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<div class="nonumtoc">__TOC__</div>
'''Title''': ''The Laboratories of Our Lives: Labs, Labs Everywhere!''
{{ombox
| type      = notice
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| text      = This is sublevel2 of my sandbox, where I play with features and test MediaWiki code. If you wish to leave a comment for me, please see [[User_talk:Shawndouglas|my discussion page]] instead.<p></p>
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'''Author for citation''': Shawn E. Douglas
==Sandbox begins below==
{{Infobox journal article
|name        =
|image        =
|alt          = <!-- Alternative text for images -->
|caption      =
|title_full  = CÆLIS: Software for assimilation, management, and processing data of an atmospheric measurement network
|journal      = ''Geoscientific Instrumentation, Methods and Data Systems''
|authors      = Fuertes, David; Toledano, Carlos; González, Ramiro; Berjón, Alberto; Torres, Benjamin; Cachorro, Victoria E.; de Frutos, Ángel M.
|affiliations = University of Valladolid, GRASP SAS
|contact      = Email: david at goa dot uva dot es
|editors      =
|pub_year    = 2018
|vol_iss      = '''7'''(1)
|pages        = 67–81
|doi          = [http://10.5194/gi-7-67-2018 10.5194/gi-7-67-2018]
|issn        = 21930864
|license      = [http://creativecommons.org/licenses/by/4.0/ Creative Commons Attribution 4.0 International]
|website      = [https://www.geosci-instrum-method-data-syst.net/7/67/2018/ https://www.geosci-instrum-method-data-syst.net/7/67/2018/]
|download    = [https://www.geosci-instrum-method-data-syst.net/7/67/2018/gi-7-67-2018.pdf https://www.geosci-instrum-method-data-syst.net/7/67/2018/gi-7-67-2018.pdf] (PDF)
}}
{{ombox
| type      = content
| style    = width: 500px;
| text      = This article should not be considered complete until this message box has been removed. This is a work in progress.
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==Abstract==
Given the importance of atmospheric aerosols, the number of instruments and measurement networks which focus on its characterization is growing. Many challenges are derived from standardization of protocols, monitoring of instrument status to evaluate network data quality, and manipulation and distribution of large volumes of data (raw and processed). CÆLIS is a software system which aims to simplify the management of a network, providing the scientific community a new tool for monitoring instruments, processing data in real time, and working with the data. Since 2008, CÆLIS has been successfully applied to the photometer calibration facility managed by the University of Valladolid, Spain, under the framework of the Aerosol Robotic Network (AERONET). Thanks to the use of advanced tools, this facility has been able to analyze a growing number of stations and data in real time, which greatly benefits network management and data quality control. The work describes the system architecture of CÆLIS and gives some examples of applications and data processing.


'''License for content''': [https://creativecommons.org/licenses/by-sa/4.0/ Creative Commons Attribution-ShareAlike 4.0 International]
==Introduction==
Atmospheric aerosols are defined as solid or liquid particles suspended in the atmosphere. Many studies have shown the importance of aerosols, which play an important role in global energy balance and human activities. Among their direct impacts, aerosol particles produce radiative forcing in the atmosphere, provide nutrients for oceans, and affect human health. Aerosols generally produce a cooling effect, although an aerosol can also locally warm up the atmosphere depending on its type, height above the surface, and timescale under consideration. Indirectly, they change the chemical composition of clouds and therefore their radiative properties, lifetime, and precipitation. Improving knowledge about the distribution and composition of aerosols is one of the emerging challenges highlighted by the last IPCC report<ref name="IPCCClimate13">{{cite book |title=Climate Change 2013 – The Physical Science Basis: Working Group I Contribution to the Fifth Assessment Report of the Intergovernmental Panel on Climate Change |author=Intergovernmental Panel on Climate Change |publisher=Cambridge University Press |year=2014 |isbn=9781107415324 |doi=10.1017/CBO9781107415324}}</ref>, where it is shown that they have the largest uncertainty for the estimates and interpretations of the Earth’s changing energy budget.


'''Publication date''': TBD 2017
Ground-based and orbital instruments have been applied to monitor aerosol properties. Combining instruments is also possible to maximally exploit synergies. For example, satellites have demonstrated the potential of high spatial coverage and resolution, and standardized ground-based networks have the benefit of high accuracy. A common exercise is to validate satellite data with ground-based networks.


One of these ground-based networks is the Aerosol Robotic Network (AERONET).<ref name="HolbenAERONET98">{{cite journal |title=AERONET—A Federated Instrument Network and Data Archive for Aerosol Characterization |journal=Remote Sensing of Environment |author=Holben, B.N.; Eck, T.F.; Slutsker, I. et al. |volume=66 |issue=1 |pages=1–16 |year=1998 |doi=10.1016/S0034-4257(98)00031-5}}</ref> Led by NASA (National Aeronautics and Space Administration; http://aerosnet.gsfc.nasa.gov) and PHOTONS (PHOtométrie pour le Traitement Opérationnel de Normalisation Satellitaire; http://loaphotons.univ-lille1.fr/), AERONET is built as a federation of sub-networks with highly standardized procedures: instrument, calibration, processing, and data distribution. It was created in the 1990s with the objective of global monitoring of aerosol optical properties from the ground, as well as validating satellite retrievals of aerosols. The standard instrument used by the network is the photometer Cimel318. It is an automatic filter radiometer with a two-axis robot and nine spectral channels covering the spectral range of 340 to 1640 nm. It collects direct solar and lunar measurements, sky radiances in the almucantar and principal planes, and hybrid geometrical configurations. Once the data are validated through instrument status and cloud screening, aerosol optical depth (AOD) can be obtained as a direct product of the nine wavelengths. Using inversion algorithms<ref name="DubovikAFlex00">{{cite journal |title=A flexible inversion algorithm for retrieval of aerosol optical properties from Sun and sky radiance measurements |journal=Journal of Geophysical Research: Atmospheres |author=Dubovik, O.; King, M.D. |volume=105 |issue=D16 |pages=20673-20696 |year=2000 |doi=10.1029/2000JD900282}}</ref><ref name="DubovikApp06">{{cite journal |title=Application of spheroid models to account for aerosol particle nonsphericity in remote sensing of desert dust |journal=Journal of Geophysical Research: Atmospheres |author=Dubovik, O.; Sinyuk, A.; Lapyonok, T. et al. |volume=111 |issue=D11 |year=2006 |doi=10.1029/2005JD006619 }}</ref>, many other parameters can be retrieved, such as size distribution, complex refractive index, portion of spherical particles, and single-scattering albedo.


This guide takes a look at the laboratories that up-front — and more often, behind-the-scenes — intersect our lives on a daily basis. This guide includes laboratory history, an evaluative and contextual framework for understanding laboratories' roles in our lives, analysis of 20 different industry lab types, and closing remarks.
==References==
{{Reflist|colwidth=30em}}


The table of contents for ''The Laboratories of Our Lives: Labs, Labs Everywhere!'' is as follows:
==Notes==
This presentation is faithful to the original, with only a few minor changes to presentation. Grammar was cleaned up for smoother reading. In some cases important information was missing from the references, and that information was added. The original article lists references alphabetically, but this version—by design—lists them in order of appearance. 


 
<!--Place all category tags here-->
1. [[User:Shawndouglas/sandbox/sublevel5|Laboratories: A historical perspective]]
[[Category:LIMSwiki journal articles (added in 2018)‎]]
 
[[Category:LIMSwiki journal articles (all)‎]]
:1.1 Introduction
[[Category:LIMSwiki journal articles on data management and sharing]]
:1.2 Origins of the laboratory
[[Category:LIMSwiki journal articles on environmental informatics]]
:1.3 Eighteenth- and nineteenth-century laboratories
[[Category:LIMSwiki journal articles on software]]
:1.4 Modern laboratories and their importance
 
2. [[User:Shawndouglas/sandbox/sublevel6|A framework for the laboratories in our lives]]
 
:2.1 The framework
 
3. [[User:Shawndouglas/sandbox/sublevel8|Labs by industry: Part 1]]
 
:3.1 Labs by industry: Part 1
::3.1.1 Agriculture and forestry
::3.1.2 Automotive, aerospace, and marine
::3.1.3 Calibration and standards
::3.1.4 Chemical
::3.1.5 Clinical, public and private
 
4. [[User:Shawndouglas/sandbox/sublevel9|Labs by industry: Part 2]]
 
:4.1 Labs by industry: Part 2
::4.1.1 Clinical and academic research
::4.1.2 Cosmetic
::4.1.3 Energy
::4.1.4 Environmental
::4.1.5 Food and beverage
 
5. [[User:Shawndouglas/sandbox/sublevel10|Labs by industry: Part 3]]
 
:5.1 Labs by industry: Part 3
::5.1.1 Geology and mining
::5.1.2 Law enforcement and forensics
::5.1.3 Life sciences and biotechnology
::5.1.4 Logistics
::5.1.5 Manufacturing and R&D
 
6. [[User:Shawndouglas/sandbox/sublevel11|Labs by industry: Part 4]]
 
:6.1 Labs by industry: Part 4
::6.1.1 Nanotechnology
::6.1.2 Petrochemical
::6.1.3 Pharmaceutical
::6.1.4 Power and utility
::6.1.5 Veterinary
 
7. [[User:Shawndouglas/sandbox/sublevel12|Discussion and closing remarks]]
 
:7.1 Discussion
:7.2 Closing remarks

Revision as of 22:33, 16 August 2018

Sandbox begins below

Full article title CÆLIS: Software for assimilation, management, and processing data of an atmospheric measurement network
Journal Geoscientific Instrumentation, Methods and Data Systems
Author(s) Fuertes, David; Toledano, Carlos; González, Ramiro; Berjón, Alberto; Torres, Benjamin; Cachorro, Victoria E.; de Frutos, Ángel M.
Author affiliation(s) University of Valladolid, GRASP SAS
Primary contact Email: david at goa dot uva dot es
Year published 2018
Volume and issue 7(1)
Page(s) 67–81
DOI 10.5194/gi-7-67-2018
ISSN 21930864
Distribution license Creative Commons Attribution 4.0 International
Website https://www.geosci-instrum-method-data-syst.net/7/67/2018/
Download https://www.geosci-instrum-method-data-syst.net/7/67/2018/gi-7-67-2018.pdf (PDF)

Abstract

Given the importance of atmospheric aerosols, the number of instruments and measurement networks which focus on its characterization is growing. Many challenges are derived from standardization of protocols, monitoring of instrument status to evaluate network data quality, and manipulation and distribution of large volumes of data (raw and processed). CÆLIS is a software system which aims to simplify the management of a network, providing the scientific community a new tool for monitoring instruments, processing data in real time, and working with the data. Since 2008, CÆLIS has been successfully applied to the photometer calibration facility managed by the University of Valladolid, Spain, under the framework of the Aerosol Robotic Network (AERONET). Thanks to the use of advanced tools, this facility has been able to analyze a growing number of stations and data in real time, which greatly benefits network management and data quality control. The work describes the system architecture of CÆLIS and gives some examples of applications and data processing.

Introduction

Atmospheric aerosols are defined as solid or liquid particles suspended in the atmosphere. Many studies have shown the importance of aerosols, which play an important role in global energy balance and human activities. Among their direct impacts, aerosol particles produce radiative forcing in the atmosphere, provide nutrients for oceans, and affect human health. Aerosols generally produce a cooling effect, although an aerosol can also locally warm up the atmosphere depending on its type, height above the surface, and timescale under consideration. Indirectly, they change the chemical composition of clouds and therefore their radiative properties, lifetime, and precipitation. Improving knowledge about the distribution and composition of aerosols is one of the emerging challenges highlighted by the last IPCC report[1], where it is shown that they have the largest uncertainty for the estimates and interpretations of the Earth’s changing energy budget.

Ground-based and orbital instruments have been applied to monitor aerosol properties. Combining instruments is also possible to maximally exploit synergies. For example, satellites have demonstrated the potential of high spatial coverage and resolution, and standardized ground-based networks have the benefit of high accuracy. A common exercise is to validate satellite data with ground-based networks.

One of these ground-based networks is the Aerosol Robotic Network (AERONET).[2] Led by NASA (National Aeronautics and Space Administration; http://aerosnet.gsfc.nasa.gov) and PHOTONS (PHOtométrie pour le Traitement Opérationnel de Normalisation Satellitaire; http://loaphotons.univ-lille1.fr/), AERONET is built as a federation of sub-networks with highly standardized procedures: instrument, calibration, processing, and data distribution. It was created in the 1990s with the objective of global monitoring of aerosol optical properties from the ground, as well as validating satellite retrievals of aerosols. The standard instrument used by the network is the photometer Cimel318. It is an automatic filter radiometer with a two-axis robot and nine spectral channels covering the spectral range of 340 to 1640 nm. It collects direct solar and lunar measurements, sky radiances in the almucantar and principal planes, and hybrid geometrical configurations. Once the data are validated through instrument status and cloud screening, aerosol optical depth (AOD) can be obtained as a direct product of the nine wavelengths. Using inversion algorithms[3][4], many other parameters can be retrieved, such as size distribution, complex refractive index, portion of spherical particles, and single-scattering albedo.

References

  1. Intergovernmental Panel on Climate Change (2014). Climate Change 2013 – The Physical Science Basis: Working Group I Contribution to the Fifth Assessment Report of the Intergovernmental Panel on Climate Change. Cambridge University Press. doi:10.1017/CBO9781107415324. ISBN 9781107415324. 
  2. Holben, B.N.; Eck, T.F.; Slutsker, I. et al. (1998). "AERONET—A Federated Instrument Network and Data Archive for Aerosol Characterization". Remote Sensing of Environment 66 (1): 1–16. doi:10.1016/S0034-4257(98)00031-5. 
  3. Dubovik, O.; King, M.D. (2000). "A flexible inversion algorithm for retrieval of aerosol optical properties from Sun and sky radiance measurements". Journal of Geophysical Research: Atmospheres 105 (D16): 20673-20696. doi:10.1029/2000JD900282. 
  4. Dubovik, O.; Sinyuk, A.; Lapyonok, T. et al. (2006). "Application of spheroid models to account for aerosol particle nonsphericity in remote sensing of desert dust". Journal of Geophysical Research: Atmospheres 111 (D11). doi:10.1029/2005JD006619. 

Notes

This presentation is faithful to the original, with only a few minor changes to presentation. Grammar was cleaned up for smoother reading. In some cases important information was missing from the references, and that information was added. The original article lists references alphabetically, but this version—by design—lists them in order of appearance.