Statistical methods for interpolating missing meteorological data for use in building simulation

被引:0
|
作者
Alisha A. Kasam
Benjamin D. Lee
Christiaan J. J. Paredis
机构
[1] Georgia Institute of Technology,Model
来源
Building Simulation | 2014年 / 7卷
关键词
weather data; statistical interpolation; vector autoregression; risk-conscious design;
D O I
暂无
中图分类号
学科分类号
摘要
Building performance simulation is increasingly used to aid in decision making about the design, construction, retrofit, operation, and maintenance of new and existing buildings. Such simulations require a complete set of meteorological data sampled at regular intervals. A data file with even a single missing measurement value becomes useless for simulation. Unfortunately, it is extremely rare to find such a perfect body of data. Measurement errors and sensor failure are frequent occurrences in meteorological data collection and are among a host of reasons for missing measurement values. To overcome this problem, simulation users may rely on Typical Meteorological Years (TMYs) instead of actual historical data, or they may apply an existing interpolation method to fill the gaps in historical data. Historical data is often preferable, since TMYs fail to account for atypical weather conditions. Clearly, this could lead to poor decision making when the decision outcomes are strongly affected by the occurrence of atypical conditions. This paper presents several methods for statistical interpolation between discrete weather-data points. A normalization procedure is first used to transform meteorological data into a set of Gaussian-distributed sample data. Next, a vector autoregressive model is calibrated using the normalized site-specific meteorological data, and is then used to determine the most likely value for one or more missing data points. Variations of the model are described to address specific combinations of missing data, and the methods are validated for several cities in the USA. Results show that the normalization procedure is the most important contributor towards a significant improvement in accuracy relative to other interpolation methods.
引用
收藏
页码:455 / 465
页数:10
相关论文
共 50 条
  • [1] Statistical methods for interpolating missing meteorological data for use in building simulation
    Kasam, Alisha A.
    Lee, Benjamin D.
    Paredis, Christiaan J. J.
    BUILDING SIMULATION, 2014, 7 (05) : 455 - 465
  • [2] A VECTOR AUTOREGRESSIVE MODEL FOR INTERPOLATING MISSING METEOROLOGICAL DATA FOR USE IN BUILDING SIMULATION
    Kasam, Alisha A.
    Lee, Benjamin D.
    Paredis, Christiaan J. J.
    BUILDING SIMULATION 2013: 13TH INTERNATIONAL CONFERENCE OF THE INTERNATIONAL BUILDING PERFORMANCE SIMULATION ASSOCIATION, 2013, : 1406 - 1413
  • [3] Methods for interpolating missing data in aerobiological databases
    Picornell, A.
    Oteros, J.
    Ruiz-Mata, R.
    Recio, M.
    Trigo, M. M.
    Martinez-Bracero, M.
    Lara, B.
    Serrano-Garcia, A.
    Galan, C.
    Garcia-Mozo, H.
    Alcazar, P.
    Perez-Badia, R.
    Cabezudo, B.
    Romero-Morte, J.
    Rojo, J.
    ENVIRONMENTAL RESEARCH, 2021, 200
  • [4] Filling missing meteorological data with Computational Intelligence methods
    Kajewska-Szkudlarek, Joanna
    Stanczyk, Justyna
    XLVIII SEMINAR OF APPLIED MATHEMATICS, 2018, 23
  • [5] THE INFLUENCE OF DIFFERENT METHODS OF INTERPOLATING SPATIAL METEOROLOGICAL DATA ON CALCULATED IRRIGATION REQUIREMENTS
    Rolim, J.
    Catalao, J.
    Teixeira, J.
    APPLIED ENGINEERING IN AGRICULTURE, 2011, 27 (06) : 979 - 989
  • [6] A simulation study on missing data imputation for dichotomous variables using statistical and machine learning methods
    Yingfeng Ge
    Zhiwei Li
    Jinxin Zhang
    Scientific Reports, 13
  • [7] A simulation study on missing data imputation for dichotomous variables using statistical and machine learning methods
    Ge, Yingfeng
    Li, Zhiwei
    Zhang, Jinxin
    SCIENTIFIC REPORTS, 2023, 13 (01)
  • [8] Review of Methods to Create Meteorological Data Suitable for Moisture Control Design by Hygrothermal Building Envelope Simulation
    Kim, Sughwan
    Zirkelbach, Daniel
    Kuenzel, Hartwig M.
    ENERGIES, 2023, 16 (07)
  • [9] Multivariate stochastic generation of meteorological data for building simulation through interdependent meteorological processes
    Jiao, Zhichao
    Yuan, Jihui
    Farnham, Craig
    Emura, Kazuo
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [10] Statistical Inference Methods for Clinical Medical Data with Missing and Truncated Data
    Cai K.
    Applied Mathematics and Nonlinear Sciences, 2024, 9 (01)