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Study on the Data Storage Technology of Mini-Airborne Radar Based on Machine Learning

Authors :
Tian, Haishan
Yang, Qiong
Wang, Huabing
Zhang, Jingke
Publication Year :
2023

Abstract

The data rate of airborne radar is much higher than the wireless data transfer rate in many detection applications, so the onboard data storage systems are usually used to store the radar data. Data storage systems with good seismic performance usually use NAND Flash as storage medium, and there is a widespread problem of long file management time, which seriously affects the data storage speed, especially under the limitation of platform miniaturization. To solve this problem, a data storage method based on machine learning is proposed for mini-airborne radar. The storage training model is established based on machine learning, and could process various kinds of radar data. The file management methods are classified and determined using the model, and then are applied to the storage of radar data. To verify the performance of the proposed method, a test was carried out on the data storage system of a mini-airborne radar. The experimental results show that the method based on machine learning can form various data storage methods adapted to different data rates and application scenarios. The ratio of the file management time to the actual data writing time is extremely low.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2303.07407
Document Type :
Working Paper