沼渣好氧堆肥种子发芽指数快速预测可行性分析
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“十二五”国家科技支撑计划项目(2012BAD47B01)、教育部新世纪优秀人才支持计划项目和国家国际科技合作专项(2015DFA90370)


Feasibility Analysis of Rapid Prediction of Seed Germination Index during Digestate Aerobic Composting
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    摘要:

    种子发芽指数是衡量好氧堆肥植物毒性和腐熟度的重要参数。以沼渣和猪粪为主要原料,麦秸和蘑菇渣为辅料,利用自行研制的智能型好氧堆肥反应器系统开展了联合好氧堆肥试验,基于获取的种子发芽指数和基本理化指标数据进行了相关性和回归建模分析研究。试验结果表明:种子发芽指数与挥发性固体、总碳、总氮、半纤维素和木质素干基相对含量以及碳氮比均具有显著的相关性(R≥0.83,Sig.为0.000)。所构建的一元和二元线性预测模型均具良好的拟合度(R≥0.81,Sig.为0.000),其中,以总碳和总氮为二元变量的种子发芽指数快速预测模型(R=0.92,SEP为7.58)具有最好的预测能力。该研究为种子发芽指数的快速预测分析提供了方法学支撑。

    Abstract:

    Seed germination index (GI) is a key indicator of plant toxicity and maturity for composting. A combined aerobic composting experiment was carried out in a selfdeveloped intelligent aerobic composting reactor system. The main materials were poultry manure digestate and pig slurry. The wheat straw and mushroom substrates were taken as bulking agents. Based on the obtained data of GI and the basic physicochemical parameters (volatile solid, VS; hemicellulose, HC; total carbon, CT; total nitrogen, NT; the ratio of total carbon to total nitrogen, CT/NT; lignin), Pearson correlation analysis and regression modeling were developed. The results showed that there were significant correlations (R≥0.83, Sig. was 0.000) between GI and the total volatile solid, total carbon, total nitrogen, hemicellulose and lignin contents on a dry basis, respectively. The unitary and binary linear models constructed had good degree of fitting (R≥0.81, Sig. was 0.000). The values of R and SEP of unitary linear models were (0.88, 9.75), (0.88, 10.32), (0.82, 12.73), (0.81, 12.77), (0.91, 8.23) and (0.91, 8.74) based on VS, HC, CT, NT, CT/NT and lignin, respectively. And the values of R and SEP of binary linear models were (0.92, 7.48) and (0.93, 7.58) using CT-NT and HClignin. In all calibrations, modeling using CT-NT as binary variables (R was 0.92, SEP was 7.58) had the best prediction efficiency. This study provides a methodology to support the rapid prediction analysis of GI. Although binary modeling using CT-NT had the best prediction efficiency, it was limited by the aerobic composting reactor volume and the number of samples obtained. Therefore, expanding the sample size should be needed to improve the model accuracy in the further research.

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黄光群,黄晶,张阳,韩鲁佳.沼渣好氧堆肥种子发芽指数快速预测可行性分析[J].农业机械学报,2016,47(5):177-182.

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  • 收稿日期:2016-02-02
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  • 在线发布日期: 2016-05-10
  • 出版日期: 2016-05-10