2016 IEEE International Conference on Intelligent Transportation Engineering (ICITE) 2016
DOI: 10.1109/icite.2016.7581300
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Real time bus arrival time prediction system under Indian traffic condition

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Cited by 15 publications
(12 citation statements)
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“…Regression-based method —the regression model is an approach that has been also used for predicting arrival/travel time. It explains a dependent variable with a set of independent variables using a linear mathematical function ( Dhivyabharathi, Kumar & Vanajakshi, 2016 ; Khetarpaul et al, 2015 ). A regression-based method usually measures the impact of different factors ( independent variables/parameters ) that affect the dependent variable.…”
Section: Analysis and Discussionmentioning
confidence: 99%
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“…Regression-based method —the regression model is an approach that has been also used for predicting arrival/travel time. It explains a dependent variable with a set of independent variables using a linear mathematical function ( Dhivyabharathi, Kumar & Vanajakshi, 2016 ; Khetarpaul et al, 2015 ). A regression-based method usually measures the impact of different factors ( independent variables/parameters ) that affect the dependent variable.…”
Section: Analysis and Discussionmentioning
confidence: 99%
“…However, non-parametric methods need a large amount of data for training ( Dhivyabharathi, Kumar & Vanajakshi, 2016 ). Also, training them can be time-consuming.…”
Section: Analysis and Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…Wu et al [4], MatiurRahman et al [5] presented reviews about several common methods of location prediction based on trajectory data. Technically, these methods can be divided into five categories: Support Vector Machines (SVM) [6]- [11] based, Kalman Filter (KF) [12], [13], [14] based, Global Positioning System (GPS) [15], [16] based, Particle Filtering (PF) [17], [18] based, and Neural Network [19]- [31] based.…”
Section: Related Workmentioning
confidence: 99%
“…Dhivyabharathi et al proposed a method to predict stream travel time using a particle filtering approach which considers the predicted stream travel time as the sum of the median of historical travel times, random variations in travel time over time, and a model evolution error [17]. In order to fix the heterogeneous traffic conditions that exist in India, Dhivyabharathi et al developed a model based on particle filtering technique which is better than the existing method with MAPE values around 17% with the accuracy of +/-2 minutes, wherein inputs are obtained using K-NN ((k-nearest neighbors) algorithm (The core of KNN is that a sample belongs to most categories of k samples adjacent to it) [18]. However, the particle filtering algorithm used in these two papers is only suitable for a nonlinear stochastic system with state-space model, but the time property of bus arrival prediction is not considered.…”
Section: Particle Filteringmentioning
confidence: 99%