Thermoelectric energy harvesting for internet of things devices using machine learning: A review
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Wiley
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Abstract
Initiatives to minimise battery use, address sustainability, and reduce regular maintenance
have driven the challenge to use alternative power sources to supply energy to devices
deployed in Internet of Things (IoT) networks. As a key pillar of fifth generation (5G)
and beyond 5G networks,IoT is estimated to reach 42 billion devices by the year 2025.
Thermoelectric generators (TEGs) are solid state energy harvesters which reliably and
renewably convert thermal energy into electrical energy. These devices are able to recover
lost thermal energy, produce energy in extreme environments, generate electric power in
remote areas, and power micro‐sensors. Applying the state of the art, the authorspresent a
comprehensive review of machine learning (ML) approaches applied in combination with
TEG‐powered IoT devices to manage and predict available energy. The application areas
of TEG‐driven IoT devices that exploit as a heat source the temperature differences
found in the environment, biological structures, machines, and other technologies are
summarised. Based on detailed research of the state of the art in TEG‐powered devices,
the authors investigated the research challenges, applied algorithms and application areas
of this technology. The aims of the research were to devise new energy prediction and
energy management systems based on ML methods, create supervised algorithms which
better estimate incoming energy, and develop unsupervised and semi‐supervised ap proaches which provide adaptive and dynamic operation. The review results indicate that
TEGs are a suitable energy harvesting technology for low‐power applications through
their scalability, usability in ubiquitous temperature difference scenarios, and long oper ating lifetime. However, TEGs also have low energy efficiency (around 10%) and require
a relatively constant heat source.
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adaptive systems, intelligent embedded systems, internet of things, machine learning, sensors
Citation
CAAI Transactions on Intelligence Technology. 2023, vol. 8, issue 3, p. 680-700.
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