
 
5 INTEGRATION OF 
DISTRIBUTE OBJECTS 
Aided with simulator and intelligent functions, the 
systems are no longer being viewed as simply 
operational and engineering tools, but quasi-
autonomous decision-makers. In this role they 
continue to serve as the centre for operational 
responsibility, but also provide data to systems and 
users outside of the control centre environment who 
depend upon timely information on which to base 
day-to-day business decisions.  
A full solution of intelligent SCADA will also 
contain the following components/modules: 
z  distributed I/O with real-time data exchange 
(networked data acquisition and control); 
z  batch control and executions; 
z  remote network management; 
z  multimedia user interface (large screen 
terminals etc.)  
To fully exploit the potentials the intelligent  
SCADA system can offer, the system needs also 
considerations on: 
z  assure security, data protection and access 
management; 
z  redundant system components for reliability; 
z  the proper infrastructure framework for 
information exchange (e.g. Internet protocol 
applications). 
6 CONCLUSIONS 
The basic idea of a simulator enhanced intelligent 
SCADA system architecture is introduced. The 
concept of a simulator of a long-distance pipeline 
system and its implementation approach are also 
briefly mentioned.  
The main features of the proposed system 
simulator are as follows: 
1. Hierarchical structured: The object orientation 
of the model system and software architecture allows 
the complex system be built and upgraded gradually.   
2. Evolutionary: The system may evolve by 
adding more specialised and modules. New objects 
can be introduced. With several identical simulators 
(or several copies of the simulator) available at 
different phases of development, the performance of 
the system can be improved continuously without 
breaking the working life cycle. 
3. Intelligent: The uncertainty in physical systems 
can be dealt with using modern statistical methods, 
fuzzy models and neural network techniques. The 
system can learn from experience and update its 
memory. The AI level of the decision making 
process can be developed to make the whole system  
highly intelligent. 
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