Affiliations: Information Systems Department, Egyptian Armed Forces,
Cairo, Egypt. E-mail: [email protected]
Abstract: Several network troubles and/or malfunctions may occur due to the
heavy traffic of recent computer networks. The discovering of some types of
these troubles is not straightforward. Therefore, there is a real need to an
intelligent system to recognize that type of problems using a priori background
knowledge. The aim of this work is to present a network-monitoring utility that
can discover various operational patterns and can provide sensible advice that
may support the network administrator. It presents a machine learning system
that can recognize network malfunctions. Such recognition process may be
expressed in structured patterns to support network administrator for both
problem solving and network management. To achieve this objective an explanation_based learning (EBL)
procedure is used to obtain operational rules. In this case, the domain
(network) knowledge is formally expressed and only one training example is
analyzed in terms of this knowledge. This system uses a relational database to
store and maintain the knowledge_base. The main contribution of the proposed system is to discover the
abnormal patterns (malfunctions) of the network traffic. These abnormal
patterns, as such, could be recognized from a real network using EBL. If the
network administrator is advised with that malfunctions then he can adapt the
current configuration in order to avoid the corresponding problems.
Keywords: Explanation_based learning, network management, expert system, database systems