Constructing associative memories using high-order neural networks - Electronics Letters
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Conclusion: We have shown that amplifier saturation in a driven unlocked oscillator causes the inherent one-sided beat frequency spectrum to be converted into a two-sided beat frequency spectrum of asymmetric amplitude, but equal beat frequency separation. This can be of importance in injectionlocking oscillator design as it can affect the approach to the threshold-lock condition with large injection signals.
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تاریخ انتشار 2004