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首页> 外文期刊>Industrial Crops and Products >Optimization of specific methane yield prediction models for biogas crops based on lignocellulosic components using non-linear and crop-specific configurations
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Optimization of specific methane yield prediction models for biogas crops based on lignocellulosic components using non-linear and crop-specific configurations

机译:基于木质纤维素组分使用非线性和作物特异性配置的沼气作物特定甲烷产量预测模型的优化

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Basing the prediction of specific methane yield (SMY) of crop biomass on lignocellulosic components has become a promising tool in biogas plant management and bioenergy policies. Most studies on SMY prediction provide linear or non-linear models across crops with lignin content as major regressor variable. To determine the effect of crop-specific regressions, a meta-analysis was conducted using data from 14 published studies (518 observations) and three of the authors' own experiments (160 observations). In total, 678 observations of biomass components and SMY from 13 potential biogas crops were included. The data were used to validate seven published models and both develop and cross-validate new linear and non-linear models with and without crop specific regressions. Available models showed correlations between r = 0.12 and 0.51. New models reached correlations of up to r = 0.66. Both crop-specific intercepts and slopes as well as non-linear regressions significantly increased model predictability. Of these, crop-specific intercepts brought about the largest improvement but still allowed easy use and interpretability. Therefore, it was shown that the use of biomass source information can help optimize the precision of SMY prediction.
机译:基于木质纤维素组分对农作物生物量的特异性甲烷产率(SMY)的预测已成为沼气植物管理和生物能源政策中的有希望的工具。关于Smy预测的大多数研究提供了跨木质素内容的作物作为主要回归变量的线性或非线性模型。为了确定作物特异性回归的效果,使用来自14项公布的研究(518个观察)和三个作者自己的实验(160个观察)的数据进行了Meta分析。包括总共678种生物质组分和来自13种潜在沼气作物的Smy的观察结果。数据用于验证七种已发布的模型,也可以使用和不具有裁剪特定回归的开发和交叉验证新的线性和非线性模型。可用模型显示r = 0.12和0.51之间的相关性。新模型达到r = 0.66的相关性。裁剪特异性截取和斜坡以及非线性回归显着提高了模型可预测性。其中,特异性截取带来了最大的改进,但仍允许容易使用和解释性。因此,表明使用生物质源信息可以帮助优化Smy预测的精度。

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