Energy Research Institute, School of Chemical and Process Engineering, University of Leeds, LS2 9JT, UK.
Energy Engineering Group, Mechanical Engineering, University of Sheffield, S10 2TN, UK.
Waste Manag. 2016 Jul;53:40-54. doi: 10.1016/j.wasman.2016.04.024. Epub 2016 May 2.
This work proposes a novel and rigorous substrate characterisation methodology to be used with ADM1 to simulate the anaerobic digestion of solid organic waste. The proposed method uses data from both direct substrate analysis and the methane production from laboratory scale anaerobic digestion experiments and involves assessment of four substrate fractionation models. The models partition the organic matter into a mixture of particulate and soluble fractions with the decision on the most suitable model being made on quality of fit between experimental and simulated data and the uncertainty of the calibrated parameters. The method was tested using samples of domestic green and food waste and using experimental data from both short batch tests and longer semi-continuous trials. The results showed that in general an increased fractionation model complexity led to better fit but with increased uncertainty. When using batch test data the most suitable model for green waste included one particulate and one soluble fraction, whereas for food waste two particulate fractions were needed. With richer semi-continuous datasets, the parameter estimation resulted in less uncertainty therefore allowing the description of the substrate with a more complex model. The resulting substrate characterisations and fractionation models obtained from batch test data, for both waste samples, were used to validate the method using semi-continuous experimental data and showed good prediction of methane production, biogas composition, total and volatile solids, ammonia and alkalinity.
本工作提出了一种新颖而严格的底物特性描述方法,与 ADM1 结合使用以模拟固体有机废物的厌氧消化。所提出的方法使用直接底物分析和实验室规模厌氧消化实验的甲烷产量数据,并涉及评估四种底物分级模型。这些模型将有机物分为颗粒相和可溶相的混合物,最适合的模型是根据实验和模拟数据之间的拟合质量以及校准参数的不确定性来决定的。该方法使用家庭绿色垃圾和食品垃圾的样本进行了测试,并使用短期批量测试和更长的半连续试验的实验数据。结果表明,一般来说,增加分级模型的复杂性可以提高拟合度,但也会增加不确定性。对于绿色垃圾,使用批量测试数据时,最适合的模型包括一个颗粒相和一个可溶相,而对于食品垃圾,则需要两个颗粒相。对于更丰富的半连续数据集,参数估计的不确定性较小,因此可以使用更复杂的模型来描述底物。从批量测试数据获得的两种废物样本的底物特性和分级模型,用于使用半连续实验数据验证该方法,并且对甲烷产量、沼气成分、总固体和挥发性固体、氨和碱度的预测表现良好。