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An efficient technique of integrating parallel neural networks for faster and power efficient nanodevices for ultradense VLSI circuits

机译:将平行神经网络集成为超强VLSI电路的速率和功率高效纳米仪的高效技术

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Recently power dissipation (in addition to the earlier three aspects e.g. speed, size and cost) has become the main design concern in several applications. However, power saving should be achieved without compromising high performance or minimum area, thereby creating a new design culture for VLSI. Power consideration has been the ultimate design criteria in some special portable applications like pacemakers, mobile sets and wristwatches. As an attempt towards this, in the present work parallel back propagation artificial neural networks are employed to optimize and predict the various system parameter of a (In, Ga)As nanodevice so that the relevant device will exhibit better high frequency response and will be power efficient. Moreover prediction time is reduced using parallelism in ANN thereby making the design less time consuming.
机译:最近的功耗(除了早期的三个方面,速度,大小和成本)已成为几种应用中的主要设计问题。然而,应在不影响高性能或最小面积的情况下实现省电,从而为VLSI创造了新的设计文化。功率考虑一直是某些特殊便携式应用中的最终设计标准,如起搏器,移动组和手表。作为对此的尝试,在目前的工作中,采用并行回波传播人工神经网络来优化和预测AS(In,Ga)作为纳米台的各种系统参数,使得相关设备将表现出更好的高频响应并且将是电力高效的。此外,在ANN中的并行性地,使得设计较少的耗时耗时较少的预测时间。

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