适合人群:Engineers, Researchers, Postgraduate Students, Professors in fields of Control Systems, Electrical Engineering, Mechanical Engineering, and related disciplines interested in the mathematical modeling and analysis of stochastic systems
Since its origins in the 1940s, the subject of decision making under uncertainty has grown into a diversified area with applications in several branches of engineering and in areas of the social sciences concerned with policy analysis and prescription. With the increase in computational capacity and the ability to collect and process huge quantities of data, an explosion of work in the area has been engendered. This book provides succinct and rigorous treatment of the foundations of stochastic control; a unified approach to filtering, estimation, prediction, and stochastic and adaptive control; and the conceptual framework necessary to understand current trends in stochastic control, data mining, learning, and robotics. It is ideal for students previously acquainted with probability theory and stochastic processes, who wish to learn more on decision making with uncertainty, and can be used as a course textbook for advanced undergraduate or first year graduate students.
Stochastic Systems: Estimation, Identification, and Adaptive Control分类索引数据信息
ISBN:9781611974256
出版日期:2016-10-17 适合人群:Engineers, Researchers, Postgraduate Students, Professors in fields of Control Systems, Electrical Engineering, Mechanical Engineering, and related disciplines interested in the mathematical modeling and analysis of stochastic systems