RAINFALL PREDICTION USING STATISTICAL MULTI MODEL ENSEMBLE OVER SELECTED REGION IN INDONESIA - PowerPoint PPT Presentation

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RAINFALL PREDICTION USING STATISTICAL MULTI MODEL ENSEMBLE OVER SELECTED REGION IN INDONESIA

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Title: RAINFALL PREDICTION USING STATISTICAL MULTI MODEL ENSEMBLE OVER SELECTED REGION IN INDONESIA


1
RAINFALL PREDICTION USING STATISTICAL MULTI MODEL
ENSEMBLE OVER SELECTED REGION IN INDONESIA
  • INTERNATIONAL WORKSHOP ON
  • IMPLEMENTATION OF DIGITIZATION HISTORICAL DATA
    AND SACAD / ICAD AND CLIMATE ANALYSIS IN THE
    REGIONAL ASEAN
  •    02 05 APRIL 2012
  • JAKARTA / BOGOR, INDONESIA

Fierra Setyawan R D of BMKG fierra.setyawan_at_bmkg
.go.id
2
Outline
  • Background
  • Data and Methods
  • Objective
  • Result
  • Conclusion
  • Introduction ClimaTools
  • Future Plans

3
Background
4
Bmkg as the provider climate information
  • The behaviour of climate (rainfall) ? high
    variability , such as shifting and changing of
    wet/dry season, climate extrem issues recently
  • Users need climate information regulary, accurate
    and localized
  • BMKG has been challenged to provide climate
    information
  • The limitation of human resources and tools to
    provide climate information in high resolution
  • Dynamical Climate Model is high technologies
    computation requirements ? expensive resources
  • Statistical model as a solution to fullfill
    forecaster needs in local scale

5
Spatial Planning
Crops
Statistical Models
Water resources
EOF
AR
ANFIS
HyBMG ClimaTools
Filter Kalman
Plantation
Wave- let
Non- Linier
Ensemble
High Res. Weather Climate Forecasts
Multi- regr.
Dissemination
PCA
CCA
Fishery
Statistical Downscaling
Energy Industry
AO- GCM
RCM
Dynamical Downscaling
Hidromet. Disaster Management
Numerical/Dynamical Models
Tourism
MM5, DARLAM, PRECIS, RegCM4, CCAM
6
Why we need ensemble forecast ?
  • To antcipate and to reduce the entity of climate
    itself (chaotic)
  • Ensemble forecast is a collection of several
    different climate models ? forcaster no need to
    worry which one of model that fitted for one
    particular location especially for his location
  • Various ensemble methods have been introduced
    such as a lagged ensemble forecasting method
    (Hoffman and Kalnay, 1983), breeding techniques
    (Toth and Kalnay, 1993), multimodel superensemble
    forecasts (Krishnamurti et al. 1999).
  • Dynamic models, because each different model has
    its own variability generated by internal
    dynamics (Straus and Shukla 2000) as a result,
    performance of a multi-model ensemble is
    generally more reliable/ skillful than that of a
    single model (Wandishin et al, 2001, Bright and
    Mullen 2001).

7
Data and Methods
8
Data
  • Rainfall Data from 12 location (Lampung, Java,
    South Kalimantan and South Sulawesi)
  • Period
  • 1981 2009

9
Methods
  • Prediction Techniques
  • Univariate Statistical Method
  • most common statistical (ARIMA),
  • Hybrid (ANFIS, Wavelet Transform)
  • Multivariate Statistical Method Kalman Filter

10
Methods contd.
  • Multi Model Ensemble
  • Simple Composite Method ? Simple composite of
    individual forecast with equal weighting

11
skill
  • Using Taylor Diagram
  • Correlation Coefficient
  • Root Mean Square Error
  • Standard Deviation

Hasanudin 2006
12
objectives
  • To investigate statistical model univariate and
    multivariate in selected location (12 location)
  • To provide tools for local forcaster to improve
    quality and accuracy of climate information
    especially in local scale

13
Results
14
Correlation Coefficient
  • Multivariate Technique
  • Univariate Technique

15
Correlation Coefficient contd.
  • Univariate
  • Multivariate

16
All Years
17
All Years
18
siNGLE YEAR
  • Hasanudin 2007
  • Hasanudin 2006

19
conclusion
  • The function of Multi model ensemble is a single
    model and it has a better skill
  • Correlation value is significant rising, marching
    to eastern part Indonesia, from Lampung, West
    Java, Central Java, East Java, South Kalimantan
    and South Sulawesi
  • MME improves accuracy of climate prediction
  • Multivariate Statistic technique is not always
    has a better prediction than univariate technique

20
Introduction ClimaTools v1.0
21
About ClimaTools v1.0 Software
  • The ClimaTools Software is an application for
    processing climate data using statistical tools
    whether univariate or multivariate techniques. It
    contains tools for data processing, analysis,
    prediction and verification.
  • The ClimaTools version 1.0 Software includes the
    following statistical packages
  • Data analysis single wavelet power spectrum and
    empirical orthogonal function (EOF).
  • Prediction Techniques Kalman Filter technique
    and Canonical Correlation Analysis (CCA).
  • Verification Methods Taylor Diagram and
    Receiver Operating Characteristic (ROC).

22
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23
Future plans
  • Spatial Climate Prediction embedded in ClimaTools
  • Integration Statistical Model HyBMG into
    ClimaTools
  • Optimalization of output multimodel ensemble by
    adjustment using BMA (Bayesian Model Averaging)
    (koreksi)

24
Thank You
Visit Us http//172.19.1.191 Contact puslitbang_at_bm
kg.go.id
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