Deep Reinforcement Learning (DRL) solutions are becoming pervasive at the edge of the network as they enable autonomous decision-making in a dynamic environment. However, to be able to adapt to the ever-changing environment, the DRL solution implemented on an embedded device has to continue to occasionally take exploratory actions even after initial convergence. In other words, the device has to occasionally take random actions and update the value function, i.e., re-train the Artificial Neural Network (ANN), to ensure its performance remains optimal. Unfortunately, embedded devices often lack processing power and energy required to train the ANN. The energy aspect is particularly challenging when the edge device is powered only by a means ...
International audienceEnergy management in low power IoT is a difficult problem. Modeling the consum...
With the smart grid and smart homes development, different data are made available, providing a sour...
Edge devices that operate in real-world environments are subjected to unpredictable conditions cause...
The massive integration of renewable-based distributed energy resources (DERs) inherently increases ...
Millions of sensors, cameras, meters, and other edge devices are deployed in networks to collect and...
This study proposes a deep reinforcement learning (DRL) based approach to analyze the optimal power ...
Device-to-Device (D2D) communication can be used to improve system capacity and energy efficiency (E...
Nowadays, wireless body area networks are the center of attention for patients’ health data monitori...
We focus on a wireless sensor network powered with an energy beacon, where sensors send their measur...
Reinforcement learning (RL) is a broad family of algorithms for training autonomous agents to collec...
This study utilizes machine learning and, more specifically, reinforcement learning (RL) to allow fo...
The horizon for inclusion of data-driven algorithms in cyber-physical systems is rapidly expanding d...
The computational burden and the time required to train a deep reinforcement learning (DRL) can be a...
Reinforcement learning (RL) is capable of managing wireless, energy-harvesting IoT nodes by solving ...
Millions of sensors, cameras, meters, and other edge devices are deployed in networks to collect and...
International audienceEnergy management in low power IoT is a difficult problem. Modeling the consum...
With the smart grid and smart homes development, different data are made available, providing a sour...
Edge devices that operate in real-world environments are subjected to unpredictable conditions cause...
The massive integration of renewable-based distributed energy resources (DERs) inherently increases ...
Millions of sensors, cameras, meters, and other edge devices are deployed in networks to collect and...
This study proposes a deep reinforcement learning (DRL) based approach to analyze the optimal power ...
Device-to-Device (D2D) communication can be used to improve system capacity and energy efficiency (E...
Nowadays, wireless body area networks are the center of attention for patients’ health data monitori...
We focus on a wireless sensor network powered with an energy beacon, where sensors send their measur...
Reinforcement learning (RL) is a broad family of algorithms for training autonomous agents to collec...
This study utilizes machine learning and, more specifically, reinforcement learning (RL) to allow fo...
The horizon for inclusion of data-driven algorithms in cyber-physical systems is rapidly expanding d...
The computational burden and the time required to train a deep reinforcement learning (DRL) can be a...
Reinforcement learning (RL) is capable of managing wireless, energy-harvesting IoT nodes by solving ...
Millions of sensors, cameras, meters, and other edge devices are deployed in networks to collect and...
International audienceEnergy management in low power IoT is a difficult problem. Modeling the consum...
With the smart grid and smart homes development, different data are made available, providing a sour...
Edge devices that operate in real-world environments are subjected to unpredictable conditions cause...