普适计算中的响应式编程优化

Chao Chen, Yi Xu, Kun Li, A. Helal
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引用次数: 16

摘要

普适计算系统需要特别适合这些系统的特定网络物理性质的编程模型和方法。由于其内置的安全特性和直观的应用程序开发风格,响应式(基于规则的)编程是一种很有吸引力的模型。然而,如果没有仔细的优化,反应式编程引擎可能会变成无处不在的系统及其传感器网络的巨大能量消耗。本文针对反应性发动机提出了两种优化方案。第一种,我们证明是最优的,假设空间中的所有传感器对应用都同样重要。另一种是自适应的,根据应用的使用情况,采用并估计每个传感器的概率。这两种优化都使用混合推/拉方法来实现最佳或接近最佳的能源效率。我们提出两种算法的实验评价量化他们的表现在一系列参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reactive Programming Optimizations in Pervasive Computing
Pervasive computing systems are begging for programming models and methodologies specifically suited to the particular cyber-physical nature of these systems. Reactive (rule-based) programming is an attractive model to use due to its built-in safety features and intuitive application development style. Without careful optimization however, reactive programming engines could turn into monstrous power drains of the pervasive system and its sensor network. In this paper we propose two optimizations for reactivity engines. The first, which we prove to be optimal, assumes all sensors in the space are equally important to the application. The other, which is adaptive, employs and estimates a probability for each sensor based on application usage. Both optimizations use a mixed push/pull approach to achieve optimal or near optimal energy efficiency. We present an experimental evaluation of the two algorithms to quantify their performance over a range of parameters.
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