多产品管道中污染长度确定的机器学习模型的开发

IF 2.6 Q3 ENERGY & FUELS Upstream Oil and Gas Technology Pub Date : 2023-02-01 DOI:10.1016/j.upstre.2022.100085
N. Uwaezuoke, C.F. Obiora, K.C. Igwilo, A. Kerunwa, E.O. Nwanwe
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引用次数: 1

摘要

批量输送会导致产品管道中流体在整个行程中受到污染。数学模型一直在使用。Python的机器学习,由于效率更高,被应用于确定污染长度。开发了六个模型,并开发了准确率为97.4%、RMSE得分为262.5的最佳模型。它以更高的精度进行预测,并根据输入变量对混合长度的影响对其进行准确排序。行程对管道中污染量的影响最大,其次是雷诺数和管道直径。
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Development of machine learning model for determination of contamination length in a multi-product pipeline

Batch transfer results in contamination over the length of travel of the fluids in product pipelines. Mathematical models have been in use. Machine learning with Python, due to higher efficiency was applied to determine contamination length. Six models were developed and the best with an accuracy of 97.4% and RMSE score of 262.5 was developed. It predicts with higher precision and also accurately ranks the input variables in order of their influence on transmix length. The distance of travel had the highest influence on the amount of contamination in a pipeline, followed by Reynolds number and pipe diameter.

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