A Machine Learning Method for Prediction of Multipath Channels
Julian AHRENS1(), Lia AHRENS1, Hans D. SCHOTTEN1,2
1.German Research Center for Artificial Intelligence, Kaiserslautern 67663, Germany 2.Technical University of Kaiserslautern, Kaiserslautern 67663, Germany
About author:Julian AHRENS(Julian. Ahrens@dfki.de) received his Master’s degreein mathematics from Kiel University (CAU), Germany, while working innon-commutative harmonic analysis. He is currently working as a research?er at the Intelligent Networks Group of Prof. Hans D. Schotten at the Ger?man Research Center for Artificial Intelligence, where he is involved in theBMBF project Future Industrial Network Architecture (FIND). His re?search interests include high performance computing, artificial intelligence,digital signal processing, and harmonic and functional analysis.|Lia AHRENSreceived her Ph. D. degree in stochastics and financialmathematics from Kiel University (CAU), Germany. She is currently work?ing as a senior researcher at the Intelligent Networks Group of Prof. HansD. Schotten at the German Research Center for Artificial Intelligence,where she is involved in the BMBF project TACNET 4. 0―Taktiles Inter?net. Her research interests include stochastic processes, stochastic filter?ing, and machine learning for time series analysis.|Hans D. SCHOTTENreceived his Diploma and Ph. D. degrees in elec?trical engineering from the RWTH Aachen University of Technology, Ger?many. He is a full professor and director of the Institute for Wireless Com?munications and Navigation at the Technical University of Kaiserslautern,Germany. In addition, he is a scientific director of the German ResearchCenter for Artificial Intelligence (DFKI) and head of the department for In?telligent Networks. Since 2018, he is the chairman of the German Societyfor Information Technology and member of the Supervisory Board of theVDE.
Julian AHRENS, Lia AHRENS, Hans D. SCHOTTEN. A Machine Learning Method for Prediction of Multipath Channels[J]. ZTE Communications, 2019, 17(4): 12-18.
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