Online identification of evolved Takagi Sugeno fuzzy model for CO2 sequestration process

K. Salahshoor, M. Hajisalehi, M. H. Sefat
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引用次数: 1

Abstract

In recent years, carbon capture and storage (CCS) has been recognized as a promising technology to achieve a considerable reduction of greenhouse gas emissions from large local industries. Among different methods of CCS, carbon dioxide (CO2) sequestration in underground saline aquifers has gained much attention due to its long-term storage and low cost benefits. This type of sequestration, however, poses over-pressurization as a potential risk. This paper aims at effective monitoring of critical parameters which directly impact the CO2 sequestration performance due to over-pressurization and cap rock failure. A synthetic reservoir model is simulated in reservoir simulator (ECLIPSE-100) environment and an online fuzzy model is identified using an evolving Takagi Sugeno (eTS) algorithm. The approach recursively develops an evolving fuzzy rule-base model structure with linear rule antecedent parts using Recursive Least-Squares (RLS) parameter estimation to track reservoir dynamic changes during the CO2 sequestration. Suitability of the presented adaptive identification approach in modeling CO2 sequestration dynamic performance in an underground saline aquifer is verified via various test studies.
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进化的Takagi Sugeno CO2封存过程模糊模型的在线辨识
近年来,碳捕获与封存(CCS)已被认为是一项很有前途的技术,可以大大减少当地大型工业的温室气体排放。在不同的碳捕集与封存方法中,地下咸水层二氧化碳封存因其长期封存和低成本效益而备受关注。然而,这种类型的封存会造成压力过大的潜在风险。本文旨在有效监测由于过压和盖层破坏而直接影响CO2固存性能的关键参数。在油藏模拟器(ECLIPSE-100)环境下对综合油藏模型进行了仿真,并利用进化的Takagi Sugeno (eTS)算法对在线模糊模型进行了识别。该方法利用递归最小二乘(RLS)参数估计,递归地建立了一种具有线性规则前项的模糊演化规则模型结构,以跟踪CO2封存过程中储层的动态变化。通过各种试验研究验证了所提出的自适应识别方法在模拟地下咸水含水层CO2固存动态特性方面的适用性。
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