首页> 外文学位 >Hierarchical continuous time Markov chain models for threshold exceedance.
【24h】

Hierarchical continuous time Markov chain models for threshold exceedance.

机译:阈值超出的分层连续时间马尔可夫链模型。

获取原文
获取原文并翻译 | 示例

摘要

Thresholds have been defined for many water quality indicators (WQIs) which separate the measurement space of the indicator into two states, one of which, the exceedance or violation state, has undesirable consequences. Observations are often made at unevenly spaced intervals, are usually uncoordinated with the timing of state changes, and are usually made asynchronously at multiple locations. These typical observation protocols have hindered estimation of violation-state properties. To address this problem, six hierarchical two-state continuous-time Markov chain (CTMC) models were developed and tested. These allow estimation of duration, frequency, and limiting probabilities from asynchronous, uncoordinated, and unevenly spaced observations. Three of these models were developed for single Markov processes but can be modified to handle multiple processes. Three of the models were developed for multiple processes. Two of the models were homogeneous; the other four were non-homogeneous with sinusoidally varying components. Model parameters were estimated with Bayesian MCMC methods.;In each of three experiments, processes were simulated at high-frequency time steps. Asynchronous, infrequent, uncoordinated, and unevenly spaced observations of these processes were then extracted using protocols specified with varying observation period length, quasi-regular observation interval, and violation-state observation probability. Models were estimated from the simulated observations, and compared on nominal parameter value recovery, predictive performance, and frequency and duration distribution error. Effects of process and observation protocol characteristics on recovery, prediction performance and distribution estimation error were measured.;In the first experiment, simulated observations of single-chain two-state CTMCs were made and modeled. First, choice of prior distribution model was evaluated. Uniform and Gamma priors were found to be roughly equivalent in terms of performance, and both were found to perform substantially better than a Jeffrey's prior. Next, recovery, prediction, and distribution estimation error were evaluated. Duration, frequency, and violation-state probability were overestimated. Lower distribution estimation error was associated with longer observation period and more observations. Lower prediction and distribution estimation error was associated with more non-homogeneous processes.;In the second experiment, observation and modeling of multiple correlated WQI processes was simulated by mimicking WQIs with dual correlated two-state continuous time Markov chains. Estimates were made both jointly and individually, using the homogeneous model from the first experiment modified for multiple chains. Duration, frequency, and long-term violation-state probability were overestimated. Joint and individual estimates produced nearly equal results. Positively correlated and relatively low transition-rate processes were more-accurately predicted. Several observation characteristics were related to better prediction: greater event observation intensity, greater quasi-regular observation intensity, and longer observation period.;In the third experiment, two methods were compared for estimating threshold exceedance frequency and duration properties. One method was adapted from the Partial Duration Series (PDS) method popular in flood frequency analysis. The second method was based on three multiple-chain CTMC models. Simulations of WQI time series were generated using a sinusoidal model with autocorrelated errors adapted from the literature. Duration and violation-state probability were overestimated. Frequency was underestimated. A multiple-chain homogeneous CTMC model produced lower error estimates of frequency and duration than did the PDS method. Results were mixed for the two non-homogeneous multiple-chain CTMC models. For all CTMC models considered, more-positively correlated processes were easier to predict. Higher observation rates were found to improve predictive performance. The multiple-chain CTMC models were shown to be extend-able to allow for prediction of frequency and duration properties from watershed characteristics or to allow these properties to vary with time.;The bias in recovery of nominal parameter values seen in all three experiments appeared to be related to the observation protocol characteristics and not to the models or estimation method. The sources of this bias were not fully investigated.
机译:已经为许多水质指标(WQI)定义了阈值,这些阈值将指标的测量空间分为两种状态,其中一种状态是超出或超出状态会产生不良后果。观察通常以不均匀的间隔进行,通常与状态更改的时间不协调,并且通常在多个位置异步进行。这些典型的观察协议阻碍了对违规状态属性的估计。为了解决这个问题,开发并测试了六个分层的两态连续时间马尔可夫链(CTMC)模型。这些可以根据非同步,不协调和间隔不均匀的观测值估算持续时间,频率和极限概率。这些模型中的三个是为单个马尔可夫过程开发的,但可以修改为处理多个过程。为多个过程开发了三个模型。其中两个模型是同质的。其他四个是不均匀的,具有正弦变化的分量。使用贝叶斯MCMC方法估计模型参数。在三个实验的每一个中,均以高频时间步长模拟过程。然后使用指定的协议提取这些过程的异步,不频繁,不协调和不均匀间隔的观测,这些协议指定了不同的观测周期长度,准规则观测间隔和违反状态观测概率。从模拟的观测值中估计模型,并比较名义参数值恢复,预测性能以及频率和持续时间分布误差。测量了过程和观察协议特征对恢复,预测性能和分布估计误差的影响。在第一个实验中,对单链两态CTMC进行了模拟观察和建模。首先,评估先验分配模型的选择。人们发现均匀先验和伽玛先验在性能上大致相同,并且两者的性能都明显优于杰弗里先验。接下来,评估恢复,预测和分布估计误差。持续时间,频率和违反状态的概率被高估了。较低的分布估计误差与更长的观测期和更多的观测值相关。较低的预测和分布估计误差与更多的非均匀过程有关。在第二个实验中,通过模仿具有双相关的两态连续时间马尔可夫链的WQI,模拟了多个相关的WQI过程的观察和建模。使用针对多个链进行修改的第一个实验的均质模型,可以联合和单独进行估算。持续时间,频率和长期违规状态概率被高估了。联合估计和单个估计产生的结果几乎相等。正相关且过渡速率相对较低的过程可以更准确地预测。与更好的预测相关的几个观测特征:较大的事件观测强度,较大的准规则观测强度和较长的观测时间。;在第三个实验中,比较了两种方法来估计阈值超出频率和持续时间属性。一种方法是从洪水频率分析中流行的部分持续时间序列(PDS)方法改编而来。第二种方法基于三个多链CTMC模型。 WQI时间序列的仿真是使用正弦模型生成的,该正弦模型具有根据文献改编的自相关误差。持续时间和违规状态的概率被高估了。频率被低估了。与PDS方法相比,多链同质CTMC模型产生的频率和持续时间误差估计更低。两种非均质多链CTMC模型的结果混合在一起。对于所有考虑的CTMC模型,更正相关的过程更容易预测。发现较高的观察率可改善预测性能。多链CTMC模型显示出可扩展性,可以根据分水岭特征预测频率和持续时间特性,或者允许这些特性随时间变化。;在所有三个实验中都出现了恢复标称参数值的偏差与观察协议特征有关,与模型或估计方法无关。这种偏见的根源尚未得到充分调查。

著录项

  • 作者

    Deviney, Frank Allen, Jr.;

  • 作者单位

    University of Virginia.;

  • 授予单位 University of Virginia.;
  • 学科 Applied Mathematics.;Hydrology.;Engineering System Science.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 215 p.
  • 总页数 215
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:38:16

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号