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FIR Digital Filter and Neural Network Design using Harmony Search Algorithm

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Figure

Figure 1.1 Types of filters based on frequency response
Figure 1.4 FIR filter in transposed direct form
Figure 1.5 Type I Linear phase FIR coefficients
Figure 1.6 Phase response of linear phase FIR filter
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