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首页> 外文期刊>Bioresource Technology: Biomass, Bioenergy, Biowastes, Conversion Technologies, Biotransformations, Production Technologies >Regression models of ultimate methane yields of fruits and vegetable solid wastes, sorghum and napiergrass on chemical composition
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Regression models of ultimate methane yields of fruits and vegetable solid wastes, sorghum and napiergrass on chemical composition

机译:果蔬固废,高粱和萘草的最终甲烷产量的化学组成回归模型

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摘要

Several fractions of fruits and vegetable solid wastes (FVSW), sorghum and napiergrass were analyzed for total solids (TS), volatile solids (VS), total organic carbon, total kjeldahl nitrogen, total soluble carbohydrate, extractable protein, acid-detergent fiber (ADF), lignin, cellulose and ash contents. Their ultimate methane yields (B-o) were determined using the biochemical methane potential (BMP) assay. A series of simple and multiple regression models relating the B-o to the various substrate constituents were generated and evaluated using computer statistical software, Statistical Package for Social Sciences (SPSS). The results of simple regression analyses revealed that, only weak relationship existed between the individual components such as carbohydrate, protein, ADF, lignin and cellulose versus B-o. A regression of B-o, versus combination of two variables as a single independent variable such as carbohydrate/ ADF and carbohydrate + protein/ADF also showed that the relationship is not strong. Thus it does not appear possible to relate the B-o of FVSW, sorghum and napiergrass with single compositional characteristics. The results of multiple regression analyses showed promise and the relationship appeared to be good. When ADF and lignin/ADF were used as independent variables, the percentage of variation accounted for by the model is low for FVSW (r(2) = 0.665) and sorghum and napiergrass (r(2) = 0.746). Addition of nitrogen, ash and total soluble carbohydrate data to the model had a significantly higher effect on prediction of B-o of these wastes with the r(2) values ranging from 0.9 to 0.99. More than 90% of variation in B-o of FVSW could be accounted for by the models when the variables carbohydrate, lignin, lignin/ADF, nitrogen and ash (r(2) = 0.904), carbohydrate, ADF, lignin/ADF, nitrogen and ash (r(2) = 0.90) and carbohydrate/ADF, lignin/ADF, lignin and ash (r(2) = 0.901) were used. All the models have low standard error values, which indicate the amount of spread is less. Thus, considering only the higher r(2) values, six models are proposed for predicting the B-o based on FVSW data and sorghum and napiergrass data. It would be more convenient if B-o could be predicted by analyzing the chemical composition of the substrate rather than performing the long-term batch fermentation. To test the validity of the regression models, chemical constituents of FVSW that were not included in the regression analyses were determined and their experimental B. were determined by BMP assay. All the six models were used to predict the BO from the chemical constituents of these FVSW. It was found that most of the predicted values were within 20% of the experimental B-o in models 1, 3 and 6. Since models 3 and 6 used the same variables namely, total soluble carbohydrate, ADF, lignin/ADF, nitrogen and ash, B. can be predicted from these five chemical constituents which accounts for more than 90% of the variation in B-o (r(2) > 90). (c) 2006 Elsevier Ltd. All rights reserved.
机译:分析了水果和蔬菜固废(FVSW),高粱和萘草的几个部分的总固体(TS),挥发性固体(VS),总有机碳,总凯氏氮,总可溶性碳水化合物,可提取的蛋白质,酸洗纤维( ADF),木质素,纤维素和灰分含量。使用生化甲烷潜力(BMP)测定法确定其最终甲烷产量(B-o)。使用计算机统计软件“社会科学统计软件包”(SPSS)生成并评估了一系列将B-o与各种底物成分相关联的简单和多元回归模型。简单回归分析的结果表明,与碳水化合物相比,碳水化合物,蛋白质,ADF,木质素和纤维素等单个成分之间仅存在弱关系。 B-o相对于两个变量作为单个自变量(例如碳水化合物/ ADF和碳水化合物+蛋白质/ ADF)的组合的回归也表明,这种关系并不牢固。因此,似乎不可能将FVSW,高粱和萘草的B-o与单一成分特征相关联。多元回归分析的结果表明前景良好,并且关系似乎很好。当将ADF和木质素/ ADF用作自变量时,对于FVSW(r(2)= 0.665)和高粱和萘哌草(r(2)= 0.746),模型所占的变化百分比较低。将氮,灰分和总可溶性碳水化合物数据添加到模型中,对这些废物的B-o预测具有显着更高的影响,r(2)值范围为0.9至0.99。当变量变量碳水化合物,木质素,木质素/ ADF,氮和灰分(r(2)= 0.904),碳水化合物,ADF,木质素/ ADF,氮和灰分时,模型可以解释FVSW Bo的超过90%的变化。使用灰分(r(2)= 0.90)和碳水化合物/ ADF,木质素/ ADF,木质素和灰分(r(2)= 0.901)。所有模型的标准误差值均较低,这表明价差较小。因此,仅考虑较高的r(2)值,提出了六个模型用于基于FVSW数据以及高粱和萘草数据预测B-o。如果可以通过分析底物的化学组成而不是进行长期分批发酵来预测B-o,将更加方便。为了测试回归模型的有效性,确定了回归分析中未包含的FVSW的化学成分,并通过BMP分析确定了其实验B.。六个模型都用于根据这些FVSW的化学成分预测BO。发现在模型1、3和6中,大多数预测值都在实验Bo的20%以内。由于模型3和6使用相同的变量,即总可溶性碳水化合物,ADF,木质素/ ADF,氮和灰分,可以从这五个化学成分中预测出B.,这五个元素占Bo变化的90%以上(r(2)> 90)。 (c)2006 Elsevier Ltd.保留所有权利。

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