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A genetic algorithm based resources optimization methodology for implementing artificial neural networks on FPGAs

机译:基于遗传算法的基于资源优化方法,用于在FPGA上实现人工神经网络

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Most of the artificial neural networks (ANN) based applications are implemented on FPGAs using fixed-point arithmetic. The problem is to achieve a balance between the need for numeric precision, which is important for network accuracy, and the cost of logic areas, i.e. FPGA resources. In this paper we propose a genetic algorithm based methodology permitting the optimization of the FPGA resources needed for the implementation of a Pipelined Recurrent Neural Network(PRNN) while respecting the precision constraints. The quality of our methodology will be evaluated through experiment on a PRNN based Wideband cdma receiver. Our methodology is not restricted to this class of ANNs and can be used for any complex with variable dimensions system.
机译:大多数人工神经网络(ANN)的应用程序在FPGA上使用定点算术来实现。 问题是实现数字精度的需求之间的平衡,这对于网络准确性很重要,以及逻辑区域的成本,即FPGA资源。 在本文中,我们提出了一种基于遗传算法的方法,允许优化在尊重精度约束的同时实现流水线经常性神经网络(PRNN)所需的FPGA资源。 将通过对基于PRNN的宽带CDMA接收器进行实验来评估我们的方法的质量。 我们的方法没有限于这类Anns,并且可以用于可变尺寸系统的任何复合物。

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