Research of decision-making support in the management of natural resources
Keywords:natural resources, modeling, artificial intelligence, artificial neural networks, genetic algorithms
The analysis of existing mathematical methods of modeling and forecasting of conditions of the natural resources under the influence of natural and anthropogenic factors is shown. It is revealed that the more effective is modeling using artificial intelligence methods. The methods of modeling and forecasting of conditions of the natural resources are developed. They are based on theory of artificial neural networks and ideas of genetic algorithms
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