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Energy management algorithm for solar‐powered energy harvesting wireless sensor node for Internet of Things
Author(s) -
Shin Minchul,
Joe Inwhee
Publication year - 2016
Publication title -
iet communications
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.355
H-Index - 62
eISSN - 1751-8636
pISSN - 1751-8628
DOI - 10.1049/iet-com.2015.0223
Subject(s) - wireless sensor network , computer science , energy harvesting , node (physics) , energy (signal processing) , sensor node , energy consumption , transmission (telecommunications) , interval (graph theory) , algorithm , real time computing , data transmission , wireless , key distribution in wireless sensor networks , computer network , telecommunications , electrical engineering , wireless network , mathematics , engineering , statistics , structural engineering , combinatorics
The solar powered energy harvesting sensor node is a key technology for Internet of Things (IoT), but currently it offers only a small amount of energy storage and is capable of harvesting only a trivial amount of energy. Therefore, new technology for managing the energy associated with this sensor node is required. In particular, it is important to manage the transmission interval because the level of energy consumption during data transmission is the highest in the sensor node. If the proper transmission interval is calculated, the sensor node can be used semi‐permanently. In this study, the authors propose an energy prediction algorithm that uses the light intensity of fluorescent lamps in an indoor environment. The proposed algorithm can be used to accurately estimate the amount of energy that will be harvested by a solar panel using a weighted average for light intensity. Then, the optimal transmission interval is calculated using the amount of predicted harvested energy and residual energy. The results from the authors’ experimental testbeds show that their algorithm's performance is better than the existing approaches. The energy prediction error of their algorithm is approximately 0.5%.

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