Abstract

In this study, a nested ensemble filtering (NEF) approach is advanced for uncertainty parameter estimation and uncertainty quantification of a traffic noise model. As an extension of the ensemble Kalman filter (EnKF) and particle filter methods, the proposed NEF method improves upon the ensemble Kalman filter (EnKF) method by incorporating the sample importance resampling (SIR) procedures into the EnKF update process. The NEF method can avoid the overshooting problem (abnormal value (e.g., outside the predefined ranges, complex values) in parameter or state samples) existing in the EnKF update process. The proposed NEF method is applied to the traffic noise prediction on the Trans-Canada Highway in the City of Regina to demonstrate its applicability. The results indicate that: (a) when determining parameters in the traffic noise prediction model, the NEF method provides accurate estimation; (b) the model parameters can be recursively corrected with the NEF method whenever a new measurement becomes available; (c) the uncertainty in the traffic noise model (should be the noise itself) can be well reduced and quantified through the proposed NEF approach.

Highlights

  • Noise pollution continues to be a major health problem in the modern world, leading to various negative effects on human beings, such as cardiovascular effects, rising blood pressure, annoyance, sleep disorders, and learning impairment [1,2,3,4,5,6]

  • Road traffic noise is caused by the combination of rolling noise, consisting of friction noise between the road surface and the car tyres, and the propulsion noise caused by the exhaust systems or engines

  • Lictitra et al [11] revealed the influence of tyres on the use of the Close Proximity Method (CPX) for evaluating the effectiveness of a noise mitigation action based on low-noise road surfaces

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Summary

A Nested Ensemble Filtering Approach for Parameter

Industrial Systems Engineering, Faculty of Engineering and Applied Science, University of Regina, Regina, SK S4S 0A2, Canada.

Introduction
Methodology
Ensemble Kalman Filter
Particle Filter
Sampling the model state and parameter vectors from a uniform distribution
Update the weight for the analyzed ensembles:
Statement
Selection
Traffic
Analysis and Discussion
Parameter Estimation and Uncertainty
Parameter
Comparison
The road around
Conclusions

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