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Stoichiometric Equilibrium Modelling of Biomass Gasification: Validation of Artificial Neural Network Temperature Difference Parameter Regressions

机译:生物质气化的化学计量平衡模型:人工神经网络温度差参数回归的验证

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The combined use of an equilibrium model and artificial neural network (NN) regressions has been investigated for modelling biomass gasification.The benefits of this approach are to improve the accuracy of equilibrium calculations,and to prevent the NN model from learning mass and energy balances,thereby minimising experimental data requirements.A complete stoichiometry is formulated,and corresponding reaction temperature difference parameters computed under the constraint of the non-equilibrium distribution of gasification products determined by mass balance data reconciliation.The NN regressions relate temperature differences to fuel composition and gasifier operating conditions.The application of Bootstrap and Bayesian regularisation validation algorithms has been investigated to prevent the NN from overfitting the data,and for estimating prediction intervals (PI).Given the prior knowledge available from experimental data,PI become of particular interest for determining whether a regression is indeed required,or whether it is reasonable to consider a given reaction temperature difference independent of composition and operation variables.The results of a preliminary investigation,illustrated with atmospheric air gasification fluidised bed reactor data,indicate that for the reactions relating to the equilibrium of major gas phase species (the water gas shift reaction and ammonia formation from nitrogen and hydrogen) the temperature difference could be constant.Furthermore,the shift reaction might be at equilibrium.Char,light hydrocarbon,and tar formation reaction temperature differences appear to be more strongly correlated to changes in operating conditions.
机译:已经研究了将平衡模型与人工神经网络(NN)回归结合使用来建模生物质气化的方法。这种方法的好处是提高平衡计算的准确性,并防止NN模型学习质量和能量平衡,制定了完整的化学计量比,并在通过质量平衡数据对账确定的气化产物非平衡分布的约束下计算了相应的反应温度差参数.NN回归将温度差与燃料成分和气化炉运行相关已经研究了Bootstrap和贝叶斯正则化验证算法的应用,以防止NN过度拟合数据并估计预测间隔(PI)。鉴于从实验数据中获得的先验知识,PI对于确定是否满足条件具有特别的意义。回覆确实需要进行回归分析,或者是否合理地考虑给定的反应温度差而不受成分和操作变量的影响是合理的。初步研究的结果以大气气化流化床反应器数据为例,表明与平衡有关的反应在主要气相物种(水煤气变换反应以及由氮和氢形成氨)的温度差可以是恒定的。此外,变换反应可能处于平衡状态。焦炭,轻烃和焦油形成反应的温度差似乎是与操作条件的变化更紧密相关。

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