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Powering innovation in artificial intelligence with Open Access research...

Artificial intelligence (AI) and machine learning (ML) together represent a research frontier with a wide variety of discipline specific applications. At Strathclyde researchers in Computer & Information Sciences are exploring improved AI planning models to enable improved decision making by automous agents. Meanwhile, research conducted by the Aerospace Centre of Excellence is using AI and computational techniques to optimize the efficacy of certain astronautic applications. This includes 'global trajectory optimization' to aircraft and spacecraft design, from the planning and scheduling for autonomous vehicles to the synthesis of robust controllers for airplanes or satellites.

AI is also transforming the research agenda within Finance, where researchers are exploring the potential of AI and machine learning in evaluating banking risks and in new, emerging aspects of FinTech.

Explore some of this Open Access research from Computer & Information Sciences, Aerospace Centre of Excellence and Finance. Or explore all of Strathclyde's Open Access research...

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Jump to: 2011 | 2007
Number of items: 3.

2011

Young, Robert and Leithead, William and Yue, Hong (2011) Increasing energy capture of wind turbines by improved yaw control. In: 7th EAWE PhD Seminar on Wind Energy in Europe, 2011-10-27 - 2011-10-28.

Chen, Yi-Chieh and Young, Robert J. and MacPherson, Julie V. and Wilson, Neil R. (2011) Silver-decorated carbon nanotube networks as SERS substrates. Journal of Raman Spectroscopy, 42 (6). pp. 1255-1262. ISSN 0377-0486

2007

Chen, Yi-Chieh and Young, Robert J. and Macpherson, Julie V. and Wilson, Neil R. (2007) Single-walled carbon nanotube networks decorated with silver nanoparticles : a novel graded SERS substrate. Journal of Physical Chemistry C, 111 (44). pp. 16167-16173. ISSN 1932-7447

This list was generated on Wed Aug 5 21:33:36 2020 BST.