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A Bayesian learning and data mining approach to reaction system identification: Application to biomass conversion

机译:反应系统识别的贝叶斯学习和数据挖掘方法:对生物质转化的应用

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The growing environmental concern over the use of fossil fuels calls for alternative sources of energy with smaller environmental footprint, and biomass-derived fuels have been extensively investigated as a substitute. In biofuels production, the development of reaction networks and kinetic models is unquestionably a major challenge due to the difficulty in characterizing the reaction products. Therefore, there is a need for a better way to retrieve the information about the reaction from the available experimental data. This study uses a data mining and Bayesian learning approach to estimate the reaction network of the acid and base catalyzed hydrous pyrolysis of hemicellulose from Fourier Transform Infrared (FTIR) spectroscopy. Cluster analysis is used to model the system in terms of lumps and a Bayesian network structure-learning algorithm is then used to device a reaction network. Three Bayesian network structure-learning algorithms were implemented to estimate the reaction network. The results from each were identical, indicating that the model representing the reaction network is most probably in the optimal equivalence space. The model was compared against expert-based reaction models and the agreement is encouraging. A useful aspect of this model is its self-updating capability, i.e., the reaction model can provide a quantitative description of the effect of the change in the operation condition from spectroscopic data. Hence, the model may be used for the real time analysis of the investigated process.
机译:对使用化石燃料的不断增长的环境担忧要求替代的能量来源,具有较小的环境足迹,并且生物量衍生的燃料已被广泛调查作为替代品。在生物燃料生产中,由于表征反应产物的困难,反应网络和动力学模型的发展是毫无疑问的重大挑战。因此,需要更好的方法来从可用的实验数据中检索有关反应的信息。该研究采用数据挖掘和贝叶斯学习方法来估计来自傅里叶变换红外(FTIR)光谱的半纤维素的酸和碱催化含水热解的反应网络。群集分析用于在块的块中建模系统,然后使用贝叶斯网络结构学习算法来实现反应网络。实施了三种贝叶斯网络结构学习算法以估计反应网络。来自每个的结果是相同的,表明代表反应网络的模型最可能在最佳等效空间中。该模型与基于专家的反应模型进行了比较,协议令人鼓舞。该模型的一个有用方面是其自我更新能力,即,反应模型可以提供从光谱数据中操作条件的变化的效果的定量描述。因此,该模型可用于对研究过程的实时分析。

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