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Comparison of spectroscopic techniques for the determination of Kjeldahl and ammoniacal nitrogen content of farmyard manure.

机译:光谱法测定凯氏定氮法和农家粪肥中氨氮含量的比较

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The feasibility of determining the nitrogen content of farmyard manure using infrared spectroscopy was investigated. Fifteen samples each of cattle, pig, and turkey manure were analyzed by three infrared techniques: Fourier transform mid-infrared (MIR), using attenuated total reflection (ATR); near-infrared reflectance (NIR-R); and near-infrared optothermal photoacoustic (NIR-OT). The near-infrared measurements were made at wavelengths determined respectively by four (NIR-OT) and five (NIR-R) band-pass filters. The total nitrogen (using the Kjeldahl method) and volatile (ammoniacal) nitrogen contents of all samples were measured by wet chemistry. Internally cross-validated (ICV) partial least-squares (PLS) regression was then used to obtain calibrations for the nitrogen content. The data sets obtained by each technique were treated separately. Within these sets, data from each manure type were treated both separately and combined: the best predictive ability was obtained by combining data from all three manure types. From the combined data set, the residual standard deviations and correlation coefficients for the ICV-predicted versus actual Kjeldahl nitrogen content were, respectively, 6772 mg/kg dry wt, 0.862 (MIR); 9434 mg/kg dry wt, 0.771 (NIR-OT); and 8943 mg/kg dry wt, 0.865 (NIR-R). For the ammoniacal nitrogen content, the residual standard deviations and correlation coefficients were 3869 mg/kg dry wt, 0.899 (MIR); 6079 mg/kg dry wt, 0.820 (NIR-OT); and 3498 mg/kg dry wt, 0.961 (NIR-R).
机译:研究了使用红外光谱法测定农家肥氮含量的可行性。通过三种红外技术分别分析了牛,猪和火鸡粪便的15个样品:使用衰减全反射(ATR)的傅立叶变换中红外(MIR);近红外反射率(NIR-R);和近红外光热光声(NIR-OT)。在分别由四个(NIR-OT)和五个(NIR-R)带通滤光片确定的波长下进行近红外测量。通过湿化学法测量所有样品的总氮(使用凯氏定氮法)和挥发性(氨)氮含量。然后使用内部交叉验证(ICV)偏最小二乘(PLS)回归获得氮含量的校准值。通过每种技术获得的数据集分别进行处理。在这些组中,分别处理和组合来自每种肥料类型的数据:通过组合来自所有三种肥料类型的数据可以获得最佳的预测能力。根据组合数据,ICV预测的凯氏氮含量与实际凯氏氮含量的残留标准偏差和相关系数分别为6772 mg / kg干重,0.862(MIR); 9434 mg / kg干重,0.771(NIR-OT);和8943 mg / kg干重,0.865(NIR-R)。对于氨氮含量,残留标准偏差和相关系数为3869 mg / kg干重,0.899(MIR); 6079 mg / kg干重,0.820(NIR-OT);和3498 mg / kg干重,0.961(NIR-R)。

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