Smart MIMO-OFDM Wireless Communication Frameworks for Subsurface Wireless Sensor

Klemens Katterbauer, Abdallah Al Shehri
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Abstract

Wireless communication in subsurface wells and reservoir has been a major challenge in ensuring robust data transmission, and reliable communication between the sensors. Challenges from the multiple reflection as well as other external factors, makes subsurface communication a unique challenge for modern communication algorithms. While multiple-Input, multiple-output orthogonal frequency division multiplexing (MIMO-OFDM) communication has been extensively implemented in wireless communication for signal processing, unique challenges arise in subsurface reservoirs caused by unknown formation properties and fluid movements. We present a new smart MIMO-OFDM algorithm for wireless communication in subsurface reservoirs. The new algorithm integrates both MIMO and OFDM into a deep learning framework. It optimizes the communication quality as well as reliability of the communication between the various subsurface wireless devices. The joint integration and smart adjustment leverages the power of both algorithms simultaneously, and allows significantly improved communication robustness between the wireless devices. We tested the smart MIMO-OFDM on a synthetic carbonate reservoir formation with multiple wireless sensors and wireless appliances. Fracture Robots (FracBots, about 5 mm in size) technology will be used to sense key reservoir parameters (e.g., temperature, pressure, pH and other chemical parameters). The technology is comprised of a wireless microsensor 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 results exhibited strong performance of the wireless communication, hence providing reliable and robust subsurface wireless communication. The novel framework presents a vital component in enhancing subsurface wireless communication and achieve robust data transfer. The results outline the opportunity for wireless communication to become a critical component for subsurface communication.
地下无线传感器智能MIMO-OFDM无线通信框架
地下井和油藏的无线通信一直是确保数据传输和传感器之间可靠通信的主要挑战。多重反射和其他外部因素的挑战,使地下通信成为现代通信算法面临的独特挑战。虽然多输入、多输出正交频分复用(MIMO-OFDM)通信已广泛应用于无线通信信号处理,但由于未知的地层性质和流体运动,地下油藏面临着独特的挑战。提出了一种新的用于地下储层无线通信的智能MIMO-OFDM算法。新算法将MIMO和OFDM集成到一个深度学习框架中。它优化了各种地下无线设备之间的通信质量和可靠性。联合集成和智能调整同时利用了两种算法的力量,并允许显著提高无线设备之间的通信鲁棒性。我们使用多个无线传感器和无线设备在合成碳酸盐岩储层上测试了智能MIMO-OFDM。压裂机器人(FracBots,尺寸约5mm)技术将用于检测关键储层参数(如温度、压力、pH值和其他化学参数)。该技术由一个无线微传感器网络组成,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。研究结果显示了较强的无线通信性能,从而提供了可靠、鲁棒的地下无线通信。该框架是增强地下无线通信和实现鲁棒数据传输的重要组成部分。研究结果表明,无线通信有可能成为地下通信的关键组成部分。
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