Data-Driven Approaches for Spatio-Temporal Analysis: A Survey of the State-of-the-Arts

被引:0
作者
Monidipa Das
Soumya K. Ghosh
机构
[1] Nanyang Technological University,School of Computer Science and Engineering
[2] Indian Institute of Technology Kharagpur,Department of Computer Science and Engineering
来源
Journal of Computer Science and Technology | 2020年 / 35卷
关键词
data-driven modeling; spatio-temporal data; prediction; change pattern detection; outlier detection; hotspot detection; partitioning/summarization; (tele-)coupling; visual analytics;
D O I
暂无
中图分类号
学科分类号
摘要
With the advancement of telecommunications, sensor networks, crowd sourcing, and remote sensing technology in present days, there has been a tremendous growth in the volume of data having both spatial and temporal references. This huge volume of available spatio-temporal (ST) data along with the recent development of machine learning and computational intelligence techniques has incited the current research concerns in developing various data-driven models for extracting useful and interesting patterns, relationships, and knowledge embedded in such large ST datasets. In this survey, we provide a structured and systematic overview of the research on data-driven approaches for spatio-temporal data analysis. The focus is on outlining various state-of-the-art spatio-temporal data mining techniques, and their applications in various domains. We start with a brief overview of spatio-temporal data and various challenges in analyzing such data, and conclude by listing the current trends and future scopes of research in this multi-disciplinary area. Compared with other relevant surveys, this paper provides a comprehensive coverage of the techniques from both computational/methodological and application perspectives. We anticipate that the present survey will help in better understanding various directions in which research has been conducted to explore data-driven modeling for analyzing spatio-temporal data.
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页码:665 / 696
页数:31
相关论文
共 442 条
[1]  
Samadi S(2013)Uncertainty analysis of statistical downscaling models using Hadley Centre Coupled Model Theoretical and Applied Climatology 114 673-690
[2]  
Wilson CA(2013)The parameterisation of Mediterranean-Atlantic water exchange in the Hadley Centre model HadCM3, and its effect on modelled North Atlantic climate Ocean Modelling 62 11-16
[3]  
Moradkhani H(2018)Data-driven approaches for meteorological time series prediction: A comparative study of the state-of-the-art computational intelligence techniques Pattern Recognition Letters 105 155-164
[4]  
Ivanovic RF(2004)Literature review of spatio-temporal database models The Knowledge Engineering Review 19 235-274
[5]  
Valdes PJ(2015)G¨uting R H, Li Y. Network-matched trajectory-based moving-object database: Models and applications IEEE Transactions on Intelligent Transportation Systems 16 1918-1928
[6]  
Flecker R(2016)Enabling smart transportation systems: A parallel spatio-temporal database approach IEEE Transactions on Computers 65 1377-1391
[7]  
Gregoire LJ(2015)Spatiotemporal data mining: A computational perspective ISPRS International Journal of Geo-Information 4 2306-2338
[8]  
Gutjahr M(2014)Spatiotemporal change footprint pattern discovery: An inter-disciplinary survey Wiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery 4 1-23
[9]  
Das M(2014)Theory-guided data science for climate change IEEE Computer 47 74-78
[10]  
Ghosh SK(2019)FB-STEP: A fuzzy Bayesian network based data-driven framework for spatio-temporal prediction of climatological time series data Expert Systems with Applications 117 211-227