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Short term power load forecasting using Deep Neural Networks

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Figure

Fig. 1. Variations in Temperature and Load for 1 Week
Fig. 3. Subsignal 1
Fig. 7. Visual Description of Load Prediction Methodology
Fig. 9. MAPE error comparison using Time and frequency domain features

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