Prediction analysis of the degradation and the service life building components in artificial method neural network and ISO factor 15686-2

The research study reported in this paper aims to combine the Artificial Neural Networks with ISO 15686 Buildings and constructed assets - Service life planning, a framework-based approach to offering a more reliable deterioration forecasting more reliable for building. This paper discusses the exis...

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Main Authors: Aisyah Siti, Aminullah Akhmad, Muslikh H.
Format: Article
Language:English
Published: EDP Sciences 2019-01-01
Series:MATEC Web of Conferences
Online Access:https://doi.org/10.1051/matecconf/201925803017
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spelling doaj-3802d64ad4d848eeb7527214f71f38f12021-02-02T08:46:48ZengEDP SciencesMATEC Web of Conferences2261-236X2019-01-012580301710.1051/matecconf/201925803017matecconf_scescm2019_03017Prediction analysis of the degradation and the service life building components in artificial method neural network and ISO factor 15686-2Aisyah SitiAminullah AkhmadMuslikh H.The research study reported in this paper aims to combine the Artificial Neural Networks with ISO 15686 Buildings and constructed assets - Service life planning, a framework-based approach to offering a more reliable deterioration forecasting more reliable for building. This paper discusses the existing data and develop a close relationship definition between factors affecting the condition of the service life of the building, the value of building condition and determine the level of degradation of the building component, also predicted the age of the building components in accordance with a specific time variables. Data examination conducted in this research is building condition data of student dormitory at the Universitas Gadjah Mada, the data will be used to calibrate the model of damage to consider a number of factors that influence. To help demonstrate the concept, factors affecting the decline is considered in the analysis of the design level, the level of implementation of the work, the indoor environment, the external environment, the level of care and conditions of use. Predictive analysis with artificial methods of neural network (ANN) with ISO factor input variables and factors age of the building components and the severity level of degradation of the building components (Sw) as output, this will generate a calculation formula that shows the effect of each variable input to output. Predictive analysis carried out with the reverse approach in which after calculation formula obtained by ANN method, then the next step is to find the value of the variable age of the building components according to the value of degradation that has been determined.https://doi.org/10.1051/matecconf/201925803017
collection DOAJ
language English
format Article
sources DOAJ
author Aisyah Siti
Aminullah Akhmad
Muslikh H.
spellingShingle Aisyah Siti
Aminullah Akhmad
Muslikh H.
Prediction analysis of the degradation and the service life building components in artificial method neural network and ISO factor 15686-2
MATEC Web of Conferences
author_facet Aisyah Siti
Aminullah Akhmad
Muslikh H.
author_sort Aisyah Siti
title Prediction analysis of the degradation and the service life building components in artificial method neural network and ISO factor 15686-2
title_short Prediction analysis of the degradation and the service life building components in artificial method neural network and ISO factor 15686-2
title_full Prediction analysis of the degradation and the service life building components in artificial method neural network and ISO factor 15686-2
title_fullStr Prediction analysis of the degradation and the service life building components in artificial method neural network and ISO factor 15686-2
title_full_unstemmed Prediction analysis of the degradation and the service life building components in artificial method neural network and ISO factor 15686-2
title_sort prediction analysis of the degradation and the service life building components in artificial method neural network and iso factor 15686-2
publisher EDP Sciences
series MATEC Web of Conferences
issn 2261-236X
publishDate 2019-01-01
description The research study reported in this paper aims to combine the Artificial Neural Networks with ISO 15686 Buildings and constructed assets - Service life planning, a framework-based approach to offering a more reliable deterioration forecasting more reliable for building. This paper discusses the existing data and develop a close relationship definition between factors affecting the condition of the service life of the building, the value of building condition and determine the level of degradation of the building component, also predicted the age of the building components in accordance with a specific time variables. Data examination conducted in this research is building condition data of student dormitory at the Universitas Gadjah Mada, the data will be used to calibrate the model of damage to consider a number of factors that influence. To help demonstrate the concept, factors affecting the decline is considered in the analysis of the design level, the level of implementation of the work, the indoor environment, the external environment, the level of care and conditions of use. Predictive analysis with artificial methods of neural network (ANN) with ISO factor input variables and factors age of the building components and the severity level of degradation of the building components (Sw) as output, this will generate a calculation formula that shows the effect of each variable input to output. Predictive analysis carried out with the reverse approach in which after calculation formula obtained by ANN method, then the next step is to find the value of the variable age of the building components according to the value of degradation that has been determined.
url https://doi.org/10.1051/matecconf/201925803017
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