会议论文详细信息
2nd Annual Applied Science and Engineering Conference
Accuration of Time Series and Spatial Interpolation Method for Prediction of Precipitation Distribution on the Geographical Information System
工业技术;自然科学
Prasetyo, S.Y.J.^1 ; Hartomo, K.D.^1
Study Centre SIMITRO, Informatic Engineering Satya Wacana Christian University, Salatiga, Indonesia^1
关键词: Analytical methodology;    Application architecture;    Inverse distance weight;    Precipitation distribution;    Scientific contributions;    Spatial interpolation;    Spatial interpolation method;    Time series prediction;   
Others  :  https://iopscience.iop.org/article/10.1088/1757-899X/288/1/012140/pdf
DOI  :  10.1088/1757-899X/288/1/012140
来源: IOP
PDF
【 摘 要 】

The Spatial Plan of the Province of Central Java 2009-2029 identifies that most regencies or cities in Central Java Province are very vulnerable to landslide disaster. The data are also supported by other data from Indonesian Disaster Risk Index (In Indonesia called Indeks Risiko Bencana Indonesia) 2013 that suggest that some areas in Central Java Province exhibit a high risk of natural disasters. This research aims to develop an application architecture and analysis methodology in GIS to predict and to map rainfall distribution. We propose our GIS architectural application of "Multiplatform Architectural Spatiotemporal" and data analysis methods of "Triple Exponential Smoothing" and "Spatial Interpolation" as our significant scientific contribution. This research consists of 2 (two) parts, namely attribute data prediction using TES method and spatial data prediction using Inverse Distance Weight (IDW) method. We conduct our research in 19 subdistricts in the Boyolali Regency, Central Java Province, Indonesia. Our main research data is the biweekly rainfall data in 2000-2016 Climatology, Meteorology, and Geophysics Agency (In Indonesia called Badan Meteorologi, Klimatologi, dan Geofisika) of Central Java Province and Laboratory of Plant Disease Observations Region V Surakarta, Central Java. The application architecture and analytical methodology of "Multiplatform Architectural Spatiotemporal" and spatial data analysis methodology of "Triple Exponential Smoothing" and "Spatial Interpolation" can be developed as a GIS application framework of rainfall distribution for various applied fields. The comparison between the TES and IDW methods show that relative to time series prediction, spatial interpolation exhibit values that are approaching actual. Spatial interpolation is closer to actual data because computed values are the rainfall data of the nearest location or the neighbour of sample values. However, the IDW's main weakness is that some area might exhibit the rainfall value of 0. The representation of 0 in the spatial interpolation is mainly caused by the absence of rainfall data in the nearest sample point or too far distance that produces smaller weight.

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