EECI08: Distributed Estimation and Control: Difference between revisions

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{{eeci-sp08 header|next=[[NCS: Distributed Receding Horizon Control|Distributed RHC]]|prev=[[NCS: Packet-Based Estimation and Control|Packet-Based Control]]}}
{{eeci-sp08 header|next=[[EECI: Formation Control in Multi-Agent Systems  |Formation Control]]|prev=[[EECI: Information Flow and Consensus|Graph Theory]]}}


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This lecture describes how to perform estimation and control in a distributed setting.   
In this lecture, we will take a look at the fundamentals of distributed estimation and control. We begin by considering a random variable being observed by mutiple sensors. Under the assumptions of Gaussian noises and linear measurements, we will derive the weighted covariance combination of estimators. We will then touch upon the issues of distributed static sensor fusion and dynamic sensor fusion, i.e., distributing a Kalman filter so that multiple sensors can estimate a dynamic random variableWe then move onto the problem of distributed control and demonstrate, via a variant of the Witsenhausen counterexample, why distributed optimal control is nonconvex and nonlinear.


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== Lecture Materials ==
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* Lecture notes: {{eeci-sp08 pdf|L9_distributed-scan.pdf|Distributed Estimation and Control}} (RMM handwritten notes)
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* Lecture notes: {{eeci-sp08 pdf|L9_distributed.pdf|Distributed Estimation and Control}} (typeset notes by Vijay Gupta)
==== Outline ====
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====  Lecture Materials ====
== Reading ==
* Lecture slides: {{eeci-sp08 pdf placeholder|L7_pbc.pdf|Distributed Estimation and Control}}
* <p>S. K. Mitter and A. Sahai, "Information and control: Witsenhausen revisited," in Learning, Control and Hybrid Systems: Lecture Notes in Control and Information Sciences 241, Y. Yamamoto and S. Hara, Eds. New York, NY: Springer, 1999, pp. 281-293.</p>
* Lecture notes: {{ncsbook|fusion|Chapter 6 - Distributed Estimation and Control}}
* <p>"Separation of Estimation and Control for Discrete Time Systems", H. S. Witsenhausen, Proceedings of the IEEE, vol. 59, no. 11, pp. 1557-1566, Nov. 1971.</p>
 
====  Additional Information ====
 
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==== Further Reading ====

Latest revision as of 20:27, 1 March 2009

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In this lecture, we will take a look at the fundamentals of distributed estimation and control. We begin by considering a random variable being observed by mutiple sensors. Under the assumptions of Gaussian noises and linear measurements, we will derive the weighted covariance combination of estimators. We will then touch upon the issues of distributed static sensor fusion and dynamic sensor fusion, i.e., distributing a Kalman filter so that multiple sensors can estimate a dynamic random variable. We then move onto the problem of distributed control and demonstrate, via a variant of the Witsenhausen counterexample, why distributed optimal control is nonconvex and nonlinear.

Lecture Materials

Reading

  • S. K. Mitter and A. Sahai, "Information and control: Witsenhausen revisited," in Learning, Control and Hybrid Systems: Lecture Notes in Control and Information Sciences 241, Y. Yamamoto and S. Hara, Eds. New York, NY: Springer, 1999, pp. 281-293.

  • "Separation of Estimation and Control for Discrete Time Systems", H. S. Witsenhausen, Proceedings of the IEEE, vol. 59, no. 11, pp. 1557-1566, Nov. 1971.