Reinforcement learning is one of the sub of machine learning. A machine learning agent learns from the feedback of the try-and-error in order to predict their next step. Machine …
YH Wang, THS Li, CJ Lin - Engineering Applications of Artificial Intelligence, 2013 - Elsevier
Reinforcement learning (RL) has been applied to many fields and applications, but there are still some dilemmas between exploration and exploitation strategy for action selection policy …
Waterflooding optimization in closed-loop management of the oil reservoirs is always considered as a challenging issue due to the complicated and unpredicted dynamics of the …
H Hu, Y Wang, W Tong, J Zhao, Y Gu - Applied Sciences, 2023 - mdpi.com
Autonomous vehicles can reduce labor power during cargo transportation, and then improve transportation efficiency, for example, the automated guided vehicle (AGV) in the warehouse …
This paper addresses a new method for combination of supervised learning and reinforcement learning (RL). Applying supervised learning in robot navigation encounters …
In this paper, a dynamic fuzzy energy state based AODV (DFES-AODV) routing protocol for Mobile Ad-hoc NETworks (MANETs) is presented. In DFES-AODV route discovery phase …
Z Du, W Wang, Z Yan, W Dong, W Wang - sensors, 2017 - mdpi.com
In order to get natural and intuitive physical interaction in the pose adjustment of the minimally invasive surgery manipulator, a hybrid variable admittance model based on Fuzzy …
P Dong, ZM Chen, XW Liao, W Yu - Petroleum Science, 2022 - Elsevier
Parameter inversions in oil/gas reservoirs based on well test interpretations are of great significance in oil/gas industry. Automatic well test interpretations based on artificial …
K Shahverdi, MJ Monem, M Nili - Irrigation and Drainage, 2016 - Wiley Online Library
Operational instructions have a major role in improving water delivery performance in irrigation canals. Of different delivery systems, on‐request systems have higher flexibility …