FUNDAMENTOS TEÓRICOS DE MODELAGEM EM SISTEMAS COMPLEXOS
DOI:
https://doi.org/10.28998/contegeo.4i7.8363Palabras clave:
Sistemas Complexos, Modelagem, Autômatos Celulares, Modelos Baseados no Agente, Modelos HíbridosResumen
A geografia tem por definição o estudo do conjunto da Terra, que é por sua natureza extremamente complexo e depende de um número inesgótavel de elementos e relações entre os sistemas que o compõem. A complexidade do mundo atrai cada vez mais a comunidade científica com o inuito de melhor entender e representar as inúmeras interações que ocorrem na superfície, sobretudo no campo da geografia. A partir da teoria da complexidade várias foram as técnicas de modelagem computacional desenvolvidas a fim de simular o mundo real e antecipar possíveis eventos, como por exemplo a expansão urbana de uma determinada cidade, o desmatamento de uma área devido ao avanço da agricultura, e até mesmo padrões de imigração de uma população. É consenso que a modelagem será cada vez mais utilizada no planejamento territorial e ambiental, e este artigo traz uma breve explanação de alguns dos métodos mais comuns utlizados para estes fins.
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