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首页> 外文期刊>Journal of Circuits, Systems, and Computers >HARDWARE IMPLEMENTATIONS OF MLP ARTIFICIAL NEURAL NETWORKS WITH CONFIGURABLE TOPOLOGY
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HARDWARE IMPLEMENTATIONS OF MLP ARTIFICIAL NEURAL NETWORKS WITH CONFIGURABLE TOPOLOGY

机译:具有可配置拓扑的MLP人工神经网络的硬件实现

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In this paper, we devise an adaptive hardware architecture for ANNs that takes advantage of the dedicated adder blocks, commonly called MACs, to compute both the weighted sum and activation function. The proposed architecture requires a reduced silicon area considering the fact that the MACs come for free as these are FPGA's built-in hardcores and if not used, they cannot be optimized in the final design. The implementation uses integer fixed point arithmetic and operates with fractions to represent real numbers. The hardware is fast because it is massively parallel, yet it is compact as it has a single physical layer of neurons while the remaining are virtual. Besides, the proposed architecture is adaptive; so it is designed to adjust itself on-the-fly to the user-defined configuration of the neural network, i.e., the number of layers and neurons per layer as well as the topology of the ANN can be configured with no extra hardware changes nor any supplementary design effort.
机译:在本文中,我们为人工神经网络设计了一种自适应硬件架构,该架构利用专用加法器块(通常称为MAC)来计算加权和和激活函数。考虑到MAC是免费提供的事实,由于这些都是FPGA的内置硬核,因此拟议的架构需要减小的硅片面积,如果不使用MAC,则无法在最终设计中对其进行优化。该实现使用整数定点算法,并使用小数表示实数。硬件之所以快速是因为它是大规模并行的,但它却很紧凑,因为它只有单个神经元物理层,而其余的都是虚拟的。此外,所提出的体系结构是自适应的。因此,它可以实时调整以适应用户定义的神经网络配置,即无需进行任何额外的硬件更改即可配置ANN的层数和每层神经元以及拓扑任何补充设计工作。

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