Prediction of oil pipeline process operating parameters based on mechanism and data mining

Lixin Wei, Lan Wang, Qiang Zhou, Yuhang Gao
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Abstract

Precisely forecasting the operational characteristics of oil pipelines is essential for developing rational design, production, and operation strategies, as well as reducing energy consumption and saving energy. Due to significant disparities in the computation outcomes of conventional mechanism models and the inadequate performance of machine learning models when handling limited sample data, their conclusions likewise lack tangible significance. In this study, a novel physics-guided neural network (PGNN) model, which integrates mechanisms with machine learning models, is introduced. The proposed model incorporates essential physical intermediate factors that impact the temperature and pressure of oil pipelines as artificial neurons within the loss function. Additionally, an adaptive moment estimate approach is employed to optimize the parameters of the model. Through a comparative analysis of various models' predictive capabilities on an oil pipeline, it was shown that PGNN has the highest level of accuracy in forecasting pipeline temperature and pressure. Furthermore, PGNN demonstrates the ability to generate satisfactory prediction outcomes even with a limited sample size. Simultaneously, the predictive outcomes of PGNN exhibit a stronger correlation with variables that have a direct impact on temperature and pressure.
基于机理和数据挖掘的石油管道工艺运行参数预测
精确预测输油管道的运行特性对于制定合理的设计、生产和运营策略以及降低能耗和节约能源至关重要。由于传统机制模型的计算结果存在明显差异,机器学习模型在处理有限样本数据时性能不足,其结论同样缺乏实际意义。本研究引入了一种新型物理引导神经网络(PGNN)模型,该模型将机制与机器学习模型相结合。该模型将影响输油管道温度和压力的重要物理中间因素作为损失函数中的人工神经元。此外,还采用了自适应矩估计方法来优化模型参数。通过比较分析各种模型对输油管道的预测能力,结果表明 PGNN 在预测输油管道温度和压力方面具有最高的准确性。此外,即使样本量有限,PGNN 也能产生令人满意的预测结果。同时,PGNN 的预测结果与对温度和压力有直接影响的变量有更强的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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