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Forecasting Energy Price and Consumption for Iranian Industrial Sectors Using ANN and ANFIS

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Academic year: 2020

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Figure

Table 1. Comparison between Perceptron and RBF Network
Table 2. Learning Algorithms Based on Back-Propagation Features
Table 4. MSE Value for Different Hidden Layer’s Nodes Number of Nodes
Figure 1-a. Plot of 57 Real and ANN-  Forecasted Gas Oil Consumptions for
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