Off-line voltage security assessment of power transmission systems using UVSI through artificial neural network
Title | Off-line voltage security assessment of power transmission systems using UVSI through artificial neural network |
Publication Type | Conference Paper |
Year of Publication | 2016 |
Authors | Chakraborty, K., Saha, G. |
Conference Name | 2016 International Conference on Intelligent Control Power and Instrumentation (ICICPI) |
Date Published | oct |
ISBN Number | 978-1-5090-2638-8 |
Keywords | ANN architecture, artificial neural network, artificial neural network (ANN), Artificial neural networks, Collaboration, contingency analysis, feedforward neural nets, feedforward neural network, FFNN, governance, Government, IEEE 30-bus power system, load demand, Loading, multibus power system network, neural net architecture, off-line voltage security assessment, online monitoring, policy, policy-based governance, power engineering computing, power system security, power system stability, power transmission systems, power utilities, pubcrawl, Resiliency, Stability analysis, Static VAr compensators, substratal apparatus, transmission networks, two-bus network, unified voltage stability indicator, UVSI, voltage collapse, voltage collapse point assessment, Voltage control, Voltage regulators, voltage stability indicator |
Abstract | Coming days are becoming a much challenging task for the power system researchers due to the anomalous increase in the load demand with the existing system. As a result there exists a discordant between the transmission and generation framework which is severely pressurizing the power utilities. In this paper a quick and efficient methodology has been proposed to identify the most sensitive or susceptible regions in any power system network. The technique used in this paper comprises of correlation of a multi-bus power system network to an equivalent two-bus network along with the application of Artificial neural network(ANN) Architecture with training algorithm for online monitoring of voltage security of the system under all multiple exigencies which makes it more flexible. A fast voltage stability indicator has been proposed known as Unified Voltage Stability Indicator (UVSI) which is used as a substratal apparatus for the assessment of the voltage collapse point in a IEEE 30-bus power system in combination with the Feed Forward Neural Network (FFNN) to establish the accuracy of the status of the system for different contingency configurations. |
URL | http://ieeexplore.ieee.org/document/7859694/ |
DOI | 10.1109/ICICPI.2016.7859694 |
Citation Key | chakraborty_off-line_2016 |
- substratal apparatus
- power engineering computing
- power system security
- power system stability
- power transmission systems
- power utilities
- pubcrawl
- Resiliency
- Stability analysis
- Static VAr compensators
- policy-based governance
- transmission networks
- two-bus network
- unified voltage stability indicator
- UVSI
- voltage collapse
- voltage collapse point assessment
- Voltage control
- Voltage regulators
- voltage stability indicator
- Government
- artificial neural network
- artificial neural network (ANN)
- Artificial Neural Networks
- collaboration
- contingency analysis
- feedforward neural nets
- feedforward neural network
- FFNN
- Governance
- ANN architecture
- IEEE 30-bus power system
- load demand
- Loading
- multibus power system network
- neural net architecture
- off-line voltage security assessment
- online monitoring
- Policy