4.8 Article

A Recursive Method for Estimating Missing Data in Spatio-Temporal Applications

Journal

IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
Volume 18, Issue 4, Pages 2714-2723

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TII.2021.3100501

Keywords

Integro-difference equation (IDE); missing data; online estimation; sensor network; spatio-temporal (ST)

Funding

  1. Department of Telecom, Government of India [RP03521]

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This study proposes an online method for estimating missing data in a network of sensors. By utilizing the Karhunen-Loeve Expansion and a rolling window approach, the algorithm predicts missing observations and updates model parameters. The utility of the algorithm is demonstrated through empirical analysis.
Missing data is a major data reliability problem in spatio-temporal (ST) applications. This article proposes an online method for estimating missing data in case of a network of n sensors. The true sensor value at a specific location is expressed using an integro-difference equation. The Karhunen-Loeve Expansion of the spatial process allows one to represent the ST field values at n locations in the form of a linear state-space model. The parameters of the model are identified using the maximum likelihood method. The parameters are updated in a rolling window approach. Whenever missing data are encountered, the algorithm predicts the missing observations based on the constrained solution of state evolution equation. The constrained solution is obtained by representing the optimal state as the orthogonal sum decomposition of a deterministic and a stochastic component. The utility of the algorithm is presented on two sensor network datasets.

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