Generative Adversarial Learning for Machine Learning empowered Self Organizing 5G Networks

Author(s):  
Ben Hughes ◽  
Shruti Bothe ◽  
Hasan Farooq ◽  
Ali Imran
2021 ◽  
Author(s):  
Nicola Piovesan ◽  
Antonio De Domenico ◽  
Matteo Bernabe ◽  
David Lopez-Perez ◽  
Harvey Baohongqiang ◽  
...  
Keyword(s):  

Author(s):  
Ester Gonzalez-Sosa ◽  
Ignacio Frontelo-Benito ◽  
Redouane Kachach ◽  
Pablo Perez ◽  
Jaime Jesus Ruiz ◽  
...  

2019 ◽  
Vol 5 (1) ◽  
pp. eaav2761 ◽  
Author(s):  
Ling Hu ◽  
Shu-Hao Wu ◽  
Weizhou Cai ◽  
Yuwei Ma ◽  
Xianghao Mu ◽  
...  

Generative adversarial learning is one of the most exciting recent breakthroughs in machine learning. It has shown splendid performance in a variety of challenging tasks such as image and video generation. More recently, a quantum version of generative adversarial learning has been theoretically proposed and shown to have the potential of exhibiting an exponential advantage over its classical counterpart. Here, we report the first proof-of-principle experimental demonstration of quantum generative adversarial learning in a superconducting quantum circuit. We demonstrate that, after several rounds of adversarial learning, a quantum-state generator can be trained to replicate the statistics of the quantum data output from a quantum channel simulator, with a high fidelity (98.8% on average) so that the discriminator cannot distinguish between the true and the generated data. Our results pave the way for experimentally exploring the intriguing long-sought-after quantum advantages in machine learning tasks with noisy intermediate–scale quantum devices.


Energies ◽  
2020 ◽  
Vol 13 (18) ◽  
pp. 4862
Author(s):  
Nilesh Dixit ◽  
Paul McColgan ◽  
Kimberly Kusler

A good understanding of different rock types and their distribution is critical to locate oil and gas accumulations in the subsurface. Traditionally, rock core samples are used to directly determine the exact rock facies and what geological environments might be present. Core samples are often expensive to recover and, therefore, not always available for each well. Wireline logs provide a cheaper alternative to core samples, but they do not distinguish between various rock facies alone. This problem can be overcome by integrating limited core data with largely available wireline log data with machine learning. Here, we presented an application of machine learning in rock facies predictions based on limited core data from the Umiat Oil Field of Alaska. First, we identified five sandstone reservoir facies within the Lower Grandstand Member using core samples and mineralogical data available for the Umiat 18 well. Next, we applied machine learning algorithms (ascendant hierarchical clustering, self-organizing maps, artificial neural network, and multi-resolution graph-based clustering) to available wireline log data to build our models trained with core-driven information. We found that self-organizing maps provided the best result among other techniques for facies predictions. We used the best self-organizing maps scheme for predicting similar reservoir facies in nearby uncored wells—Umiat 23H and SeaBee-1. We validated our facies prediction results for these wells with observed seismic data.


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