• Corpus ID: 5184302

Intellectual Property Management System for the Super-Capacitor Pilot Plant

@inproceedings{Isa2009IntellectualPM,
  title={Intellectual Property Management System for the Super-Capacitor Pilot Plant},
  author={Dino Isa and Peter Blanchfield and Zhiyuan Chen},
  booktitle={IC-AI},
  year={2009}
}
In this paper we present an Intellectual Property (IP) Management system for the super-capacitor pilot plant which is a hybrid Data Mining and Case-Based Reasoning system incorporates Intellectual Property models to help filter information in order to make Intellectual Property protection decisions more precisely. The main issue of implementing this hybrid system is a global knowledge base which is derived from an international searchable Intellectual Property rights database and where a priori… 
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