Aarhus Universitets segl

Qi Zhang

Titchy: Online Time-series Compression with Random Access for the Internet of Things

Publikation: Bidrag til tidsskrift/Konferencebidrag i tidsskrift /Bidrag til avisTidsskriftartikelForskningpeer review

We introduce Titchy, which is a compression method for time-series data generated by the Internet of Things. Our proposed method is flexible and has several advantages when applied in the IoT ecosystem: 1) it is able to compress even when only a small amount of memory can be allocated to it; 2) it compresses data in tiny chunks, so it introduces very little latency during online operation and thus, enables frequent and timely updates with compressed data; and 3) it facilitates efficient data storage and retrieval by enabling low-cost random access to the compressed data, eliminating the need to decompress large chunks when only a small amount of data is requested. To evaluate each of these advantages, we have implemented the compressor and conducted extensive experiments with long-term real-world data captured over days or weeks. We also present results for seven state-of-the-art compression methods to act as a baseline. Our evaluation shows that Titchy not only outperforms all seven on random access capability and for frequent transmissions but also provides great compression ratios as well as high compression and decompression speeds.
OriginalsprogEngelsk
TidsskriftIEEE Internet of Things Journal
Vol/bind8
Nummer24
Sider (fra-til)17568-17583
Antal sider26
DOI
StatusUdgivet - 2021

Se relationer på Aarhus Universitet Citationsformater

Projekter

ID: 218459802