Otwarty dostęp

Traffic Flow Prediction Using Deep Learning Techniques in Urban Road Networks

  
17 mar 2025

Zacytuj
Pobierz okładkę

Figure 1.

Framework for Traffic Flow Prediction Using Deep Learning Techniques.
Framework for Traffic Flow Prediction Using Deep Learning Techniques.

Figure 2.

Long-Term Prediction Accuracy for Different Models Across Prediction Horizons
Long-Term Prediction Accuracy for Different Models Across Prediction Horizons

Figure 3.

Error Trend Analysis for Long-Term Prediction
Error Trend Analysis for Long-Term Prediction

Scalability Analysis Results on METR-LA Dataset

Number of Sensors 50 100 200
MAE (Proposed, mph) 2.31 2.43 2.51
RMSE (Proposed, mph) 4.52 4.67 4.80
MAE (ST-GCN, mph) 2.45 2.60 2.78
RMSE (ST-GCN, mph) 4.76 4.98 5.24
MAE (LSTM, mph) 2.68 2.83 3.01
RMSE (LSTM, mph) 5.05 5.32 5.60

Computational Efficiency Analysis

Model Training Time (s/epoch) Inference Time (ms/batch) GPU Memory (GB)
Proposed Model 1.8 42 6.2
ST-GCN 2.6 53 6.8
T-GCN 2.9 56 7.1
LSTM 3.1 59 7.2

Robustness to Missing Data

Missing Data Rate 10% 20% 30%
MAE (Proposed, mph) 2.45 2.62 2.84
RMSE (Proposed, mph) 4.69 4.92 5.18
MAE (T-GCN, mph) 2.61 2.82 3.12
RMSE (T-GCN, mph) 4.88 5.16 5.54
MAE (LSTM, mph) 2.85 3.12 3.45
RMSE (LSTM, mph) 5.15 5.46 5.84
Język:
Angielski
Częstotliwość wydawania:
1 razy w roku
Dziedziny czasopisma:
Nauki biologiczne, Nauki biologiczne, inne, Matematyka, Matematyka stosowana, Matematyka ogólna, Fizyka, Fizyka, inne