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Hardware implementation of real-time Extreme Learning Machine in FPGA: Analysis of precision, resource occupation and performance

机译:实时极限学习机在FPGA中的硬件实现:精度,资源占用和性能分析

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摘要

Extreme Learning Machine (ELM) proposes a non-iterative training method for Single Layer Feedforward Neural Networks that provides an effective solution for classification and-prediction problems. Its hardware implementation is an important step towards fast, accurate and reconfigurable embedded systems based on neural networks, allowing to extend the range of applications where neural networks can be used, especially where frequent and fast training, or even real-time training, is required. This work proposes three hardware architectures for on-chip ELM training computation and implementation, a sequential and two parallel. All three are implemented parameterizably on FPGA as an IP (Intellectual Property) core. Results describe performance, accuracy, resources and power consumption. The analysis is conducted parametrically varying the number of hidden neurons, number of training patterns and internal bit-length, providing a guideline on required resources and level of performance that an FPGA based ELM training can provide. (C) 2016 Elsevier Ltd. All rights reserved.
机译:极限学习机(ELM)为单层前馈神经网络提出了一种非迭代训练方法,该方法为分类和预测问题提供了有效的解决方案。它的硬件实现是朝着基于神经网络的快速,准确和可重新配置的嵌入式系统迈出的重要一步,从而扩展了可以使用神经网络的应用范围,尤其是在需要频繁快速培训甚至实时培训的情况下。这项工作提出了用于片上ELM训练计算和实现的三种硬件体系结构,顺序的和两个并行的。所有这三个参数都可在FPGA上作为IP(知识产权)内核进行参数化实现。结果描述了性能,准确性,资源和功耗。该分析通过参数方式更改隐藏神经元的数量,训练模式的数量和内部位长,从而为基于FPGA的ELM训练可提供的所需资源和性能水平提供了指南。 (C)2016 Elsevier Ltd.保留所有权利。

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