2023
DOI: 10.3390/s23229165
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Lightweight RepVGG-Based Cross-Modality Data Prediction Method for Solid Rocket Motors

Huixin Yang,
Shangshang Zheng,
Xu Wang
et al.

Abstract: Solid rocket motors (SRMs) have been popularly used in the current aerospace industry. Performance indicators, such as pressure and thrust, are of great importance for rocket monitoring and design. However, the measurement of such signals requires high economic and time costs. In many practical situations, the thrust measurement error is large and requires manual correction. In order to address this challenging problem, a lightweight RepVGG-based cross-modality data prediction method is proposed for SRMs. An e… Show more

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“…The model achieves an accuracy of over 80% on the ImageNet dataset and runs more than 53% faster compared to other models. Building upon this foundation, numerous scholars have extended its application to diverse fields such as forestry, agriculture, industry, and aerospace, yielding promising results [33][34][35][36].…”
Section: Introductionmentioning
confidence: 99%
“…The model achieves an accuracy of over 80% on the ImageNet dataset and runs more than 53% faster compared to other models. Building upon this foundation, numerous scholars have extended its application to diverse fields such as forestry, agriculture, industry, and aerospace, yielding promising results [33][34][35][36].…”
Section: Introductionmentioning
confidence: 99%