Optimal PAM Order for Wireline Communication

Author(s):  
Asif Wahid ◽  
Rajath Bindiganavile ◽  
Armin Tajalli
2016 ◽  
Vol 52 (7) ◽  
pp. 535-537 ◽  
Author(s):  
Y. Li ◽  
W.‐H. Cho ◽  
Y. Du ◽  
J. Du ◽  
P.‐T. Huang ◽  
...  

Electronics ◽  
2021 ◽  
Vol 10 (22) ◽  
pp. 2741
Author(s):  
Stefan Biereigel ◽  
Szymon Kulis ◽  
Paulo Moreira ◽  
Alexander Kölpin ◽  
Paul Leroux ◽  
...  

This paper presents the first fully integrated radiation-tolerant All-Digital Phase-Locked Loop (PLL) and Clock and Data Recovery (CDR) circuit for wireline communication applications. Several radiation hardening techniques are proposed to achieve state-of-the-art immunity to Single-Event Effects (SEEs) up to 62.52/mg as well as tolerance to the Total Ionizing Dose (TID) exceeding 1.5Grad. The LC Digitally Controlled Oscillator (DCO) is implemented without MOS varactors, avoiding the use of a highly SEE sensitive circuit element. The circuit is designed to operate at reference clock frequencies from 40–320 or at data rates from 40Mbps–320Mbps and displays a jitter performance of 520 with a power dissipation of only 11 and an FOM of −235 .


2021 ◽  
Author(s):  
Shiva Raj Pokhrel ◽  
Anwar Walid

Multipath TCP (MPTCP) has emerged as a facilitator for harnessing and pooling available bandwidth in wireless/wireline communication networks and in data centers. Existing implementations of MPTCP such as, Linked Increase Algorithm (LIA), Opportunistic LIA (OLIA) and BAlanced LInked Adaptation (BALIA) include separate algorithms for congestion control and packet scheduling, with pre-selected control parameters. We propose a Deep Q-Learning (DQL) based framework for joint congestion control and packet scheduling for MPTCP. At the heart of the solution is an intelligent agent for interface, learning and actuation, which learns from experience optimal congestion control and scheduling mechanism using DQL techniques with policy gradients. We provide a rigorous stability analysis of system dynamics which provides important practical design insights. In addition, the proposed DQL-MPTCPalgorithm utilizes the ‘recurrent neural network’ and integrates it with ‘long short-term memory’ for continuously i) learning dynamic behavior of subflows (paths) and ii) responding promptly to their behavior using prioritized experience replay. With extensive emulations, we show that the proposed DQL-based MPTCP algorithm outperforms MPTCP LIA, OLIA and BALIA algorithms. Moreover, the DQL-MPTCP algorithm is robust to time-varying network characteristics and provides dynamic exploration and exploitation of paths. The revised version is to appear in IEEE Trans. in Mobile Computing soon.<br>


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