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A Spectral AutoML approach for industrial soft sensor development: Validation in an oil refinery plant

机译:一种用于工业软件开发的光谱自动化方法:炼油厂验证

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Spectral AutoML is a platform for fast development of PAT soft sensors that considers the combined effect of pre-processing, band selection, band-wise resolution definition, hyper-parameter tuning and model estimation. Spectral AutoML was compared with models developed under the classic paradigm, and their performance assessed on an independent test set. The validation study regards the prediction of 12 different diesel fuels properties, using FTIR-ATR spectra. The proposed framework led to clearly better predictions in 8 out of the 12 properties, and minor improvements in 3 properties. The Spectral AutoML results were obtained overnight, without interfering in the daily work of the users, while the benchmark models resulted from several months of work and fine tuning of the methods. The results demonstrated the added value of the proposed Spectral AutoML approach in terms of prediction accuracy, development time of the models and reduced dependence on resident experts.
机译:光谱自动机是一种快速开发PAT软传感器的平台,该平台考虑预处理,频段选择,乐队分辨率定义,超参数调整和模型估计的组合效果。 将光谱自动机与经典范式开发的模型进行了比较,并在独立的测试集上进行了评估的性能。 验证研究关于使用FTIR-ATR光谱预测12种不同的柴油燃料特性。 所提出的框架导致在12个属性中的8个中明显更好地预测,并在3个属性中轻微改进。 光谱自动化结果是在夜间获得的,而不会干扰用户的日常工作,而基准模型则由几个月的工作和方法进行微调。 结果表明,在预测准确性,模型的开发时间和对居民专家的依赖减少的方面,提出了拟议的光谱自动化方法的附加值。

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