Publication | Open Access
Beyond discrete modeling: A continuous and efficient model for IoT
18
Citations
16
References
2015
Year
Unknown Venue
Web Of ThingEngineeringIot CommunicationIot SystemMeta AttributeData ScienceSystems EngineeringInternet Of ThingsData ManagementIndustrial InformaticsData ModelingComputer EngineeringMobile ComputingComputer ScienceIot ArchitectureIot Data ManagementThings ApplicationsIot Data AnalyticsEdge ComputingBeyond Discrete ModelingDiscrete ModelingBig Data
Internet of Things applications analyze our past habits through sensor measures to anticipate future trends. To yield accurate predictions, intelligent systems not only rely on single numerical values, but also on structured models aggregated from different sensors. Computation theory, based on the discretization of observable data into timed events, can easily lead to millions of values. Time series and similar database structures can efficiently index the mere data, but quickly reach computation and storage limits when it comes to structuring and processing IoT data. We propose a concept of continuous models that can handle high-volatile IoT data by defining a new type of meta attribute, which represents the continuous nature of IoT data. On top of traditional discrete object-oriented modeling APIs, we enable models to represent very large sequences of sensor values by using mathematical polynomials. We show on various IoT datasets that this significantly improves storage and reasoning efficiency.
| Year | Citations | |
|---|---|---|
Page 1
Page 1