Title :
Hopfield Lagrange for short-term hydrothermal scheduling
Author :
Dieu, Vo Ngoc ; Ongsakul, Weerakorn
Author_Institution :
Asian Inst. of Technol., Pathumthani
Abstract :
This paper proposes Hopfield Lagrange (HL) model for optimal scheduling of fixed head and variable head hydrothermal coordination. HL is a combination of Hopfield neural network and Lagrange function. Unlike Hopfield network, HL is not required to define an energy function and map the problem into the Hopfield neural network with connection conductance. HL achieves better solution than Hopfield neural network and linearized coordination equations method and is faster than augmented Lagrange Hopfield (ALH) on two test systems. The proposed model is simple and efficient for the fixed head and variable head hydrothermal scheduling problems.
Keywords :
Hopfield neural nets; hydrothermal power systems; power generation scheduling; power system simulation; Hopfield Lagrange method; Hopfield neural network; Lagrange function; fixed head hydrothermal coordination; linearized coordination equations method; optimal scheduling; short-term hydrothermal scheduling; variable head hydrothermal coordination; Hopfield neural networks; Lagrangian functions; Neurons; Optimal scheduling; Power generation; Processor scheduling; Propagation losses; Thermal factors; Thermal loading; Water resources; Augmented Lagrange Hopfield model; Hopfield Lagrange model; energy function; fixed head; hydrothermal scheduling; sigmoid function; variable head;
Conference_Titel :
Power Tech, 2005 IEEE Russia
Conference_Location :
St. Petersburg
Print_ISBN :
978-5-93208-034-4
Electronic_ISBN :
978-5-93208-034-4
DOI :
10.1109/PTC.2005.4524597