Learning-Based Off-Chain Transaction Scheduling in Prioritized Payment Channel Networks | IEEE Journals & Magazine | IEEE Xplore

Learning-Based Off-Chain Transaction Scheduling in Prioritized Payment Channel Networks


Abstract:

Payment channel network (PCN) is one of the promising solutions for scalable blockchains since it shows great potential in improving blockchain network throughput. Howeve...Show More

Abstract:

Payment channel network (PCN) is one of the promising solutions for scalable blockchains since it shows great potential in improving blockchain network throughput. However, the growing number of transactions and the payment-channel sharing of concurrent transactions can lead to channel congestion. Although many studies have proposed different solutions to solve this problem, they ignore a fact that applications may have different transaction rate requirements at different times. In this paper, we propose a priority-aware PCN to meet the requirements of those transactions. Senders in priority-aware PCNs can specify the priority of their transactions by paying a corresponding forwarding fee on each hop along the transaction path. However, capacity competition occurs on the shared hops. Moreover, we propose a multi-agent DQN-based priority assignment algorithm to address the competition issue and design a PCN simulator for performance evaluation. Simulation results show that our solution can guarantee a high throughput of transactions and assign priorities appropriately to balance the transaction rate and forwarding fee cost. The experimental results demonstrate that the priority scheduling scheme can achieve higher transaction throughput and success ratio than other scheduling methods in a congested PCN environment.
Published in: IEEE Journal on Selected Areas in Communications ( Volume: 40, Issue: 12, December 2022)
Page(s): 3589 - 3599
Date of Publication: 12 October 2022

ISSN Information:

Funding Agency:


Contact IEEE to Subscribe

References

References is not available for this document.