Matches in SemOpenAlex for { <https://semopenalex.org/work/W4280619992> ?p ?o ?g. }
- W4280619992 endingPage "644" @default.
- W4280619992 startingPage "613" @default.
- W4280619992 abstract "Moving object monitoring is becoming essential for companies and organizations that need to manage thousands or even millions of commercial vehicles or vessels, detect dangerous situations (e.g., collisions or malfunctions) and optimize their behavior. It is a task that must be executed in real-time, reporting any such situations or opportunities as soon as they appear. Given the growing sizes of fleets worldwide, a monitoring system must be highly efficient and scalable. It is becoming an increasingly common requirement that such monitoring systems should be able to automatically detect complex situations, possibly involving multiple moving objects and requiring extensive background knowledge. Building a monitoring system that is both expressive and scalable is a significant challenge. Typically, the more expressive a system is, the less flexible it becomes in terms of its parallelization potential. We present a system that strikes a balance between expressiveness and scalability. Going beyond event detection, we also present an approach towards event forecasting. We show how event patterns may be given a probabilistic description so that our system can forecast when a complex event is expected to occur. Our proposed system employs a formalism that allows analysts to define complex patterns in a user-friendly manner while maintaining unambiguous semantics and avoiding ad hoc constructs. At the same time, depending on the problem at hand, it can employ different parallelization strategies in order to address the issue of scalability. It can also employ different training strategies in order to fine-tune the probabilistic models constructed for event forecasting. Our experimental results show that our system can detect complex patterns over moving entities with minimal latency, even when the load on our system surpasses what is to be realistically expected in real-world scenarios." @default.
- W4280619992 created "2022-05-22" @default.
- W4280619992 creator A5010846207 @default.
- W4280619992 creator A5054772926 @default.
- W4280619992 creator A5076689521 @default.
- W4280619992 creator A5086892944 @default.
- W4280619992 creator A5086910183 @default.
- W4280619992 date "2022-05-11" @default.
- W4280619992 modified "2023-10-09" @default.
- W4280619992 title "Online fleet monitoring with scalable event recognition and forecasting" @default.
- W4280619992 cites W1966598933 @default.
- W4280619992 cites W1992614040 @default.
- W4280619992 cites W1992965417 @default.
- W4280619992 cites W1994920552 @default.
- W4280619992 cites W1996418875 @default.
- W4280619992 cites W2001002317 @default.
- W4280619992 cites W2009602724 @default.
- W4280619992 cites W2015103810 @default.
- W4280619992 cites W2020617621 @default.
- W4280619992 cites W2025720061 @default.
- W4280619992 cites W2048339977 @default.
- W4280619992 cites W2055772578 @default.
- W4280619992 cites W2072592647 @default.
- W4280619992 cites W2073731237 @default.
- W4280619992 cites W2106089390 @default.
- W4280619992 cites W2142283981 @default.
- W4280619992 cites W2143792095 @default.
- W4280619992 cites W2145646637 @default.
- W4280619992 cites W2161628678 @default.
- W4280619992 cites W2163294786 @default.
- W4280619992 cites W2265620001 @default.
- W4280619992 cites W2529611981 @default.
- W4280619992 cites W2621772777 @default.
- W4280619992 cites W2676873924 @default.
- W4280619992 cites W2921844983 @default.
- W4280619992 cites W2964273806 @default.
- W4280619992 cites W3046547435 @default.
- W4280619992 cites W3102795110 @default.
- W4280619992 cites W3104314953 @default.
- W4280619992 cites W3104332285 @default.
- W4280619992 cites W3200602816 @default.
- W4280619992 cites W3202157024 @default.
- W4280619992 cites W4236181223 @default.
- W4280619992 cites W780273744 @default.
- W4280619992 doi "https://doi.org/10.1007/s10707-022-00465-2" @default.
- W4280619992 hasPublicationYear "2022" @default.
- W4280619992 type Work @default.
- W4280619992 citedByCount "0" @default.
- W4280619992 crossrefType "journal-article" @default.
- W4280619992 hasAuthorship W4280619992A5010846207 @default.
- W4280619992 hasAuthorship W4280619992A5054772926 @default.
- W4280619992 hasAuthorship W4280619992A5076689521 @default.
- W4280619992 hasAuthorship W4280619992A5086892944 @default.
- W4280619992 hasAuthorship W4280619992A5086910183 @default.
- W4280619992 hasBestOaLocation W42806199922 @default.
- W4280619992 hasConcept C119857082 @default.
- W4280619992 hasConcept C120314980 @default.
- W4280619992 hasConcept C121332964 @default.
- W4280619992 hasConcept C123606473 @default.
- W4280619992 hasConcept C124101348 @default.
- W4280619992 hasConcept C127413603 @default.
- W4280619992 hasConcept C142362112 @default.
- W4280619992 hasConcept C153349607 @default.
- W4280619992 hasConcept C154945302 @default.
- W4280619992 hasConcept C184337299 @default.
- W4280619992 hasConcept C199360897 @default.
- W4280619992 hasConcept C201995342 @default.
- W4280619992 hasConcept C2522767166 @default.
- W4280619992 hasConcept C2779662365 @default.
- W4280619992 hasConcept C2780451532 @default.
- W4280619992 hasConcept C41008148 @default.
- W4280619992 hasConcept C48044578 @default.
- W4280619992 hasConcept C49937458 @default.
- W4280619992 hasConcept C558565934 @default.
- W4280619992 hasConcept C62520636 @default.
- W4280619992 hasConcept C73301696 @default.
- W4280619992 hasConcept C77088390 @default.
- W4280619992 hasConcept C79403827 @default.
- W4280619992 hasConcept C98045186 @default.
- W4280619992 hasConceptScore W4280619992C119857082 @default.
- W4280619992 hasConceptScore W4280619992C120314980 @default.
- W4280619992 hasConceptScore W4280619992C121332964 @default.
- W4280619992 hasConceptScore W4280619992C123606473 @default.
- W4280619992 hasConceptScore W4280619992C124101348 @default.
- W4280619992 hasConceptScore W4280619992C127413603 @default.
- W4280619992 hasConceptScore W4280619992C142362112 @default.
- W4280619992 hasConceptScore W4280619992C153349607 @default.
- W4280619992 hasConceptScore W4280619992C154945302 @default.
- W4280619992 hasConceptScore W4280619992C184337299 @default.
- W4280619992 hasConceptScore W4280619992C199360897 @default.
- W4280619992 hasConceptScore W4280619992C201995342 @default.
- W4280619992 hasConceptScore W4280619992C2522767166 @default.
- W4280619992 hasConceptScore W4280619992C2779662365 @default.
- W4280619992 hasConceptScore W4280619992C2780451532 @default.
- W4280619992 hasConceptScore W4280619992C41008148 @default.
- W4280619992 hasConceptScore W4280619992C48044578 @default.
- W4280619992 hasConceptScore W4280619992C49937458 @default.
- W4280619992 hasConceptScore W4280619992C558565934 @default.