PATH SMOOTHING WITH SUPPORT VECTOR REGRESSION

<p align="justify">One of moving objects problems is the incomplete data acquired by geo-tracking technology, this phenomenon can be found in aircraft tracking with tracking loss reach out 5 minutes, it needs path smoothing process to complete the data. General solution of path smoot...

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Main Author: Richasdy - NIM: 23514073, Donni
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/21821
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:21821
spelling id-itb.:218212017-10-25T10:01:41ZPATH SMOOTHING WITH SUPPORT VECTOR REGRESSION Richasdy - NIM: 23514073, Donni Indonesia Theses INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/21821 <p align="justify">One of moving objects problems is the incomplete data acquired by geo-tracking technology, this phenomenon can be found in aircraft tracking with tracking loss reach out 5 minutes, it needs path smoothing process to complete the data. General solution of path smoothing is using physics of motion, while this research performs path smoothing process using machine learning algorithm that is support vector regression. Support Vector Regression will predict at intervals of data lost from aircraft tracking data. The prediction process will be done after the training process by optimizing the SVR configuration parameters such as kernel, common, gamma, epsilon and degree. Each SVR parameter will be tested in a closed experiment to see the effect of parameters on prediction results. To obtain more representative accuration semantic, we use combination of mean absolute error (MAE) and mean absolute percentage error (MAPE) in calculating error. MAE will explain the average value of error that occurs, while MAPE will explain the error persetase to the data. In the experiment, the best error value MAE 0.52 and MAPE 2.07, which means that the error data ± 0.52 that is equal to 2.07% of the overall data value <p align="justify"><br /> 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 <p align="justify">One of moving objects problems is the incomplete data acquired by geo-tracking technology, this phenomenon can be found in aircraft tracking with tracking loss reach out 5 minutes, it needs path smoothing process to complete the data. General solution of path smoothing is using physics of motion, while this research performs path smoothing process using machine learning algorithm that is support vector regression. Support Vector Regression will predict at intervals of data lost from aircraft tracking data. The prediction process will be done after the training process by optimizing the SVR configuration parameters such as kernel, common, gamma, epsilon and degree. Each SVR parameter will be tested in a closed experiment to see the effect of parameters on prediction results. To obtain more representative accuration semantic, we use combination of mean absolute error (MAE) and mean absolute percentage error (MAPE) in calculating error. MAE will explain the average value of error that occurs, while MAPE will explain the error persetase to the data. In the experiment, the best error value MAE 0.52 and MAPE 2.07, which means that the error data ± 0.52 that is equal to 2.07% of the overall data value <p align="justify"><br />
format Theses
author Richasdy - NIM: 23514073, Donni
spellingShingle Richasdy - NIM: 23514073, Donni
PATH SMOOTHING WITH SUPPORT VECTOR REGRESSION
author_facet Richasdy - NIM: 23514073, Donni
author_sort Richasdy - NIM: 23514073, Donni
title PATH SMOOTHING WITH SUPPORT VECTOR REGRESSION
title_short PATH SMOOTHING WITH SUPPORT VECTOR REGRESSION
title_full PATH SMOOTHING WITH SUPPORT VECTOR REGRESSION
title_fullStr PATH SMOOTHING WITH SUPPORT VECTOR REGRESSION
title_full_unstemmed PATH SMOOTHING WITH SUPPORT VECTOR REGRESSION
title_sort path smoothing with support vector regression
url https://digilib.itb.ac.id/gdl/view/21821
_version_ 1822019610841448448