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Comparative analysis of methods and models for predicting biochemical methane potential of various organic substrates

机译:各种有机底物生化甲烷潜力预测方法和模型的比较分析

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Biochemical methane potential (BMP) corresponds to the maximum methane production at anaerobic digestion infinite time and is a key parameter to evaluate the suitability of substrates to obtain biogas. The main objective of this work is to explore the data available in the literature for ten categories of substrates to compare and develop new methods and mathematical models able to predict BMP. Indeed, experimental procedure is time-consuming, laborious and costly, and the development of methods or models based on properties easily assessed may be very helpful at industrial scale. In this study, three substrates (banana waste, tomato waste and winery wastewater) were tested and compared with 150 results from the literature. The analysis involved four methods (MetJ to Met_IV) and five models developed by multivariate regression (Mod_I to Mod_V). MetJ is related to elemental analysis; Met_II with the organic fraction composition: Met_Ill is associated with chemical oxygen demand (COD): Met_IV is based on NIR spectra. Regression models are combinations by grouping single variables: C, H, O, N (Mod_I); hemicellulose, lignin (LG), acid detergent fibre (ADF) (Mod_II); volatile solids (VS), COD (Mod_III); proteins (PT), carbohydrates (CRB), lipids (LP) (Mod_lV); and CRB, LP, PT, LG, ADF (Mod_V). The results showed that no significant correlation can be found between BMP and single common properties (e.g. VS or C/N ratio). However, good results may be achieved with models developed by multivariate regression R-2 from 0.93 to 0.98, and R-adj(2) from 0.91 to 0.96). The prediction of BMP based on Met_IV, which is based on NIR spectroscopy combined with a multivariate regression model, revealed to be a promising method for both data from literature as well as for substrates analyzed in the present work. (C) 2018 Elsevier B.V. All rights reserved.
机译:生化甲烷潜力(BMP)对应于无氧消化无限时间的最大甲烷产量,并且是评估底物获得沼气的适用性的关键参数。这项工作的主要目的是探索文献中可用于十类基材的数据,以比较和开发能够预测BMP的新方法和数学模型。确实,实验过程耗时,费力且昂贵,并且基于容易评估的性质的方法或模型的开发在工业规模上可能非常有帮助。在这项研究中,对三种基质(香蕉废物,番茄废物和酿酒厂废水)进行了测试,并与文献中的150多个结果进行了比较。分析涉及四种方法(MetJ到Met_IV)和通过多元回归开发的五个模型(Mod_I到Mod_V)。 MetJ与元素分析有关;具有有机馏分组成的Met_II:Met_III与化学需氧量(COD)相关:Met_IV基于近红外光谱。回归模型是通过将单个变量分组的组合:C,H,O,N(Mod_I);半纤维素,木质素(LG),酸性洗涤剂纤维(ADF)(Mod_II);挥发性固体(VS),COD(Mod_III);蛋白质(PT),碳水化合物(CRB),脂质(LP)(Mod_1V);和CRB,LP,PT,LG,ADF(Mod_V)。结果表明,在BMP和单个共同特性(例如VS或C / N比)之间没有发现显着的相关性。但是,通过多元回归R-2(从0.93至0.98,R-adj(2)从0.91至0.96)开发的模型可能会取得良好的结果。基于Met_IV的BMP预测是基于NIR光谱结合多元回归模型进行的,对于从文献中获得的数据以及在本工作中分析的底物而言,这都是一种很有前途的方法。 (C)2018 Elsevier B.V.保留所有权利。

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