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Mechanism analysis of non-inertial particle swarm optimization for Internet of Things in edge computing

机译:边缘计算中非互联网群优化的机制分析

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摘要

This paper carries out the mechanism analysis of non-inertial particle swarm optimization. It is a modified algorithm based on a new kinetic equation which is applied to the prediction of non-stationary time series for the internet of things in the edge computing. In order to avoid premature convergence and accelerate convergence rate, different from standard particle swarm optimization, the modified algorithm uses a new kinetic equation to lead particles motion direction, besides generalized opposition-based learning (GOBL) and adaptive elite mutation (AEM) strategies. The work presents the second order standardized recurrence equation for the new kinetic equation whose corresponding characteristic equations can be analyzed via the difference functions to obtain the boundaries of coefficients and its convergence region. Besides, GOBL and AEM strategies are also analyzed to boost global and local convergence of the algorithm as an interpretation. It is illustrated that performance analysis of the algorithm with two well-known test functions. The good performance is further validated from application in edge computing.
机译:本文采用了非惯性粒子群优化的机制分析。它是一种基于新动力学方程的修改算法,该算法应用于边缘计算中的内容网的非静止时间序列的预测。为了避免与标准粒子群优化不同的过早收敛和加速会聚速率,改进的算法使用新的动力学方程来引入粒子运动方向,除了广义的对立的学习(GoBL)和自适应精英突变(AEM)策略之外。该工作介绍了用于新动力学方程的二阶标准化复发方程,其相应的特性方程可以通过差分功能分析,以获得系数及其收敛区域的边界。此外,还分析了GoBL和AEM策略,以提高算法的全球和局部收敛作为解释。说明了具有两个众所周知的测试功能的算法的性能分析。从边缘计算中的应用进一步验证了良好的性能。

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