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Open AccessJournal ArticleDOI

A New Energy Prediction Algorithm for Energy-Harvesting Wireless Sensor Networks With Q-Learning

Selahattin Kosunalp
- 07 Sep 2016 - 
- Vol. 4, pp 5755-5763
TLDR
A novel solar energy prediction algorithm with Q-learning, called Q- learning-based solar energy Prediction (QL-SEP), is proposed, which is an effective way of predicting future actions based on past observations.
Abstract
Traditional wireless sensor networks (WSNs) face the problem of a limited-energy source, typically batteries, resulting in the need for careful and effective utilization of the energy source. However, inevitable energy depletion will eventually disturb the operation of a WSN. Energy harvesting (EH) technology is acquiring particular interest, because it has the potential to provide a continuous energy supply in battery-powered WSNs. Solar energy is the most effective environmental energy for EH-WSNs because of its high energy intensity, which comes from a non-controllable source. Therefore, the prediction of future energy availability is a critical issue, as the amount of the harvestable energy may vary over time. In this paper, a novel solar energy prediction algorithm with Q-learning, called Q-learning-based solar energy prediction (QL-SEP), is proposed. Q-learning is an effective way of predicting future actions based on past observations. The distinctive feature of QL-SEP is that not only past days’ observations but also the current weather conditions are considered for prediction. The performance of QL-SEP is simulated in this paper using real-world measurements obtained from a solar panel in comparison with the state-of-art approaches.

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Citations
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Machine learning algorithms for wireless sensor networks: A survey

TL;DR: This survey presents various ML-based algorithms for WSNs with their advantages, drawbacks, and parameters effecting the network lifetime, covering the period from 2014–March 2018.
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Sensing, Computing, and Communication for Energy Harvesting IoTs: A Survey

TL;DR: This paper systematically surveys recent advances in EH-IoTs from several perspectives, including methods that enable the use of energy harvesting hardware as a proxy for conventional sensors to detect contexts in energy efficient manner and the advancements in efficient checkpointing and timekeeping for intermittently powered IoT devices.
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Reinforcement Learning-Based Multiaccess Control and Battery Prediction With Energy Harvesting in IoT Systems

TL;DR: In this article, the joint access control and battery prediction problems in a small-cell IoT system including multiple EH user equipments (UEs) and one base station (BS) with limited uplink access channels were investigated.
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Renewable energy harvesting schemes in wireless sensor networks: A Survey

TL;DR: The review work presented is categorized into energy management and renewable energy harvesting techniques, which discusses various methods to save energy consumption of the energy harvesting sensor networks and the different energy harvesting mechanisms, especially their protocol design strategies for maximizing energy harvesting.
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Machine Learning in Wireless Sensor Networks for Smart Cities: A Survey

TL;DR: This is the first in-depth literature survey of all ML techniques in the field of low power consumption WSN-IoT for smart cities and shows that the supervised learning algorithms have been most widely used as compared to reinforcement learning and unsupervised learning for smart city applications.
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