PREDIKSI CUACA MENGGUNAKAN METODE CASE BASED REASONING DAN ADAPTIVE NEURO FUZZY INFERENCE SYSTEM
Weather is one of the nature elements that can influence decision making in human's life. Based on that issue, the author wants to make an application that is able to predict weather with good accuracy. The application is a weather forecasting system, using computer technology that implemen...
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Petra Christian University
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doaj-ec9f2231e0194d9bb2798338234840e42020-11-25T02:29:36ZengPetra Christian UniversityJurnal Informatika1411-01051411-01052014-01-011229095PREDIKSI CUACA MENGGUNAKAN METODE CASE BASED REASONING DAN ADAPTIVE NEURO FUZZY INFERENCE SYSTEMRia Chaniago0The Houw Liong1Ken Ratri Retno Wardani2 Departemen Teknik Informatika Institut Teknologi Harapan Bangsa <br />Jalan Dipatiukur No. 83–84 Bandung Departemen Teknik Informatika Institut Teknologi Harapan Bangsa <br />Jalan Dipatiukur No. 83–84 Bandung Departemen Teknik Informatika Institut Teknologi Harapan Bangsa <br />Jalan Dipatiukur No. 83–84 Bandung Weather is one of the nature elements that can influence decision making in human's life. Based on that issue, the author wants to make an application that is able to predict weather with good accuracy. The application is a weather forecasting system, using computer technology that implements expert system. The methods used are Adaptive Neuro Fuzzy Inference System (ANFIS) and Case Based Reasoning (CBR), and a combination of both methods will applied to the system. The system also has learning methods like Backpropagation Error (BPE) and Recursive Least Error (RLSE), to increase its accuracy. Clustering and data cleaning also done inside the system, as it needed by forecasting process to achieve a good result. K-Means is the clustering algorithm, while Box and Whisker Plot is the algorithm for data cleaning. The result from this project is to create a weather forecasting system with high accuracy. http://puslit2.petra.ac.id/ejournal/index.php/inf/article/view/19145Expert SystemWeather ForecastingAdaptive Neuro Fuzzy Inferance SystemCase Based ReasoningBackpropagation ErrorRecursive Least Square EstimatorK-MeansBox and Whisker plot. |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ria Chaniago The Houw Liong Ken Ratri Retno Wardani |
spellingShingle |
Ria Chaniago The Houw Liong Ken Ratri Retno Wardani PREDIKSI CUACA MENGGUNAKAN METODE CASE BASED REASONING DAN ADAPTIVE NEURO FUZZY INFERENCE SYSTEM Jurnal Informatika Expert System Weather Forecasting Adaptive Neuro Fuzzy Inferance System Case Based Reasoning Backpropagation Error Recursive Least Square Estimator K-Means Box and Whisker plot. |
author_facet |
Ria Chaniago The Houw Liong Ken Ratri Retno Wardani |
author_sort |
Ria Chaniago |
title |
PREDIKSI CUACA MENGGUNAKAN METODE CASE BASED REASONING DAN ADAPTIVE NEURO FUZZY INFERENCE SYSTEM |
title_short |
PREDIKSI CUACA MENGGUNAKAN METODE CASE BASED REASONING DAN ADAPTIVE NEURO FUZZY INFERENCE SYSTEM |
title_full |
PREDIKSI CUACA MENGGUNAKAN METODE CASE BASED REASONING DAN ADAPTIVE NEURO FUZZY INFERENCE SYSTEM |
title_fullStr |
PREDIKSI CUACA MENGGUNAKAN METODE CASE BASED REASONING DAN ADAPTIVE NEURO FUZZY INFERENCE SYSTEM |
title_full_unstemmed |
PREDIKSI CUACA MENGGUNAKAN METODE CASE BASED REASONING DAN ADAPTIVE NEURO FUZZY INFERENCE SYSTEM |
title_sort |
prediksi cuaca menggunakan metode case based reasoning dan adaptive neuro fuzzy inference system |
publisher |
Petra Christian University |
series |
Jurnal Informatika |
issn |
1411-0105 1411-0105 |
publishDate |
2014-01-01 |
description |
Weather is one of the nature elements that can influence decision making in human's life. Based on that issue, the author wants to make an application that is able to predict weather with good accuracy. The application is a weather forecasting system, using computer technology that implements expert system. The methods used are Adaptive Neuro Fuzzy Inference System (ANFIS) and Case Based Reasoning (CBR), and a combination of both methods will applied to the system. The system also has learning methods like Backpropagation Error (BPE) and Recursive Least Error (RLSE), to increase its accuracy. Clustering and data cleaning also done inside the system, as it needed by forecasting process to achieve a good result. K-Means is the clustering algorithm, while Box and Whisker Plot is the algorithm for data cleaning. The result from this project is to create a weather forecasting system with high accuracy.
|
topic |
Expert System Weather Forecasting Adaptive Neuro Fuzzy Inferance System Case Based Reasoning Backpropagation Error Recursive Least Square Estimator K-Means Box and Whisker plot. |
url |
http://puslit2.petra.ac.id/ejournal/index.php/inf/article/view/19145 |
work_keys_str_mv |
AT riachaniago prediksicuacamenggunakanmetodecasebasedreasoningdanadaptiveneurofuzzyinferencesystem AT thehouwliong prediksicuacamenggunakanmetodecasebasedreasoningdanadaptiveneurofuzzyinferencesystem AT kenratriretnowardani prediksicuacamenggunakanmetodecasebasedreasoningdanadaptiveneurofuzzyinferencesystem |
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1724832109591265280 |