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<!DOCTYPE article SYSTEM "http://www.hydrol-earth-syst-sci.net/inc/hess/copernicus.dtd">
<article language="en">
	<journal>
		<journal_title>Hydrology and Earth System Sciences</journal_title>
		<journal_url>www.hydrol-earth-syst-sci.net</journal_url>
		<issn>1027-5606</issn>
		<eissn>1607-7938</eissn>
		<volume_number>7</volume_number>
		<issue_number>6</issue_number>
		<publication_year>2003</publication_year>
	</journal>
	<doi>10.5194/hess-7-937-2003</doi>
	<article_url>http://www.hydrol-earth-syst-sci.net/7/937/2003/</article_url>
	<abstract_html>http://www.hydrol-earth-syst-sci.net/7/937/2003/hess-7-937-2003.html</abstract_html>
	<fulltext_pdf>http://www.hydrol-earth-syst-sci.net/7/937/2003/hess-7-937-2003.pdf</fulltext_pdf>
	<start_page>937</start_page>
	<end_page>948</end_page>
	<publication_date>0000-00-00</publication_date>
	<article_title content_type="html">Microwave radiometric measurements of soil moisture in Italy</article_title>
	<authors>
		<author numeration="1" affiliations="1">
			<name>G. Macelloni</name>
		</author>
		<author numeration="2" affiliations="1,2">
			<name>S. Paloscia</name>
		</author>
		<author numeration="3" affiliations="1">
			<name>P. Pampaloni</name>
		</author>
		<author numeration="4" affiliations="1">
			<name>E. Santi</name>
		</author>
		<author numeration="5" affiliations="1">
			<name>M. Tedesco</name>
		</author>
	</authors>
	<affiliations>
		<affiliation numeration="1" content_type="html">Institute of Applied Physics, CNR-IFAc, Via Panciatichi 64, 50127 Firenze, Italy</affiliation>
		<affiliation numeration="2" content_type="html">Email for corresponding author: s.paloscia@ifac.cnr.it</affiliation>
	</affiliations>
	<abstract content_type="html">Within the framework of the MAP and RAPHAEL projects, airborne experimental 
        campaigns were carried out by the IFAC group in 1999 and 2000, using a multifrequency 
        microwave radiometer at L, C and X bands (1.4, 6.8 and 10 GHz). The aim of the experiments 
        was to collect soil moisture and vegetation biomass information on agricultural areas to 
        give reliable inputs to the hydrological models. It is well known that microwave emission 
        from soil, mainly at L-band (1.4 GHz), is very well correlated to its moisture content. 
        Two experimental areas in Italy were selected for this project: one was the Toce Valley, 
        Domodossola, in 1999, and the other, the agricultural area of Cerbaia, close to Florence, 
        where flights were performed in 2000. Measurements were carried out on bare soils, corn 
        and wheat fields in different growth stages and on meadows. Ground data of soil moisture 
        (SMC) were collected by other research teams involved in the experiments. From the 
        analysis of the data sets, it has been confirmed that L-band is well related to the SMC 
        of a rather deep soil layer, whereas C-band is sensitive to the surface SMC and is more 
        affected by the presence of surface roughness and vegetation, especially at high incidence 
        angles. An algorithm for the retrieval of soil moisture, based on the sensitivity to 
        moisture of the brightness temperature at C-band, has been tested using the collected data 
        set. The results of the algorithm, which is able to correct for the effect of vegetation 
        by means of the polarisation index at X-band, have been compared with soil moisture data 
        measured on the ground. Finally, the sensitivity of emission at different frequencies to 
        the soil moisture profile was investigated. Experimental data sets were interpreted by 
        using the Integral Equation Model (IEM) and the outputs of the model were used to train 
        an artificial neural network to reproduce the soil moisture content at different 
        depths.&lt;/p&gt;
&lt;p  style=&quot;line-height: 20px;&quot;&gt;&lt;b&gt;Keywords: &lt;/b&gt;microwave radiometry, soil moisture mapping, river basins, vegetative biomass, 
      neural networks</abstract>
	<references>
	</references>
</article>

