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Co-gasification of High Ash Coal-Biomass Blends in a Fluidized Bed Gasifier: Experimental Study and Computational Intelligence-Based Modeling

机译:高灰煤-生物质混合物在流化床气化炉中的共气化:实验研究和基于计算智能的建模

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摘要

Co-gasification (COG) is a clean-coal technology that uses a binary blend of coal and biomass for generating the product gas; it is environment-friendly since it emits lesser quantities of pollutants compared to the coal gasification process. Although coals found in many countries contain high percentages of ash, co-gasification studies involving such coals, and the process modeling thereof, are rare. Accordingly, this study presents results of the co-gasification experiments conducted in a fluidized-bed gasifier (FBG) pilot plant using as a feed the blends of high ash Indian coals with three biomasses, namely, rice husk, press mud, and sawdust. Since the underlying physicochemical phenomena are complex and nonlinear, modeling of the COG process has been performed using three computational intelligence (CI)-based methods namely, genetic programming, artificial neural networks, and support vector regression. Each of these formalisms was employed separately to develop models predicting four COG performance variables, namely, total gas yield, carbon conversion efficiency, heating value of product gas, and cold gas efficiency. All the CI-based models exhibit an excellent prediction accuracy and generalization performance. The co-gasification experiments and their modeling presented here for a pilot-plant FBG can be gainfully utilized in the efficient design and operation of the corresponding commercial scale co-gasifiers utilizing high ash coals.
机译:共气化(COG)是一种清洁煤技术,它使用煤和生物质的二元混合物来产生产物气。它是环保的,因为与煤气化过程相比,它排放的污染物更少。尽管在许多国家/地区发现的煤中灰分含量很高,但涉及这种煤的共气化研究及其过程模型很少见。因此,本研究介绍了在流化床气化炉(FBG)中试工厂中进行的共气化实验的结果,该实验使用高灰分印度煤与三种生物质(即稻壳,压泥和锯末)的混合物作为原料。由于潜在的物理化学现象是复杂且非线性的,因此已使用三种基于计算智能(CI)的方法对COG过程进行建模,即遗传编程,人工神经网络和支持向量回归。分别采用这些形式主义来开发模型,以预测四个COG性能变量,即总气体产量,碳转化效率,产品气的热值和冷气效率。所有基于CI的模型都具有出色的预测准确性和泛化性能。此处介绍的用于中试工厂FBG的共气化实验及其模型可有效地利用相应的利用高灰分煤的商业规模的共气化炉进行有效的设计和操作。

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