Syguła Ewa, Świechowski Kacper, Stępień Paweł, Koziel Jacek A, Białowiec Andrzej
Faculty of Life Sciences and Technology, Institute of Agricultural Engineering, Wrocław University of Environmental and Life Sciences, 37/41 Chełmońskiego Str., 51-630 Wrocław, Poland.
Department of Agricultural and Biosystems Engineering, Iowa State University, Ames, IA 50011, USA.
Materials (Basel). 2020 Dec 24;14(1):49. doi: 10.3390/ma14010049.
The decrease in the calorific value of refuse-derived fuel (RDF) is an unintended outcome of the progress made toward more sustainable waste management. Plastics and paper separation and recycling leads to the overall decrease in waste's calorific value, further limiting its applicability for thermal treatment. Pyrolysis has been proposed to densify energy in RDF and generate carbonized solid fuel (CSF). The challenge is that the feedstock composition of RDF is variable and site-specific. Therefore, the optimal pyrolysis conditions have to be established every time, depending on feedstock composition. In this research, we developed a model to predict the higher heating value (HHV) of the RDF composed of eight morphological refuse groups after low-temperature pyrolysis in CO (300-500 °C and 60 min) into CSF. The model considers cardboard, fabric, kitchen waste, paper, plastic, rubber, PAP/AL/PE (paper/aluminum/polyethylene) composite packaging pack, and wood, pyrolysis temperature, and residence time. The determination coefficients (R) and Akaike information criteria were used for selecting the best model among four mathematical functions: (I) linear, (II) second-order polynomial, (III) factorial regression, and (IV) quadratic regression. For each RDF waste component, among these four models, the one best fitted to the experimental data was chosen; then, these models were integrated into the general model that predicts the HHV of CSF from the blends of RDF. The general model was validated experimentally by the application to the RDF blends. The validation revealed that the model explains 70-75% CSF HHV data variability. The results show that the optimal pyrolysis conditions depend on the most abundant waste in the waste mixture. High-quality CSF can be obtained from wastes such as paper, carton, plastic, and rubber when processed at relatively low temperatures (300 °C), whereas wastes such as fabrics and wood require higher temperatures (500 °C). The developed model showed that it is possible to achieve the CSF with the highest HHV value by optimizing the pyrolysis of RDF with the process temperature, residence time, and feedstock blends pretreatment.
垃圾衍生燃料(RDF)热值的降低是在实现更可持续的废物管理过程中产生的意外结果。塑料和纸张的分离与回收导致废物热值总体下降,进一步限制了其热处理适用性。有人提出通过热解来浓缩RDF中的能量并生成碳化固体燃料(CSF)。挑战在于RDF的原料组成是可变的且因地点而异。因此,每次都必须根据原料组成确定最佳热解条件。在本研究中,我们开发了一个模型,用于预测由八个形态学垃圾组组成的RDF在CO中低温热解(300 - 500°C,60分钟)转化为CSF后的高热值(HHV)。该模型考虑了纸板、织物、厨余垃圾、纸张、塑料、橡胶、纸/铝/聚乙烯(PAP/AL/PE)复合包装、木材、热解温度和停留时间。使用决定系数(R)和赤池信息准则在四个数学函数中选择最佳模型:(I)线性,(II)二阶多项式,(III)因子回归,和(IV)二次回归。对于每个RDF废物成分,在这四个模型中选择最适合实验数据的模型;然后,将这些模型整合到从RDF混合物预测CSF的HHV的通用模型中。通过将该通用模型应用于RDF混合物进行实验验证。验证表明该模型解释了70 - 75%的CSF HHV数据变异性。结果表明,最佳热解条件取决于混合废物中含量最多的废物。当在相对较低温度(300°C)下处理时,可以从纸张、纸箱、塑料和橡胶等废物中获得高质量的CSF,而织物和木材等废物则需要更高温度(500°C)。所开发的模型表明,通过优化RDF的热解过程温度、停留时间和原料混合物预处理,可以获得具有最高HHV值的CSF。