. Reich n

TL;DR: It is argued that NPB methods can have tremendous value as an engine for policy-search algorithms used to estimate an optimal treatment regime within a prespecified class, and may possess a number of advantages over existing methods in the context of policy- search algorithms. (via Semantic Scholar)
Sources: Crossref, NC State University Libraries
Added: February 24, 2020

2016 journal article

Mapping Magnetic Ordering With Aberrated Electron Probes in STEM

Microscopy and Microanalysis, 22(S3), 1676–1677.

Sources: Crossref, NC State University Libraries
Added: February 21, 2020

2016 journal article

Detecting Extreme Events in Gridded Climate Data

Procedia Computer Science, 80, 2397–2401.

By: B. Ramachandra n, K. Gadiraju n, R. Vatsavai n, D. Kaiser* & T. Karnowski*

author keywords: spatio-temporal; co-location; anomaly detection; trend analysis
TL;DR: This paper presents their computationally efficient algorithms for anomalous cluster detection on climate change big data, and provides results on detection and tracking of surface temperature and geopotential height anomalies, a trend analysis, and a study of relationships between the variables. (via Semantic Scholar)
UN Sustainable Development Goal Categories
13. Climate Action (OpenAlex)
Sources: Crossref, NC State University Libraries
Added: February 21, 2020

2016 journal article

Sliding Window-based Probabilistic Change Detection for Remote-sensed Images

Procedia Computer Science, 80, 2348–2352.

author keywords: Probabilistic Change Detection; Satellite Image Processing; Spatial Data Mining; Sliding Window; GMM
TL;DR: This study proposes a sliding window-based extension of the probabilistic change detection approach to overcome artificial limitations of grid (patch)-based change detection. (via Semantic Scholar)
UN Sustainable Development Goal Categories
13. Climate Action (Web of Science)
15. Life on Land (Web of Science)
Sources: Crossref, NC State University Libraries
Added: February 21, 2020

2016 journal article

Understanding the complexity of project team member selection through agent-based modeling

International Journal of Project Management, 34(1), 82–93.

By: S. Hsu*, K. Weng*, Q. Cui* & W. Rand*

Contributors: S. Hsu*, K. Weng*, Q. Cui* & W. Rand*

author keywords: Team member selection; Diversity; Interdependence; Complexity; Agent-based modeling
TL;DR: Agent-Based Modeling is utilized to understand the complexity of project team member selection and to examine how the functional diversity of teams and worker interdependence affect team performance in different economic conditions. (via Semantic Scholar)
Sources: Crossref, NC State University Libraries, ORCID
Added: February 21, 2020

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