Title of article
A multi-agent approach using perceptron-based learning for robust operation of distributed chemical reactor networks
Author/Authors
Artel، نويسنده , , Arsun and Teymour، نويسنده , , Fouad and North، نويسنده , , Michael and Cinar، نويسنده , , Ali، نويسنده ,
Pages
11
From page
1035
To page
1045
Abstract
Controlling the individual reactors of a chemical reactor network producing different grades of a product requires intelligent reconfiguration strategies. Agent-based approaches are ideal for such distributed manufacturing processes, since they provide flexible, robust, and emergent solutions under dynamically changing process conditions. This paper proposes a multi-layered, multi-agent framework based on a decentralized online learning approach for the supervision of grade transitions in autocatalytic reactor networks. The values for the manipulated variables and the path to the target reactor are determined to give the least disturbance to the system. Case studies illustrate the performance of the approach in managing grade transition and disturbance rejection in a reactor network.
Keywords
Chemical reactor networks , disturbance rejection , Agent-based systems , Distributed AI , Grade transition , Decentralized online learning
Journal title
Astroparticle Physics
Record number
2047116
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