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Evolvable Block-Based Neural Network Design for Applications in Dynamic Environments

机译:动态环境中基于可进化的基于块的神经网络设计

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Dedicated hardware implementations of artificial neural networks promise to provide faster, lower-power operation when compared to software implementations executing on microprocessors, but rarely do these implementations have the flexibility to adapt and train online under dynamic conditions. A typical design process for artificial neural networks involves offline training using software simulations and synthesis and hardware implementation of the obtained network offline. This paper presents a design of block-based neural networks (BbNNs) on FPGAs capable of dynamic adaptation and online training. Specifically the network structure and the internal parameters, the two pieces of the multiparametric evolution of the BbNNs, can be adapted intrinsically, in-field under the control of the training algorithm. This ability enables deployment of the platform in dynamic environments, thereby significantly expanding the range of target applications, deployment lifetimes, and system reliability. The potential and functionality of the platform are demonstrated using several case studies.
机译:与在微处理器上执行的软件实现相比,人工神经网络的专用硬件实现有望提供更快,功耗更低的操作,但是这些实现很少具有在动态条件下进行适应和在线培训的灵活性。人工神经网络的典型设计过程包括使用软件仿真进行脱机训练,以及对获得的网络进行脱机的综合和硬件实现。本文提出了一种基于FPGA的能够动态适应和在线训练的基于块的神经网络(BbNN)。具体地说,网络结构和内部参数,即BbNNs的多参数演化的两个部分,可以在训练算法的控制下进行内在的现场适应。此功能允许在动态环境中部署平台,从而大大扩展了目标应用程序的范围,部署生命周期和系统可靠性。该平台的潜力和功能通过几个案例研究得以展示。

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