首页> 外文期刊>Journal of Cleaner Production >Valorization of acai bio-residue as biomass for bioenergy: Determination of effective thermal conductivity by experimental approach, empirical correlations and artificial neural networks
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Valorization of acai bio-residue as biomass for bioenergy: Determination of effective thermal conductivity by experimental approach, empirical correlations and artificial neural networks

机译:生物能源综合生物残基的算法:实验方法,经验相关性和人工神经网络测定有效热导率

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Current concerns about the depletion of fossil fuels and global warming led to new policies put into place for the use of agro-industrial residues as biomass for thermochemical conversion. Acai berry residues are large-scale agro-industrial by-products that can be used in the production of bioenergy. Biomass effective thermal conductivity is one of the parameters that affect efficiency in the bioenergy process. Once research about acai berry residues as biomass for bioenergy is in its initial stages, prior determination of thermal conductivity may help future optimization studies towards high process efficiency and low operating and capital costs. In this work, it is shown that a simple experimental approach, together with a simple neural model, may allow initial assessment regarding reactor throughput and process cost. This is the main contribution of this work. Results from physical characterization, thermogravimetric analysis, and differential scanning calorimetry of the biomass were reported and discussed. Effective thermal conductivity as a function of moisture content and heating rate was experimentally determined by the line heat source method and predicted by artificial neural networks, empirical correlations proposed by literature, and multiple linear regression analysis. Four values of biomass moisture content were studied, 30.97%, 25.94%, 18%, and 11.86% (wet basis) and two values of heating rate, 4.16 and 16.74 W.m(-1). The experimental values lay in the range 0.136-0.325 W.m(-1).K-1, typical for common biomass and insulation materials. Such low values are not interesting for reactor design purposes since the dynamics of the thermochemical conversion is less effective. This leads to lower reactor throughput, which must be compensated by increasing reactor effective volume, translating to high capital and process costs. The findings obtained in this work have shown that thermal conductivity can be simply improved by increasing the heating rate. The developed neural model, which was superior to empirical correlations and multiple linear regression, accurately predicted experimental values outside the database. Simulation results have shown that artificial neural networks are a potential tool to provide means for understanding the influence of biomass properties and process conditions on a reactor design parameter like thermal conductivity. A simple neural model may contribute to the optimization and design studies towards efficient thermochemical conversion processes of acai berry residues, which may help to provide a proper destination to those by-products. (c) 2020 Elsevier Ltd. All rights reserved.
机译:目前对化石燃料枯竭和全球变暖的担忧导致了新政策,以利用农业工业残留物作为热化学转化的生物量。 Acai Berry残留物是大型农业工业副产品,可用于生产生物能源。生物质有效的导热性是影响生物能源过程效率的参数之一。一旦对生物能量的生物量进行了关于生物塑料的亚武术残留物的研究是其初始阶段,导热率的先前测定可能有助于未来的优化研究高过程效率和低运营和资本成本。在这项工作中,表明一种简单的实验方法与简单的神经模型一起,可以允许关于反应堆产量和工艺成本的初步评估。这是这项工作的主要贡献。据报道,物理表征,热重分析和差分扫描量热法报告并讨论。作为水分含量的函数和加热速率的有效导热率通过线热源方法实验确定,由人工神经网络预测,文献提出的经验相关性和多元线性回归分析。研究了生物质水分含量的四个值,30.97%,25.94%,18%和11.86%(湿法)和加热速率的两个值,4.16和16.74w(-1)。实验值置于0.136-0.325 W.k-1的范围内,典型的普通生物质和绝缘材料。由于热化学转换的动态效果较低,因此对电抗器设计目的的这种低值不太有趣。这导致反应堆通量降低,这必须通过增加反应堆有效量,转化为高资本和工艺成本来补偿。在该工作中获得的发现表明,通过增加加热速率可以简单地改善导热率。发达的神经模型,优于经验相关性和多元线性回归,准确地预测数据库外的实验值。仿真结果表明,人工神经网络是一种潜在的工具,用于提供理解生物量特性和工艺条件对热导率的反应器设计参数的影响的装置。一个简单的神经模型可能有助于对Acai Berry残留物的有效热化学转换过程的优化和设计研究,这可能有助于为这些副产物提供适当的目的地。 (c)2020 elestvier有限公司保留所有权利。

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