Wireless industrial intelligent controller for a non-linear system

Modern neural network (NN) based control schemes have surmounted many of the limitations found in the traditional control approaches. Nevertheless, these modern control techniques have only recently been introduced for use on high-specification Programmable Logic Controllers (PLCs) and usually at a...

Full description

Bibliographic Details
Main Author: Fernandes, John Manuel
Format: Others
Language:English
Published: Nelson Mandela Metropolitan University 2015
Subjects:
Online Access:http://hdl.handle.net/10948/9021
id ndltd-netd.ac.za-oai-union.ndltd.org-nmmu-vital-26457
record_format oai_dc
spelling ndltd-netd.ac.za-oai-union.ndltd.org-nmmu-vital-264572017-12-21T04:22:32ZWireless industrial intelligent controller for a non-linear systemFernandes, John ManuelNeural networks (Computer science)Linear systemsModern neural network (NN) based control schemes have surmounted many of the limitations found in the traditional control approaches. Nevertheless, these modern control techniques have only recently been introduced for use on high-specification Programmable Logic Controllers (PLCs) and usually at a very high cost in terms of the required software and hardware. This ‗intelligent‘ control in the sector of industrial automation, specifically on standard PLCs thus remains an area of study that is open to further research and development. The research documented in this thesis examined the effectiveness of linear traditional control schemes such as Proportional Integral Derivative (PID), Lead and Lead-Lag control, in comparison to non-linear NN based control schemes when applied on a strongly non-linear platform. To this end, a mechatronic-type balancing system, namely, the Ball-on-Wheel (BOW) system was designed, constructed and modelled. Thereafter various traditional and intelligent controllers were implemented in order to control the system. The BOW platform may be taken to represent any single-input, single-output (SISO) non-linear system in use in the real world. The system makes use of current industrial technology including a standard PLC as the digital computational platform, a servo drive and wireless access for remote control. The results gathered from the research revealed that NN based control schemes (i.e. Pure NN and NN-PID), although comparatively slower in response, have greater advantages over traditional controllers in that they are able to adapt to external system changes as well as system non-linearity through a process of learning. These controllers also reduce the guess work that is usually involved with the traditional control approaches where cumbersome modelling, linearization or manual tuning is required. Furthermore, the research showed that online-learning adaptive traditional controllers such as the NN-PID controller which maintains the best of both the intelligent and traditional controllers may be implemented easily and with minimum expense on standard PLCs.Nelson Mandela Metropolitan UniversityFaculty of Engineering, the Built Environment and Information Technology2015ThesisMastersMEngineering (Mechatronics)xvi, 197 leavespdfhttp://hdl.handle.net/10948/9021vital:26457EnglishNelson Mandela Metropolitan University
collection NDLTD
language English
format Others
sources NDLTD
topic Neural networks (Computer science)
Linear systems
spellingShingle Neural networks (Computer science)
Linear systems
Fernandes, John Manuel
Wireless industrial intelligent controller for a non-linear system
description Modern neural network (NN) based control schemes have surmounted many of the limitations found in the traditional control approaches. Nevertheless, these modern control techniques have only recently been introduced for use on high-specification Programmable Logic Controllers (PLCs) and usually at a very high cost in terms of the required software and hardware. This ‗intelligent‘ control in the sector of industrial automation, specifically on standard PLCs thus remains an area of study that is open to further research and development. The research documented in this thesis examined the effectiveness of linear traditional control schemes such as Proportional Integral Derivative (PID), Lead and Lead-Lag control, in comparison to non-linear NN based control schemes when applied on a strongly non-linear platform. To this end, a mechatronic-type balancing system, namely, the Ball-on-Wheel (BOW) system was designed, constructed and modelled. Thereafter various traditional and intelligent controllers were implemented in order to control the system. The BOW platform may be taken to represent any single-input, single-output (SISO) non-linear system in use in the real world. The system makes use of current industrial technology including a standard PLC as the digital computational platform, a servo drive and wireless access for remote control. The results gathered from the research revealed that NN based control schemes (i.e. Pure NN and NN-PID), although comparatively slower in response, have greater advantages over traditional controllers in that they are able to adapt to external system changes as well as system non-linearity through a process of learning. These controllers also reduce the guess work that is usually involved with the traditional control approaches where cumbersome modelling, linearization or manual tuning is required. Furthermore, the research showed that online-learning adaptive traditional controllers such as the NN-PID controller which maintains the best of both the intelligent and traditional controllers may be implemented easily and with minimum expense on standard PLCs.
author Fernandes, John Manuel
author_facet Fernandes, John Manuel
author_sort Fernandes, John Manuel
title Wireless industrial intelligent controller for a non-linear system
title_short Wireless industrial intelligent controller for a non-linear system
title_full Wireless industrial intelligent controller for a non-linear system
title_fullStr Wireless industrial intelligent controller for a non-linear system
title_full_unstemmed Wireless industrial intelligent controller for a non-linear system
title_sort wireless industrial intelligent controller for a non-linear system
publisher Nelson Mandela Metropolitan University
publishDate 2015
url http://hdl.handle.net/10948/9021
work_keys_str_mv AT fernandesjohnmanuel wirelessindustrialintelligentcontrollerforanonlinearsystem
_version_ 1718564670041751552