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First order multivariate Markov chain model for generating annual weather data for Hong Kong

机译:一阶多元马尔可夫链模型,用于生成香港的年度天气数据

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摘要

It becomes popular to use computer simulation technique to evaluate the performance of energy utiliza tions in buildings. The hourly weather data as simulation input is a crucial factor for the successful energy system simulation, and obtaining an accurate set of weather data is necessary to represent the long-term typical weather conditions throughout a year. This paper introduces a stochastic approach, which is called the first order multivariate Markov chain model, to generate the annual weather data for better evaluat ing and sizing different energy systems. The process for generating the weather data time series from the multivariate Markov transition probability matrices is described using 15-years actual hourly weather data of Hong Kong. The ability of this new model for retaining the statistical properties of the generated weather data series is examined and compared with the current existing TMY and TRY data. The main statistical properties used for this purpose are mean value, standard deviation, maximum value, mini mum value, frequency distribution probability and persistency probability of the weather data sequence. The comparison between the observed weather data and the synthetically generated ones shows that the statistical characteristics of the developed set of weather data are satisfactorily preserved and the developed set of weather data can predict and evaluate different energy systems more accurately.
机译:使用计算机模拟技术来评估建筑物中能源利用的性能已变得普及。每小时的天气数据作为模拟输入是成功进行能源系统模拟的关键因素,获得一组准确的天气数据对于代表全年的长期典型天气状况是必要的。本文介绍一种称为一阶多元马尔可夫链模型的随机方法,以生成年度天气数据,以便更好地评估和确定不同的能源系统。使用香港的15年实际每小时天气数据来描述从多元马尔可夫转移概率矩阵生成天气数据时间序列的过程。检查了此新模型保留生成的天气数据系列的统计属性的能力,并将其与当前现有的TMY和TRY数据进行了比较。用于此目的的主要统计属性是气象数据序列的平均值,标准偏差,最大值,最小值,频率分布概率和持久性概率。观测到的天气数据与综合生成的天气数据之间的比较表明,令人满意地保留了已开发的天气数据集的统计特征,并且已开发的天气数据集可以更准确地预测和评估不同的能源系统。

著录项

  • 来源
    《Energy and Buildings》 |2011年第9期|p.2371-2377|共7页
  • 作者单位

    Renewable Energy Research Group (RERC),Department of Building Services Engineering,The Hong Kong Polytechnic University,Hung Horn,Hong Kong;

    Renewable Energy Research Group (RERC),Department of Building Services Engineering,The Hong Kong Polytechnic University,Hung Horn,Hong Kong;

    Renewable Energy Research Group (RERC),Department of Building Services Engineering,The Hong Kong Polytechnic University,Hung Horn,Hong Kong;

    Renewable Energy Research Group (RERC),Department of Building Services Engineering,The Hong Kong Polytechnic University,Hung Horn,Hong Kong;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    markov chain model; annual weather data; building simulation; transition probability matrix;

    机译:马可夫链模型年度天气数据;建筑模拟;转移概率矩阵;

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