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Learning of Type-2 Fuzzy Logic Systems using Simulated Annealing.

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Figure

Figure 3.3: A flowchart of the method of using simulated annealing with fuzzy logic system in modelling applications
Figure 3.4: The first input of the time series when SNR=0 (Level 1)
Figure 3.5: The first input of the time series when SNR=10 (Level 2)
Figure 3.6: The first input of the time series when SNR=20 (Level 3)
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