TY - CHAP
T1 - Change detection in streaming data analytics
T2 - A comparison of Bayesian online and martingale approaches
AU - Namoano, Bernadin
AU - Emmanouilidis, Christos
AU - Ruiz-Carcel, Cristobal
AU - Starr, AG
PY - 2020
Y1 - 2020
N2 - On line change detection is a key activity in streaming analytics, which aims to determine whether the current observation in a time series marks a change point in some important characteristic of the data, given the sequence of data observed so far. It can be a challenging task when monitoring complex systems, which are generating streaming data of significant volume and velocity. While applicable to diverse problem domains, it is highly relevant to monitoring high value and critical engineering assets. This paper presents an empirical evaluation of two algorithmic approaches for streaming data change detection. These are a modified martingale and a Bayesian online detection algorithm. Results obtained with both synthetic and real world data sets are presented and relevant advantages and limitations are discussed.
AB - On line change detection is a key activity in streaming analytics, which aims to determine whether the current observation in a time series marks a change point in some important characteristic of the data, given the sequence of data observed so far. It can be a challenging task when monitoring complex systems, which are generating streaming data of significant volume and velocity. While applicable to diverse problem domains, it is highly relevant to monitoring high value and critical engineering assets. This paper presents an empirical evaluation of two algorithmic approaches for streaming data change detection. These are a modified martingale and a Bayesian online detection algorithm. Results obtained with both synthetic and real world data sets are presented and relevant advantages and limitations are discussed.
U2 - 10.1016/j.ifacol.2020.11.054
DO - 10.1016/j.ifacol.2020.11.054
M3 - Chapter
T3 - IFAC-PapersOnline
SP - 336
EP - 341
BT - 4th IFAC Workshop on Advanced Maintenance Engineering, Services and Technologies - AMEST 2020: Cambridge, UK, 10–11 September 2020
PB - Elsevier
ER -