Abbas Ziaul Haq, Ali Zaiwar, Abbas Ghulam, Jiao Lei, Bilal Muhammad, Suh Doug-Young, Piran Md Jalil
Faculty of Electrical Engineering, GIK Institute of Engineering Sciences and Technology, Topi 23640, Pakistan.
Telecommunications and Networking Research Center, GIK Institute of Engineering Sciences and Technology, Topi 23640, Pakistan.
Sensors (Basel). 2021 May 19;21(10):3523. doi: 10.3390/s21103523.
In mobile edge computing (MEC), partial computational offloading can be intelligently investigated to reduce the energy consumption and service delay of user equipment (UE) by dividing a single task into different components. Some of the components execute locally on the UE while the remaining are offloaded to a mobile edge server (MES). In this paper, we investigate the partial offloading technique in MEC using a supervised deep learning approach. The proposed technique, comprehensive and energy efficient deep learning-based offloading technique (CEDOT), intelligently selects the partial offloading policy and also the size of each component of a task to reduce the service delay and energy consumption of UEs. We use deep learning to find, simultaneously, the best partitioning of a single task with the best offloading policy. The deep neural network (DNN) is trained through a comprehensive dataset, generated from our mathematical model, which reduces the time delay and energy consumption of the overall process. Due to the complexity and computation of the mathematical model in the algorithm being high, due to trained DNN the complexity and computation are minimized in the proposed work. We propose a comprehensive cost function, which depends on various delays, energy consumption, radio resources, and computation resources. Furthermore, the cost function also depends on energy consumption and delay due to the task-division-process in partial offloading. None of the literature work considers the partitioning along with the computational offloading policy, and hence, the time and energy consumption due to task-division-process are ignored in the cost function. The proposed work considers all the important parameters in the cost function and generates a comprehensive training dataset with high computation and complexity. Once we get the training dataset, then the complexity is minimized through trained DNN which gives faster decision making with low energy consumptions. Simulation results demonstrate the superior performance of the proposed technique with high accuracy of the DNN in deciding offloading policy and partitioning of a task with minimum delay and energy consumption for UE. More than 70% accuracy of the trained DNN is achieved through a comprehensive training dataset. The simulation results also show the constant accuracy of the DNN when the UEs are moving which means the decision making of the offloading policy and partitioning are not affected by the mobility of UEs.
在移动边缘计算(MEC)中,可以通过将单个任务划分为不同组件来智能地研究部分计算卸载,以降低用户设备(UE)的能耗和服务延迟。一些组件在UE上本地执行,而其余组件则卸载到移动边缘服务器(MES)。在本文中,我们使用监督深度学习方法研究MEC中的部分卸载技术。所提出的技术,即基于深度学习的综合节能卸载技术(CEDOT),智能地选择部分卸载策略以及任务每个组件的大小,以减少UE的服务延迟和能耗。我们使用深度学习同时找到具有最佳卸载策略的单个任务的最佳划分。深度神经网络(DNN)通过从我们的数学模型生成的综合数据集进行训练,这减少了整个过程的时间延迟和能耗。由于算法中数学模型的复杂性和计算量很大,在所提出的工作中,经过训练的DNN将复杂性和计算量最小化。我们提出了一个综合成本函数,它取决于各种延迟、能耗、无线资源和计算资源。此外,成本函数还取决于部分卸载中任务划分过程导致的能耗和延迟。现有文献工作均未考虑划分与计算卸载策略,因此,成本函数中忽略了任务划分过程导致的时间和能耗。所提出的工作在成本函数中考虑了所有重要参数,并生成了具有高计算量和复杂性的综合训练数据集。一旦我们得到训练数据集,然后通过训练后的DNN将复杂性最小化,这使得决策更快且能耗更低。仿真结果表明,所提出的技术具有卓越性能,DNN在确定卸载策略以及以最小延迟和能耗对UE的任务进行划分方面具有很高的准确性。通过综合训练数据集,训练后的DNN实现了超过70%的准确率。仿真结果还表明,当UE移动时,DNN的准确率保持不变,这意味着卸载策略和划分的决策不受UE移动性的影响。