Abstract

With the advent of the era of trillion sensors, solar-powered sensor nodes are widely used as they do not require battery charging or replacement. However, the limited and intermittent solar energy supply seriously affects deadline miss rate (DMR) of tasks. Furthermore, traditional solar-powered sensor nodes also suffer from energy loss of battery charging and voltage conversion. Recently, a storage-less and converter-less power supply architecture has been proposed to achieve higher energy efficiency by removing the leaky energy storage and dc voltage conversion. Without energy storages, a node using inter-task scheduling is more sensitive to solar variations, which results in high DMRs. This paper proposes an intra-task scheduling scheme for the storage-less and converter-less solar-powered sensor nodes, whose features include power prediction based on classified solar profiles, a trigger mechanism to select scheduling points, an artificial neural network to calculate task priorities and a fine-grained task selection algorithm. Experimental results show that the proposed algorithm reduces DMR by up to 30% and improves energy utilization efficiency by 20% with trivial energy overheads.

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