4.3 Article

Energy and relevance-aware adaptive monitoring method for wireless sensor nodes with hard energy constraints

Journal

INTEGRATION-THE VLSI JOURNAL
Volume 94, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.vlsi.2023.102097

Keywords

Wireless sensor networks; Power-awareness; Relevance-awareness; Dynamic energy management; Dual prediction; Adaptive sampling rate; Self-awareness

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This paper proposes an energy and relevance-aware monitoring method that optimizes the behavior of sensor nodes based on self-awareness principles. By balancing relevance and power consumption, and coordinating two adaptive schemes, this method can achieve the target battery life while improving monitoring accuracy.
Traditional dynamic energy management methods optimize the energy usage in wireless sensor nodes adjusting their behavior to the operating conditions. However, this comes at the cost of losing the predictability in the operation of the sensor nodes. This loss of predictability is particularly problematic for the battery life, as it determines when the nodes need to be serviced. In this paper, we propose an energy and relevance-aware monitoring method, which leverages the principles of self-awareness to address this challenge. On one hand, the relevance-aware behavior optimizes how the monitoring efforts are allocated to maximize the monitoring accuracy; while on the other hand, the power-aware behavior adjusts the overall energy consumption of the node to achieve the target battery life. The proposed method is able to balance both behaviors so as to achieve the target battery life, at the same time is able to exploit variations in the collected data to maximize the monitoring accuracy. Furthermore, the proposed method coordinates two different adaptive schemes, a dynamic sampling period scheme, and a dual prediction scheme, to adjust the behavior of the sensor node. The evaluation results show that the proposed method consistently meets its battery lifetime goal, even when the operating conditions are artificially changed, and is able to improve the mean square error of the collected signal by up to 20% with respect to the same method with the relevance-aware behavior disabled, and of up to 16% with respect the same algorithm with just the adaptive sampling period or the dual prediction scheme enabled. Consequently showing the ability of the proposed method of making appropriate decisions to balance the competing interest of its two behaviors and coordinate the two adaptive schemes to improve their performance.

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