首页> 外文期刊>Energy & fuels >Quantitative X-ray Fluorescence Analysis of Biomass (Switchgrass, Corn Stover, Eucalyptus, Beech, and Pine Wood) with a Typical Commercial Multi-Element Method on a WD-XRF Spectrometer
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Quantitative X-ray Fluorescence Analysis of Biomass (Switchgrass, Corn Stover, Eucalyptus, Beech, and Pine Wood) with a Typical Commercial Multi-Element Method on a WD-XRF Spectrometer

机译:在WD-XRF光谱仪上使用典型的商用多元素方法对生物质(柳枝,、玉米秸秆,桉树,山毛榉和松木)进行X射线荧光定量分析

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摘要

Quick and reliable inorganic elemental chemical analysis of biomass (including solid biofuels) is of importance in the increasing utilization and trade of biomass. In particular, it is important for the exploitation of contaminated/dirty biomass/biomass waste, and potentially also as a tool in ascertaining the type/origin of biomass. X-ray fluorescence (XRF) spectrometry performed directly on the raw biomass with limited prior sample preparation is an attractive method for performing such inorganic elemental analysis. In the present study, we therefore carefully investigate the performance of a commercial multi-element standardless XRF method by analyzing five common biomass types (switchgrass, corn stover, eucalyptus, beech, and pine wood). Sample preparation involves milling the raw biomass using cutter and rotor mills (avoiding ball-milling) and cold-pressing the powdered samples into pellets using wax binder. XRF users often rely on this type of commercial precalibrated or standardless methods delivered with their XRF spectrometer. However, these methods are often sold without any guarantee on performance. We recently demonstrated the quite good performance of a typical commercial precalibrated/standardless method when analyzing biomass in the ideal form of certified reference material. In the present article, we report now on analysis of common raw biomass using the same method purchased with a 4 kW wavelength dispersive (WD) XRF spectrometer. The accuracy (trueness and precision) is determined by comparing the XRF data with the elemental composition obtained by standard elemental analysis (ICP-OES and ion-chromatography). The elements positively detected by the XRF are Na, Mg, Al, Si, P, S, Cl, K, Ca, Mn, Fe, Co, Ni, Cu, Zn, Sr, and maybe Mo. For elements above 25 ppm, the XRF data show a relative systematic error (bias, trueness) typically better than +/- 15% independent of the concentration. The elements present with >1000 ppm (Mg, Si, Cl, K, Ca) consistently show a positive bias of 3-18% relative. The relative precision (measured as the relative standard error) is better than +/- 5% (typically +/- 1%) for concentrations >25 ppm (obtained with 10-30 measurements). Quantifying elements below 25 ppm (Co, Ni, Cu, Zn, Sr, Mo) is possible in some cases, but it requires a more detailed study for each specific element. For example, Cu can be determined down to a few parts per million with an appropriate correction for the method bias. Occasionally, larger relative biases of up to 45-90% can occur for certain elements (Cl, Si) in certain samples, so care should be taken to carefully test the applied method for the particular samples and elements of interest. Quantification of silicon (Si) by XRF works well for concentrations >100 ppm. The XRF method can further be used to estimate the ash yield from biomass combustion with a relative bias better than +/- 10%. It is shown that the errors on the elemental composition are dominated by systematic errors (biases), and therefore, measuring the two sides of a single pellet combined with correction for any bias is the optimum approach. The five biomass types employed here, combined with the 13 certified reference materials employed in our previous study, span a broad range of biomass types with the XRF method generally producing reliable results (keeping in mind the limitations and needed bias corrections) with errors comparable to the standard reference methods.
机译:对生物质(包括固体生物燃料)进行快速可靠的无机元素化学分析,对于提高生物质的利用和贸易具有重要意义。特别地,对于污染的/肮脏的生物质/生物质废物的开发是重要的,并且潜在地也是确定生物质的类型/来源的工具。直接对原始生物质进行有限的事先样品制备的X射线荧光(XRF)光谱分析是进行此类无机元素分析的一种有吸引力的方法。因此,在本研究中,我们通过分析五种常见的生物质类型(柳枝,、玉米秸秆,桉树,山毛榉和松木)仔细研究了一种商业化的多元素无标准XRF方法的性能。样品制备涉及使用切割机和转子磨机研磨原始生物质(避免球磨),并使用蜡粘合剂将粉末状样品冷压成颗粒。 XRF用户通常依靠其XRF光谱仪提供的这种类型的商业预校准或无标准方法。但是,这些方法经常在销售时无法保证性能。最近,我们证明了当以理想的标准参考材料形式分析生物质时,典型的商业预校准/无标准方法的良好性能。在本文中,我们现在报告使用4 kW波长色散(WD)XRF光谱仪购买的相同方法分析常见的原始生物质。通过将XRF数据与通过标准元素分析(ICP-OES和离子色谱法)获得的元素组成进行比较,可以确定准确性(准确性和准确性)。 XRF阳性检测出的元素是Na,Mg,Al,Si,P,S,Cl,K,Ca,Mn,Fe,Co,Ni,Cu,Zn,Sr,甚至是Mo。对于25 ppm以上的元素, XRF数据显示相对系统误差(偏差,真实度)通常优于+/- 15%(与浓度无关)。含量> 1000 ppm的元素(Mg,Si,Cl,K,Ca)始终显示相对偏差为3-18%。对于浓度> 25 ppm(通过10-30次测量获得)的相对精度(以相对标准误差测量)优于+/- 5%(通常为+/- 1%)。在某些情况下,可以对低于25 ppm的元素(Co,Ni,Cu,Zn,Sr,Mo)进行定量,但需要对每种特定元素进行更详细的研究。例如,通过对方法偏差进行适当的校正,可以将铜确定为百万分之几。有时,某些样品中的某些元素(Cl,Si)可能会出现高达45-90%的较大相对偏差,因此应小心谨慎地测试适用于特定样品和感兴趣元素的方法。 XRF对浓度> 100 ppm的硅(Si)进行定量分析效果很好。 XRF方法可进一步用于估算生物质燃烧产生的灰分,其相对偏差优于+/- 10%。结果表明,元素组成的误差主要由系统误差(偏差)决定,因此,对单个颗粒的两侧进行测量并结合任何偏差的校正方法是最佳方法。这里使用的五种生物质类型,再加上我们先前研究中使用的13种认证参考物质,利用XRF方法通常可以产生可靠的结果(记住局限性和所需的偏差校正),其误差可与标准参考方法。

著录项

  • 来源
    《Energy & fuels》 |2015年第maraaapra期|1669-1685|共17页
  • 作者单位

    European Commiss, Joint Res Ctr, Inst Energy & Transport, NL-1755 LE Petten, Netherlands;

    Sandia Natl Labs, Livermore, CA 94550 USA;

    European Commiss, Joint Res Ctr, Inst Energy & Transport, NL-1755 LE Petten, Netherlands;

    INCAR CSIC, Inst Nacl Carbon, Oviedo 33011, Spain;

    European Commiss, Joint Res Ctr, Inst Energy & Transport, NL-1755 LE Petten, Netherlands;

    Univ London Imperial Coll Sci Technol & Med, Dept Chem Engn, London SW7 2AZ, England;

    European Commiss, Joint Res Ctr, Inst Energy & Transport, NL-1755 LE Petten, Netherlands|Bulgarian Acad Sci, Inst Mineral & Crystallog, BU-1113 Sofia, Bulgaria;

    European Commiss, Joint Res Ctr, Inst Energy & Transport, NL-1755 LE Petten, Netherlands;

    European Commiss, Joint Res Ctr, Inst Energy & Transport, NL-1755 LE Petten, Netherlands;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-18 00:40:18

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