Yakın Doğu Üniversitesi
Büyük Kütüphane
Adres
Yakın Doğu Bulvarı, Lefkoşa, KKTC
İletişim
library@neu.edu.tr · +90 (392) 223 64 64
Google Jackets'tan alınan resim
OpenLibrary'den resim

Dynamic data mining technique for rules extraction in a process of battery charging. R. A. Aliev, R. R. Aliev, B. Guirimov, K.Uyar.

Yazar: Materyal türü: MakaleMakaleDil: İngilizce Analiz: Analitikleri gösterYayın ayrıntıları:2008. Elsevier, Amsterdam :ISSN:
  • 1568-4946
Konu(lar): LOC sınıflandırması:
  • QA76.9
Çevrimiçi kaynaklar: İçindekiler: Dynamic data mining technique for rules extraction in a process of battery charging JUN 2008, Vol 8 Issue 3, p1252-1258Özet: Battery charging controllers design and application is a growing industry direction. Fast and efficient charging of battery packs is a problem which is difficult and often expensive to solve using conventional techniques. The majority of existing works on intelligent charging systems are based on expert knowledge and heuristics. Not all features of the desired charging behavior can be attained by the hard- wired logic implemented by expert generated rules. Because the battery charging is a highly dynamic process and the chemical technology a battery uses varies significantly for different battery types, data mining technique can be of real importance for extracting the charging rules from the large databases, especially when the charging logic is to be continuously changed during the life of the battery dependent on the type and characteristics of the battery and utilization conditions. In this paper we use soft computing-based data mining technique for extraction of control rules for effective and fast battery charging process. The obtained rules were used for NiCd battery charging. The comparative performance evaluation was done among the existing charging control methods and the proposed system, which demonstrated a significant increase of performance (minimum charging time and minimum overheating) using the soft computing-based approach. (C) 2007 Elsevier B.V. All rights reserved.
Bu kütüphanenin etiketleri: Kütüphanedeki eser adı için etiket yok. Etiket eklemek için oturumu açın.
Yıldız derecelendirmeleri
    Ortalama puan: 0.0 (0 oy)
Mevcut
Materyal türü Geçerli Kütüphane Yer numarası Durum Barkod
Online Electronic Document NEU Grand Library Online electronic QA76.9 .D96 2008 (Rafa gözat(Aşağıda açılır)) Ödünç verilmez EOL-1734

Battery charging controllers design and application is a growing industry direction. Fast and efficient charging of battery packs is a problem which is difficult and often expensive to solve using conventional techniques. The majority of existing works on intelligent charging systems are based on expert knowledge and heuristics. Not all features of the desired charging behavior can be attained by the hard- wired logic implemented by expert generated rules. Because the battery charging is a highly dynamic process and the chemical technology a battery uses varies significantly for different battery types, data mining technique can be of real importance for extracting the charging rules from the large databases, especially when the charging logic is to be continuously changed during the life of the battery dependent on the type and characteristics of the battery and utilization conditions. In this paper we use soft computing-based data mining technique for extraction of control rules for effective and fast battery charging process. The obtained rules were used for NiCd battery charging. The comparative performance evaluation was done among the existing charging control methods and the proposed system, which demonstrated a significant increase of performance (minimum charging time and minimum overheating) using the soft computing-based approach. (C) 2007 Elsevier B.V. All rights reserved.

Bu materyal hakkında henüz bir yorum yapılmamış.

bir yorum göndermek için.