Machine learning techniques have proven very efficient in assorted classification tasks. Nevertheless, processing time-dependent high-speed signals can turn into an extremely challenging task, especially when these signals have been nonlinearly distorted. Recently, analogue hardware concepts using nonlinear transient responses have been gaining significant interest for fast information processing. Here, we introduce a simplified photonic reservoir computing scheme for data classification of severely distorted optical communication signals after extended fibre transmission. To this end, we convert the direct bit detection process into a pattern recognition problem. Using an experimental implementation of our photonic reservoir computer, we d...
Here we propose a novel design of fiber-optic reservoir computing (FORC) and demonstrate it applicab...
We present our latest results on silicon photonics neuromorphic information processing based a.o. on...
Reservoir computing is a recent approach from the fields of machine learning and artificial neural n...
Machine learning techniques have proven very efficient in assorted classification tasks. Nevertheles...
The efficacy of data decoding in contemporary ultrafast fiber transmission systems is greatly determ...
[eng] Analog photonic computing has been proposed and tested in recent years as an alternative appro...
Improving bit error rates in optical communication systems is a difficult and important problem. The...
The efficacy of data decoding in contemporary ultrafast fiber transmission systems is greatly determ...
We propose photonic reservoir computing as a new approach to optical signal processing in the contex...
Despite ever increasing computational power, recognition and classification problems remain challeng...
Photonic reservoir computing is a hardware implementation of the concept of reservoir computing whic...
In the current development of coherent optical communication systems, nonlinear noise is considered ...
In recent years, various methods, architectures, and implementations have been proposed to realize h...
International audienceReservoir computing, originally referred to as an echo state network or a liqu...
Nonlinearity mitigation in optical fiber networks is typically handled by electronic Digital Signal ...
Here we propose a novel design of fiber-optic reservoir computing (FORC) and demonstrate it applicab...
We present our latest results on silicon photonics neuromorphic information processing based a.o. on...
Reservoir computing is a recent approach from the fields of machine learning and artificial neural n...
Machine learning techniques have proven very efficient in assorted classification tasks. Nevertheles...
The efficacy of data decoding in contemporary ultrafast fiber transmission systems is greatly determ...
[eng] Analog photonic computing has been proposed and tested in recent years as an alternative appro...
Improving bit error rates in optical communication systems is a difficult and important problem. The...
The efficacy of data decoding in contemporary ultrafast fiber transmission systems is greatly determ...
We propose photonic reservoir computing as a new approach to optical signal processing in the contex...
Despite ever increasing computational power, recognition and classification problems remain challeng...
Photonic reservoir computing is a hardware implementation of the concept of reservoir computing whic...
In the current development of coherent optical communication systems, nonlinear noise is considered ...
In recent years, various methods, architectures, and implementations have been proposed to realize h...
International audienceReservoir computing, originally referred to as an echo state network or a liqu...
Nonlinearity mitigation in optical fiber networks is typically handled by electronic Digital Signal ...
Here we propose a novel design of fiber-optic reservoir computing (FORC) and demonstrate it applicab...
We present our latest results on silicon photonics neuromorphic information processing based a.o. on...
Reservoir computing is a recent approach from the fields of machine learning and artificial neural n...