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5. CLASSIFICADOR PARA O SISTEMA DE DIAGNÓSTICO PROPOSTO

6.2 Trabalhos Futuros

Para a plena utilização de todas as possibilidades desta metodologia são necessárias outras pesquisas, que não são objetos deste trabalho, pois implicaria em um tempo superior ao disponível para desenvolvimento do doutorado. As pesquisas suplementares sugeridas são: • Ensaios em isoladores para determinar o comportamento da corrente de fuga para outros defeitos;

• Desenvolvimento do módulo Caracterização. • Desenvolvimento do módulo Banco de Dados. • Implementação do sistema de diagnóstico PredFalt.

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