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A hybrid soft computing approach based on feature selection for estimation of filtration combustion characteristics

机译:一种基于特征选择的混合软计算方法,用于估计过滤燃烧特性

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摘要

Filtration combustion is a type of combustion in which exothermic reactions occur within a porous matrix. In recent years, some researches were performed on the use of noncatalytic partial oxidation method for hydrogen production in reactors based on filtration combustion. In this paper, a new technique is presented for estimation of some important characteristics of filtration combustion process. Hydrogen production, peak combustion temperature, and wave velocity are three main variables which are estimated by suggested forecasting engine. The parameters which have direct effect on above-mentioned variables are: equivalence ratio (phi), reactant inlet velocity (V), bed porosity (epsilon), heat conductivity (K), and the heating value of fuel. The estimation process is realized though two steps: feature selection and regression. At first step, the features are ranked according to their importance degree. The well-known Gram-Schmidt orthogonalization feature selection is employed for ranking of effective input parameters. In the second step, extreme learning machine (ELM) and support vector machine (SVM) are utilized as regression cores of forecasting engine. For each feature subset, the estimation accuracy is calculated in order to find the most important feature subset. The obtained results show that the ELM yields the better performance for the prediction of peak temperature and wave velocity as compared to SVM.
机译:过滤燃烧是一种燃烧,其中放热反应在多孔基质内发生。近年来,基于过滤燃烧,对使用非催化部分氧化方法进行了一些研究。本文介绍了一种新技术,用于估计过滤燃烧过程的一些重要特征。氢气产生,峰值燃烧温度和波速是三个主要变量,由建议的预测发动机估计。对上述变量有直接影响的参数是:等效比(PHI),反应物入口速度(V),床孔隙率(ε),导热率(K)和燃料的加热值。估计过程实现了两个步骤:特征选择和回归。乍一看,该特征按重要程度排名。众所周知的克施密特正交化特征选择用于对有效输入参数进行排序。在第二步中,极端学习机(ELM)和支持向量机(SVM)用作预测引擎的回归核心。对于每个特征子集,计算估计准确度以找到最重要的特征子集。获得的结果表明,与SVM相比,ELM为预测峰值温度和波速的预测而产生更好的性能。

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