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<!DOCTYPE article SYSTEM "http://www.atmos-chem-phys-discuss.net/inc/acpd/copernicus.dtd">
<article language="en">
	<journal>
		<journal_title>Atmospheric Chemistry and Physics Discussions</journal_title>
		<journal_url>www.atmos-chem-phys-discuss.net</journal_url>
		<issn>1680-7367</issn>
		<eissn>1680-7375</eissn>
		<volume_number>3</volume_number>
		<issue_number>5</issue_number>
		<publication_year>2003</publication_year>
	</journal>
	<doi>10.5194/acpd-3-5185-2003</doi>
	<article_url>http://www.atmos-chem-phys-discuss.net/3/5185/2003/</article_url>
	<abstract_html>http://www.atmos-chem-phys-discuss.net/3/5185/2003/acpd-3-5185-2003.html</abstract_html>
	<fulltext_pdf>http://www.atmos-chem-phys-discuss.net/3/5185/2003/acpd-3-5185-2003.pdf</fulltext_pdf>
	<start_page>5185</start_page>
	<end_page>5204</end_page>
	<publication_date>2003-10-16</publication_date>
	<article_title content_type="html">Optimizing CO&lt;sub&gt;2&lt;/sub&gt; observing networks in the presence of model error: results from TransCom 3</article_title>
	<authors>
		<author numeration="1" affiliations="1">
			<name>P. J. Rayner</name>
		</author>
	</authors>
	<affiliations>
		<affiliation numeration="1" content_type="html">CSIRO Atmospheric Research, Melbourne, Australia</affiliation>
	</affiliations>
	<abstract content_type="html">We use a genetic algorithm to construct optimal observing networks  of atmospheric
      CO&lt;sub&gt;2&lt;/sub&gt; concentration for inverse determination of net  sources.  Optimal networks are those that produce a minimum in  average posterior uncertainty plus a term representing the divergence  among source estimates for different transport models.  The addition of this  last term  modifies the choice of observing sites, leading to  larger networks than would be chosen under the traditional  estimated variance metric. Model-model differences behave like
      sub-grid heterogeneity and optimal networks try to average over some  of  this.
      The optimization does not, however,  necessarily reject apparently difficult sites to model.  Although the results  are so conditioned on the experimental set-up that the specific  networks chosen are unlikely to be the best choices in the real  world, the counter-intuitive behaviour of the optimization suggests  the model error contribution should be taken into account when  designing observing networks.  Finally we  compare the flux and total uncertainty  estimates from the optimal network with those from  the
      TransCom 3 control case. The comparison suggests that the TransCom 3 control case is robust.</abstract>
	<references>
	</references>
</article>

