Team Works to Increase Efficiency of 5G Mobile Communications

Researchers from Tomsk Polytechnic University (TPU) are working to find new scientific concepts that advance research into the problem of efficiently transferring wireless power over 5G mobile communications networks.

The team hopes to find solutions that produce gains in terms of power consumption, efficiency and interference control while also producing new knowledge of Simultaneous Wireless Information and Power Transfer (SWIPT).

During initial research a number of problems were identified and are still being addressed. One area of focus is how to improve algorithms that correct coding errors.

Success in the project will be measured in part by how well improved energy efficiency minimizes expenditures for wireless operators.

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