PAM: Predictive analytics and modules-based computation offloading framework using greedy heuristics and 5G NR-V2X

IF 2.5 4区 计算机科学 Q3 TELECOMMUNICATIONS
Muhammad Ilyas Khattak, Hui Yuan, Ayaz Ahmad, Manzoor Ahmed, Ajmal Khan,  Inamullah
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Abstract

Recent advancements in distributed computing systems have shown promising prospects in enabling the effective usage of many next-generation applications. These applications include a wide range of fields, such as healthcare, interactive gaming, video streaming, and other related technologies. Among such solutions are the evolving vehicular fog computing (VFC) frameworks that make use of IEEE and 3GPP protocols and use advanced optimization algorithms. However, these approaches often rely on outdated protocols or computationally intensive mathematical techniques for solving or representing their optimization models. Additionally, some of these frameworks have not thoroughly considered the type of application during their evaluation and validation phases. In response to these challenges, we have developed the “predictive analytics and modules” (PAM) framework, which operates on a time and event-driven basis. It utilizes up-to-date 3GPP protocols to address the inherent unpredictability of VFC-enabled distributed computing systems required in smart healthcare systems. Through a combination of a greedy heuristic approach and a distributed offloading architecture, PAM efficiently optimizes decisions related to task offloading and computation allocation. This is achieved through specialized algorithms that provide support to computationally weaker devices, all within a time frame of under 100 ms. To assess the performance of PAM in comparison to three benchmark methodologies, the evaluation pathways that we employed are average response time, probability density function, pareto-analysis, algorithmic run time, and algorithmic complexity.

Abstract Image

PAM:利用贪婪启发法和 5G NR-V2X 的预测分析和基于模块的计算卸载框架
分布式计算系统的最新进展显示,在有效利用许多下一代应用方面前景广阔。这些应用包括广泛的领域,如医疗保健、互动游戏、视频流和其他相关技术。在这些解决方案中,不断发展的车载雾计算(VFC)框架利用了 IEEE 和 3GPP 协议,并采用了先进的优化算法。然而,这些方法往往依赖于过时的协议或计算密集型数学技术来解决或表示其优化模型。此外,其中一些框架在评估和验证阶段并未全面考虑应用类型。为了应对这些挑战,我们开发了 "预测分析和模块"(PAM)框架,该框架以时间和事件驱动为基础。它利用最新的 3GPP 协议来解决智能医疗系统所需的 VFC 分布式计算系统固有的不可预测性问题。通过结合贪婪启发式方法和分布式卸载架构,PAM 可有效优化与任务卸载和计算分配相关的决策。这是通过为计算能力较弱的设备提供支持的专门算法实现的,所有这些都能在 100 毫秒内完成。为了评估 PAM 与三种基准方法相比的性能,我们采用了平均响应时间、概率密度函数、帕累托分析、算法运行时间和算法复杂度等评估途径。
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来源期刊
CiteScore
8.90
自引率
13.90%
发文量
249
期刊介绍: ransactions on Emerging Telecommunications Technologies (ETT), formerly known as European Transactions on Telecommunications (ETT), has the following aims: - to attract cutting-edge publications from leading researchers and research groups around the world - to become a highly cited source of timely research findings in emerging fields of telecommunications - to limit revision and publication cycles to a few months and thus significantly increase attractiveness to publish - to become the leading journal for publishing the latest developments in telecommunications
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