Partial Least Square Regression (PLSR)-A new alternative XRD method for electrolytic bath analysis
X-ray diffraction (XRD) is a standard tool for process control in aluminium industries.Varying raw material qualities, the use of different fluxes and increasing prices require a better control of processes and a more efficient use of energy.Traditionally quality control of electrolytic bathes, alumina and bauxites has relied on calibration based single peak methods or more advanced full pattern techniques.A common method is the Rietveld quantification which uses structural information to predict information from the full pattern using physical models and fitting techniques.Sometimes this approach is stretched to its limits, especially when no realistic physical model is available, or when the model is either too complex or doesnt fit to reality.In such cases there is an elegant alternative: multivariate statistics and Partial Least-Squares Regression (PLSR), a method that does not require pure phases, crystal structures or complex modelling of peak shapes are required.This paper will describe the advantages of using PLSR for the determination of electrolytic baths, alumina and bauxite directly from the XRD pattern.As PLSR and Rietveld are completely independent from each other, both methods can be simultaneously applied to the same measurement.
Electrolytic bath alumina bauxite XRD PLSR Rietveld refinement
Uwe K(o)nig Nicholas Norberg
PANalytical B.V, Lelyweg 1, 7600AA Almelo, Netherlands
国际会议
32th International Conference & Exhibition ICSOBA-2014(第32届国际铝土矿、氧化铝和铝工业技术学术年会)
郑州
英文
467-474
2014-10-12(万方平台首次上网日期,不代表论文的发表时间)