稳定器(航空)
推进剂
基础(拓扑)
人工神经网络
红外光谱学
红外线的
近红外光谱
化学计量学
光谱学
分析化学(期刊)
材料科学
生物系统
化学
计算机科学
色谱法
人工智能
工程类
有机化学
数学
光学
航空航天工程
物理
生物
数学分析
量子力学
作者
Dihua Ouyang,Tianyu Cui,Qiantao Zhang,Haoxiang Dai,Xiaowen Qin,Youqiu Hu
摘要
ABSTRACT During long‐term storage, double‐base propellants are prone to chemical decomposition of internal nitrate esters, leading to decreased burn rate, reduced strength, and degraded ballistic performance. Adding an appropriate amount of Centralite‐II is crucial for ensuring storage safety. This study proposes a novel method combining near‐infrared spectroscopy (NIRS) with artificial intelligence to rapidly and non‐destructively detect the content of Centralite‐II in double‐base propellants. The optimal modeling wavelength ranges of 4000–4600 cm −1 and 5700–6100 cm −1 were identified, and the raw spectral data were preprocessed using standard normal variate (SNV) transformation to improve the signal‐to‐noise ratio. Principal component analysis (PCA) was then applied to reduce data dimensionality, and the first three principal components were used as inputs for a backpropagation (BP‐ANN) neural network. The resulting PCA‐BP‐ANN model showed excellent performance on the training set, with an of 0.9830 and an of 0.0376%. During independent validation, the model demonstrated strong generalization ability, achieving an of 0.9824 and an of 0.3179%, comparative analysis with other models, including BP, PLS, ELM, SVR, and LSTM, indicated that the PCA‐BP‐ANN model exhibited superior prediction accuracy and generalization capability. This method provides a rapid and non‐destructive approach for assessing the stabilizer content in double‐base propellants and expands the application of NIRS and AI techniques in the field of energetic materials.
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