Design of intelligent acquisition system for moving object trajectory data under cloud computing

Journal of Intelligent Systems 30 (1):763-773 (2021)
  Copy   BIBTEX

Abstract

In order to study the intelligent collection system of moving object trajectory data under cloud computing, information useful to passengers and taxi drivers is collected from massive trajectory data. This paper uses cloud computing technology, through clustering algorithm and density-based DBSCAN algorithm combined with Map Reduce programming model and design trajectory clustering algorithm. The results show that based on the 8-day data of 15,000 taxis in Shenzhen, the characteristic time period is determined. The passenger hot spot area is obtained by clustering the passenger load points in each time period, which verifies the feasibility of the passenger load point recommendation application based on trajectory clustering. Therefore, in the absence of holidays, the number of passenger hotspots tends to be stable. It is reliable to perform cluster analysis. The recommended application has been demonstrated through experiments, and the implementation results show the rationality of the recommended application design and the feasibility of practice.

Links

PhilArchive



    Upload a copy of this work     Papers currently archived: 91,386

External links

Setup an account with your affiliations in order to access resources via your University's proxy server

Through your library

Similar books and articles

Cloud Data Security Using Elliptic Curve Cryptography.Arockia Panimalars, N. Dharani, R. Aiswarya & Pavithra Shailesh - 2017 - International Research Journal of Engineering and Technology 9 (4).
A 4D Trajectory Prediction Model Based on the BP Neural Network.Lan Ma, Shan Tian & Zhi-Jun Wu - 2019 - Journal of Intelligent Systems 29 (1):1545-1557.
An Intelligent Tutoring System for Cloud Computing.Hasan Abdulla Abu Hasanein & Samy S. Abu Naser - 2017 - International Journal of Academic Research and Development 2 (1):76-80.
ITS for cloud computing.Hasan Abu Hasanen & Monnes Hanjory - 2017 - International Journal of Academic Research and Development 2 (1):76-80.
A STUDY ON CLOUD COMPUTING EFFICIENT JOB SCHEDULING ALGORITHMS.Shyam P. Sunder, S. V. Poranki Shekar & Marri Shiva - 2018 - International Journal of Research and Analytical Reviews 5 (2).
Improved FCM Algorithm Based on K-Means and Granular Computing.Zhuang Zhi Yan & Wei Jia Lu - 2015 - Journal of Intelligent Systems 24 (2):215-222.
Lockbox: mobility, privacy and values in cloud storage. [REVIEW]Luke Stark & Matt Tierney - 2014 - Ethics and Information Technology 16 (1):1-13.
Internet of Things future in Edge Computing.C. Pvandana & Ajeet Chikkamannur - 2016 - International Journal of Advanced Engineering Research and Science 3 (12):148-154.
Data Storage, Security And Techniques In Cloud Computing.R. Dinesh Arpitha & Shobha R. Sai - 2018 - International Journal of Research and Analytical Reviews 5 (4).

Analytics

Added to PP
2021-06-11

Downloads
6 (#1,430,516)

6 months
4 (#790,687)

Historical graph of downloads
How can I increase my downloads?

Citations of this work

No citations found.

Add more citations

References found in this work

No references found.

Add more references