Privacy-Preserved Task Offloading in Mobile Blockchain with Deep Reinforcement Learning
Dinh C. Nguyen, Pubudu N. Pathirana, Ming Ding, Aruna Seneviratne

TL;DR
This paper introduces a deep reinforcement learning approach for task offloading in mobile blockchain systems, aiming to optimize privacy, energy use, and latency in MEC-based networks.
Contribution
It proposes a novel deep RL framework for joint optimization of task offloading and privacy preservation in mobile blockchain environments.
Findings
Deep RL significantly improves offloading efficiency.
Enhanced user privacy and reduced energy consumption.
Lower computation latency compared to benchmarks.
Abstract
Blockchain technology with its secure, transparent and decentralized nature has been recently employed in many mobile applications. However, the mining process in mobile blockchain requires high computational and storage capability of mobile devices, which would hinder blockchain applications in mobile systems. To meet this challenge, we propose a mobile edge computing (MEC) based blockchain network where multi-mobile users (MUs) act as miners to offload their mining tasks to a nearby MEC server via wireless channels. Specially, we formulate task offloading and user privacy preservation as a joint optimization problem which is modelled as a Markov decision process, where our objective is to minimize the long-term system offloading costs and maximize the privacy levels for all blockchain users. We first propose a reinforcement learning (RL)-based offloading scheme which enables MUs to…
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