This paper suggests an optimisation approach in heterogeneous computing systems to balance energy power consumption and efficiency. The work proposes a power measurement utility for a reinforcement learning (PMU-RL) algorithm to dynamically adjust the resource utilisation of heterogeneous platforms in order to minimise power consumption. A reinforcement learning (RL) technique is applied to analyse and optimise the resource utilisation of field programmable gate array (FPGA) control state capabilities, which is built for a simulation environment with a Xilinx ZYNQ multi-processor systems-on-chip (MPSoC) board. In this study, the balance operation mode for improving power consumption and performance is established to dynamically change the p...
Systems is dealing with the challenge of providing high-performance ECUs as an enabling technology a...
We report on the improvements. that can be achieved by applying machine learning techniques, in part...
abstract: Mobile platforms are becoming highly heterogeneous by combining a powerful multiprocessor ...
Power and energy is the first-class design constraint for multi-core processors and is a limiting fa...
In recent years, the focus of computing has moved away from performance-centric serial computation t...
Embedded systems execute applications with different performance requirements. These applications ex...
Dynamic power management has become an imperative design factor to attain the energy efficiency in m...
Modern embedded systems consist of heterogeneous computing resources with diverse energy and perform...
MasterThis thesis presents a power management policy that exploits reinforcement learning to increas...
This paper presents an online learning scheme based on reinforcement learning and adaptive dynamic p...
Heterogeneous computing systems provide high performance and energy efficiency. However, to optimall...
An effective approach to enhancing the sustainability of production systems is to use energy-efficie...
Reinforcement learning-based (RL-based) energy management strategy (EMS) is considered a promising s...
Traditionally, the operation of the battery is optimised using 24h of forecasted data of load demand...
Context. Reinforcement Learning (RL) is a time consuming effort that requires a lot of computational...
Systems is dealing with the challenge of providing high-performance ECUs as an enabling technology a...
We report on the improvements. that can be achieved by applying machine learning techniques, in part...
abstract: Mobile platforms are becoming highly heterogeneous by combining a powerful multiprocessor ...
Power and energy is the first-class design constraint for multi-core processors and is a limiting fa...
In recent years, the focus of computing has moved away from performance-centric serial computation t...
Embedded systems execute applications with different performance requirements. These applications ex...
Dynamic power management has become an imperative design factor to attain the energy efficiency in m...
Modern embedded systems consist of heterogeneous computing resources with diverse energy and perform...
MasterThis thesis presents a power management policy that exploits reinforcement learning to increas...
This paper presents an online learning scheme based on reinforcement learning and adaptive dynamic p...
Heterogeneous computing systems provide high performance and energy efficiency. However, to optimall...
An effective approach to enhancing the sustainability of production systems is to use energy-efficie...
Reinforcement learning-based (RL-based) energy management strategy (EMS) is considered a promising s...
Traditionally, the operation of the battery is optimised using 24h of forecasted data of load demand...
Context. Reinforcement Learning (RL) is a time consuming effort that requires a lot of computational...
Systems is dealing with the challenge of providing high-performance ECUs as an enabling technology a...
We report on the improvements. that can be achieved by applying machine learning techniques, in part...
abstract: Mobile platforms are becoming highly heterogeneous by combining a powerful multiprocessor ...