1. Realizing Green Symbol Detection via Reservoir Computing: An Energy-Efficiency Perspective
- Author
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John D. Matyjas, Michael J. Medley, Bryant Wysocki, Yang Yi, Jonathan Ashdown, Lingjia Liu, and Rubayet Shafin
- Subjects
Minimum mean square error ,Orthogonal frequency-division multiplexing ,Computer science ,MIMO ,Transmitter ,Detector ,Reservoir computing ,020206 networking & telecommunications ,02 engineering and technology ,Energy consumption ,Transmitter power output ,020210 optoelectronics & photonics ,0202 electrical engineering, electronic engineering, information engineering ,Electronic engineering ,Echo state network ,Computer Science::Information Theory - Abstract
Reservoir Computing (RC) is a class of machine learning approaches that is suitable for prediction tasks with low computational complexity. In this paper, an RC-based symbol detection for MIMO- OFDM systems is presented where RC is realized through the echo state network (ESN). Detailed energy-efficiency analysis is conducted to characterize the energy-efficiency of the introduced symbol detector. To be specific, the transmit power, the circuit power, and the computational power at both transmitter and receiver are jointly considered for the energy-efficiency analysis. The overall system energy-efficiency as well as the receiver energy-efficiency of the introduced RC-based symbol detector are compared with those of the popular linear minimum mean squared error (LMMSE)-based approach. Simulation and numerical results show that the RC-based symbol detector is a ``green'' solution compared to the traditional LMMSE-based method with lower energy consumption per information bit.
- Published
- 2018
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