Visible to the public Efficient Temporal and Spatial Data Recovery Scheme for Stochastic and Incomplete Feedback Data of Cyber-physical Systems

TitleEfficient Temporal and Spatial Data Recovery Scheme for Stochastic and Incomplete Feedback Data of Cyber-physical Systems
Publication TypeConference Paper
Year of Publication2014
AuthorsNower, N., Yasuo Tan, Lim, A.O.
Conference NameService Oriented System Engineering (SOSE), 2014 IEEE 8th International Symposium on
Date PublishedApril
Keywordsauto regressive integrated moving average, Computational modeling, Correlation, CPS, cyber-physical system, Cyber-physical systems, data handling, Data models, data recovery scheme, efficient temporal and spatial data recovery, ETSDR scheme, feedback loss, incomplete feedback data, integral of absolute error, Mathematical model, mean absolute error, mean square error methods, measurement uncertainty, nearest neighbor, real-time control, root mean square error, spatial correlation, spatial data recovery scheme, Spatial databases, stochastic data, stochastic feedback data, stochastic incomplete feedback, Stochastic processes, stochastic traffic patterns, System performance, temporal correlation, temporal data recovery scheme, temporal model identification, time-critical traffic patterns
Abstract

Feedback loss can severely degrade the overall system performance, in addition, it can affect the control and computation of the Cyber-physical Systems (CPS). CPS hold enormous potential for a wide range of emerging applications including stochastic and time-critical traffic patterns. Stochastic data has a randomness in its nature which make a great challenge to maintain the real-time control whenever the data is lost. In this paper, we propose a data recovery scheme, called the Efficient Temporal and Spatial Data Recovery (ETSDR) scheme for stochastic incomplete feedback of CPS. In this scheme, we identify the temporal model based on the traffic patterns and consider the spatial effect of the nearest neighbor. Numerical results reveal that the proposed ETSDR outperforms both the weighted prediction (WP) and the exponentially weighted moving average (EWMA) algorithm regardless of the increment percentage of missing data in terms of the root mean square error, the mean absolute error, and the integral of absolute error.

DOI10.1109/SOSE.2014.29
Citation Key6830905