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Design of low power, high performance area efficient shannon based adder cell for neural network training

机译:基于低功耗,高性能面积高效Shannon的神经网络培训设计

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The design of a full-adder cell using multiplexing control input technique (MCIT) for the sum operation and the Shannon-based technique for carry operation were performed. The proposed adder cell can be applied to implement low power and high performance neural network training circuits. The hardware implementation of neural network will mainly consist of a multiplier circuit for the product term along with an adder circuit for the summation. The adder circuits are designed using TANNER EDA tools and the output parameters such as propagation delay, total chip area, and power dissipation are calculated from the simulated results and compared with MCIT based adder cell.
机译:进行了使用多路复用控制输入技术(MCIT)的全加频器单元的设计,以及用于携带操作的Shannon的技术。可以应用所提出的加法器单元来实现低功率和高性能神经网络训练电路。神经网络的硬件实现将主要包括用于产品项的乘法电路以及用于求和的加法器电路。加法器电路使用Tanner EDA工具和传播延迟,总芯片区域和功耗的输出参数设计,并与模拟结果计算,并与基于MCIT的加法器单元进行比较。

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