Anda belum login :: 17 Apr 2025 06:28 WIB
Home
|
Logon
Hidden
»
Administration
»
Collection Detail
Detail
Cognitive artificial-intelligence for doernenburg dissolved gas analysis interpretation (article of Jurnal TELKOMNIKA Telecommunication, Computing, Electronics and Control Vol.17 no.1 February 2019)
Bibliografi
Author:
Bachri, Karel Octavianus
;
Khayam, Umar
;
Soedjarno, Bambang Anggoro
;
Sumari, Arwin Datumaya Wahyudi
;
Ahmad, Adang Suwandi
Topik:
cognitive artificial-intelligence
;
DGA interpretation
;
information fusion
;
knowledge growing system
;
JABFUNG-FT-KOB-2023-02
Bahasa:
(EN )
Penerbit:
Universitas Ahmad Dahlan
Tempat Terbit:
Yogyakarta
Tahun Terbit:
2019
Jenis:
Article - diterbitkan di jurnal ilmiah nasional
Fulltext:
11612-30360-1-PB.pdf
(505.79KB;
1 download
)
Abstract
This paper proposes Cognitive Artificial Intelligence (CAI) method for Dissolved Gas Analysis (DGA) interpretation adopting Doernenburg Ratio method. CAI works based on Knowledge Growing System (KGS) principle and is capable of growing its own knowledge. Data are collected from sensors, but they are not the information itself, and thus, data needs to be processed to extract information. Multiple information are then fused in order to obtain new information with Degree of Certainty (DoC). The new information is used to identify faults occurred at a single observation. The proposed method is tested using the previously published dataset and compared with Fuzzy Inference System (FIS) and Artificial Neural Network (ANN). Experiment shows CAI implementation on Doernenburg Ratio performs 115 out of 117 accurate identification, followed by Fuzzy Inference System 94.02% and ANN 78.6%. CAI works well even with small amount of data and does not require trainings.
Opini Anda
Klik untuk menuliskan opini Anda tentang koleksi ini!
Lihat Sejarah Pengadaan
Konversi Metadata
Kembali
Process time: 0.078125 second(s)