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- Title
Optimal Logistics Activities Based Deep Learning Enabled Traffic Flow Prediction Model.
- Authors
Aljabhan, Basim; Ragab, Mahmoud; Alshammari, Sultanah M.; Al-Ghamdi, Abdullah S. Al-Malaise
- Abstract
Traffic flow prediction becomes an essential process for intelligent transportation systems (ITS). Though traffic sensor devices are manually controllable, traffic flow data with distinct length, uneven sampling, and missing data finds challenging for effective exploitation. The traffic data has been considerably increased in recent times which cannot be handled by traditional mathematical models. The recent developments of statistic and deep learning (DL) models pave a way for the effectual design of traffic flow prediction (TFP) models. In this view, this study designs optimal attentionbased deep learning with statistical analysis for TFP (OADLSA-TFP) model. The presentedOADLSA-TFP model intends to effectually forecast the level of traffic in the environment. To attain this, the OADLSA-TFP model employs attention-based bidirectional long short-term memory (ABLSTM) model for predicting traffic flow. In order to enhance the performance of the ABLSTM model, the hyperparameter optimization process is performed using artificial fish swarm algorithm (AFSA). A wide-ranging experimental analysis is carried out on benchmark dataset and the obtained values reported the enhancements of the OADLSA-TFP model over the recent approaches mean square error (MSE), root mean square error (RMSE), and mean absolute percentage error (MAPE) of 120.342%, 10.970%, and 8.146% respectively.
- Subjects
TRAFFIC flow; ACTIVE learning; DEEP learning; STANDARD deviations; PREDICTION models; INTELLIGENT transportation systems
- Publication
Computers, Materials & Continua, 2022, Vol 73, Issue 3, p5269
- ISSN
1546-2218
- Publication type
Article
- DOI
10.32604/cmc.2022.030694