Matches in SemOpenAlex for { <https://semopenalex.org/work/W2516811848> ?p ?o ?g. }
Showing items 1 to 60 of
60
with 100 items per page.
- W2516811848 abstract "Background/Objectives: This paper is aimed at performing real time bigdata analytics on vehicular data collected from a network of ECUs (Electronic Control Unit) in cooperated into the different automobiles. Methods/Statistical Analysis: The analytics has been performed by building a software model that is capable of handling the vehicular data in real time. Bigdata platforms like hadoop, Apache Storm, Apache Spark(real time streaming), Kafka are utilised here. Automotive sensor data from different Electronic Control Units are collected into a central data server and this data is pushed to kafka, from which the real time streaming models pulls the data and perform analysis. Findings: Automotive industry has undergone a drastic revolutionised innovation in the past decade in all of its respective segments. The industry had started utilizing the computational and mathematical aspects from top to bottom in its design strategies to achieve greater reliability on its products out on roads. Latest advancements in this field is the fully autonomous car. Today an automotive is a collection of innumerable sensors and microcontrollers which are under the command of the master ECU. A network of ECUs connected across the globe is a source tap of bigdata. Leveraging the new sources of bigdata by automotive giants boost vehicle performance, enhance loco driver experience, accelerated product designs. Statistical Projections reveal that automotive industry is likely to be the 2nd largest generator of data by mid of 2016. The contribution of this paper to the automotive industry is the real time vehicle monitoring utilizing Bigdata platforms. This can contribute to better customer-industry relations. Applications/Improvements: The model developed in this paper can contribute a lot to the automobile industry as it facilitates real time monitoring of the vehicles. This can improve customer-industry relation." @default.
- W2516811848 created "2016-09-16" @default.
- W2516811848 creator A5006204845 @default.
- W2516811848 creator A5009434906 @default.
- W2516811848 creator A5020981132 @default.
- W2516811848 creator A5060537520 @default.
- W2516811848 date "2016-08-19" @default.
- W2516811848 modified "2023-09-23" @default.
- W2516811848 title "Real Time Vehicular Data Analytics Utilising Bigdata Platforms and Cost Effective ECU Networks" @default.
- W2516811848 cites W1985554463 @default.
- W2516811848 cites W2096125134 @default.
- W2516811848 cites W2106026767 @default.
- W2516811848 cites W2131166445 @default.
- W2516811848 cites W2131975293 @default.
- W2516811848 cites W2136202153 @default.
- W2516811848 cites W2144002928 @default.
- W2516811848 cites W2149159853 @default.
- W2516811848 cites W2189465200 @default.
- W2516811848 doi "https://doi.org/10.17485/ijst/2016/v9i30/99062" @default.
- W2516811848 hasPublicationYear "2016" @default.
- W2516811848 type Work @default.
- W2516811848 sameAs 2516811848 @default.
- W2516811848 citedByCount "3" @default.
- W2516811848 countsByYear W25168118482021 @default.
- W2516811848 countsByYear W25168118482022 @default.
- W2516811848 countsByYear W25168118482023 @default.
- W2516811848 crossrefType "journal-article" @default.
- W2516811848 hasAuthorship W2516811848A5006204845 @default.
- W2516811848 hasAuthorship W2516811848A5009434906 @default.
- W2516811848 hasAuthorship W2516811848A5020981132 @default.
- W2516811848 hasAuthorship W2516811848A5060537520 @default.
- W2516811848 hasConcept C124101348 @default.
- W2516811848 hasConcept C2522767166 @default.
- W2516811848 hasConcept C41008148 @default.
- W2516811848 hasConcept C75684735 @default.
- W2516811848 hasConcept C79158427 @default.
- W2516811848 hasConceptScore W2516811848C124101348 @default.
- W2516811848 hasConceptScore W2516811848C2522767166 @default.
- W2516811848 hasConceptScore W2516811848C41008148 @default.
- W2516811848 hasConceptScore W2516811848C75684735 @default.
- W2516811848 hasConceptScore W2516811848C79158427 @default.
- W2516811848 hasIssue "30" @default.
- W2516811848 hasLocation W25168118481 @default.
- W2516811848 hasOpenAccess W2516811848 @default.
- W2516811848 hasPrimaryLocation W25168118481 @default.
- W2516811848 hasRelatedWork W2337265393 @default.
- W2516811848 hasRelatedWork W2505667890 @default.
- W2516811848 hasRelatedWork W2739436898 @default.
- W2516811848 hasRelatedWork W2777139086 @default.
- W2516811848 hasRelatedWork W2790702400 @default.
- W2516811848 hasRelatedWork W2900188375 @default.
- W2516811848 hasRelatedWork W2998881927 @default.
- W2516811848 hasRelatedWork W4245312229 @default.
- W2516811848 hasRelatedWork W2551093110 @default.
- W2516811848 hasRelatedWork W3121830558 @default.
- W2516811848 hasVolume "9" @default.
- W2516811848 isParatext "false" @default.
- W2516811848 isRetracted "false" @default.
- W2516811848 magId "2516811848" @default.
- W2516811848 workType "article" @default.