Nonlinearity mitigation in optical fiber networks is typically handled by electronic Digital Signal Processing (DSP) chips. Such DSP chips are costly, power-hungry and can introduce high latencies. Therefore, optical techniques are investigated which are more efficient in both power consumption and processing cost. One such a machine learning technique is optical reservoir computing, in which a photonic chip can be trained on certain tasks, with the potential advantages of higher speed, reduced power consumption and lower latency compared to its electronic counterparts. In this paper, experimental results are presented where nonlinear distortions in a 32 GBPS OOK signal are mitigated to below the 0.2 x 10(-3) FEC limit using a photonic rese...
Photonic reservoir computing has evolved into a viable contender for the next generation of analog c...
We propose photonic reservoir computing as a new approach to optical signal processing in the contex...
The efficacy of data decoding in contemporary ultrafast fiber transmission systems is greatly determ...
Optical reservoir computing is a machine learning technique in which a photonic chip can be trained ...
In recent years, various methods, architectures, and implementations have been proposed to realize h...
Reservoir computing is a recent bio-inspired approach for processing time-dependent signals. It has ...
Here we propose a novel design of fiber-optic reservoir computing (FORC) and demonstrate it applicab...
Photonic reservoir computing is a hardware implementation of the concept of reservoir computing whic...
International audienceWe review a novel paradigm that has emerged in analogue neuromorphic optical c...
Despite ever increasing computational power, recognition and classification problems remain challeng...
Reservoir Computing [1] is a new approach to study and use Neural Networks, which try to mimic a bra...
We propose photonic reservoir computing as a new approach to optical signal processing and it can be...
Photonic reservoir computing uses recent advances in machine learning, and in particular the reservo...
The recent progress in artificial intelligence has spurred renewed interest in hardware implementati...
Photonic reservoir computing has evolved into a viable contender for the next generation of analog c...
We propose photonic reservoir computing as a new approach to optical signal processing in the contex...
The efficacy of data decoding in contemporary ultrafast fiber transmission systems is greatly determ...
Optical reservoir computing is a machine learning technique in which a photonic chip can be trained ...
In recent years, various methods, architectures, and implementations have been proposed to realize h...
Reservoir computing is a recent bio-inspired approach for processing time-dependent signals. It has ...
Here we propose a novel design of fiber-optic reservoir computing (FORC) and demonstrate it applicab...
Photonic reservoir computing is a hardware implementation of the concept of reservoir computing whic...
International audienceWe review a novel paradigm that has emerged in analogue neuromorphic optical c...
Despite ever increasing computational power, recognition and classification problems remain challeng...
Reservoir Computing [1] is a new approach to study and use Neural Networks, which try to mimic a bra...
We propose photonic reservoir computing as a new approach to optical signal processing and it can be...
Photonic reservoir computing uses recent advances in machine learning, and in particular the reservo...
The recent progress in artificial intelligence has spurred renewed interest in hardware implementati...
Photonic reservoir computing has evolved into a viable contender for the next generation of analog c...
We propose photonic reservoir computing as a new approach to optical signal processing in the contex...
The efficacy of data decoding in contemporary ultrafast fiber transmission systems is greatly determ...