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Confidence intervals for neural network based short-term load forecasting
107
Citations
13
References
2000
Year
Online ForecastingForecasting MethodologyEngineeringMachine LearningData ScienceConfidence IntervalsPredictive AnalyticsNeural NetworkDemand ForecastingComputer EngineeringEnergy ForecastingSystems EngineeringForecastingEnergy PredictionStatisticsIntelligent Forecasting
Using traditional statistical models, like ARMA and multilinear regression, confidence intervals can be computed for the short-term electric load forecasting, assuming that the forecast errors are independent and Gaussian distributed. In this paper, the 1 to 24 steps ahead load forecasts are obtained through multilayer perceptrons trained by the backpropagation algorithm. Three techniques for the computation of confidence intervals for this neural network based short-term load forecasting are presented: (1) error output; (2) resampling; and (3) multilinear regression adapted to neural networks. A comparison of the three techniques is performed through simulations of online forecasting.
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