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<idPurp>O Grau de aptidão urbana é resultado de uma análise de multicritérios para auxiliar o processo de tomada de decisão quanto às áreas mais adequadas a receber nova urbanização. Os critérios utilizados são de dois tipos: restrições ou fatores. Foram considerados como critérios de restrição as Zonas de Risco, resultantes das análises de suscetibilidade a inundações e de suscetibilidade a movimentos de massa. Como fatores para avaliar o grau de adequação à urbanização foram considerados: a) Classes de uso e cobertura do solo; b) Proximidade à sede urbana; c) Topografia (declividades); d) Proximidade a rodovias. </idPurp>
<idAbs>&lt;div style='text-align:Left;'&gt;&lt;div&gt;&lt;div&gt;&lt;p&gt;&lt;span&gt;&lt;span&gt;O Grau de aptidão urbana é resultado de uma análise de multicritérios para auxiliar o processo de tomada de decisão quanto às áreas mais adequadas a receber nova urbanização. Os critérios utilizados são de dois tipos: restrições ou fatores. Foram considerados como critérios de restrição as Zonas de Risco, resultantes das análises de suscetibilidade a inundações e de suscetibilidade a movimentos de massa. Como fatores para avaliar o grau de adequação à urbanização foram considerados: a) Classes de uso e cobertura do solo; b) Proximidade à sede urbana; c) Topografia (declividades); d) Proximidade a rodovias. &lt;/span&gt;&lt;/span&gt;&lt;/p&gt;&lt;/div&gt;&lt;/div&gt;&lt;/div&gt;</idAbs>
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<statement>Análise de multicritérios com combinação de fatores e restrições via álgebra de mapas. Para o critério de restrições utilizou-se o mapeamento síntese de Zonas de Risco. Cada classe de zona de risco foi valorada (escala 0-1) conforme o grau de restrição à urbanização: Zonas de Alto Risco receberam 0,1 (restrição máxima); Zonas de Médio Risco 0,4; Zonas de Baixo Risco 0,8; Zonas Sem Risco 1 (sem restrição). Os fatores foram valorados (escala 1-100) conforme o grau de aptidão à urbanização, sendo 100 o mais alto grau de adequação à urbanização e 1 o grau mínimo. Para o fator de Classes de uso e cobertura do solo (MapBiomas 2022): áreas urbanas receberam o valor 100; uso agropecuário, valor 80; áreas de matas, florestas ou outras formações naturais, valor 40. Para o fator de Proximidade à sede urbana foram consideradas faixas de 1 km a partir da área urbanizada densa (IBGE, 2019): áreas dentro do próprio polígono ou até 1km de distância receberam o valor 100; de 1-2km de distância, valor de 80; de 2-3km de distância, valor de 60; de 3-4km de distância, valor de 40; de 4-5km de distância, valor de 20; acima de 5km de distância, valor de 10. Para o fator de Topografia (declividades), foram consideradas três faixas: áreas de 0-18% de declividade receberam o valor 100; de 18-30% de declividade, valor 80; acima de 30% de declividade, valor 1 (restrição legal - Lei 6.766/79). Para o fator de Proximidade a rodovias (FEPAM/SEMA 2018): áreas que se encontram a até 250m de distância das rodovias receberam o valor 100; de 250-500m de distância, valor 80; de 500-750m de distância, valor 60; de 750-1000m de distância, valor 40; acima de 1000m, valor 20. Os dados foram combinados por álgebra de mapas resultado da média dos fatores multiplicada pelo valor de restrição das zonas de risco. No mapa final de Grau de aptidão urbana, cada célula apresenta um valor de 1 a 100 representando uma síntese da aptidão: valores de 0-10 representam áreas "Sem Aptidão à urbanização"; 11-50, "Baixa Aptidão"; 51-80, "Média Aptidão"; 81-100, "Alta Aptidão". A feição equivalente a diferença entre as geometrias das células do município e o limite municipal foi classificada como “Sem dado”.
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