基于智能正交匹配追踪的地下传感器稀疏水裂缝通道检测

Klemens Katterbauer, Abdallah Al Shehri, A. Marsala
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引用次数: 0

摘要

裂缝性碳酸盐岩储层的前缘运动发生在穿透碳酸盐岩储层结构的微裂缝、廊道和连通裂缝通道(尺寸大于5mm)中。确定裂缝通道和流动通道内的前缘运动对于优化波及效率和提高油气采收率至关重要。在本文中,我们提出了一种新的智能正交匹配追踪(OMP)算法,用于碳酸盐岩裂缝通道的前缘运动检测。该方法采用人工智能(AI-OMP)相结合的方法,首先分析和提取潜在的裂缝通道,然后部署深度学习方法来估计裂缝通道中的含水饱和度模式。OMP利用稀疏裂缝与传感器的相关性来确定影响每个单独传感器的裂缝通道。然后,深度学习方法利用裂缝通道估计来评估前缘运动。我们在一个合成裂缝型碳酸盐岩储层箱模型上测试了AI-OMP框架,该模型显示了一个复杂的裂缝系统。压裂机器人(FracBots,尺寸约5mm)技术将用于感知关键储层参数(例如温度、压力、pH值和其他化学参数),这是加强储层监测的重要一步(Al Shehri等,2021)。该技术由一个无线微型传感器网络组成,用于绘制和监测常规和非常规油藏的裂缝通道。该系统通过基于磁感应(MI)的通信建立无线网络连接,因为它具有高可靠性和恒定的信道条件,在油藏环境中具有足够的通信范围。FracBots网络的系统架构分为两层:FracBot节点层和基站层。将许多FracBot地下传感器注入地层裂缝通道中,记录受含水饱和度变化影响的数据。传感器的位置可以在储层中进行调整,以提高传感器测量数据的质量,并更好地跟踪渗透水锋面。它们会随着注入的流体移动,并分布在裂缝通道中,在那里它们开始感知周围环境的状况;它们相互通信数据,包括它们的位置坐标,最终以多跳方式将信息传输到安装在井筒内的基站。基站层由连接到地上网关的大型天线组成。从FracBots网络收集的数据通过地上网关传输到控制室进行进一步处理。结果表明,该方法在准确确定地下储层裂缝通道和饱和度模式方面具有较强的估计性能。结果表明,该框架性能良好;特别是对于较浅的裂缝通道(距井筒约20 m),其饱和度变化明显。这使得原位储层传感成为一种可行的永久性储层监测系统,用于跟踪流体前缘和确定裂缝通道。该框架是碳酸盐岩储层裂缝通道渗流地下监测系统数据分析与解释的重要组成部分。结果表明,原位储层传感器能够精确跟踪水前缘和裂缝通道,从而优化采收率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparse Water Fracture Channel Detection from Subsurface Sensors Via a Smart Orthogonal Matching Pursuit
Water front movement in fractured carbonate reservoirs occurs in micro-fractures, corridors and interconnected fracture channels (above 5 mm in size) that penetrate the carbonate reservoir structure. Determining the fracture channels and the water front movements within the flow corridors is critical to optimize sweep efficiency and increase hydrocarbon recovery. In this work, we present a new smart orthogonal matching pursuit (OMP) algorithm for water front movement detection in carbonate fracture channels. The method utilizes a combined artificial intelligence) AI-OMP approach to first analyze and extract the potential fracture channels and then subsequently deploys a deep learning approach for estimating the water saturation patterns in the fracture channels. The OMP utilizes the sparse fracture to sensor correlation to determine the fracture channels impacting each individual sensor. The deep learning method then utilizes the fracture channel estimates to assess the water front movements. We tested the AI-OMP framework on a synthetic fracture carbonate reservoir box model exhibiting a complex fracture system. Fracture Robots (FracBots, about 5mm in size) technology will be used to sense key reservoir parameters (e.g., temperature, pressure, pH and other chemical parameters) and represent an important step towards enhancing reservoir surveillance (Al Shehri, et al. 2021). The technology is comprised of a wireless micro-sensor network for mapping and monitoring fracture channels in conventional and unconventional reservoirs. The system establishes wireless network connectivity via magnetic induction (MI)-based communication, since it exhibits highly reliable and constant channel conditions with sufficiently communication range inside an oil reservoir environment. The system architecture of the FracBots network has two layers: FracBot nodes layer and a base station layer. A number of subsurface FracBot sensors are injected in the formation fracture channels to record data affected by changes in water saturation. The sensor placement can be adapted in the reservoir formation in order to improve sensor measurement data quality, as well as better track the penetrating water fronts. They will move with the injected fluids and distribute themselves in the fracture channels where they start sensing the surrounding environment’s conditions; they communicate the data, including their location coordinates, among each other to finally transmit the information in multi-hop fashion to the base station installed inside the wellbore. The base station layer consists of a large antenna connected to an aboveground gateway. The data collected from the FracBots network are transmitted to the control room via aboveground gateway for further processing. The results exhibited strong estimation performance in both accurately determining the fracture channels and the saturation pattern in the subsurface reservoir. The results indicate that the framework performs well; especially for fracture channels that are rather shallow (about 20 m from the wellbore) with significant changes in the saturation levels. This makes the in-situ reservoir sensing a viable permanent reservoir monitoring system for the tracking of fluid fronts, and determination of fracture channels. The novel framework presents a vital component in the data analysis and interpretation of subsurface reservoir monitoring system of fracture channels flow in carbonate reservoirs. The results outline the capability of in-situ reservoir sensors to deliver accurate tracking water-fronts and fracture channels in order to optimize recovery.
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