Title: Application of Wavelet in Linear Prediction of Traffic Volume
1Application of Wavelet in Linear Prediction of
Traffic Volume
Ping Yi, Li Sheng University of
Akron
2Introduction
- Short-Term Prediction of traffic volume is one of
the most important components in traffic control.
- Random fluctuations in Traffic Volume affect the
accuracy of prediction, but are very difficult to
address.
3- Current methods to predict traffic volume
- Empirical-based methodsstandard statistical
methodology, which includes the non-linear
regression, Box-Jenkins type ARIMA, neural
network and PID control. - Traffic process-based physical modeling of
vehicle passage variables on the supply side and
the behavioral modeling of the trip and OD flows
for the demand side. - Studies showed that there is a large degree of
variations between the predicted data and the
field measurements. Further research is needed to
improve the accuracy of prediction.
4Objective
- Find out the inherent features of traffic volume
fluctuation by decomposing the original traffic
volume data. - Take advantage of the features to improve the
accuracy of prediction.
5Linear Predictor
- One of the Empirical-Based methods.
- An optimal filter applied to the random process.
6Structure of Linear Predictor
7Model of Linear Predictor
where is the predicted data from the
preceding data. defines the M-dimensional
space spanned by the previous samples,
, ,.
--coefficients for this filter
--order of the filter
8Traffic Volume Data Characteristics
- Random Fluctuation
- the Monte Carlo simulation method is applied in
this study.
- Components
- it can be considered as a general waveform, which
includes sets of sub-components.
9Fundamental of Wavelet Transform
- Mathematical definition of wavelet
- wavelet
10- The vector space representation
- represents a sequence of real numbers
-
11Discrete Wavelet Transform(DWT)
- Data series sk,
- Orthonormal wavelet bases
- Scaling function
- Wavelet function
- Coefficients in wavelet domain
- Trend component (low frequency filter)
- Fluctuation component (high frequency filter)
12Discrete Wavelet Transform(DWT)
- Any data series can be decomposed into a set of
sub-series in wavelet domain and reconstructed by
these sub-series in time domain through the
wavelet bases.
sd1d2 d3 dkak
where d1 is the first level fluctuation
sub-signal, dk is the kth level fluctuation
sub-signal and ak the kth level approximation
signal.
13Discrete Wavelet Transform(DWT)
akak1 ak2 akN/2k
dkdk1 dk2 dkN/2k
N total number of data points
k number of level for decomposition
14Simulation Data Generation
- The Monte Carlo simulation is applied here
- Only consider the situation in urban network.
Stop Bar
Detector
Figure 2 Detector Configuration
15Simulation Data Generation(cont)
where q represents the flow rate, t represents
the inter-arrival time between vehicles, h is the
headway, and P defines the probability of the
occurrence of a certain headway value.
16Architecture for Predictor Incorporated with
Wavelet Method
Linear Predictor
ak
Linear Predictor
dk
Wavelet Decomposition
Wavelet Reconstruction
d1
Linear Predictor
Figure 3
17Characteristics of traffic volume
Figure 4
18Methods
- The results are based on the WLSE algorithm for
the 5-order linear prediction.
- The DB2 wavelet is applied to the simulated data
- 3 level decomposition is performed
19DB2 Wavelet
Figure 5
20DB2 3-level Decomposition of Original Data
Figure 6
21Reconstructed data after Linear Predictor
Figure 7
22Comparison of Original Data and Predicted data
w/o wavelet
Figure 8
23Comparison of Original Data and Predicted data w/
wavelet
Figure 9
24Results
- Mean Absolute Percentage Error (MAPE)
- Mean of Error (ME)
- Standard Deviation of Error(SDE)
-
- x(i) simulated traffic volume for ith time
interval - s(i) predicted traffic volume for ith time
interval - N sample size
-
25 Comparative Statistics Before and After Wavelet
Transform
26Results (cont)
- Linear Prediction with wavelet transform compares
much better to the original data from these
figures. - The MAPE describes the average deviation from the
original data, whereas a larger MSPE index
specifies that there are more larger-sized
differences in the data than in those of the
counterpart for comparison. The average
improvement for this study is 56.8 after
wavelet. - The ME describes the mean of difference between
original data and predicted data. The bigger it
is, the bigger the difference. The average
improvement is 56.6. - The SDE describes the concentration of the
error. The average improvement is 52.6.
27Conclusion
- Using the wavelet incorporated linear predictor,
the predicted traffic volume compares
overwhelmingly better with the original data. The
proposed approach is feasible. - Ability of wavelet decomposition in data feature
extraction is fully demonstrated. - Further research is needed to apply this
algorithm to different situation to test the
reliability and tolerance of this algorithm. -
28Thank you!
Any Question?