Intelligent control for autonomous systems

Intelligent control is the discipline in which control algorithms are developed by emulating certain characteristics of intelligent biological systems. It is quickly emerging as a technology that may open avenues for significant advances in many areas. In fact, fueled by advancements in computing technology, it has already achieved some very exciting and promising results. Here, the author argues that a mixture of intelligent and conventional control methods may be the best way to implement autonomous control systems. >

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