Predictive Modelling of Carbon Dioxide Injectivity Using SVR-Hybrid

Mutia Kharunisa Mardhatillah, M. A. Md Yusof, A. Sa'id, Iqmal Irsyad Mohammad Fuad, Yen Adams Sokama- Neuyam, Nur Asyraf Md Akhir
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引用次数: 1

Abstract

Southeast Asia is increasingly gaining attention as a promising geological site for permanent CO2 sequestration in deep saline aquifers. During CO2 injection into saline reservoirs, the reaction between injected CO2, the resident formation brine, and the reservoir rock could cause injectivity change due to salt precipitation, mineral dissolution, and fine particles migration. The underlying mechanisms have been extensively studied, both experimentally and numerically and the governing parameters have been identified and studied. However, the current models that have been widely adopted to investigate reactive transport and its impact on CO2 injectivity have fundamental limitations when applied to solve small, high dimensional, and non-linear data. The objective of this study is to develop efficient and robust predictive models using support vector regression (SVR) integrated with hyperparameter tuning optimization algorithms, including genetic algorithm (GA). To develop the model, 44 datasets are used to predict the CO2 injectivity change with its influencing variables such as brine salinity, injection flow rate, particle size, and particle concentration. The performance for each model is analyzed and compared with previous models by determination of coefficient (R2), adjusted determination of coefficient (R¯2), average absolute percentage error (AAPE), root mean square error (RMSE) and mean absolute error (MAE). The model with the highest R2 is selected as the predictive model for CO2 injectivity impairment during CO2 sequestration in a saline aquifer. The results revealed that both SVR and GA-SVR are able to capture the precise correlation between measured and predicted data. However, the GA-SVR model slightly outperformed the SVR model by a higher R2 value of 0.9923 compared to SVR with R2 value of 0.9918. Based on SHAP value analysis, brine salinity had the highest impact on CO2 injectivity change, followed by injection flow rate, particle concentration, and jamming ratio. It was also found that hybridization of genetic algorithm with support vector regression does improve the model performance contrary to single algorithm and contributes to the determination of the most impactful factors that induce CO2 injectivity change. The proposed model can be upscaled and integrated into field-scale models to improve the optimization of CO2 injectivity in deep saline reservoirs.
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基于SVR-Hybrid的二氧化碳注入率预测模型
东南亚作为一个有希望永久封存深层含盐含水层二氧化碳的地质地点正日益受到关注。在向含盐储层注入二氧化碳的过程中,注入的二氧化碳与常驻地层卤水和储层岩石之间的反应会引起盐沉淀、矿物溶解和细颗粒运移等引起注入能力的变化。潜在的机制已经得到了广泛的研究,包括实验和数值,并确定和研究了控制参数。然而,目前被广泛用于研究反应输运及其对CO2注入的影响的模型在用于解决小、高维和非线性数据时存在根本性的局限性。本研究的目的是利用支持向量回归(SVR)与包括遗传算法(GA)在内的超参数调谐优化算法相结合,建立高效、鲁棒的预测模型。为了建立该模型,利用44个数据集预测了CO2注入率的变化及其影响变量,如盐水盐度、注入流量、粒径和颗粒浓度。通过系数确定(R2)、调整系数确定(R¯2)、平均绝对百分比误差(AAPE)、均方根误差(RMSE)和平均绝对误差(MAE)对每个模型的性能进行分析,并与之前的模型进行比较。选择R2最高的模型作为盐层CO2固存过程中CO2注入能力损害的预测模型。结果表明,SVR和GA-SVR都能准确地捕捉到实测数据与预测数据之间的相关性。然而,GA-SVR模型的R2值为0.9923,略优于SVR模型,其R2值为0.9918。基于SHAP值分析,盐水盐度对CO2注入能力变化的影响最大,其次是注入流量、颗粒浓度和堵塞比。研究还发现,与单一算法相比,遗传算法与支持向量回归的杂交确实提高了模型的性能,并有助于确定引起CO2注入率变化的最具影响因素。该模型可扩展并集成到油田模型中,以改善深层含盐油藏CO2注入能力的优化。
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