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Interpretation of spatio-temporal variation of precipitation from spatially sparse measurements using Bayesian compressive sensing (BCS)

Peiping Li, Yu Wang

2023Georisk Assessment and Management of Risk for Engineered Systems and Geohazards10 citationsDOI

Abstract

Precipitation might change rapidly and vary spatially, therefore, knowledge on spatio-temporal variation of precipitation plays a pivotal role in water resources management, hydrogeological hazard and risk assessment, and city resilience enhancement. However, precipitation monitoring data are collected through a limited number of precipitation stations in practice, and they are often sparse and discontinuous, particularly in spatial domain. Furthermore, regional precipitation data exhibits characteristics of seasonality, periodicity and highly non-stationarity on a long-time scale. Therefore, it is challenging to obtain a spatio-temporal variation of precipitation with high spatial resolution from monitoring data measured at a limited number of precipitation stations. To address these challenges, this study develops a non-parametric spatio-temporal Bayesian compressive sensing (ST-BCS) method for interpolation of spatio-temporally varying, but sparsely measured precipitation data in the spatial domain. The proposed method is able to not only provide precipitation interpolation results with high spatial resolution from a limited number of monitoring stations, but also quantify the associated interpolation uncertainty simultaneously. In addition, ST-BCS is directly applicable to the non-stationary spatio-temporal meteorological data. Furthermore, real precipitation datasets are established to benchmark different spatio-temporal interpolation methods. The benchmarking results show that the proposed ST-BCS method performs well and outperforms the spatial BCS method.

Topics & Concepts

PrecipitationInterpolation (computer graphics)Spatial variabilityBenchmark (surveying)Temporal resolutionMultivariate interpolationBayesian probabilityEnvironmental scienceProbabilistic logicComputer scienceMeteorologyMathematicsStatisticsArtificial intelligenceGeographyCartographyComputer visionMotion (physics)PhysicsBilinear interpolationQuantum mechanicsPrecipitation Measurement and AnalysisSoil Moisture and Remote SensingCryospheric studies and observations
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