• Corpus ID: 15493452

A COMPARATIVE ANALYSIS OF DISPLACEMENT DETECTION METHODS USING LOCATA

@inproceedings{Choudhury2011ACA,
  title={A COMPARATIVE ANALYSIS OF DISPLACEMENT DETECTION METHODS USING LOCATA},
  author={M. Choudhury},
  year={2011}
}
Alarm algorithms for displacement detection methods are one of the key components of an automatic displacement monitoring system used for monitoring any large structure (such as dams, bridges etc.). Methods such as Shewhart algorithm, moving average algorithm weighted moving average algorithm (WMA), exponentially weighted moving average algorithm (EWMA), cumulative sum algorithm (CUSUM) are used extensively to detect displacement, or in other words shifts in the mean and/or process variance… 

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