Guangzhou Institute of Energy Conversion, Chinese Academy of Sciences (CAS Key Laboratory of Renewable Energy), Guangzhou 510640, PR China.
College of Electric and Information, Northeast Agricultural University, Harbin 150030, PR China.
Bioresour Technol. 2021 Apr;326:124745. doi: 10.1016/j.biortech.2021.124745. Epub 2021 Jan 20.
To rapidly estimate the biochemical methane potential (BMP) of feedstocks, different multivariate regression models were established between BMP and the physicochemical indexes or near-infrared spectroscopy (NIRS). Mixed fermentation feedstocks of corn stover and livestock manure were rapidly detected BMP in anaerobic co-digestion (co-AD). The results showed that the predicted accuracy of NIRS model based on characteristic wavelengths selected by multiple competitive adaptive reweighted sampling outperformed all regression models based on the physicochemical indexes. For the NIRS regression model, coefficient of determination, root mean squares error, relative root mean squares error, mean relative error and residual predictive deviation of the validation set were 0.982, 6.599, 2.713%, 2.333% and 7.605. The results reveal that the predicted accuracy of NIRS model is very high, and meet the requirements of rapid prediction of BMP for co-AD feedstocks in practical biogas engineering.
为了快速估算饲料的生物化学甲烷潜能(BMP),建立了不同的多元回归模型,将 BMP 与理化指标或近红外光谱(NIRS)相关联。采用混合发酵饲料,对玉米秸秆和牲畜粪便进行了厌氧共消化(co-AD)中的快速 BMP 检测。结果表明,基于多竞争自适应重加权采样选择的特征波长的 NIRS 模型的预测准确性优于所有基于理化指标的回归模型。对于 NIRS 回归模型,验证集的决定系数、均方根误差、相对均方根误差、平均相对误差和剩余预测偏差分别为 0.982、6.599、2.713%、2.333%和 7.605。结果表明,NIRS 模型的预测准确性非常高,满足实际沼气工程中 co-AD 饲料 BMP 快速预测的要求。