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Real-time Anomaly Detection for Streaming Data using Burst Code on a Neurosynaptic Processor

机译:使用神经突触处理器上使用突发码流媒体数据的实时异常检测

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Real-time anomaly detection for streaming data is a desirable feature for mobile devices or unmanned systems. The key challenge is how to deliver required performance under the stringent power constraint. To address the paradox between performance and power consumption, brain-inspired hardware, such as the IBM Neurosynaptic System, has been developed to enable low power implementation of large-scale neural models. Meanwhile, inspired by the operation and the massive parallel structure of human brain, carefully structured inference model has been demonstrated to give superior detection quality than many traditional models while facilitates neuromorphic implementation. Implementing inference based anomaly detection on the neurosynaptic processor is not straightforward due to hardware limitations. This work presents a design flow and component library that flexibly maps learned detection network to the TrueNorth architecture. Instead of traditional rate code, burst code is adopted in the design, which represents numerical value using the phase of a burst of spike trains. This does not only reduce the hardware complexity, but also increases the results accuracy. A Corelet library, Neolnfer-TN, is developed for basic operations in burst code and two-phase pipelines are constructed based on the library components. The design can be configured for different tradeoffs between detection accuracy and throughput/energy. We evaluate the system using intrusion detection data streams. The results show higher detection rate than some conventional approaches and real-time performance, with only 50mW power consumption. Overall, it achieves 10~8 operations per watt-second.
机译:用于流数据的实时异常检测是移动设备或无人机系统的理想特征。关键挑战是如何在严格的功率约束下提供所需的性能。为了解决性能和功耗之间的悖论,已经开发出脑激发的硬件,例如IBM神经突触系统,以实现大型神经模型的低功耗。同时,通过操作和人类大脑的大规模平行结构的启发,已经证明了仔细结构化推理模型,以提供优于许多传统模型的卓越的检测质量,同时促进神经形态实现。由于硬件限制,在神经突触处理器上实现基于推断的异常检测并不简单。这项工作介绍了一个设计流程和组件库,可灵活地映射到Truenorph建筑学的学习检测网络。在设计中采用突发代码而不是传统速率代码,而是使用峰值列车突发的阶段表示数值。这不仅可以降低硬件复杂性,而且还增加了结果准确性。 Corelove库Neolnfer-TN是为突发代码中的基本操作而开发的,并基于库组件构建两相管道。该设计可以配置为检测精度和吞吐量/能量之间的不同权衡。我们使用入侵检测数据流评估系统。结果显示出比某些传统方法和实时性能更高的检测率,只有50MW的功耗。总的来说,它实现了每瓦秒的10〜8个操作。

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