Intelligent Control Theory and Technologies

In the previous chapters, the theoretical and technological foundations of MI have been investigated, they include, knowledge-based system, multi-agent system, data mining and knowledge discovery, computing intelligence, process and system modeling, sensor integration and data fusion, and group technologies. As another very important branch of MI, intelligent control theory and technology will be discussed in this chapter. The chapter should be viewed as a resource for those in the early stages of considering the development and implementation of intelligent controllers for industrial applications. It is impossible to provide the full details of a field as large and diverse as intelligent control in a single chapter. Hence, the focus is placed on the fundamental ideas that have been found most useful in industry. INTRODUCTION

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