基于遗传算法的联合任务计算能量优化

I. Kurniawan, A. Asyhari, Fei He
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引用次数: 0

摘要

联合计算是在单独的物理单元上运行的协作作业执行的一种形式,这些物理单元以前按其独特的功能分组。虽然现有的研究主要是利用不同段节点之间直接协调的联合计算,但值得考虑另一种情况,即一层内的额外节点将数据转发给另一层。因此,在传输到汇聚节点之前,节点可以作为数据捕获单元的聚合点。然而,这种新的安排产生了额外的传输路径,从而可能导致额外的能源消耗。本文初步研究了以优化能耗为目标的联合计算问题。相关组件,如计算和通信,被考虑并建模为正式表示。然后使用基于遗传算法的解决方案作为优化参数设置的工具。实验结果表明,元启发式算法具有实现最优系统配置的潜力,强调影响最终通信能耗的数据长度。然而,由于该算法依赖于过程中使用的随机变量,因此不能总是保证最优性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy Optimization on Joint Task Computation Using Genetic Algorithm
Joint computation is a form of collaborative job execution running at separate physical units, which are previously grouped by their unique functionalities. While existing studies have mainly utilized joint computation with direct coordination between nodes in different segments, it is worth considering another scenario where an additional node within a layer relays data to another layer. As a consequence, the node can serve as an aggregation point for data capture units prior to transmission to the sink node. However, this new arrangement produces additional transmission paths and can thus cause additional energy spending. This pilot study investigates the joint computation problem aiming at optimizing energy consumption. Relevant components, such as computation and communication, are taken into account and modeled into formal representation. A genetic algorithm-based solution is then used as a tool to optimize parameter setup. According to the experiment results, the metaheuristic algorithm has potential to achieve the optimal system configuration, emphasizing the data length that affects the final energy spending on communications. However, the algorithm cannot always guarantee the optimality as it relies on the random variable used in the process.
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