Field Experience of an Innovative Downhole Energy Harvesting System

M. Arsalan, Jarl André Fellinghaug
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Abstract

Downhole power harvesting is an enabling technology for a wide range of future production systems and applications, including self-powered downhole monitoring, downhole robotics, and wireless intelligent completions. This paper presents the field experience of an innovative energy harvesting system that was successfully deployed and tested in the harsh downhole conditions of an oil producer. There is a critical need for robust and reliable downhole power generation and storage technologies to push the boundaries of downhole sensing and control. This paper provides an analysis of available ambient energy sources in the downhole environment, and various energy harvesting techniques that can be employed to provide a reliable solution. Advantages and limitations of conventional technique like turbine are compared to advanced energy harvesting technologies. The power requirements and technical challenges related to different downhole applications have also been addressed. The field experience of the novel flow-based energy harvesting system are presented, including the details of both the lab and field prototype design, deployment and testing.
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创新的井下能量收集系统的现场经验
井下能量收集技术是一种广泛应用于未来生产系统和应用的技术,包括自供电井下监测、井下机器人和无线智能完井。本文介绍了一种创新的能量收集系统的现场经验,该系统已成功部署并在油田恶劣的井下条件下进行了测试。为了突破井下传感和控制的界限,迫切需要强大可靠的井下发电和存储技术。本文分析了井下环境中可用的环境能源,以及可用于提供可靠解决方案的各种能量收集技术。比较了涡轮等传统技术与先进能量收集技术的优缺点。与不同井下应用相关的功率要求和技术挑战也得到了解决。介绍了新型流动能量收集系统的现场经验,包括实验室和现场原型设计、部署和测试的细节。
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