登入
選單
返回
Google圖書搜尋
Classifying Intelligence in Machines: A Taxonomy of Intelligent Control
Callum Wilson
Francesco Marchetti
Marilena Di Carlo
Annalisa Riccardi
Edmondo Minisci
出版
Infinite Study
主題
Education / Decision-Making & Problem Solving
URL
http://books.google.com.hk/books?id=H-c-EAAAQBAJ&hl=&source=gbs_api
EBook
SAMPLE
註釋
The quest to create machines that can solve problems as humans do leads us to intelligent control. This field encompasses control systems that can adapt to changes and learn to improve their actions—traits typically associated with human intelligence. In this work we seek to determine how intelligent these classes of control systems are by quantifying their level of adaptability and learning. First we describe the stages of development towards intelligent control and present a definition based on literature. Based on the key elements of this definition, we propose a novel taxonomy of intelligent control methods, which assesses the extent to which they handle uncertainties in three areas: the environment, the controller, and the goals. This taxonomy is applicable to a variety of robotic and other autonomous systems, which we demonstrate through several examples of intelligent control methods and their classifications. Looking at the spread of classifications based on this taxonomy can help researchers identify where control systems can be made more intelligent.