Redes neurais artificiais aplicadas à previsão da incidência de malária no estado de Roraima

The present work aims to create a prototype called SISPIMA - forecast system in the incidence of malaria, to generate estimates of the incidence of malaria in Roraima state in three different periods: short term (3 months), medium term (6 months) and long term (12 months). To develop the system, wer...

ver descrição completa

Detalhes bibliográficos
Autor principal: Cunha, Guilherme Bernardino da (author)
Formato: doctoralThesis
Idioma:por
Publicado em: 2016
Assuntos:
Texto completo:https://repositorio.ufu.br/handle/123456789/14275
País:Brasil
Oai:oai:repositorio.ufu.br:123456789/14275
Descrição
Resumo:The present work aims to create a prototype called SISPIMA - forecast system in the incidence of malaria, to generate estimates of the incidence of malaria in Roraima state in three different periods: short term (3 months), medium term (6 months) and long term (12 months). To develop the system, were employed techniques of artificial neural networks and time series analysis. The SISPIMA consists of four steps: collection and storage of data, preprocessing, training and predicting the incidence of malaria. Data were obtained through access to the site SIVEP-Malaria Health Ministry. These were filtered, normalized and classified by SISPIMA in the pre-processing before performing the training and prediction. For training and forecasting, used artificial neural networks. The architecture of artificial neural network used was the multilayer perceptron (MLP) with a variation of the backpropagation training algorithm, called of Resilient Propagation (RPROG). To validate the results and assess the performance and accuracy of the proposed system, we use the ARIMA model as a comparison because of its wide application in epidemiological time series forecasting.