Operators are pressured to maximize the achieved capacity over deployed links. This can be obtained by operating in the weakly nonlinear regime, requiring a precise understanding of the transmission conditions. Ideally, optical transponders should be capable of estimating the regime of operation from the received signal and feeding that information to the upper management layers to optimize the transmission characteristics; however, this estimation is challenging. This paper addresses this problem by estimating the linear and nonlinear signal-to-noise ratio (SNR) from the received signal. This estimation is performed by obtaining features of two distinct effects: nonlinear phase noise and second-order statistical moments. A small neural net...
We propose a neural network model for MDG and optical SNR estimation in SDM transmission. We show th...
We propose a neural network model for MDG and optical SNR estimation in SDM transmission. We show th...
This paper serves to highlight the gains in SNR margin and/or data capacity that can be achieved thr...
In this paper, we discuss a machine learning based approach to jointly estimating both linear and no...
In this paper, we discuss a machine learning based approach to jointly estimating both linear and no...
In this paper, we discuss a machine learning based approach to jointly estimating both linear and no...
In the current development of coherent optical communication systems, nonlinear noise is considered ...
Nonlinear effects provide inherent limitations in fiber optical communications. Here, the authors ex...
Nonlinear phase noise (NLPN) is the most common impairment that degrades the performance of radio-ov...
The increase in capacity provided by coupled space division multiplexing (SDM) systems is fundamenta...
The fiber optical network offers high speed, large bandwidth, and a high degree of reliability. Howe...
The increase in capacity provided by coupled space division multiplexing (SDM) systems is fundamenta...
As optical performance monitoring (OPM) requires accurate and robust solutions to tackle the increas...
The reduction of system margin in open optical line systems (OLSs) requires the capability to predic...
We propose a neural network model for MDG and optical SNR estimation in SDM transmission. We show th...
We propose a neural network model for MDG and optical SNR estimation in SDM transmission. We show th...
We propose a neural network model for MDG and optical SNR estimation in SDM transmission. We show th...
This paper serves to highlight the gains in SNR margin and/or data capacity that can be achieved thr...
In this paper, we discuss a machine learning based approach to jointly estimating both linear and no...
In this paper, we discuss a machine learning based approach to jointly estimating both linear and no...
In this paper, we discuss a machine learning based approach to jointly estimating both linear and no...
In the current development of coherent optical communication systems, nonlinear noise is considered ...
Nonlinear effects provide inherent limitations in fiber optical communications. Here, the authors ex...
Nonlinear phase noise (NLPN) is the most common impairment that degrades the performance of radio-ov...
The increase in capacity provided by coupled space division multiplexing (SDM) systems is fundamenta...
The fiber optical network offers high speed, large bandwidth, and a high degree of reliability. Howe...
The increase in capacity provided by coupled space division multiplexing (SDM) systems is fundamenta...
As optical performance monitoring (OPM) requires accurate and robust solutions to tackle the increas...
The reduction of system margin in open optical line systems (OLSs) requires the capability to predic...
We propose a neural network model for MDG and optical SNR estimation in SDM transmission. We show th...
We propose a neural network model for MDG and optical SNR estimation in SDM transmission. We show th...
We propose a neural network model for MDG and optical SNR estimation in SDM transmission. We show th...
This paper serves to highlight the gains in SNR margin and/or data capacity that can be achieved thr...