An evolutionary Monte Carlo method for the analysis of turbidity high-frequency time series through Markov switching autoregressive models
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Publication:6617829
DOI10.1002/ENV.2695zbMATH Open1545.62945MaRDI QIDQ6617829
Andy Vinten, L. Spezia, R. Paroli, Marc Stutter
Publication date: 11 October 2024
Published in: Environmetrics (Search for Journal in Brave)
path samplingnonlinearitywater qualitylong memory processnonnormalitypopulation MCMCnonhomogeneous hidden Markov chainWemyss catchment
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