Sunlight is one of the most frequently used ambient energy sources for energy harvesting in wireless sensor networks. Although virtually unlimited, solar radiation experiences significant variations depending on the weather, the season, and the time of day, so solar-powered nodes commonly employ solar prediction models to effectively adapt their energy demands to harvesting dynamics. We present in this paper a novel energy prediction model that makes use of the altitude angle of the sun at different times of day to predict future solar energy availability. Unlike most of the state-of-the-art predictors that use past energy observations to make predictions, our model does not require one to maintain local energy harvesting patterns of past d...
This article focuses on applying a deep learning approach to predict daily total solar energy for th...
Battery powered wireless sensor nodes are used in many applications. They can be placed in remote lo...
This article focuses on applying a deep learning approach to predict daily total solar energy for th...
International audienceSolar energy harvesting constitutes an attractive solution to provide ...
In this paper, we propose four novel schemes for solar energy prediction in wireless sensor nodes. T...
Harvesting energy from solar radiation has emerged as an effective approach to prolong the lifetime ...
Singapore’s adoption of solar photovoltaic (PV) systems is expected to see strong growth in the comi...
International audienceSolar energy harvesting constitutes an attractive solution to provide energy f...
Energy harvesting (EH) from environmental energy sources has the potential to ensure unlimited, unco...
Abstract—Energy harvesting is one of the most promising technologies towards the goal of perpetual o...
Several wireless sensor network (WSN) applications leverage energy harvesting technologies such as s...
As an energy resource, solar energy provides a cleaner alternative to the conventional power generat...
Systems that harvest environmental energy must carefully regulate their us-age to satisfy their dema...
Abstract—In this paper, we study how to use the solar radiation model to predict energy arrivals and...
Traditional wireless sensor networks (WSNs) face the problem of a limited-energy source, typically b...
This article focuses on applying a deep learning approach to predict daily total solar energy for th...
Battery powered wireless sensor nodes are used in many applications. They can be placed in remote lo...
This article focuses on applying a deep learning approach to predict daily total solar energy for th...
International audienceSolar energy harvesting constitutes an attractive solution to provide ...
In this paper, we propose four novel schemes for solar energy prediction in wireless sensor nodes. T...
Harvesting energy from solar radiation has emerged as an effective approach to prolong the lifetime ...
Singapore’s adoption of solar photovoltaic (PV) systems is expected to see strong growth in the comi...
International audienceSolar energy harvesting constitutes an attractive solution to provide energy f...
Energy harvesting (EH) from environmental energy sources has the potential to ensure unlimited, unco...
Abstract—Energy harvesting is one of the most promising technologies towards the goal of perpetual o...
Several wireless sensor network (WSN) applications leverage energy harvesting technologies such as s...
As an energy resource, solar energy provides a cleaner alternative to the conventional power generat...
Systems that harvest environmental energy must carefully regulate their us-age to satisfy their dema...
Abstract—In this paper, we study how to use the solar radiation model to predict energy arrivals and...
Traditional wireless sensor networks (WSNs) face the problem of a limited-energy source, typically b...
This article focuses on applying a deep learning approach to predict daily total solar energy for th...
Battery powered wireless sensor nodes are used in many applications. They can be placed in remote lo...
This article focuses on applying a deep learning approach to predict daily total solar energy for th...