Publication | Open Access
Trans-dimensional matched-field geoacoustic inversion with hierarchical error models and interacting Markov chains
117
Citations
37
References
2012
Year
EngineeringSpatial UncertaintyOceanographyGeophysical Signal ProcessingData AssimilationAcoustic ModelingSpeech RecognitionMarkov ChainsOcean AcousticsHierarchical Error ModelUncertainty QuantificationSpeaker LocalizationComputational GeophysicsAcoustic Signal ProcessingStatisticsPlausible Seabed ModelsGeographyInverse Scattering TransformsInverse ProblemsSignal ProcessingHierarchical Error ModelsPhysical OceanographySpeech ProcessingHierarchical Seabed Model
This paper develops a trans-dimensional approach to matched-field geoacoustic inversion, including interacting Markov chains to improve efficiency and an autoregressive model to account for correlated errors. The trans-dimensional approach and hierarchical seabed model allows inversion without assuming any particular parametrization by relaxing model specification to a range of plausible seabed models (e.g., in this case, the number of sediment layers is an unknown parameter). Data errors are addressed by sampling statistical error-distribution parameters, including correlated errors (covariance), by applying a hierarchical autoregressive error model. The well-known difficulty of low acceptance rates for trans-dimensional jumps is addressed with interacting Markov chains, resulting in a substantial increase in efficiency. The trans-dimensional seabed model and the hierarchical error model relax the degree of prior assumptions required in the inversion, resulting in substantially improved (more realistic) uncertainty estimates and a more automated algorithm. In particular, the approach gives seabed parameter uncertainty estimates that account for uncertainty due to prior model choice (layering and data error statistics). The approach is applied to data measured on a vertical array in the Mediterranean Sea.
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