Browse wiki

From MurrayWiki
Jump to: navigation, search
Dynamic State Estimation in Distributed Aircraft Electric Control Systems via Adaptive Submodularity
Abstract We consider the problem of estimating the …
We consider the problem of estimating the discrete state of an aircraft electric system under a distributed control architecture through active sensing. The main idea is to use a set of controllable switches to reconfigure the system in order to gather more information about the unknown state. By adaptively making a sequence of reconfiguration decisions with uncertain outcome and by correlating the measurements and prior information to make the next decision, we aim to reduce the uncertainty. A greedy strategy is developed that maximizes the one-step expected uncertainty reduction. By exploiting recent results on adaptive submodularity, we give theoretical guarantees on the worst-case performance of the greedy strategy. We apply the proposed method in a fault de- tection scenario where the discrete state captures possible faults in various circuit components. In addition, simple abstraction rules are proposed to alleviate state space explosion and to scale up the strategy. Finally, the efficiency of the proposed method is demonstrated empirically on different circuits.
strated empirically on different circuits.  +
Authors Quentin Maillet Huan Xu, Necmiye Ozay and Richard M. Murray  +
Funding ICyPhy: Industrial Cyber-Physical Systems +
ID 2013b  +
Source Submitted, 2013 Conference on Decison and Control (CDC)  +
Tag mxom13-cdc  +
Title Dynamic State Estimation in Distributed Aircraft Electric Control Systems via Adaptive Submodularity +
Type Conference Paper  +
Categories Papers
Modification date
This property is a special property in this wiki.
15 May 2016 06:15:27  +
URL
This property is a special property in this wiki.
http://www.cds.caltech.edu/~murray/preprints/mxom13-cdc_s.pdf  +
hide properties that link here 
Dynamic State Estimation in Distributed Aircraft Electric Control Systems via Adaptive Submodularity + Title
 

 

Enter the name of the page to start browsing from.