<?xml version="1.0" encoding="UTF-8" standalone="no"?>
<metadata xml:lang="pt">
<Esri>
<CreaDate>20220928</CreaDate>
<CreaTime>14222200</CreaTime>
<ArcGISFormat>1.0</ArcGISFormat>
<SyncOnce>TRUE</SyncOnce>
</Esri>
<dataIdInfo>
<idCitation>
<resTitle>Suscetibilidade a deslizamentos</resTitle>
</idCitation>
<searchKeys>
<keyword>características ambientais</keyword>
<keyword>suscetibilidade</keyword>
<keyword>deslizamentos</keyword>
<keyword>escorregamentos</keyword>
<keyword>movimentos de massa</keyword>
<keyword>landslides</keyword>
<keyword>georio</keyword>
</searchKeys>
<idPurp>O presente mapa tem como finalidade a obtenção da carta de suscetibilidade a escorregamentos na escala 1:10.000 da área estudada a partir de fatores topográficos, geológicos, pedológicos e antrópicos.</idPurp>
<idAbs>&lt;DIV STYLE="text-align:Left;font-size:12pt"&gt;&lt;DIV&gt;&lt;DIV&gt;&lt;P&gt;&lt;SPAN&gt;A análise de suscetibilidade possibilita uma visão integrada das características e processos físicos atuantes na região de estudo, uma vez que a falta de controle e disciplinamento na ocupação das áreas urbanas causa graves problemas sociais e ambientais com a erosão das encostas, o assoreamento de rios e canais pelo aporte dos sedimentos mobilizados e as consequentes inundações. A gravidade é maior ou menor dependendo do número de habitantes nas encostas (e margens de rios) e da suscetibilidade destas à erosão. De modo geral, os cuidados com as restrições de ordem geotécnica são negligenciados. Nesse contexto, o mapeamento indicativo das áreas suscetíveis a escorregamento está sendo realizado para que se possa evitar uma nova catástrofe como a ocorrida em abril de 2010, onde dezenas de pessoas perderam as suas vidas e centenas perderam suas moradias. Não é mais permitido o desconhecimento ou o descaso sobre essas áreas. Dessa forma, torna-se imprescindível o investimento em pesquisas voltadas para os Sistemas de Informações Geográficas (SIG) com aplicações em tomadas de decisão, na esfera governamental, uma vez que esses sistemas se ofereceram como ferramentas capazes de propiciar meios para o levantamento de dados do meio físico, do uso e ocupação da superfície terrestre, bem como, na integração desses dados para posterior análise e interpretação, os quais resultaram em subsídios relevantes às análises realizadas. Assim, se buscou a realização de uma investigação planejada, desenvolvida e redigida de acordo com as normas da metodologia consagradas pela ciência, cujos conhecimentos adquiridos poderão ser utilizados para aplicação prática, voltados para a solução de problemas concretos do município do Rio de Janeiro e seus citadinos.&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;&lt;/DIV&gt;</idAbs>
<idCredit>Fundação Geo-Rio</idCredit>
<resConst>
<Consts>
<useLimit>&lt;DIV STYLE="text-align:Left;font-size:12pt"&gt;&lt;P&gt;&lt;SPAN&gt;CC BY 4.0&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;</useLimit>
</Consts>
</resConst>
</dataIdInfo>
<Binary>
<Thumbnail>
<Data EsriPropertyType="PictureX">/9j/4AAQSkZJRgABAQEAAQABAAD/2wBDAAgGBgcGBQgHBwcJCQgKDBQNDAsLDBkSEw8UHRofHh0a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</Data>
</Thumbnail>
</Binary>
</metadata>
