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Twice clustering based hybrid model for short-term passenger flow forecasting

    Sheng Wang Affiliation
    ; Xinfeng Yang Affiliation

Abstract

Short-term metro passenger flow prediction plays a great role in traffic planning and management, and it is an important prerequisite for achieving intelligent transportation. So, a novel hybrid Support Vector Regression (SVR) model based on Twice Clustering (TC) is proposed for short-term metro passenger flow prediction. The training sets and test sets are generated by TC with respect to values of passenger flow in different time periods to improve the prediction accuracy. Furthermore, each obtained cluster is decomposed by using the Complete Ensemble Empirical Mode Decomposition with Adaptive Noise (CEEMDAN) algorithm and the Ensemble Empirical Mode Decomposition (EEMD) algorithm, respectively. The volatility of each component obtained after decomposition is further reduced. Then, the SVR model optimized by the Grey Wolf Optimization (GWO) algorithm is used to predict the decomposed components. Moreover, forecast based on one-month data from Xi’an Metro Line 2 Library Station (China). By comparing the prediction results of the TC condition, the Once Clustering (OC) condition and the non-clustering condition, it shows that the TC approach can adequately model the volatility and effectively improve the prediction accuracy. At the same time, experimental results show that the novel hybrid TC–CEEMDAN–GWO–SVR model has superior performance than Genetic Algorithm (GA) optimized SVR (SVR–GA) model and hybrid Back Propagation Neural Network (BPNN) model.

Keyword : short-term passenger flow forecasting, twice clustering, support vector regression, grey wolf optimization, complete ensemble empirical mode decomposition, adaptive noise

How to Cite
Wang, S., & Yang, X. (2024). Twice clustering based hybrid model for short-term passenger flow forecasting. Transport, 39(3), 209–228. https://doi.org/10.3846/transport.2024.20538
Published in Issue
Nov 21, 2024
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This work is licensed under a Creative Commons Attribution 4.0 International License.

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