利用机器学习和可解释人工智能对TFBG传感器数据进行油水乳液稳定性预测和优化

IF 2.2 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Sensors Letters Pub Date : 2024-12-04 DOI:10.1109/LSENS.2024.3503752
Yogendra Swaroop Dwivedi;Rishav Singh;Anuj K. Sharma;Ajay Kumar Sharma;C. Marques
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引用次数: 0

摘要

在石油工业中,原油是以油水乳化液(OWE)的形式开采出来的。了解这种乳化液对进一步加工和利用至关重要。本研究利用倾斜光纤布拉格光栅(TFBG)传感器的实验数据来表征和量化OWE的稳定性,同时重点研究使用机器学习(ML)和可解释人工智能(XAI)技术对参数的影响分析。数据集由实验TFBG光谱(波长范围:1250-1650 nm)组成,包括旋转器的每分钟转数(RPM)、表面活性剂浓度(Cs)和面积测量(表明OWE稳定性)等参数。应用插值技术,对数据集进行增强,以便有效地训练和测试机器学习模型。结果表明,随机森林模型对测试数据的R2值最高,达到99.2%。然后,应用XAI技术(即shapley加性解释和局部可解释的模型不可知解释)(从全局和局部解释的角度)来确定每个特征(即RPM和Cs)的贡献。研究发现,Cs对OWE稳定性的影响显著大于RPM。波长(λ)随后被纳入ML和XAI分析。结果再次证实,Cs仍然是决定OWE稳定性的最重要因素,λ和RPM的影响较小。该研究为原油加工过程中OWE稳定性的流程设计和参数优化提供了有价值的见解。
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Enhanced Prediction and Optimization of Oil–Water Emulsion Stability Through Application of Machine Learning and Explainable Artificial Intelligence on TFBG Sensor Data
In the petroleum industry, crude oil is extracted in the form of an oil–water emulsion (OWE). Understanding this emulsion is crucial for further processing and utilization. This research investigates the use of experimental data from a tilted fiber Bragg grating (TFBG) sensor to characterize and quantify the stability of OWE while focusing on the impact analysis of parameters using machine learning (ML) and explainable artificial intelligence (XAI) techniques. The dataset consisting of experimental TFBG spectra (wavelength range: 1250–1650 nm) included parameters such as revolutions per minute (RPM) of the rotator, surfactant concentration (C s ), and area measurements (indicating OWE stability). Applying interpolation techniques, the dataset was augmented for effective training and testing of ML models. The results indicated that the random forest model enabled the highest R 2 value of 99.2% on the test data. Then, XAI techniques (namely, shapley additive explanations and local interpretable model-agnostic explanations) were applied (from both global and local interpretations viewpoints) to determine the contribution of each feature (i.e., RPM and C s ). It was found that C s has a significantly greater impact on OWE stability than RPM. Wavelength (λ) was subsequently included in the ML and XAI analyses. The results again confirmed that C s remained the most significant factor in determining OWE stability, with reasonably lesser impacts of λ and RPM. This study provides valuable insights into designing procedures and optimizing parameters for OWE stability during crude oil processing.
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来源期刊
IEEE Sensors Letters
IEEE Sensors Letters Engineering-Electrical and Electronic Engineering
CiteScore
3.50
自引率
7.10%
发文量
194
期刊最新文献
Table of Contents Front Cover IEEE Sensors Council Information IEEE Sensors Letters Subject Categories for Article Numbering Information IEEE Sensors Letters Publication Information
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