The horizon for inclusion of data-driven algorithms in cyber-physical systems is rapidly expanding due to evermore availability of high-performance computing tools and the inception of novel mathematical models in the fields of deep learning and reinforcement learning. In this regard, energy systems are a suitable candidate for data-driven algorithms utilization due to rapid expansion of smart measuring tools and infrastructure. Accordingly, I decided to explore the capabilities of deep reinforcement learning in control, security, and restoration of smart energy systems to tackle well-known problems such as ensuring stability, adversarial attack avoidance, and the black start restoration. To achieve this goal, I employed various reinforceme...
We propose a solar sensor-based smart farm system to provide high monitoring quality while preservin...
Several new challenges have arisen recently in the operation of power systems. First, the high penet...
peer reviewedThis paper investigates the use of reinforcement learning in electric power system emer...
With the increasing integration of renewable energies, power electronic devices and flexible loads, ...
This study utilizes machine learning and, more specifically, reinforcement learning (RL) to allow fo...
International audienceIntroducing Deep Learning in the Industrial Internet of Things (IIoT) brings m...
peer reviewedThis paper reviews existing works on (deep) reinforcement learning considerations in e...
The de-carbonisation of the energy system, more commonly known as the 'Energy Transition' has a vita...
peer reviewedIn this paper, we review past (including very recent) research considerations in using ...
Wide adoption of deep reinforcement learning in energy system domain needs to overcome several chall...
Smart grid technology is rapidly advancing and providing various opportunities for efficient energy ...
Environmental benefits promote the expansion of renewable energy sources (RESs) worldwide, which in ...
The Remedial Action Scheme (RAS) is designed to take corrective actions after detecting predetermine...
International audienceThis paper proposes a Deep Reinforcement Learning approach for optimally manag...
This paper develops a real-time control method based on deep reinforcement learning (DRL) aimed to d...
We propose a solar sensor-based smart farm system to provide high monitoring quality while preservin...
Several new challenges have arisen recently in the operation of power systems. First, the high penet...
peer reviewedThis paper investigates the use of reinforcement learning in electric power system emer...
With the increasing integration of renewable energies, power electronic devices and flexible loads, ...
This study utilizes machine learning and, more specifically, reinforcement learning (RL) to allow fo...
International audienceIntroducing Deep Learning in the Industrial Internet of Things (IIoT) brings m...
peer reviewedThis paper reviews existing works on (deep) reinforcement learning considerations in e...
The de-carbonisation of the energy system, more commonly known as the 'Energy Transition' has a vita...
peer reviewedIn this paper, we review past (including very recent) research considerations in using ...
Wide adoption of deep reinforcement learning in energy system domain needs to overcome several chall...
Smart grid technology is rapidly advancing and providing various opportunities for efficient energy ...
Environmental benefits promote the expansion of renewable energy sources (RESs) worldwide, which in ...
The Remedial Action Scheme (RAS) is designed to take corrective actions after detecting predetermine...
International audienceThis paper proposes a Deep Reinforcement Learning approach for optimally manag...
This paper develops a real-time control method based on deep reinforcement learning (DRL) aimed to d...
We propose a solar sensor-based smart farm system to provide high monitoring quality while preservin...
Several new challenges have arisen recently in the operation of power systems. First, the high penet...
peer reviewedThis paper investigates the use of reinforcement learning in electric power system emer...