Intelligent Forwarding Strategy for Congestion Control Using Q-Learning and LSTM in Named Data Networking

Author:

Ryu Sanguk1ORCID,Joe Inwhee1ORCID,Kim WonTae2ORCID

Affiliation:

1. Department of Computer and Software, Hanyang University, 222 Wangsimni-ro, Seoul 04763, Republic of Korea

2. Department of Computer Science and Engineering, Korea University of Technology and Education, Cheonan 31253, Republic of Korea

Abstract

Named data networking (NDN) is a future network architecture that replaces IP-oriented communication with content-oriented communication and has new features such as cache, multiple paths, and multiple sources. Services such as video streaming, to which NDN can be applied in the future, can cause congestion if data is concentrated on one of the nodes during high demand. To solve this problem, sending rate control methods such as TCP congestion control have been proposed, but they do not adequately reflect the characteristics of NDN. Therefore, we use reinforcement learning and deep learning to propose a congestion control method that takes advantage of multipath features. The intelligent forwarding strategy for congestion control using Q-learning and long short-term memory in NDN proposed in this paper is divided into two phases. The first phase uses an LSTM model to train a pending interest table (PIT) entry rate that can be used as an indicator to detect congestion by knowing the amount of data returned. In the second phase, it is forwarded to an alternative path that is not congestive via Q-learning based on the PIT entry rate predicted by the trained LSTM model. The simulation results show that the proposed method increases the data reception rate by 6.5% and 19.5% and decreases the packet drop rate by 7.3% and 17.2% compared to an adaptive SRTT-based forwarding strategy (ASF) and BestRoute.

Funder

Institute for Information & Communications Technology Promotion

Publisher

Hindawi Limited

Subject

Computer Networks and Communications,Computer Science Applications

Reference18 articles.

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2. Named data networking (NDN) project;L. Zhang;Transportation Research Record Journal of the Transportation Research Board,2010

3. Named data networking

4. Interest Forwarding in Named Data Networking Using Reinforcement Learning

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1. Q-ICAN: A Q-learning based cache pollution attack mitigation approach for named data networking;Computer Networks;2023-11

2. A Review on AI-Enabled Congestion Control Schemes for Content Centric Networks;2023 14th International Conference on Information and Communication Technology Convergence (ICTC);2023-10-11

3. Forwarding Strategy Analysis in Wireless Network Based Named Data Network (NDN);2023 International Conference on Electrical and Information Technology (IEIT);2023-09-14

4. Optimizing Forwarding Strategies in Named Data Networking Using Reinforcement Learning;2023 9th International Conference on Wireless and Telematics (ICWT);2023-07-06

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