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Open Access research that is tackling the climate emergency...

Addressing the energy challenge confronting society is a strategic research theme for Strathclyde. Researchers from across the institution, spanning multiple disciplines, are therefore working together to understand ways of reducing the environmental impacts of energy use, improving energy efficiency, coping with declining fossil fuel supplies, managing an ageing energy infrastructure, and devising policy or economic levers to achieve higher penetration of renewable energy systems and technologies. Strathprints makes this scholarly research content available Open Access thereby ensuring results are available to everyone in order meet the global climate challenge.

Explore some of this Open Access research from the departments of Mechanical & Aerospace Engineering, Electronic & Electrical Engineering, Civil & Environmental Engineering, Naval Architecture, Ocean & Marine Engineering, Economics, Entrepreneurship and the School of Government & Public Policy.

Or explore all of Strathclyde's Open Access research...

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Jump to: 2019
Number of items: 2.

2019

Maclellan, Andrew and McLaughlin, Lewis and Crockett, Louise and Stewart, Robert W. (2019) FPGA accelerated deep learning radio modulation classification using MATLAB system objects & PYNQ. In: 29th International Conference on Field-Programmable Logic and Applications, 2019-09-09 - 2019-09-11, Barcelona Supercomputing Center and Universitat Polit├Ęcnica de Catalunya.

Maclellan, Andrew and McLaughlin, Lewis and Crockett, Louise and Stewart, Robert W. (2019) FPGA accelerated deep learning radio modulation classification using MATLAB system objects & PYNQ. In: 29th International Conference on Field-Programmable Logic and Applications, 2019-09-09 - 2019-09-11, Barcelona Supercomputing Center and Universitat Polit├Ęcnica de Catalunya.

This list was generated on Sat May 30 13:22:34 2020 BST.