A Real-time Online Aircraft Neural Network System

Ying Zhang, Qian Zhao, Leiyan Tao, Jian Cao, Minfeng Wei, Xing Zhang
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引用次数: 4

Abstract

In order to meet the information processing requirements that large amount of heterogeneous input data are in the real-time flight process of aircraft, a neural network is proposed in this paper, including convolution fixed-point sliding IP core, pooling compression quantization IP core and fully connected compression fusion IP core. Heterogeneous sensor data of the aircraft as the input of the system; The recognized result serves as the output of the system. Convolution of sliding window IP core can quickly extract data features by eliminating redundant data sliding window; Pooling compression quantization IP core, using compression quantization technology, improves system execution efficiency; Fully connected compressed fusion IP core is compressed fusion after reduction and quantification, whose output meets the requirements of high reliability and low power consumption of the aircraft online intelligent integration design.
实时在线飞机神经网络系统
为了满足飞机实时飞行过程中大量异构输入数据的信息处理需求,本文提出了一种神经网络,包括卷积定点滑动IP核、池化压缩量化IP核和全连接压缩融合IP核。飞机异构传感器数据作为系统输入;识别的结果作为系统的输出。卷积滑动窗口IP核通过消除冗余数据滑动窗口,快速提取数据特征;池化压缩量化IP核,采用压缩量化技术,提高系统执行效率;全连接压缩融合IP核是经过简化量化后的压缩融合,其输出满足飞机在线智能集成设计的高可靠性、低功耗要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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