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A review: Challenges and opportunities for artificial intelligence and robotics in the offshore wind sector 被引量:2

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摘要 The UK has set plans to increase offshore wind capacity from 22GW to 154GW by 2030. With such tremendous growth, the sector is now looking to Robotics and Artificial Intelligence (RAI) in order to tackle lifecycle service barriers as to support sustainable and profitable offshore wind energy production. Today, RAI applications are predominately being used to support short term objectives in operation and maintenance. However, moving forward, RAI has the potential to play a critical role throughout the full lifecycle of offshore wind infrastructure, from surveying, planning, design, logistics, operational support, training and decommissioning. This paper presents one of the first systematic reviews of RAI for the offshore renewable energy sector. The state-of-the-art in RAI is analyzed with respect to offshore energy requirements, from both industry and academia, in terms of current and future requirements. Our review also includes a detailed evaluation of investment, regulation and skills development required to support the adoption of RAI. The key trends identified through a detailed analysis of patent and academic publication databases provide insights to barriers such as certification of autonomous platforms for safety compliance and reliability, the need for digital architectures for scalability in autonomous fleets, adaptive mission planning for resilient resident operations and optimization of human machine interaction for trusted partnerships between people and autonomous assistants. Our study concludes with identification of technological priorities and outlines their integration into a new ‘symbiotic digital architecture’ to deliver the future of offshore wind farm lifecycle management.
出处 《Energy and AI》 2022年第2期177-212,共36页 能源与人工智能(英文)
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  • 2Daniel Mitchell,Paul Dominick Emor Baniqued,Abdul Zahid,Andrew West,Bahman Nouri Rahmat Abadi,Barry Lennox,Bin Liu,Burak Kizilkaya,David Flynn,David John Francis,Erwin Jose Lopez Pulgarin,Guodong Zhao,Hasan Kivrak,Jamie Rowland Douglas Blanche,Jennifer David,Jingyan Wang,Joseph Bolarinwa,Kanzhong Yao,Keir Groves,Liyuan Qi,Mahmoud A.Shawky,Manuel Giuliani,Melissa Sandison,Olaoluwa Popoola,Ognjen Marjanovic,Paul Bremner,Samuel Thomas Harper,Shivoh Nandakumar,Simon Watson,Subham Agrawal,Theodore Lim,Thomas Johnson,Wasim Ahmad,Xiangmin Xu,Zhen Meng,Zhengyi Jiang.Lessons learned:Symbiotic autonomous robot ecosystem for nuclear environments[J].IET Cyber-Systems and Robotics,2023,5(4):63-86. 被引量:1

二级引证文献1

  • 1Daniel Mitchell,Paul Dominick Emor Baniqued,Abdul Zahid,Andrew West,Bahman Nouri Rahmat Abadi,Barry Lennox,Bin Liu,Burak Kizilkaya,David Flynn,David John Francis,Erwin Jose Lopez Pulgarin,Guodong Zhao,Hasan Kivrak,Jamie Rowland Douglas Blanche,Jennifer David,Jingyan Wang,Joseph Bolarinwa,Kanzhong Yao,Keir Groves,Liyuan Qi,Mahmoud A.Shawky,Manuel Giuliani,Melissa Sandison,Olaoluwa Popoola,Ognjen Marjanovic,Paul Bremner,Samuel Thomas Harper,Shivoh Nandakumar,Simon Watson,Subham Agrawal,Theodore Lim,Thomas Johnson,Wasim Ahmad,Xiangmin Xu,Zhen Meng,Zhengyi Jiang.Lessons learned:Symbiotic autonomous robot ecosystem for nuclear environments[J].IET Cyber-Systems and Robotics,2023,5(4):63-86. 被引量:1

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