使用直接比特流处理的神经网络和ANFIS的高效实现

Alexey Romanov
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引用次数: 3

摘要

智能信息处理技术已广泛应用于电力行业。随着物联网(IoT)设备在智能电网中的应用,它们的发展迈出了新的一步。智能物联网设备开发的一个关键问题是在低功耗板载处理单元上实现数据处理算法。本文提出了一种在基于fpga的物联网设备上实现神经网络的高效技术。提出了一种基于σ - δ调制比特流的信号表示方法,该方法可以减小神经网络所有元素的大小,并提供基于现有FPGA微芯片的神经网络和基于自适应网络的模糊推理系统(ANFIS)完全并行实现的可能性。基于该方法,开发了用于实现直接传播神经网络、rbf网络和ANFIS的新型FPGA IP核。通过在现代FPGA上的综合结果验证了所开发方案的FPGA资源利用效率。所提出的方法将提高为智能电网设计的物联网设备的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-efficient implementation of neural networks and ANFIS using direct bitstream processing
Intelligent information processing technologies are already widely used in the power industry. The new step in their evolution was made with application of Internet-of-Things(IoT) devices into a smart grid. A key problem of intelligent IoT device development is implementation of a data processing algorithms on a low-power on-board processing units. The paper proposes a high efficient technology for neural network implementation on a FPGA-based IoT devices. An approach based on the use of sigma-delta modulated bitstreams for signal representation is proposed, which makes it possible to reduce the size of all elements of neural network and to provide the possibility of completely parallel implementation of neural networks and adaptive network-based fuzzy inference systems (ANFIS) on the basis of existing FPGA microchips. Based on the proposed approach, the novel FPGA IP cores are developed for the implementation of direct propagation neural networks, RBF-networks and ANFIS. The FPGA resource usage efficiency of the developed solutions is demonstrated using synthesis results on modern FPGA. The proposed approach will increase performance of IoT devices, designed for smart-grid.
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