Reinforcement learning multi-agents system for faults diagnosis of mircoservices in industrial settings

Author(s):  
Asma Belhadi ◽  
Youcef Djenouri ◽  
Gautam Srivastava ◽  
Jerry Chun-Wei Lin
2012 ◽  
Vol 121 (5) ◽  
Author(s):  
A. A. Bielskis ◽  
E. Guseinoviene ◽  
D. Dzemydiene ◽  
D. Drungilas ◽  
G. Gricius

Author(s):  
Yuchao Ma ◽  
Ettore F. Bompard ◽  
Roberto Napoli ◽  
Jiang Chuanwen

Competition has been introduced in the last decade into the electricity markets and is presently underway in many countries. A centralized approach for the dispatching of the generation units has been substituted by a market approach based on the biddings submitted by the supply side and, eventually, by the demand side. Each producer is a player in the market acting to maximize its utility. The decision making process of the producers and their interactions in the market are a typical complex problem that is difficult to be modeled explicitly, and can be studied with a multi agents approach. This paper proposes a model able to capture the decision making approach of the producers in submitting strategic biddings to the market and simulate the market outcomes resulting from those interactions. The model is based on the Watkins' Q (lambda) Reinforcement Learning and takes into account the network constraints that may pose considerable limitations to the electricity markets. The model can be used to define the optimal bidding strategy for each producer and, as well, to find the market equilibrium and assessing the market performances. The model proposed is applied to a standard IEEE 14-bus test system to illustrate its effectiveness.


2020 ◽  
pp. 1-13
Author(s):  
L.V. Qiangguo

Multi-agent reinforcement learning in football simulation can be extended by single-agent reinforcement learning. However, compared with single agents, the learning space of multi-agents will increase dramatically with the increase in the number of agents, so the learning difficulty will also increase. Based on BP neural network as the model structure foundation, this research combines PID controller to control the process of model operation. In order to improve the calculation accuracy to improve the control effect, the prediction output is obtained through the prediction model instead of the actual measured value. In addition, with the football robot as the object, this research studies the multi-agent reinforcement learning problem and its application in the football robot. The content includes single-agent reinforcement learning, multi-agent system reinforcement learning, and ball hunting, role assignment, and action selection in football robot decision strategies based on this. The simulation results show that the method proposed in this paper has certain effects.


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