Title
Multi-machine power system control based on dual heuristic dynamic programming
Abstract
In this paper, we integrate a goal network into the existing dual heuristic dynamic programming (DHP) architecture, and study its damping performance on the multi-machine power system. There are four types of neural network in our proposed design: a goal network, a critic network, an action network and a model network. The motivation of this design is to build a general mapping between the system variables and the partial derivatives of the utility function, so that these required derivatives can be directly obtained and adaptively tuned over time. However, the existing DHP design can only obtain a predefined (fixed) external utility function (or its derivatives). We apply both the proposed approach and the existing DHP approach on the multi-machine power system, and compare the damping performance on a four-machine two-area power system. The simulation results demonstrate the improved control performance with the proposed design.
Year
DOI
Venue
2014
10.1109/CIASG.2014.7011566
CIASG
Keywords
Field
DocType
action network,adaptive dynamic programming (adp),adaptive dynamic programming,power system stability,multimachine power system control,goal network,multi-machine power system,critic network,model network,dual heuristic dynamic programming,heuristic programming,goal representation,dynamic programming,dhp architecture,dual heuristic dynamic programming (dhp),neural networks,damping
Dynamic programming,Mathematical optimization,Electric power system,Partial derivative,Control engineering,Reactive programming,Engineering,Artificial neural network,Heuristic dynamic programming
Conference
Citations 
PageRank 
References 
7
0.48
13
Authors
4
Name
Order
Citations
PageRank
Zhen Ni152533.47
Yufei Tang220322.83
Haibo He33653213.96
Jinyu Wen423326.09