首页> 外文期刊>Chemometrics and Intelligent Laboratory Systems >Predicting the heats of combustion of polynitro arene, polynitro heteroarene, acyclic and cyclic nitramine, nitrate ester and nitroaliphatic compounds using bee algorithm and adaptive neuro-fuzzy inference system
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Predicting the heats of combustion of polynitro arene, polynitro heteroarene, acyclic and cyclic nitramine, nitrate ester and nitroaliphatic compounds using bee algorithm and adaptive neuro-fuzzy inference system

机译:使用蜜蜂算法和自适应神经模糊推理系统预测聚硝基芳烃,聚硝基杂芳烃,无环和环状硝胺,硝酸酯和硝基脂族化合物的燃烧热

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摘要

A new method was developed for prediction of the heats of combustion of important classes of energetic compounds including polynitro arene, polynitro heteroarene, acyclic and cyclic nitramine, nitrate ester and nitroaliphatic compounds. A set of 1497 zero- to three-dimensional descriptors was generated for each molecule in the data set. A major problem of modeling is the high dimensionality of the descriptor space; therefore, descriptor selection is one of the most important steps. In this paper, bee algorithm (BA) was used to select the best descriptors. Bee algorithm is a new population-based optimization algorithm, which is derived from the observation of real bees and proposed to feature selection. Four descriptors were selected and used as inputs for adaptive neuro-fuzzy inference system (ANFIS). Squared correlations of coefficients were obtained as 0.9980, 0.9996 and 0.9988 for training, test and validation sets, respectively. In comparison with genetic algorithm (GA)-ANFIS and multiple linear regression (MLR)-ANFIS, the results showed that Bee-ANFIS can be used as a powerful model for prediction of heats of combustion of these compounds.
机译:开发了一种新的方法来预测重要的高能化合物的燃烧热,这些高能化合物包括聚硝基芳烃,聚硝基杂芳烃,无环和环状硝胺,硝酸酯和硝基脂肪族化合物。为数据集中的每个分子生成了一组1497个零维到三维描述符。建模的主要问题是描述符空间的高维性。因此,描述符选择是最重要的步骤之一。在本文中,使用蜜蜂算法(BA)来选择最佳描述符。 Bee算法是一种新的基于种群的优化算法,它是从对实蜂的观察中得出的,并提出用于特征选择。选择了四个描述符,并将其用作自适应神经模糊推理系统(ANFIS)的输入。对于训练集,测试集和验证集,系数的平方相关性分别为0.9980、0.9996和0.9988。与遗传算法(GA)-ANFIS和多元线性回归(MLR)-ANFIS相比,结果表明Bee-ANFIS可以用作预测这些化合物燃烧热的有力模型。

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