A Mechanism based Data-Driven Model for Prediction of Hydrate Formation

Chaodong Tan, D. Yu, Xiaoyong Gao, Wenrong Song, Chao Tan
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Abstract

Hydrate is one of the most common challenges in flow assurance. Mechanism model or empirical model is usually adopted to predict hydrate formation under a specific condition. However, the methods are difficult to operate in real-time change of actual situation. In this paper, a mechanism-based data-driven modeling method is built to predict hydrate formation. Based on the collected data, including temperature, pressure and components, a data-driven method is introduced to identify the unknown parameters in the mechanism model. 131 groups of experimental data were collected to make a correlation analysis to determine the main components affecting hydrate formation. Four different component systems were calculated using the mechanism model (P-P model), empirical model (Makogon model) and data-driven mechanism model for comparison. Results show that the average error of the data-driven model is as low as 0.0085 MPa, and this method can overcome the irrationality of prediction caused by only using historical data or mathematical formula.
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基于机理的水合物生成预测数据驱动模型
水合物是流动保障中最常见的挑战之一。通常采用机理模型或经验模型来预测特定条件下的水合物形成。然而,这些方法难以在实际情况的实时变化中进行操作。本文建立了一种基于机理的数据驱动建模方法来预测水合物的形成。基于采集到的温度、压力、部件等数据,提出了一种数据驱动方法来识别机理模型中的未知参数。收集131组实验数据进行相关性分析,确定影响水合物形成的主要成分。采用机制模型(P-P模型)、经验模型(Makogon模型)和数据驱动机制模型对4种不同的组分体系进行了计算比较。结果表明,数据驱动模型的平均误差低至0.0085 MPa,克服了单纯使用历史数据或数学公式预测的不合理性。
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