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Architecture for ERP System Integration with Heterogeneous E-Government Modules

Architecture for ERP System Integration with Heterogeneous E-Government Modules
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Author(s): Lars Frank (Copenhagen Business School, Denmark)
Copyright: 2012
Pages: 9
Source title: Strategic Enterprise Resource Planning Models for E-Government: Applications and Methodologies
Source Author(s)/Editor(s): Susheel Chhabra (Periyar Management and Computer College, India)and Muneesh Kumar (University of Delhi, India)
DOI: 10.4018/978-1-60960-863-7.ch007

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Abstract

ERP (Enterprise Resource Planning) systems consist normally of ERP modules managing sale, production and procurement in private businesses. ERP systems may also have modules for special lines of business or modules for the different sectors of E-Government. However, the ERP systems of today use a common database and therefore, it is normally only possible to use modules supported by the ERP supplier. This limits the possibilities for special lines of business like the different sectors of E-Government. It is normally not possible to use the traditional ACID (Atomicity, Consistency, Isolation and Durability) properties across heterogeneous ERP modules and therefore, it is not possible to integrate such modules without inconsistency and anomaly problems. That is, the users cannot trust the data they are reading and even worse they can undermine the validity of the databases if they update the databases by using such invalid information. However, it is possible to use so called relaxed ACID properties. That is, it should, from a user point of view, look as if the traditional ACID properties were implemented, and therefore, the users can trust the data they are reading and cannot do anything wrong by using this data.

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