Nonlinear Process Identification and Control Using Neural Networks
Journal Title: International Journal of Innovative Research in Computer Science and Technology - Year 2014, Vol 2, Issue 6
Abstract
In industry process control, the model identification and predictive control of nonlinear systems are always difficult problems. This necessitates the development of empirical nonlinear model from dynamic plant data. This process is known as ‘Nonlinear System Identification’. Artificial neural networks are the most popular frame-work for empirical model development. The model is implemented by training a Multi-Layer Perceptron Artificial Neural network (MLP-ANN) with input output experimental data. Satisfactory agreement between identified and experimental data is found and results shown that the neural model successfully predicts the evolution of the product composition. Trained data available from nonlinear system used for process control using Model Predictive Control (MPC) algorithm. The Simulation result illustrates the validity and feasibility of the MPC algorithm.
Authors and Affiliations
Miss. Mali Priyadarshani S, Mrs. Tirmare Aarti H, Miss. Mohite Sangita R.
Semi-Regular Group Divisible Designs For Smaller Block Size
A group divisible (GD) design is said to be Singular (S) if ; Semi regular (SR) if and rk – v = 0; Regular (R) if and . In the paper, a new procedure of constructing SRGD design with and , is proposed from a parent SRGD...
A Review Paper on the Difference between Single-Cycle and Multi Cycle Processor
The processors are all important components of computer architecture. Computer architecture is a specification that describes how hardware and software technologies are connected to create a computer platform. It refers...
Control of Wireless Power Transfer System for Dynamic Charging of Electric Vehicle
In order to limit the production of pollutant gases, the transportation sector, both public and private, has turned its attention to Electric Vehicles (EVs). The most important barrier to commercializing and spreading EV...
Analysis of Cyber Security Threats Using Machine Learning Techniques
Nowadays malware detection is a problem that researchers have tried to solve for so many years by using enormous type of methods. The behaviors of two given malware variants remain similar, although their signatures coul...
A Compact 4 Port MIMO Diversified Antenna for X-Band Applications
Antennas Currently there is large scope in wireless applications due to increased scalability and mobility. Users need these technologies to improve data accessing information from anywhere along with high data speed giv...