Autonomous control of complex systems: robotic applications
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- @Article{Jamshidi:2001:AMC,
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author = "Mohammad Jamshidi",
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title = "Autonomous control of complex systems: robotic
applications",
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journal = "Applied Mathematics and Computation",
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volume = "120",
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pages = "15--29",
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year = "2001",
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number = "1-3",
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month = "10 " # may,
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keywords = "genetic algorithms, genetic programming, Autonomy,
Control systems, Complex systems, Robotics, Behavior
control",
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URL = "
http://www.sciencedirect.com/science/article/B6TY8-42RVSF8-3/1/d9087f02589b85a2c6ef556307f7c0a8",
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DOI = "
doi:10.1016/S0096-3003(99)00285-4",
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size = "15 pages",
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abstract = "One of the biggest challenges of any control paradigm
is being able to handle large complex systems under
unforeseen uncertainties. A system may be called
complex here if its dimension (order) is too high and
its model (if available) is nonlinear, interconnected,
and information on the system is uncertain such that
classical techniques cannot easily handle the problem.
Soft computing, a collection of fuzzy logic,
neuro-computing, genetic algorithms and genetic
programming, has proven to be a powerful tool for
adding autonomy to many complex systems. For such
systems the size soft computing control architecture
will be nearly infinite. Examples of complex systems
are power networks, national air traffic control
system, an integrated manufacturing plant, etc. In this
paper a new rule base reduction approach is suggested
to manage large inference engines. Notions of rule
hierarchy and sensor data fusion are introduced and
combined to achieve desirable goals. New paradigms
using soft computing approaches are used to design
autonomous controllers for a number of robotic
applications at the ACE Center are also presented
briefly.",
- }
Genetic Programming entries for
Mohammad Jamshidi
Citations