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Predictive Capability Assessment of Probabilistic Machine Learning Models for Density Prediction of Conventional and Synthetic Jet Fuels

机译:常规和合成喷射燃料密度预测概率机学习模型的预测能力评估

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摘要

Machine Learning (ML) models are increasingly applied in the field of jet fuel property predictions due to their ability of modeling a high number of complex composition–property relationships directly on measurement data. Their applicability is still limited as for safety relevant use cases like synthetic fuel approval or aircraft design consequences of prediction errors might be too severe to be acceptable. For Machine Learning algorithms, the predictive capability strongly depends on the data utilized for the training of the models. Predictions for fuels that differ from the training data might have uncertainties that need to be systematically considered. We present an approach of utilizing the probabilistic ML algorithm Gaussian Process Regression to model jet fuel properties and estimate the uncertainty that results from limited training data. We apply this approach for the example of density over a range of −40 to 140 °C. To assess the influence of synthetic fuels on the predictive capability, two models are studied, one trained exclusively on conventional fuels data and the other one trained on the same conventional fuels and additional synthetic fuels. To quantify the predictive capability of the models, we introduce three metrics that measure the accuracy and precision of the prediction as well as the validity and reliability of the estimated prediction interval. Results show that prediction intervals can correctly be estimated by both models and a valid estimation of the predictive capability is possible. Furthermore, the addition of synthetic fuels data drastically improves the accuracy, reduces the uncertainty, and is necessary to achieve adequate predictions for the considered hold-out fuels.
机译:由于它们在测量数据上直接模拟了大量复杂的构图性关系的能力,因此机器学习(ML)模型越来越多地应用于喷气燃料性能预测。它们的适用性仍然是有限的,安全相关用例,如合成燃料批准或飞机设计后果的预测误差可能太严重,无法接受。对于机器学习算法,预测性能力强烈取决于用于培训模型的数据。与培训数据不同的燃料预测可能具有需要系统地考虑的不确定性。我们提出了一种利用概率ML算法高斯进程回归对模型喷射燃料特性的方法,并估计由有限训练数据产生的不确定性。我们将这种方法应用于密度范围为-40至140°C。为了评估合成燃料对预测能力的影响,研究了两种型号,专门针对传统燃料数据培训,另一个培训在相同的常规燃料和其他合成燃料上培训。为了量化模型的预测能力,我们介绍了三项测量预测的准确性和精度的三个度量,以及估计预测间隔的有效性和可靠性。结果表明,可以通过两个模型来估计预测间隔,并且可以进行预测能力的有效估计。此外,合成燃料数据的增加大大提高了准确性,降低了不确定性,并且是实现对被认为的扑燃燃料的充分预测。

著录项

  • 来源
    《Energy & fuels》 |2021年第3期|2520-2530|共11页
  • 作者单位

    DLR German Aerospace Center Institute of Combustion Technology MAT;

    DLR German Aerospace Center Institute of Combustion Technology MAT;

    DLR German Aerospace Center Institute of Combustion Technology MAT;

    DLR German Aerospace Center Institute of Combustion Technology MAT;

    DLR German Aerospace Center Institute of Combustion Technology MAT;

  • 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
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