利用神经形态方法预防复杂技术系统中的紧急情况

A. Demcheva, A. Korsakov, I. Fomin, A. Bakhshiev, Ekaterina Smirnova
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引用次数: 0

摘要

本文提出了一种基于神经形态方法的紧急预防系统方案。该系统包括一个实现小脑预测功能数学模型的预测单元和一个实现作者早先提出的痛觉模型的报警单元。作为拟议系统的基本要素,使用了能够从少量实例中学习的分区尖峰神经元模型(CSNM)。使用神经形态方法可以克服与被诊断系统的形式化复杂性有关的局限性,以及对系统中发生的过程进行建模的数据可用性较低的问题。之所以能克服这些限制,是因为可以从少量示例中学习,而且不需要对被诊断系统本身进行建模。本文还介绍了在计算机模型上使用合成数据对所提方案进行测试的结果。测试结果表明,所提方案在神经形态控制系统中基本适用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prevention of emergency situations in complex technical systems using a neuromorphic approach
The paper proposes a scheme of emergency prevention system based on neuromorphic approach. The system includes a prediction unit that implements a mathematical model of the cerebellum predictive functions, and an alarm unit that implements the pain sensation model, proposed by the authors earlier. As a basic element of the proposed system the Compartmental Spiking Neuron Model (CSNM) was used, capable of learning from a small number of examples. The use of neuromorphic approach allows to overcome the limitations associated with the formalizing complexity of the systems being diagnosed and the low availability of data for modeling the processes occurring in them. The overcoming these limitations is possible due to the possibility of learning from a small number of examples and the absence of the need to model the system being diagnosed itself. The paper also presents the results of testing of the proposed scheme, which was carried out on a computer model using synthetic data. The results of the testing showed the fundamental applicability of the proposed scheme in neuromorphic control systems.
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