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首页> 外文期刊>Journal of near infrared spectroscopy >Temperature and moisture insensitive prediction of biomass calorific value from near infrared spectra using external parameter orthogonalization
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Temperature and moisture insensitive prediction of biomass calorific value from near infrared spectra using external parameter orthogonalization

机译:使用外部参数正交化从近红外光谱近近红外光谱的温度和湿度不敏感预测

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摘要

In the pulp and paper and biofuel industries, real-time online characterization of biomass gross calorific value is of critical importance to determine its quality and price and for process optimization. Near infrared spectroscopy is a relatively low-cost technology that could potentially be used for such an application. However, the near infrared spectra are also influenced by biomass temperature and moisture content. In this study, external parameter orthogonalization is employed to remove simultaneously the influence of temperature and moisture content on the spectra before predicting gross calorific value. External parameter orthogonalization is of particular interest when one desires to transfer information from one modeling experiment to another, such as when developing a calibration model for a new property from the same material, or when it would be more efficient to divide the experimental effort. External parameter orthogonalization (EPO) was found to be an effective method for desensitizing a partial least squares calibration model to the influence of temperature and moisture content, enabling robust and accurate prediction of biomass gross calorific value. Partial least square models developed with external parameter orthogonalization always provided equal or better performance than models developed without external parameter orthogonalization. The paper shows that experimental efforts and costs can be reduced by approximately one half while maintaining prediction accuracy and model robustness.
机译:在纸浆和纸和生物燃料工业中,实时在线表征生物质总量热值是重大重要性,以确定其质量和价格以及流程优化。近红外光谱是一种相对低成本的技术,可能是可能用于这种应用。然而,近红外光谱也受生物质温度和水分含量的影响。在该研究中,采用外部参数正交化以同时去除温度和水分含量对光谱上的影响,然后预测热量值。当一个人希望将信息从一个建模实验转移到另一种建模实验时,外部参数正交化特别感兴趣,例如当从相同材料开发新属性的校准模型时,或者当它更有效地划分实验努力时。发现外部参数正交(EPO)是一种有效的方法,用于将部分最小二乘校准模型校准到温度和水分含量的影响,从而实现生物质总热值的稳健和准确的预测。使用外部参数正交开发的部分最小二乘型号始终提供的性能等于或更好的性能,而不是没有外部参数正交化的模型。本文表明,实验努力和成本可以减少大约一半,同时保持预测准确性和模型稳健性。

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