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Machine Learning-Based Offloading Strategy for Lightweight User Mobile Edge Computing Tasks

机译:基于机器学习的轻量级用户移动边缘计算任务的卸载策略

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This paper presents an in-depth study and analysis of offloading strategies for lightweight user mobile edge computing tasks using a machine learning approach. Firstly, a scheme for multiuser frequency division multiplexing approach in mobile edge computing offloading is proposed, and a mixed-integer nonlinear optimization model for energy consumption minimization is developed. Then, based on the analysis of the concave-convex properties of this optimization model, this paper uses variable relaxation and nonconvex optimization theory to transform the problem into a convex optimization problem. Subsequently, two optimization algorithms are designed: for the relaxation optimization problem, an iterative optimization algorithm based on the Lagrange dual method is designed; based on the branch-and-bound integer programming method, the iterative optimization algorithm is used as the basic algorithm for each step of the operation, and a global optimization algorithm is designed for transmitting power allocation, computational offloading strategy, dynamic adjustment of local computing power, and receiving energy channel selection strategy. Finally, the simulation results verify that the scheduling strategy of the frequency division technique proposed in this paper has good energy consumption minimization performance in mobile edge computation offloading. Our model is highly efficient and has a high degree of accuracy. The anomaly detection method based on a decision tree combined with deep learning proposed in this paper, unlike traditional IoT attack detection methods, overcomes the drawbacks of rule-based security detection methods and enables them to adapt to both established and unknown hostile environments. Experimental results show that the attack detection system based on the model achieves good detection results in the detection of multiple attacks.
机译:本文采用了使用机器学习方法对轻量级用户移动边缘计算任务的卸载策略进行了深入的研究和分析。首先,提出了一种用于移动边缘计算卸载中的多用户频分复用方法的方案,开发了用于能量消耗最小化的混合整数非线性优化模型。然后,根据该优化模型的凹凸特性的分析,本文使用可变松弛和非凸优化理论将问题转换为凸优化问题。随后,设计了两种优化算法:对于放松优化问题,设计了一种基于拉格朗日双方法的迭代优化算法;基于分支和绑定的整数编程方法,迭代优化算法用作操作的每个步骤的基本算法,并且全局优化算法设计用于传输功率分配,计算卸载策略,局部计算的动态调整电力和接收能源渠道选择策略。最后,仿真结果验证了本文提出的频分技术的调度策略在移动边缘计算卸载中具有良好的能耗最小化性能。我们的模型具有高效且具有高度的准确性。基于决策树的异常检测方法与本文提出的深度学习相结合,与传统的物联网攻击检测方法不同,克服了基于规则的安全检测方法的缺点,使它们能够适应建立和未知的敌对环境。实验结果表明,基于该模型的攻击检测系统在检测多次攻击时实现了良好的检测结果。

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