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A Study on Neural Networks Using Taylor Series Expansion of Sigmoid Activation Function

机译:泰勒系列扩大六翼激活函数的神经网络研究

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The use of microcontroller in neural network realizations is cheaper than those specific neural chips. However, realization of complicated mathematical operations such as sigmoid activation function is difficult via general microcontrollers. On the other hand, it is possible to make approximation to the sigmoid activation function. In this study, Taylor series expansions up to nine terms are used to realize sigmoid activation function. The neural network (NN) structures with Taylor series expansions of sigmoid activation function are used for the concentration estimation of Toluene gas from the trend of the transient sensor responses. The Quartz Crystal Microbalance (QCM) type sensors were used as gas sensors. The appropriateness of the NNs for the gas concentration determination inside the sensor response time is observed with five different terms of Taylor series expansion.
机译:在神经网络实现中使用微控制器比那些特定的神经芯片便宜。然而,通过通用微控制器难以实现复杂的数学操作,例如Sigmoid激活功能。另一方面,可以对SIGMOID激活函数进行近似。在这项研究中,泰勒串联扩展最多九个术语用于实现SIGMOID激活功能。具有泰勒串联型矩形激活功能的神经网络(NN)结构用于血液传感器响应趋势的甲苯气体浓度估计。石英晶体微稳定(QCM)型传感器用作气体传感器。观察到传感器响应时间内的气体浓度测定的NNS的适当性,以五种不同的泰勒序列膨胀。

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