Artificial Intelligence, Machine Learning, and Smart Grid Technology Research Unit, Department of Electrical Engineering, Faculty of Engineering, Chulalongkorn University, Bangkok, 10330, Thailand.
School of Chemical and Bioprocess Engineering, University College Dublin, Belfield, Dublin, D04 V1W8, Ireland.
Sci Rep. 2022 Aug 11;12(1):13642. doi: 10.1038/s41598-022-17871-z.
Gas hydrates are progressively becoming a key concern when determining the economics of a reservoir due to flow interruptions, as offshore reserves are produced in ever deeper and colder waters. The creation of a hydrate plug poses equipment and safety risks. No current existing models have the feature of accurately predicting the kinetics of gas hydrates when a multiphase system is encountered. In this work, Artificial Neural Networks (ANN) are developed to study and predict the effect of the multiphase system on the kinetics of gas hydrates formation. Primarily, a pure system and multiphase system containing crude oil are used to conduct experiments. The details of the rate of formation for both systems are found. Then, these results are used to develop an A.I. model that can be helpful in predicting the rate of hydrate formation in both pure and multiphase systems. To forecast the kinetics of gas hydrate formation, two ANN models with single layer perceptron are presented for the two combinations of gas hydrates. The results indicated that the prediction models developed are satisfactory as R values are close to 1 and M.S.E. values are close to 0. This study serves as a framework to examine hydrate formation in multiphase systems.
天然气水合物在确定储层经济性方面变得越来越重要,因为海上储量是在越来越深和越来越冷的水域中生产的,这会导致流动中断。水合物堵塞的形成会带来设备和安全风险。目前没有任何现有模型具有准确预测多相系统中天然气水合物动力学的功能。在这项工作中,人工神经网络 (ANN) 被开发用于研究和预测多相系统对天然气水合物形成动力学的影响。首先,使用纯系统和包含原油的多相系统进行实验。找到两个系统的形成速率的详细信息。然后,将这些结果用于开发人工智能模型,以帮助预测纯系统和多相系统中水合物形成的速率。为了预测天然气水合物形成的动力学,针对两种天然气水合物组合,提出了两个具有单层感知器的 ANN 模型。结果表明,所开发的预测模型是令人满意的,因为 R 值接近 1,MSE 值接近 0。这项研究为多相系统中的水合物形成提供了一个框架。