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Short Term Load Forecasting Using a Neural Network Based Time Series Approach

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Figure

Figure 2.1: A Typical Configuration of An Electric Power System[17]
Figure 2.2: An Input-Output Configuration of A STLF System and Its Major Uses [16]
Figure 3.1: System Identification Steps
Table 3.1: Behaviour of Theoretical ACF and PACF for Stationary Process
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