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Sensor validation using hardware-based on-line learning neuralnetworks

机译:使用基于硬件的在线学习神经网络进行传感器验证

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The objective of this document Is to show the capabilities of parallel hardware-based on-line learning neural networks (NNs). This specific application is related to an on-line estimation problem for sensor validation purposes. Neural-network-based microprocessors are starting to be commercially available. However, most of them feature a learning performed with the classic back-propagation algorithm (BPA). To overcome this lack of flexibility a customized motherboard with transputers was implemented for this investigation, The extended BPA (EBPA), a modified and more effective BPA, was used for the on-line learning, These parallel hardware-based neural architectures were used to implement a sensor failure detection, identification, and accommodation scheme in the model of a night control system assumed to be without physical redundancy in the sensory capabilities. The results of this study demonstrate the potential for these neural schemes for implementation in actual flight control systems of modern high performance aircraft, taking advantage of the characteristics of the extended back-propagation along with the parallel computation capabilities of NN customized hardware
机译:本文档的目的是展示基于并行硬件的在线学习神经网络(NN)的功能。此特定应用与出于传感器验证目的的在线估计问题有关。基于神经网络的微处理器已开始商业化。但是,大多数功能都具有通过经典反向传播算法(BPA)执行的学习功能。为了克服这种灵活性的不足,本调查采用了带有晶片机的定制母板,扩展后的BPA(EBPA)(一种经过修改且更有效的BPA)用于在线学习,这些基于硬件的并行神经架构被用于在夜间控制系统的模型中实现传感器故障检测,识别和适应方案,假定该模型在感觉能力上没有物理冗余。这项研究的结果证明了这些神经机制在现代高性能飞机的实际飞行控制系统中实施的潜力,并利用了扩展的反向传播特性以及NN定制硬件的并行计算能力

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