基于q -学习的基于拍卖的雾云卸载竞价预测机制

R. Besharati, Mohammad Hossein Rezvani, Mohammad Mehdi Gilanian Sadeghi
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引用次数: 3

摘要

在雾计算范式中,如果终端设备的计算资源不足,用户的任务可以卸载到附近的设备或中心云。此外,由于移动设备的能量有限,最佳卸载是至关重要的。本文提出的方法基于拍卖理论,该理论在最近的研究中已被用于优化计算卸载。我们提出了一种基于q学习的竞价预测机制。参与拍卖的节点向拍卖实体公布一个出价,出价最高的节点即为拍卖赢家。然后,只有获胜的节点才有权卸载其上游(父)节点上的任务。Q-learning背后的主要思想是它是无状态的,只考虑当前状态来执行操作。评价结果表明,用q -学习方法预测的投标值接近最优。平均而言,所提出的方法比传统和最先进的技术消耗更少的能源。此外,它还减少了任务的执行时间,减少了网络资源的消耗。
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An Auction-Based Bid Prediction Mechanism for Fog-Cloud Offloading Using Q-Learning
In the fog computing paradigm, if the computing resources of an end device are insufficient, the user’s tasks can be offloaded to nearby devices or the central cloud. In addition, due to the limited energy of mobile devices, optimal offloading is crucial. The method presented in this paper is based on the auction theory, which has been used in recent studies to optimize computation offloading. We propose a bid prediction mechanism using Q-learning. Nodes participating in the auction announce a bid value to the auctioneer entity, and the node with the highest bid value is the auction winner. Then, only the winning node has the right to offload the tasks on its upstream (parent) node. The main idea behind Q-learning is that it is stateless and only considers the current state to perform an action. The evaluation results show that the bid values predicted by the Q-learning method are near-optimal. On average, the proposed method consumes less energy than traditional and state-of-the-art techniques. Also, it reduces the execution time of tasks and leads to less consumption of network resources.
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