• Corpus ID: 212461177

Forecasting Electrical Load for Home Appliances using Genetic Algorithm based Back Propagation Neural Network

@inproceedings{Panchal2015ForecastingEL,
  title={Forecasting Electrical Load for Home Appliances using Genetic Algorithm based Back Propagation Neural Network},
  author={Gaurang Panchal and Devyani Panchal},
  year={2015}
}
The combining usage of genetic algorithms and artificial neural networks, were originally motivated by the astonishing success of these concepts in their biological counterparts. Despite their totally deferent approaches, both can merely be seen as optimization methods, which are used in a wide range of applications. “Genetic algorithms (GA) are good at taking large, potentially huge search spaces and navigating them, looking for optimal combinations of things, solutions you would find… 
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