Skip to main content
Top
Published in: Optical and Quantum Electronics 13/2023

01-12-2023

Machine learning based 64-QAM classification techniques for enhanced optical communication

Authors: P. Kiran, H. L. Gururaj, Francesco Flammini, D. S. Sunil Kumar, V. Veeraprathap

Published in: Optical and Quantum Electronics | Issue 13/2023

Log in

Activate our intelligent search to find suitable subject content or patents.

search-config
loading …

Abstract

Due to their greatly increased spectrum efficiency, high-order quadrature amplitude modulation (QAM) formats are especially successful at increasing transmission capacity. QAM is extremely sensitive to nonlinear distortion because of its dense constellation and SNR-hungry configuration. Autonomous neural network (ANN) derived nonlinear decision boundaries that are adaptively created by machine learning techniques can be used to classify symbols. The proposed work focusing on the quadrature amplitude modulation (QAM) scheme, the approach is to formulate an autonomous neural network (ANN) that can predict the class of each symbol from a signal stream of symbols. Experimental accuracy for each ANN's of proposed work achieves 89% by analysing all tests. Comprehensive results are presented with comparisons, demonstrating notable nonlinear mitigation with BER reductions. Additionally, it offers a glimpse into potential future research plans intended to raise the likelihood that predictions would come true and their accuracy.

Dont have a licence yet? Then find out more about our products and how to get one now:

Springer Professional "Technik"

Online-Abonnement

Mit Springer Professional "Technik" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 390 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Maschinenbau + Werkstoffe




 

Jetzt Wissensvorsprung sichern!

Springer Professional "Wirtschaft+Technik"

Online-Abonnement

Mit Springer Professional "Wirtschaft+Technik" erhalten Sie Zugriff auf:

  • über 102.000 Bücher
  • über 537 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Maschinenbau + Werkstoffe
  • Versicherung + Risiko

Jetzt Wissensvorsprung sichern!

Springer Professional "Wirtschaft"

Online-Abonnement

Mit Springer Professional "Wirtschaft" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 340 Zeitschriften

aus folgenden Fachgebieten:

  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Versicherung + Risiko




Jetzt Wissensvorsprung sichern!

Literature
go back to reference Amirabadi, M.A.: A survey on machine learning for optical communication [machine learning view]. arXiv preprint arXiv:05148 (2019). (1909) Amirabadi, M.A.: A survey on machine learning for optical communication [machine learning view]. arXiv preprint arXiv:05148 (2019). (1909)
go back to reference Amirabadi, M.A., Kahaei, M.H., Nezamalhosseini, S.A., Vakili, V.: Deep learning for channel estimation in FSO communication system. Opt. Commun. 459, 124989 (2020)CrossRef Amirabadi, M.A., Kahaei, M.H., Nezamalhosseini, S.A., Vakili, V.: Deep learning for channel estimation in FSO communication system. Opt. Commun. 459, 124989 (2020)CrossRef
go back to reference Bose, S.S.C., Alfurhood, B.S., Flammini, F., Natarajan, R., Jaya, S.S.: Decision fault tree learning and differential Lyapunov optimal control for path tracking. Entropy 25(3), 443 (2023a)ADSCrossRef Bose, S.S.C., Alfurhood, B.S., Flammini, F., Natarajan, R., Jaya, S.S.: Decision fault tree learning and differential Lyapunov optimal control for path tracking. Entropy 25(3), 443 (2023a)ADSCrossRef
go back to reference Bose, S., Subash Chandra, Shafeeq Ahmed, V.: A review of significant challenges with quantum communication and computing. Int. J. Data Inf. Intell. Comput. 2(2), 55–62 (2023b) Bose, S., Subash Chandra, Shafeeq Ahmed, V.: A review of significant challenges with quantum communication and computing. Int. J. Data Inf. Intell. Comput. 2(2), 55–62 (2023b)
go back to reference Chen, G., Du, J., Sun, L., Zhang, W., Xu, K., Chen, X., Reed, G.T., Zuyuan He: Nonlinear distortion mitigation by machine learning of SVM classification for PAM-4 and PAM-8 modulated optical interconnection. J. Lightwave Technol. 36(3), 650–657 (2018)ADSCrossRef Chen, G., Du, J., Sun, L., Zhang, W., Xu, K., Chen, X., Reed, G.T., Zuyuan He: Nonlinear distortion mitigation by machine learning of SVM classification for PAM-4 and PAM-8 modulated optical interconnection. J. Lightwave Technol. 36(3), 650–657 (2018)ADSCrossRef
go back to reference Darwesh, L., Natan, S.: Kopeika. Deep learning for improving performance of OOK modulation over FSO turbulent channels. IEEE Access. 8, 155275–155284 (2020)CrossRef Darwesh, L., Natan, S.: Kopeika. Deep learning for improving performance of OOK modulation over FSO turbulent channels. IEEE Access. 8, 155275–155284 (2020)CrossRef
go back to reference Dong, Z., Khan, F.N., Sui, Q., Zhong, K., Lu, C., Alan Pak Tao Lau: Optical performance monitoring: Areview of current and future technologies. J. Lightwave Technol. 34(2), 525–543 (2015)ADSCrossRef Dong, Z., Khan, F.N., Sui, Q., Zhong, K., Lu, C., Alan Pak Tao Lau: Optical performance monitoring: Areview of current and future technologies. J. Lightwave Technol. 34(2), 525–543 (2015)ADSCrossRef
go back to reference Ekanayake, N., Vijitha, H.M., Herath, R.: Effect of nonlinear phase noise on the performance of $ M $-ary PSK signals in optical fiber links. J. Lightwave Technol. 31(3), 447–454 (2012)ADSCrossRef Ekanayake, N., Vijitha, H.M., Herath, R.: Effect of nonlinear phase noise on the performance of $ M $-ary PSK signals in optical fiber links. J. Lightwave Technol. 31(3), 447–454 (2012)ADSCrossRef
go back to reference Ghazisaeidi, A., René-Jean, E.: Calculation of coefficients of perturbative nonlinear pre-compensation for Nyquist pulses. In 2014 The European Conference on Optical Communication (ECOC), pp. 1–3. IEEE, (2014) Ghazisaeidi, A., René-Jean, E.: Calculation of coefficients of perturbative nonlinear pre-compensation for Nyquist pulses. In 2014 The European Conference on Optical Communication (ECOC), pp. 1–3. IEEE, (2014)
go back to reference Giacoumidis, E., Mhatli, S., Stephens, M.F.C., Tsokanos, A., Wei, J., McCarthy, M.E., Doran, N.J., Andrew, D.: Ellis. Reduction of nonlinear intersubcarrier intermixing in coherent optical OFDM by a fast newton-based support vector machine nonlinear equalizer. J. Lightwave Technol. 35(12), 2391–2397 (2017)ADSCrossRef Giacoumidis, E., Mhatli, S., Stephens, M.F.C., Tsokanos, A., Wei, J., McCarthy, M.E., Doran, N.J., Andrew, D.: Ellis. Reduction of nonlinear intersubcarrier intermixing in coherent optical OFDM by a fast newton-based support vector machine nonlinear equalizer. J. Lightwave Technol. 35(12), 2391–2397 (2017)ADSCrossRef
go back to reference Guiomar, F.P., Pindo, A.N.: Simplified Volterra series nonlinear equalizer for polarization-multiplexed coherent optical systems. J. Lightwave Technol. 31(23), 3879–3891 (2013)ADSCrossRef Guiomar, F.P., Pindo, A.N.: Simplified Volterra series nonlinear equalizer for polarization-multiplexed coherent optical systems. J. Lightwave Technol. 31(23), 3879–3891 (2013)ADSCrossRef
go back to reference Ip, E.: Nonlinear compensation using backpropagation for polarization-multiplexed transmission. J. Lightwave Technol. 28(6), 939–951 (2010)ADSCrossRef Ip, E.: Nonlinear compensation using backpropagation for polarization-multiplexed transmission. J. Lightwave Technol. 28(6), 939–951 (2010)ADSCrossRef
go back to reference Khan, R., Yang, Q., Ullah, I., Rehman, A.U., Tufail, A.B., Noor, A., Rehman, A., Cengiz, K.: 3D convolutional neural networks based automatic modulation classification in the presence of channel noise. IET Commun. 16(5), 497–509 (2022)CrossRef Khan, R., Yang, Q., Ullah, I., Rehman, A.U., Tufail, A.B., Noor, A., Rehman, A., Cengiz, K.: 3D convolutional neural networks based automatic modulation classification in the presence of channel noise. IET Commun. 16(5), 497–509 (2022)CrossRef
go back to reference Kumar, S.: Analysis of nonlinear phase noise in coherent fiber-optic systems based on phase shift keying. J. Lightwave Technol. 27(21), 4722–4733 (2009)ADSCrossRef Kumar, S.: Analysis of nonlinear phase noise in coherent fiber-optic systems based on phase shift keying. J. Lightwave Technol. 27(21), 4722–4733 (2009)ADSCrossRef
go back to reference Kumaraguru, P.V., Kamalakkannan, V., Gururaj, H.L., Francesco Flammini, B.S., Alfurhood, Natarajan, R.: Hessian distributed ant optimized Perron–Frobenius eigen centrality for social networks. ISPRS Int. J. Geo-Information. 12(8), 316 (2023)ADSCrossRef Kumaraguru, P.V., Kamalakkannan, V., Gururaj, H.L., Francesco Flammini, B.S., Alfurhood, Natarajan, R.: Hessian distributed ant optimized Perron–Frobenius eigen centrality for social networks. ISPRS Int. J. Geo-Information. 12(8), 316 (2023)ADSCrossRef
go back to reference Li, M., Yu, S., Yang, J., Chen, Z., Han, Y., Gu, W.: Nonparameter nonlinear phase noise mitigation by using M-ary support vector machine for coherent optical systems. IEEE Photonics J. 5(6), 7800312–7800312 (2013)ADSCrossRef Li, M., Yu, S., Yang, J., Chen, Z., Han, Y., Gu, W.: Nonparameter nonlinear phase noise mitigation by using M-ary support vector machine for coherent optical systems. IEEE Photonics J. 5(6), 7800312–7800312 (2013)ADSCrossRef
go back to reference Li, W., Guo, Y., Wang, B., Yang, B.: Learning spatiotemporal embedding with gated convolutional recurrent networks for translation initiation site prediction. Pattern Recogn. 136, 109234 (2023)CrossRef Li, W., Guo, Y., Wang, B., Yang, B.: Learning spatiotemporal embedding with gated convolutional recurrent networks for translation initiation site prediction. Pattern Recogn. 136, 109234 (2023)CrossRef
go back to reference Liu, X., Wang, Y., Wang, X., Tian, F., Xin, X., Zhang, Q., Tian, Q.: Mixture-of-gaussian clustering-based decision technique for a coherent optical communication system. Appl. Opt. 58(33), 9201–9207 (2019)ADSCrossRef Liu, X., Wang, Y., Wang, X., Tian, F., Xin, X., Zhang, Q., Tian, Q.: Mixture-of-gaussian clustering-based decision technique for a coherent optical communication system. Appl. Opt. 58(33), 9201–9207 (2019)ADSCrossRef
go back to reference Makovejs, S., Millar, D.S., Lavery, D., Behrens, C., Killey, R.I., Seb, J., Savory, Bayvel, P.: “Characterization of long-haul 112Gbit/s PDM-QAM-16 transmission with and without digital nonlinearity compensation.“ Opt. Express 18, no. 12 : 12939–12947. (2010) Makovejs, S., Millar, D.S., Lavery, D., Behrens, C., Killey, R.I., Seb, J., Savory, Bayvel, P.: “Characterization of long-haul 112Gbit/s PDM-QAM-16 transmission with and without digital nonlinearity compensation.“ Opt. Express 18, no. 12 : 12939–12947. (2010)
go back to reference Martins, C.S., Bertignono, L., Nespola, A., Carena, A., Guiomar, F.P., Armando, N.: Pinto. Low-complexity time-domain DBP based on random step-size and partitioned quantization. J. Lightwave Technol. 36(14), 2888–2895 (2018)ADSCrossRef Martins, C.S., Bertignono, L., Nespola, A., Carena, A., Guiomar, F.P., Armando, N.: Pinto. Low-complexity time-domain DBP based on random step-size and partitioned quantization. J. Lightwave Technol. 36(14), 2888–2895 (2018)ADSCrossRef
go back to reference Miao, J., Xu, S., Zou, B., Qiao, Y.: ResNet based on feature-inspired gating strategy. Multimed Tools Appl 81, 1–18 (2022)CrossRef Miao, J., Xu, S., Zou, B., Qiao, Y.: ResNet based on feature-inspired gating strategy. Multimed Tools Appl 81, 1–18 (2022)CrossRef
go back to reference Musumeci, F., Rottondi, C., Nag, A., Macaluso, I., Zibar, D., Ruffini, M., Massimo Tornatore: An overview on application of machine learning techniques in optical networks. IEEE Commun. Surv. Tutorials. 21(2), 1383–1408 (2018)CrossRef Musumeci, F., Rottondi, C., Nag, A., Macaluso, I., Zibar, D., Ruffini, M., Massimo Tornatore: An overview on application of machine learning techniques in optical networks. IEEE Commun. Surv. Tutorials. 21(2), 1383–1408 (2018)CrossRef
go back to reference Saif, W.S., Amr, M., Ragheb, T.A., Alshawi, Saleh, A.: Alshebeili. Optical performance monitoring in mode division multiplexed optical networks. J. Lightwave Technol. 39(2), 491–504 (2020)ADSCrossRef Saif, W.S., Amr, M., Ragheb, T.A., Alshawi, Saleh, A.: Alshebeili. Optical performance monitoring in mode division multiplexed optical networks. J. Lightwave Technol. 39(2), 491–504 (2020)ADSCrossRef
go back to reference Subramanian, M., Shanmugavadivel, K., Nandhini, P.S.: On fine-tuning deep learning models using transfer learning and hyper-parameters optimization for disease identification in maize leaves. Neural Comput. Appl. 34(16), 13951–13968 (2022)CrossRef Subramanian, M., Shanmugavadivel, K., Nandhini, P.S.: On fine-tuning deep learning models using transfer learning and hyper-parameters optimization for disease identification in maize leaves. Neural Comput. Appl. 34(16), 13951–13968 (2022)CrossRef
go back to reference Wang, D., Zhang, M., Cai, Z., Cui, Y., Li, Z., Han, H., Fu, M., Luo, B.: Combatting nonlinear phase noise in coherent optical systems with an optimized decision processor based on machine learning. Opt. Commun. 369, 199–208 (2016)ADSCrossRef Wang, D., Zhang, M., Cai, Z., Cui, Y., Li, Z., Han, H., Fu, M., Luo, B.: Combatting nonlinear phase noise in coherent optical systems with an optimized decision processor based on machine learning. Opt. Commun. 369, 199–208 (2016)ADSCrossRef
go back to reference Wang, X., Zhang, Q., Xin, X., Gao, R., Tian, Q., Tian, F., Wang, C., Pan, X., Wang, Y.: Robust weighted K-means clustering algorithm for a probabilistic-shaped 64QAM coherent optical communication system. Opt. Express. 27(26), 37601–37613 (2019)ADSCrossRef Wang, X., Zhang, Q., Xin, X., Gao, R., Tian, Q., Tian, F., Wang, C., Pan, X., Wang, Y.: Robust weighted K-means clustering algorithm for a probabilistic-shaped 64QAM coherent optical communication system. Opt. Express. 27(26), 37601–37613 (2019)ADSCrossRef
go back to reference Xu, H., Wang, Y., Wang, X., Li, C., Huang, X., Zhang, Q.: A novel nonlinear equalizer for probabilistic shaping 64-QAM based on constellation segmentation and support vector machine. Electronics 11(5), 671 (2022)CrossRef Xu, H., Wang, Y., Wang, X., Li, C., Huang, X., Zhang, Q.: A novel nonlinear equalizer for probabilistic shaping 64-QAM based on constellation segmentation and support vector machine. Electronics 11(5), 671 (2022)CrossRef
go back to reference Xuan, H., Liu, J., Yang, P., Gu, G., Cui, D.: Emotion Recognition from EEG Using All-Convolution Residual Neural Network, pp. 73–85. International Workshop on Human Brain and Artificial Intelligence. Singapore, Springer Nature (2022) Xuan, H., Liu, J., Yang, P., Gu, G., Cui, D.: Emotion Recognition from EEG Using All-Convolution Residual Neural Network, pp. 73–85. International Workshop on Human Brain and Artificial Intelligence. Singapore, Springer Nature (2022)
go back to reference Zhang, J., Chen, W., Gao, M., Shen, G.: K-means-clustering-based fiber nonlinearity equalization techniques for 64-QAM coherent optical communication system. Opt Express 25(22), 27570–27580 (2017)ADSCrossRef Zhang, J., Chen, W., Gao, M., Shen, G.: K-means-clustering-based fiber nonlinearity equalization techniques for 64-QAM coherent optical communication system. Opt Express 25(22), 27570–27580 (2017)ADSCrossRef
go back to reference Zhang, J., Gao, M., Chen, W., Shen, G.: Non-data-aided k-nearest neighbors technique for optical fiber nonlinearity mitigation. J. Lightwave Technol. 36(17), 3564–3572 (2018)ADSCrossRef Zhang, J., Gao, M., Chen, W., Shen, G.: Non-data-aided k-nearest neighbors technique for optical fiber nonlinearity mitigation. J. Lightwave Technol. 36(17), 3564–3572 (2018)ADSCrossRef
Metadata
Title
Machine learning based 64-QAM classification techniques for enhanced optical communication
Authors
P. Kiran
H. L. Gururaj
Francesco Flammini
D. S. Sunil Kumar
V. Veeraprathap
Publication date
01-12-2023
Publisher
Springer US
Published in
Optical and Quantum Electronics / Issue 13/2023
Print ISSN: 0306-8919
Electronic ISSN: 1572-817X
DOI
https://doi.org/10.1007/s11082-023-05472-7

Other articles of this Issue 13/2023

Optical and Quantum Electronics 13/2023 Go to the issue