The Liquid Rocket Engine Experiment Data Quality Improvement Based on 3σ-LMBP

Yichen Zhong, Jingwen Fan, Jie Chen, Zhujun Ren, Zijun Liu
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Abstract

During the ground test of liquid rocket engine, the complex on-site experimental environment will lead to abnormal sensor output, and affect subsequent data analysis. For the acceleration data's zero drift problem, the Levenberg Marquardt BP neural network is introduced in this paper to compensate and correct it, and the standard deviation method is used to eliminate the abnormal data, in which the 3σ-LMBP model constructed. The experimental data process shows that this method can improve the data quality, and ensure the follow-up data characteristic extraction. Finally, aiming at the internal causes of zero drift, the external circuit compensator design are proposed to comprehensively solve the problem of zero drift and improve the data quality.
基于3σ-LMBP的液体火箭发动机实验数据质量改进
在液体火箭发动机地面试验过程中,复杂的现场实验环境会导致传感器输出异常,影响后续的数据分析。针对加速度数据的零漂移问题,引入Levenberg Marquardt BP神经网络对其进行补偿和修正,采用标准差法消除异常数据,构建了3σ-LMBP模型。实验数据处理表明,该方法可以提高数据质量,保证后续数据特征提取。最后,针对零位漂移的内部原因,提出了外路补偿器设计,以全面解决零位漂移问题,提高数据质量。
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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