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Performance prediction of fluidised bed gasification of biomass using experimental data-based simulation models

机译:基于实验数据的模拟模型对生物质流化床气化性能的预测

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Wood sawdust is gasified in air-fluidized bed with steam injection for the enrichment of product gas with hydrogen. A gasification experimental setup with sand as bed material is designed and developed for this purpose with a biomass feed rate of 10.3 kg/h. Air and steam flow rates are varied between 0.0042-0.0063 and 0-0.0072 m~3/h, respectively. Axial variations of temperature and pressure inside the reactor shell are investigated. The data for the product gas composition from the experiment are utilised to develop two models. One is a feedforward artificial neural network (ANN) model for the prediction of gasification temperature and product gas composition. The second is a Redlich-Kwong real gas equilibrium correction model incorporating tar (aromatic hydrocarbons) and unconverted char to predict the product gas composition, heating value and thermodynamic efficiencies. Good accuracy of ANN prediction with experimental results is achieved based on the computed statistical parameters of comparison such as coefficient of correlation, root mean square error (RMSE), average percentage error and covariance. The corrected equilibrium model developed by introducing correction factors for real gas equilibrium constants shows satisfactory agreement (RMSE=5.96) with the experimental values. Maximum concentration of hydrogen achieved in the experiments is 29.1 % at the equivalence ratio (ER)=0.277 and steam to biomass ratio (SBR)=2.53. The corresponding predicted values are 28.2 % for ANN model and 31.6 % for corrected equilibrium model. The corrected equilibrium model for wood sawdust is validated with major air-steam gasification experimental results of other biomass materials and is found to be 95.1 % accurate on average. It is revealed from the study that the ANN model (RMSE=2.64) is a better predictor for the product gas composition than the corrected real gas equilibrium model (RMSE=5.96). The study proposes a more comprehensive ANN model capable of simulating various process conditions in fluidised bed gasification applicable to variety of biomass feedstocks.
机译:木材锯末在空气流化床中通过注入蒸汽进行气化,以富集氢气中的产物气。为此目的,设计和开发了以沙子为床料的气化实验装置,其生物质进料速率为10.3 kg / h。空气和蒸汽的流速分别在0.0042-0.0063和0-0.0072 m〜3 / h之间变化。研究了反应器壳体内部温度和压力的轴向变化。来自实验的产物气体组成的数据用于开发两个模型。一种是前馈人工神经网络(ANN)模型,用于预测气化温度和产物气成分。第二个是Redlich-Kwong实际气体平衡校正模型,该模型结合了焦油(芳烃)和未转化的碳,可预测产物气体的组成,热值和热力学效率。基于相关系数,均方根误差(RMSE),平均百分比误差和协方差的比较统计参数,可以取得具有实验结果的ANN预测精度。通过引入实际气体平衡常数的校正因子建立的校正平衡模型显示出与实验值的令人满意的一致性(RMSE = 5.96)。在当量比(ER)= 0.277和蒸汽生物量比(SBR)= 2.53的情况下,实验中达到的最大氢气浓度为29.1%。对于ANN模型,相应的预测值为28.2%,对于校正的平衡模型,相应的预测值为31.6%。校正后的木屑平衡模型已通过其他生物质材料的主要空气蒸汽气化实验结果验证,平均准确度为95.1%。该研究表明,与校正后的实际气体平衡模型(RMSE = 5.96)相比,ANN模型(RMSE = 2.64)是产品气体成分更好的预测指标。该研究提出了一个更全面的ANN模型,该模型能够模拟流化床气化中的各种工艺条件,适用于各种生物质原料。

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