Group greedy method for sensor placement
This paper discusses greedy methods for sensor placement in linear inverse problems. We comprehensively review the greedy methods in the sense of optimizing the mean squared error (MSE), the volume of the confidence ellipsoid, and the worst-case error variance. We show that the greedy method of opti...
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sg-ntu-dr.10356-1501692021-06-03T13:52:07Z Group greedy method for sensor placement Jiang, Chaoyang Chen, Zhenghua Su, Rong Soh, Yeng Chai School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Greedy Method Group Greedy Method This paper discusses greedy methods for sensor placement in linear inverse problems. We comprehensively review the greedy methods in the sense of optimizing the mean squared error (MSE), the volume of the confidence ellipsoid, and the worst-case error variance. We show that the greedy method of optimizing an MSE related cost function can find a near-optimal solution. We then provide a new fast algorithm to optimize the MSE. In greedy methods, we select the sensing location one by one. In this way, the searching space is greatly reduced but many valid solutions are ignored. To further improve the current greedy methods, we propose a group-greedy strategy, which can be applied to optimize all the three criteria. In each step, we reserve a group of suboptimal sensor configurations which are used to generate the potential sensor configurations of the next step and the best one is used to check the terminal condition. Compared with the current greedy methods, the group-greedy strategy increases the searching space but greatly improve the solution performance. We find the necessary and sufficient conditions that the current greedy methods and the proposed group greedy method can obtain the optimal solution. The illustrative examples show that the group greedy method outperforms the corresponding greedy method. We also provide a practical way to find a proper group size with which the proposed group greedy method can find a solution that has almost the same performance as the optimal solution. Agency for Science, Technology and Research (A*STAR) Building and Construction Authority (BCA) National Research Foundation (NRF) This work was supported in part by the Building and Construction Authority (BCA) of Singapore through the NRF GBIC Program with the Project NRF2015ENC-GBICRD001-057, in part by the National Research Foundation Singapore through the NRF CRP Program under Grant NRF-CRP8-2011-03, in part by the A*STAR Industrial Internet of Things Research Program under the RIE2020IAF-PP Grant A1788a0023, and in part by Beijing Institute of Technology Re-search Fund Program for Young Scholars. 2021-06-03T13:52:06Z 2021-06-03T13:52:06Z 2019 Journal Article Jiang, C., Chen, Z., Su, R. & Soh, Y. C. (2019). Group greedy method for sensor placement. IEEE Transactions On Signal Processing, 67(9), 2249-2262. https://dx.doi.org/10.1109/TSP.2019.2903017 1053-587X https://hdl.handle.net/10356/150169 10.1109/TSP.2019.2903017 2-s2.0-85062649606 9 67 2249 2262 en NRF2015ENC-GBICRD001-057 NRF-CRP8-2011-03 A1788a0023 IEEE Transactions on Signal Processing © 2019 IEEE. All rights reserved. |
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Engineering::Electrical and electronic engineering Greedy Method Group Greedy Method Jiang, Chaoyang Chen, Zhenghua Su, Rong Soh, Yeng Chai Group greedy method for sensor placement |
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This paper discusses greedy methods for sensor placement in linear inverse problems. We comprehensively review the greedy methods in the sense of optimizing the mean squared error (MSE), the volume of the confidence ellipsoid, and the worst-case error variance. We show that the greedy method of optimizing an MSE related cost function can find a near-optimal solution. We then provide a new fast algorithm to optimize the MSE. In greedy methods, we select the sensing location one by one. In this way, the searching space is greatly reduced but many valid solutions are ignored. To further improve the current greedy methods, we propose a group-greedy strategy, which can be applied to optimize all the three criteria. In each step, we reserve a group of suboptimal sensor configurations which are used to generate the potential sensor configurations of the next step and the best one is used to check the terminal condition. Compared with the current greedy methods, the group-greedy strategy increases the searching space but greatly improve the solution performance. We find the necessary and sufficient conditions that the current greedy methods and the proposed group greedy method can obtain the optimal solution. The illustrative examples show that the group greedy method outperforms the corresponding greedy method. We also provide a practical way to find a proper group size with which the proposed group greedy method can find a solution that has almost the same performance as the optimal solution. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Jiang, Chaoyang Chen, Zhenghua Su, Rong Soh, Yeng Chai |
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Article |
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Jiang, Chaoyang Chen, Zhenghua Su, Rong Soh, Yeng Chai |
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Jiang, Chaoyang |
title |
Group greedy method for sensor placement |
title_short |
Group greedy method for sensor placement |
title_full |
Group greedy method for sensor placement |
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Group greedy method for sensor placement |
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Group greedy method for sensor placement |
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group greedy method for sensor placement |
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2021 |
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https://hdl.handle.net/10356/150169 |
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