The convergence of mobile edge computing (MEC) and blockchain is transforming the current computing services in wireless Internet-of-Things networks, by enabling task offloading with security enhancement based on blockchain mining. Yet the existing approaches for these enabling technologies are isolated, providing only tailored solutions for specific services and scenarios. To fill this gap, we propose a novel cooperative task offloading and blockchain mining (TOBM) scheme for a blockchain-based MEC system, where each edge device not only handles computation tasks but also deals with block mining for improving system utility. To address the latency issues caused by the blockchain operation in MEC, we develop a new Proof-of-Reputation consensus mechanism based on a lightweight block verification strategy. To accommodate the highly dynamic environment and high-dimensional system state space, we apply a novel distributed deep reinforcement learning-based approach by using a multi-agent deep deterministic policy gradient algorithm. Experimental results demonstrate the superior performance of the proposed TOBM scheme in terms of enhanced system reward, improved offloading utility with lower blockchain mining latency, and better system utility, compared to the existing cooperative and non-cooperative schemes. The paper concludes with key technical challenges and possible directions for future blockchain-based MEC research.
翻译:移动边缘计算(MEC)和阻塞链链的趋同正在改变无线互联网网络中目前的计算服务,通过在基于整块采矿的加强安保措施下,使任务得以卸载,从而在不设档次的采矿业中,使任务得以卸载,从而在无线互联网连接网络中改变目前的计算服务。然而,这些赋能技术的现有方法是孤立的,只为特定服务和情景提供了量身定制的解决办法。为填补这一空白,我们建议为基于整块的基于链的MEC系统,采用新型合作任务卸载和连锁采矿(TOBM)计划(TOBM)计划,使每个边设备不仅处理计算任务,而且处理整块采矿,以改善系统效用。为解决由中链操作造成的隐蔽问题,我们根据轻重的整块核查战略,开发了新的截断面共识机制。为了容纳高度动态环境和高维度系统状态的空间,我们采用了新型的分散强化学习基础方法,即使用多剂深度的威慑性政策梯度算法。实验结果表明,拟议的TOBM计划在加强系统奖励、改进了低链采矿链的离层采矿效用,改进后效用,并改进了系统效用,与现有不合作和不合作和不合作型研究系统的挑战。