MODELING OF ANISOTROPIC SEMIVARIOGRAM USING WEIGHTED LEAST SQUARES AS PARAMETER ESTIMATION METHOD (CASE STUDY: COVID-19 CASES IN BANDUNG CITY)

Anisotropic semivariogram is a statistic used to measure spatial correlation of pair of locations that separated by certain distance and angle. Coronavirus Disease (COVID-19) is an infectious disease caused by the Severe Acute Respiratory Syndrome Coronavirus-2 (SARS-Cov-2). The data of COVID-19 dai...

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Main Author: Vidyaningtyas Sabila, Fatsa
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/65350
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:65350
spelling id-itb.:653502022-06-22T13:17:39ZMODELING OF ANISOTROPIC SEMIVARIOGRAM USING WEIGHTED LEAST SQUARES AS PARAMETER ESTIMATION METHOD (CASE STUDY: COVID-19 CASES IN BANDUNG CITY) Vidyaningtyas Sabila, Fatsa Indonesia Final Project COVID-19, geometry anisotropic semivariogram, jackknife kriging, ordinary kriging, weighted least squares, zonal anisotropic semivariogram. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/65350 Anisotropic semivariogram is a statistic used to measure spatial correlation of pair of locations that separated by certain distance and angle. Coronavirus Disease (COVID-19) is an infectious disease caused by the Severe Acute Respiratory Syndrome Coronavirus-2 (SARS-Cov-2). The data of COVID-19 daily cases is an example of data that can be modelled spatially. This research goals are to construct anisotropic semivariogram model based on COVID-19 confirmed Active and Death cases of 30 districts in Bandung City and using this model to predict unobserved locations by Ordinary Kriging interpolation method. Weighted Least Squares is used for parameter estimation method of semivariogram model. The data is modelled by using theoritical semivariogram models such as Gauss, Exponential, and Spherical. The direction sectors used in anisotropic semivariogram modelling are East-West, Northeast-Southwest, North-South, and Southeast-Northwest. Jackknife Kriging method is used to determine the best model of each data. The best model for Active data is Geometry Spherical and the best model for Death data is Zonal Spherical. Sum Squares Error (SSE) of Jackknife Kriging for Active model is 2310.3710, while SSE of Jackknife Kriging for the Death model is 15487.3222, larger than Active model. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Anisotropic semivariogram is a statistic used to measure spatial correlation of pair of locations that separated by certain distance and angle. Coronavirus Disease (COVID-19) is an infectious disease caused by the Severe Acute Respiratory Syndrome Coronavirus-2 (SARS-Cov-2). The data of COVID-19 daily cases is an example of data that can be modelled spatially. This research goals are to construct anisotropic semivariogram model based on COVID-19 confirmed Active and Death cases of 30 districts in Bandung City and using this model to predict unobserved locations by Ordinary Kriging interpolation method. Weighted Least Squares is used for parameter estimation method of semivariogram model. The data is modelled by using theoritical semivariogram models such as Gauss, Exponential, and Spherical. The direction sectors used in anisotropic semivariogram modelling are East-West, Northeast-Southwest, North-South, and Southeast-Northwest. Jackknife Kriging method is used to determine the best model of each data. The best model for Active data is Geometry Spherical and the best model for Death data is Zonal Spherical. Sum Squares Error (SSE) of Jackknife Kriging for Active model is 2310.3710, while SSE of Jackknife Kriging for the Death model is 15487.3222, larger than Active model.
format Final Project
author Vidyaningtyas Sabila, Fatsa
spellingShingle Vidyaningtyas Sabila, Fatsa
MODELING OF ANISOTROPIC SEMIVARIOGRAM USING WEIGHTED LEAST SQUARES AS PARAMETER ESTIMATION METHOD (CASE STUDY: COVID-19 CASES IN BANDUNG CITY)
author_facet Vidyaningtyas Sabila, Fatsa
author_sort Vidyaningtyas Sabila, Fatsa
title MODELING OF ANISOTROPIC SEMIVARIOGRAM USING WEIGHTED LEAST SQUARES AS PARAMETER ESTIMATION METHOD (CASE STUDY: COVID-19 CASES IN BANDUNG CITY)
title_short MODELING OF ANISOTROPIC SEMIVARIOGRAM USING WEIGHTED LEAST SQUARES AS PARAMETER ESTIMATION METHOD (CASE STUDY: COVID-19 CASES IN BANDUNG CITY)
title_full MODELING OF ANISOTROPIC SEMIVARIOGRAM USING WEIGHTED LEAST SQUARES AS PARAMETER ESTIMATION METHOD (CASE STUDY: COVID-19 CASES IN BANDUNG CITY)
title_fullStr MODELING OF ANISOTROPIC SEMIVARIOGRAM USING WEIGHTED LEAST SQUARES AS PARAMETER ESTIMATION METHOD (CASE STUDY: COVID-19 CASES IN BANDUNG CITY)
title_full_unstemmed MODELING OF ANISOTROPIC SEMIVARIOGRAM USING WEIGHTED LEAST SQUARES AS PARAMETER ESTIMATION METHOD (CASE STUDY: COVID-19 CASES IN BANDUNG CITY)
title_sort modeling of anisotropic semivariogram using weighted least squares as parameter estimation method (case study: covid-19 cases in bandung city)
url https://digilib.itb.ac.id/gdl/view/65350
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