SIMULASI PENINGKATAN KUALITAS TEGANGAN MENGGUNAKAN DYNAMIC VOLTAGE RESTORER (DVR) DENGAN KENDALI LEVENBERG MARQUARDT NEURAL NETWORK PADA TEGANGAN RENDAH
Abstract
In this thesis proposed a kontrol algorithm for dynamic voltage restorer
(DVR). The proposed kontroller is using a neural network with Levenberg Marquardt
method Neural Network (LMNN). The purpose of this kontrol is to obtain a DVR with
a fast and accurate response while improving the quality of the voltage from the
voltage sag. Levenberg Marquardt Neural Network (LMNN) used in making the
detection of changes in conditions of stress, either in the form of fluctuations in
amplitude and phase changes in the voltage at the load. After generating a signal
which is detected Levenberg Marquardt Neural Network (LMNN) compared with the
PWM carrier signal. To find out Levenberg Marquardt Neural Network (LMNN)
kontroller performance, then the simulation is used as a comparison of conventional
kontrollers. Based on simulation results is known that the kontroller Levenberg
Marquardt Neural Network (LMNN), DVR is more stable with faster response
Collections
- UT-Faculty of Engineering [4096]