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A non-parametric hidden Markov model for climate state identification

机译:用于气候状态识别的非参数隐马尔可夫模型

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Hidden Markov models (HMMs) can allow for the varying wet and dry cycles in the climate without the need to simulate supplementary climate variables. The fitting of a parametric HMM relies upon assumptions for the state conditional distributions. It is shown that inappropriate assumptions about state conditional distributions can lead to biased estimates of state transition probabilities. An alternative non-parametric model with a hidden state structure that overcomes this problem is described. It is shown that a two-state non-parametric model produces accurate estimates of both transition probabilities and the state conditional distributions. The non-parametric model can be used directly or as a technique for identifying appropriate state conditional distributions to apply when fitting a parametric HMM. The non-parametric model is fitted to data from ten rainfall stations and four streamflow gauging stations at varying distances inland from the Pacific coast of Australia. Evidence for hydrological persistence, though not mathematical persistence, was identified in both rainfall and streamflow records, with the latter showing hidden states with longer sojourn times. Persistence appears to increase with distance from the coast. style="line-height: 20px;">Keywords: Hidden Markov models, non-parametric, two-state model, climate states, persistence, probability distributions
机译:隐马尔可夫模型(HMM)可以允许气候中变化的干湿循环,而无需模拟补充气候变量。参数HMM的拟合取决于状态条件分布的假设。结果表明,关于状态条件分布的不适当假设可能导致状态转移概率的估计偏差。描述了一种替代的具有隐藏状态结构的非参数模型,该模型克服了此问题。结果表明,两态非参数模型可以准确地估计过渡概率和状态条件分布。非参数模型可以直接使用,也可以用作识别合适的状态条件分布的技术,以在拟合参数HMM时应用。非参数模型适用于来自澳大利亚太平洋沿岸内陆不同距离的十个降雨站和四个流量测量站的数据。在降雨和流量记录中都可以找到水文持久性的证据,尽管不是数学上的持久性,但后者显示了停留时间更长的隐藏状态。持久性似乎随着与海岸的距离而增加。 style =“ line-height:20px;”> 关键字:隐马尔可夫模型,非参数,二态模型,气候状态,持久性,概率分布

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