基于支持向量机的有机过氧化物自加速分解温度预测

Pei He, Yong Pan, Jun-cheng Jiang
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引用次数: 12

摘要

有机过氧化物是自反应性物质,在外界能量作用下易发生分解和氧化还原反应,引起火灾、爆炸等灾难性事故。自加速分解温度(SADT)是描述过程工业中有机过氧化物热危害性的重要参数之一。本研究建立了定量构效关系(QSPR)模型,通过分子结构预测71种有机过氧化物的SADT。所有分子描述符由DRAGON 6.0软件计算。采用遗传算法(GA)和多元线性回归(MLR)来选择描述子的最优子集。分别利用多元线性回归(MLR)和支持向量机(SVM)建立了两种不同的模型。这两个模型都被认为是有效的,并且能够通过严格的模型验证来预测有机过氧化物的SADT。MLR模型对训练集和测试集的平均绝对误差分别为7.976℃和8.585℃,而SVM模型的平均绝对误差分别为5.676℃和8.172℃。预测结果表明,与MLR模型相比,SVM模型在预测性能上具有明显的优势。该研究为工程上有机过氧化物的SADT预测提供了一种新的方法。
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Prediction of the self-accelerating decomposition temperature of organic peroxides based on support vector machine

Organic peroxides are self-reactive substances that are susceptible to decomposition and redox reactions under external energy, causing catastrophic accidents such as fires and explosions. Self-accelerating decomposition temperature (SADT) is one of the most important parameters for describing the thermal hazard of organic peroxides in process industries. This study presented a quantitative structure-property relationship (QSPR) model to predict the SADT of 71 organic peroxides through their molecular structures. All molecular descriptors are calculated by DRAGON 6.0 software. Genetic algorithm (GA), along with multiple linear regression (MLR) was employed to select the optimal subset of descriptors. Two different models are developed by employing multiple linear regression (MLR) and support vector machine (SVM), respectively. Both models are considered to be valid and able to predict the SADT of organic peroxides through rigorous model validations. The average absolute error of the MLR model for the training set and test set is 7.976 ℃ and 8.585 ℃, while that for the SVM model is 5.676 ℃ and 8.172 ℃, respectively. The predicted results showed that the SVM model has an obvious superiority in prediction performance when comparing to the MLR one. This study could provide a new method for predicting the SADT of organic peroxides for engineering.

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