Approximation of hyperbolic tangent activation function using hybrid methods

M. Sartin, A. M. Silva
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引用次数: 11

Abstract

Artificial Neural Networks are widely used in various applications in engineering, as such solutions of nonlinear problems. The implementation of this technique in reconfigurable devices is a great challenge to researchers by several factors, such as floating point precision, nonlinear activation function, performance and area used in FPGA. The contribution of this work is the approximation of a nonlinear function used in ANN, the popular hyperbolic tangent activation function. The system architecture is composed of several scenarios that provide a tradeoff of performance, precision and area used in FPGA. The results are compared in different scenarios and with current literature on error analysis, area and system performance.
双曲正切激活函数的混合逼近
人工神经网络作为非线性问题的解决方案,在工程中有着广泛的应用。由于浮点精度、非线性激活函数、FPGA的性能和使用面积等因素,在可重构器件中实现该技术对研究人员来说是一个巨大的挑战。这项工作的贡献是在人工神经网络中使用的非线性函数的近似,流行的双曲正切激活函数。该系统架构由几种场景组成,这些场景提供了FPGA中使用的性能,精度和面积的权衡。结果在不同的情况下进行了比较,并与当前文献的误差分析,面积和系统性能。
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