Model-based Integration of Past & Future in TimeTravel

Mohamed E. Khalefa, Ulrike Fischer, Torben Bach Pedersen, Wolfgang Lehner

Research output: Contribution to journalJournal articleResearchpeer-review

13 Citations (Scopus)

Abstract

We demonstrate TimeTravel, an efficient DBMS system for seamless integrated querying of past and (forecasted) future values of time series, allowing the user to view past and future values as one joint time series. This functionality is important for advanced application domain like energy. The main idea is to compactly represent time series as models. By using models, the TimeTravel system answers queries approximately on past and future data with error guarantees (absolute error and confidence) one order of magnitude faster than when accessing the time series directly. In addition, it efficiently supports exact historical queries by only accessing relevant portions of the time series. This is unlike existing approaches, which access the entire time series to exactly answer the query. To realize this system, we propose a novel hierarchical model index structure. As real-world time series usually exhibits seasonal behavior, models in this index incorporate seasonality. To construct a hierarchical model index, the user specifies seasonality period, error guarantees levels, and a statistical forecast method. As time proceeds, the system incrementally updates the index and utilizes it to answer approximate and exact queries. TimeTravel is implemented into PostgreSQL, thus achieving complete user transparency at the query level. In the demo, we show the easy building of a hierarchical model index for a real-world time series and the effect of varying the error guarantees on the speed up of approximate and exact queries.
Original languageUndefined/Unknown
JournalProceedings of the VLDB Endowment
Volume5
Issue number12
Pages (from-to)1974-1977
Number of pages4
ISSN2150-8097
Publication statusPublished - 2012

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