4.6 Article

Determinant-Based Fast Greedy Sensor Selection Algorithm

Journal

IEEE ACCESS
Volume 9, Issue -, Pages 68535-68551

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3076186

Keywords

Greedy algorithms; Approximation methods; Sparse matrices; Linear programming; Approximation algorithms; Sensor placement; Matrix decomposition; Optimization; sparse sensor selection; greedy algorithms

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This paper focuses on the sparse sensor placement problem for least-squares estimation and extends the previous novel approach of the sparse sensor selection algorithm. The study shows that the method used when the number of sensors is less than the number of state variables is mathematically the same as the previously proposed QR method, while a new algorithm is developed for cases where the number of sensors is greater than the number of state variables. Furthermore, the effectiveness of the proposed algorithm is demonstrated through comparisons with other algorithms using real datasets.
In this paper, the sparse sensor placement problem for least-squares estimation is considered, and the previous novel approach of the sparse sensor selection algorithm is extended. The maximization of the determinant of the matrix which appears in pseudo-inverse matrix operations is employed as an objective function of the problem in the present extended approach. The procedure for the maximization of the determinant of the corresponding matrix is proved to be mathematically the same as that of the previously proposed QR method when the number of sensors is less than that of state variables (undersampling). On the other hand, the authors have developed a new algorithm for when the number of sensors is greater than that of state variables (oversampling). Then, a unified formulation of the two algorithms is derived, and the lower bound of the objective function given by this algorithm is shown using the monotone submodularity of the objective function. The effectiveness of the proposed algorithm on the problem using real datasets is demonstrated by comparing with the results of other algorithms. The numerical results show that the proposed algorithm improves the estimation error by approximately 10% compared with the conventional methods in the oversampling case, where the estimation error is defined as the ratio of the difference between the reconstructed data and the full observation data to the full observation. For the NOAA-SST sensor problem, which has more than ten thousand sensor candidate points, the proposed algorithm selects the sensor positions in few seconds, which required several hours with the other algorithms in the oversampling case on a 3.40 GHz computer.

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