Mlnek, P., Rusz, M., Benel, L., Slik, J. & Musil, P. Possibilities of broadband power line communications for smart home and smart building applications. Sensors 21(1), 240 (2021).
Article ADS PubMed PubMed Central Google Scholar
Al-Fuqaha, A., Guizani, M., Mohammadi, M., Aledhari, M. & Ayyash, M. Internet of things: A survey on enabling technologies, protocols, and applications. IEEE Commun. Surv. Tutor. 17(4), 23472376 (2015).
Article Google Scholar
Gonzlez-Ramos, J. et al. Upgrading the power grid functionalities with broadband power line communications: Basis, applications, current trends and challenges. Sensors 22(12), 4348. https://doi.org/10.3390/s22124348 (2022).
Article ADS PubMed PubMed Central Google Scholar
Ghasempour, A. Internet of things in smart grid: Architecture, applications, services, key technologies, and challenges. Inventions 4(1), 22 (2019).
Article Google Scholar
Hamamreh, J. M., Furqan, H. M. & Arslan, H. Classifications and applications of physical layer security techniques for confidentiality: A comprehensive survey. IEEE Commun. Surv. Tutor. 21(2), 17731828 (2018).
Article Google Scholar
Vincent, T. A., Gulsoy, B., Sansom, J. E. & Marco, J. Development of an in-vehicle power line communication network with in-situ instrumented smart cells. Transp. Eng. 6, 100098 (2021).
Article Google Scholar
Brandl, M. & Kellner, K. Performance evaluation of power-line communication systems for lin-bus based data transmission. Electronics 10(1), 85 (2021).
Article Google Scholar
Prasad, G. & Lampe, L. Full-duplex power line communications: Design and applications from multimedia to smart grid. IEEE Commun. Magaz. 58(2), 106112 (2019).
Article Google Scholar
Rocha Farias, L., Monteiro, L. F., Leme, M. O. & Stevan, S. L. Jr. Empirical analysis of the communication in industrial environment based on g3-power line communication and influences from electrical grid. Electronics 7(9), 194 (2018).
Article Google Scholar
Wang, B. & Cao, Z. A review of impedance matching techniques in power line communications. Electronics 8(9), 1022 (2019).
Article Google Scholar
Oliveira, R. M., Vieira, A. B., Latchman, H. A. & Ribeiro, M. V. Medium access control protocols for power line communication: A survey. IEEE Commun. Surv. Tutor. 21(1), 920939 (2018).
Article Google Scholar
Appasani, B. & Mohanta, D. K. A review on synchrophasor communication system: Communication technologies, standards and applications. Protect. Control Mod. Power Syst. 3(1), 117 (2018).
Google Scholar
Sanz, A., Sancho, D., & Ibar, J.C. Performances of g3 plc-rf hybrid communication systems. In: 2021 IEEE International Symposium on Power Line Communications and Its Applications (ISPLC), pp. 6772 (2021). IEEE
Deru, L., Dawans, S., Ocaa, M., Quoitin, B. & Bonaventure, O. Redundant border routers for mission-critical 6lowpan networks. In Real-world Wireless Sensor Networks (ed. Dev, T.) 195203 (Springer, 2014).
Chapter Google Scholar
Kassab, A.S., Seddik, K.G., Elezabi, A., & Soltan, A. Realistic wireless smart-meter network optimization using composite rpl metric. In: 2020 8th International Conference on Smart Grid (icSmartGrid), pp. 109114 (2020). IEEE
Stiri, S. et al. Hybrid plc and lorawan smart metering networks: Modeling and optimization. IEEE Trans. Indus. Inf. 18(3), 15721582 (2021).
Article Google Scholar
Ullah, Z., Al-Turjman, F., Mostarda, L. & Gagliardi, R. Applications of artificial intelligence and machine learning in smart cities. Comput. Commun. 154, 313323 (2020).
Article Google Scholar
Mata, J. et al. Artificial intelligence (ai) methods in optical networks: A comprehensive survey. Optic. Swit. Netw. 28, 4357 (2018).
Article Google Scholar
Fu, Y., Wang, S., Wang, C.-X., Hong, X. & McLaughlin, S. Artificial intelligence to manage network traffic of 5G wireless networks. IEEE Netw. 32(6), 5864 (2018).
Article Google Scholar
Yang, H. et al. Artificial-intelligence-enabled intelligent 6G networks. IEEE Netw. 34(6), 272280 (2020).
Article Google Scholar
Shi, Y., Yang, K., Jiang, T., Zhang, J. & Letaief, K. B. Communication-efficient edge AI: Algorithms and systems. IEEE Commun. Surv. Tutor. 22(4), 21672191 (2020).
Article Google Scholar
Zhang, C. & Lu, Y. Study on artificial intelligence: The state of the art and future prospects. J. Indus. Inf. Integr. 23, 100224. https://doi.org/10.1016/j.jii.2021.100224 (2021).
Article Google Scholar
Balada, C. et al. Fhler-im-netz: A smart grid and power line communication data set. IET Smart Gridhttps://doi.org/10.1049/stg2.12093 (2022).
Article Google Scholar
Righini, D., Tonello, A.M. Noise determinism in multi-conductor narrow band plc channels. In: 2018 IEEE International Symposium on Power Line Communications and its Applications (ISPLC) (2018) https://doi.org/10.1109/isplc.2018.8360239
Righini, D., Tonello, A.M.: Automatic clustering of noise in multi-conductor narrow band plc channels. In: 2019 IEEE International Symposium on Power Line Communications and its Applications (ISPLC) (2019) https://doi.org/10.1109/isplc.2019.8693272
Reyes, D. M. A., Souza, R. M. C. R. & Oliveira, A. L. I. A three-stage approach for modeling multiple time series applied to symbolic quartile data. Exp. Syst. Appl. 187, 115884. https://doi.org/10.1016/j.eswa.2021.115884 (2022).
Article Google Scholar
Bade, K., & Nurnberger, A. Personalized hierarchical clustering. In: 2006 IEEE/WIC/ACM International Conference on Web Intelligence (WI 2006 Main Conference Proceedings)(WI06) (2006) https://doi.org/10.1109/wi.2006.131
Leskovec, J., Rajaraman, A. & Ullman, J. D. Mining of Massive Datasets (Cambridge University Press, 2014).
Book Google Scholar
Vesanto, J. & Alhoniemi, E. Clustering of the self-organizing map. IEEE Trans. Neural Netw. 11(3), 586600. https://doi.org/10.1109/72.846731 (2000).
Article CAS PubMed Google Scholar
Dubey, A., Mallik, R. K. & Schober, R. Performance analysis of a multi-hop power line communication system over log-normal fading in presence of impulsive noise. IET Commun. 9(1), 19. https://doi.org/10.1049/iet-com.2014.0464 (2015).
Article Google Scholar
Hossam, M., Afify, A.A., Rady, M., Nabil, M., Moussa, K., Yousri, R., & Darweesh, M.S. A comparative study of different face shape classification techniques. In: 2021 International Conference on Electronic Engineering (ICEEM), pp. 16 (2021). https://doi.org/10.1109/ICEEM52022.2021.9480638
Prajapati, G.L., & Patle, A. On performing classification using svm with radial basis and polynomial kernel functions. In: 2010 3rd International Conference on Emerging Trends in Engineering and Technology (2010) https://doi.org/10.1109/icetet.2010.134
Almaiah, M. A. et al. Performance investigation of principal component analysis for intrusion detection system using different support vector machine kernels. Electronics 11(21), 3571 (2022).
Article Google Scholar
Verma, A.R., Singh, S.P., Mishra, R.C., & Katta, K. Performance analysis of speaker identification using gaussian mixture model and support vector machine. In: 2019 IEEE International WIE Conference on Electrical and Computer Engineering (WIECON-ECE) (2019) https://doi.org/10.1109/wiecon-ece48653.2019.9019970
Khan, M. Y. et al. Automated prediction of good dictionary examples (gdex): A comprehensive experiment with distant supervision, machine learning, and word embedding-based deep learning techniques. Complexityhttps://doi.org/10.1155/2021/2553199 (2021).
Article Google Scholar
Liu, P., Zhang, Y., Wu, H. & Fu, T. Optimization of edge-plc-based fault diagnosis with random forest in industrial internet of things. IEEE Internet Things J. 7(10), 96649674. https://doi.org/10.1109/jiot.2020.2994200 (2020).
Article Google Scholar
Bhushan, S. et al. An experimental analysis of various machine learning algorithms for hand gesture recognition. Electronics 11(6), 968. https://doi.org/10.3390/electronics11060968 (2022).
Article Google Scholar
Abirami, S. P., Kousalya, G. & Karthick, R. Varied expression analysis of children with ASD using multimodal deep learning technique. Deep Learn. Parallel Comput. Environ. Bioeng. Syst.https://doi.org/10.1016/b978-0-12-816718-2.00021-x (2019).
Article Google Scholar
Heydarian, M., Doyle, T. E. & Samavi, R. Mlcm: Multi-label confusion matrix. IEEE Access 10, 1908319095. https://doi.org/10.1109/access.2022.3151048 (2022).
Article Google Scholar
Abdulhammed, R., Musafer, H., Alessa, A., Faezipour, M. & Abuzneid, A. Features dimensionality reduction approaches for machine learning based network intrusion detection. Electronics 8(3), 322. https://doi.org/10.3390/electronics8030322 (2019).
Article Google Scholar
Read more here:
A comparative study of predicting the availability of power line ... - Nature.com
- Predictive Analytics And Machine Learning Market: A ... - Fagen wasanni - August 4th, 2023 [August 4th, 2023]
- Photonic Neural Networks: Revolutionizing Machine Learning and AI - Fagen wasanni - August 4th, 2023 [August 4th, 2023]
- Growing Concerns Over Bias in Powerful AI and Machine Learning ... - Fagen wasanni - August 4th, 2023 [August 4th, 2023]
- Machine learning prediction and classification of behavioral ... - Nature.com - August 4th, 2023 [August 4th, 2023]
- Predicting BRAFV600E mutations in papillary thyroid carcinoma ... - Nature.com - August 4th, 2023 [August 4th, 2023]
- Johns Hopkins makes major investment in the power, promise of ... - The Hub at Johns Hopkins - August 4th, 2023 [August 4th, 2023]
- Postdoctoral Fellowship: Pathogenesis of High Consequence ... - Global Biodefense - August 4th, 2023 [August 4th, 2023]
- Apple's Commitment to Generative AI and Machine Learning - Fagen wasanni - August 4th, 2023 [August 4th, 2023]
- Richmond could become AI and machine learning tech hub - The Daily Progress - August 4th, 2023 [August 4th, 2023]
- Platform Reduces Barriers Biologists Face In Accessing Machine ... - Bio-IT World - August 4th, 2023 [August 4th, 2023]
- Preventing Bias In Machine Learning - Texas A&M Today - Texas A&M University Today - August 4th, 2023 [August 4th, 2023]
- 3 Cheap Machine Learning Stocks That Smart Investors Will Snap ... - InvestorPlace - August 4th, 2023 [August 4th, 2023]
- Research Analyst/ Associate/ Fellow in Machine Learning and ... - Times Higher Education - August 6th, 2023 [August 6th, 2023]
- AI and Machine Learning: The New Frontier in Global Anti-Money ... - Fagen wasanni - August 6th, 2023 [August 6th, 2023]
- Harnessing the Power of AI and Machine Learning: Growth ... - Fagen wasanni - August 6th, 2023 [August 6th, 2023]
- Harnessing the Power of AI and Machine Learning for Enhanced ... - Fagen wasanni - August 6th, 2023 [August 6th, 2023]
- Use cases of Stereo Matching part8(Machine Learning + AI) - Medium - August 6th, 2023 [August 6th, 2023]
- Use cases of Stereo Matching part7(Machine Learning + AI) - Medium - August 6th, 2023 [August 6th, 2023]
- Use cases of Stereo Matching part9(Machine Learning + AI) - Medium - August 6th, 2023 [August 6th, 2023]
- How machine learning can expand the Landscape of Edge AI. | TDK - TDK Corporation - August 6th, 2023 [August 6th, 2023]
- Machine Learning-Trained Autonomy Tested By XQ-58 For Skyborg - Aviation Week - August 6th, 2023 [August 6th, 2023]
- Artificial Intelligence and Machine Learning in Packaging Robotics ... - Fagen wasanni - August 6th, 2023 [August 6th, 2023]
- 86-year old Hammett equation gets a machine learning update - Chemistry World - August 6th, 2023 [August 6th, 2023]
- Q & A: How A.I. and machine learning are transforming the lending ... - Digital Journal - August 6th, 2023 [August 6th, 2023]
- The Rise of AI and Machine Learning in Global E-Commerce ... - Fagen wasanni - August 6th, 2023 [August 6th, 2023]
- Machine learning-based technique for gain and resonance ... - Nature.com - August 6th, 2023 [August 6th, 2023]
- Machine learning for the development of diagnostic models of ... - Nature.com - August 6th, 2023 [August 6th, 2023]
- AI and the Heart: How Machine Learning is Changing the Face of ... - Fagen wasanni - August 6th, 2023 [August 6th, 2023]
- The Hidden Impact of AI in Photography and How Machine Learning ... - Cryptopolitan - August 6th, 2023 [August 6th, 2023]
- Machine learning identifies physical signs of stroke - Open Access Government - August 6th, 2023 [August 6th, 2023]
- Machine-learning for the prediction of one-year seizure recurrence ... - Nature.com - August 6th, 2023 [August 6th, 2023]
- Automated Machine Learning: Revolutionizing Predictive Analytics ... - Fagen wasanni - August 6th, 2023 [August 6th, 2023]
- Tim Cook says AI, machine learning are part of virtually every product Apple is building - CryptoSlate - August 6th, 2023 [August 6th, 2023]
- AI GNNs: Transforming the Landscape of Machine Learning - Fagen wasanni - August 6th, 2023 [August 6th, 2023]
- 3 Cheap Machine Learning Stocks That Smart Investors Will Snap Up Now - InvestorPlace - August 6th, 2023 [August 6th, 2023]