无线嵌入式系统中的代理放置:内存空间和能量优化

Nikos Tziritas, Thanasis Loukopoulos, S. Lalis, P. Lampsas
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引用次数: 17

摘要

嵌入式应用程序可以根据灵活地安装在可用节点上的移动代理来构建。在无线系统中,这样的节点通常只有有限的电池和内存资源;因此,明智地安排代理人是很重要的。在本文中,我们解决了在这样一个系统中放置新agent的问题。这个问题有两个主要组成部分。首先,必须在某个节点上找到或创建足够的内存空间来放置代理。其次,布局应该是节能的。我们提出了以逐步方式解决这两个目标的启发式方法,以及同时实现这两个目标的分支和定界方法。我们的算法是集中的,假设有一个单一的入口点,代理通过这个入口点被注入系统,并且有足够的系统状态知识和足够的资源来运行所提出的算法。在不同的模拟场景下对算法进行了评估,并确定了两个度量(空间,能量)之间的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Agent placement in wireless embedded systems: Memory space and energy optimizations
Embedded applications can be structured in terms of mobile agents that are flexibly installed on available nodes. In wireless systems, such nodes typically have limited battery and memory resources; therefore it is important to place agents judiciously. In this paper we tackle the problem of placing a newcomer agent in such a system. The problem has two main components. First, enough memory space must be found or created at some node to place the agent. Second, the placement should be energy efficient. We present heuristics for tackling these two goals in a stepwise fashion, as well as a branch and bound method for achieving both goals at the same time. Our algorithms are centralized assuming a single entry point through which agents are injected into the system, with adequate knowledge of the system state and enough resources to run the proposed algorithms. The algorithms are evaluated under different simulated scenarios, and the tradeoffs across the two metrics (space, energy) are identified.
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