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An Energy-Efficient Markov Chain-Based Randomized Duty Cycling Scheme for Wireless Sensor Networks

机译:一种基于节能马尔可夫链的无线传感器网络随机占空比方案

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To extend the life time of a wireless sensor network, sensor nodes usually switch between dormant and active states according to a duty cycling scheme. In randomized schemes, sensors use only partial or no information about their neighbors, and rely on randomness to generate working schedules. Duty cycling schemes are often evaluated in terms of the connection delay, i.e., the time until two neighboring nodes are simultaneously active, and the connection duration, i.e., the time until at least one of them switches to the dormant state. In this paper, we argue that duty cycling time (energy) efficiency, i.e., the ratio of time (energy) employed in ancillary operations when switching from and into deep sleep mode, is an important performance metric too. We present experimental results using Sun SPOT sensors that support our claim and highlight the performance trade-off between connection delay and time (energy) efficiency for a traditional scheme based on independent and identically distributed (i.i.d.) random variables. We propose a novel randomized duty cycling scheme based on Markov chains with the goal of (i) reducing the connection delay, while maintaining a given time (energy) efficiency, or (ii) keeping a constant connection delay, while increasing the time (energy) efficiency. The proposed scheme is analyzed mathematically by deriving the time efficiency, connection delay and duration in terms of the time slot length, duty cycle, and cost of set up and tear down operations. Analytical results demonstrate that the Markov chain-based scheme can improve the performance in terms of connection delay without affecting the time efficiency, or vice versa, as opposed to the trade-off observed in traditional schemes. Experimental results using Sun SPOT sensor nodes with the minimum number of operations during transitions from and into deep sleep mode confirm the mathematical analysis of the proposed Markov chain-based randomized scheme.
机译:为了延长无线传感器网络的寿命,传感器节点通常根据占空比方案在休眠状态和活动状态之间切换。在随机方案中,传感器仅使用有关其邻居的部分信息或不使用任何信息,而是依靠随机性来生成工作计划表。经常根据连接延迟,即直到两个相邻节点同时活动的时间,以及连接持续时间,即直到它们中至少一个切换到休眠状态的时间,来评估占空比方案。在本文中,我们认为占空比循环时间(能量)效率(即从深睡眠模式切换到深度睡眠模式时辅助操作中使用的时间(能量)的比率)也是重要的性能指标。我们使用Sun SPOT传感器提供了支持我们的主张的实验结果,并强调了基于独立且均布(i.i.d.)随机变量的传统方案的连接延迟与时间(能量)效率之间的性能折衷。我们提出一种基于马尔可夫链的新型随机占空比循环方案,其目标是(i)减少连接延迟,同时保持给定的时间(能量)效率,或者(ii)保持恒定的连接延迟,同时增加时间(能量) ) 效率。通过从时隙长度,占空比,建立和拆除操作的成本等方面推导时间效率,连接延迟和持续时间,对所提出的方案进行数学分析。分析结果表明,与传统方案中的权衡取舍相反,基于马尔可夫链的方案可以在连接延迟方面提高性能,而不会影响时间效率,反之亦然。在从深睡眠模式过渡到深度睡眠模式期间使用具有最少操作次数的Sun SPOT传感器节点进行的实验结果证实了所提出的基于Markov链的随机方案的数学分析。

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