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Wiener-Hammerstein model and its learning for nonlinear digital pre-distortion of optical transmitters

Takeo Sasai, Masanori Nakamura, Etsushi Yamazaki, A. Matsushita, Seiji Okamoto, Kengo Horikoshi, Yoshiaki Kisaka

2020Optics Express25 citationsDOIOpen Access PDF

Abstract

We present a simple nonlinear digital pre-distortion (DPD) of optical transmitter components, which consists of concatenated blocks of a finite impulse response (FIR) filter, a memoryless nonlinear function and another FIR filter. The model is a Wiener-Hammerstein (WH) model and has essentially the same structure as neural networks or multilayer perceptrons. This awareness enables one to achieve complexity-efficient DPD owing to the model-aware structure and exploit the well-developed optimization scheme in the machine learning field. The effectiveness of the method is assessed by electrical and optical back-to-back (B2B) experiments, and the results show that the WH DPD offers a 0.52-dB gain in signal-to-noise ratio (SNR) and 6.0-dB gain in optical modulator output power at a fixed SNR over linear-only DPD.

Topics & Concepts

Nonlinear distortionDistortion (music)Computer scienceFinite impulse responseLinear filterNonlinear systemTransmitterImpulse responseFilter (signal processing)Wiener filterOpticsAlgorithmElectronic engineeringPhysicsTelecommunicationsAmplifierMathematicsBandwidth (computing)EngineeringChannel (broadcasting)Computer visionQuantum mechanicsMathematical analysisOptical Network TechnologiesSemiconductor Lasers and Optical DevicesAdvanced Photonic Communication Systems
Wiener-Hammerstein model and its learning for nonlinear digital pre-distortion of optical transmitters | Litcius