D 2023

ERP SYSTÉM JAKO ZDROJ DAT PRO PREDIKCE PROVOZNÍCH UKAZATELŮ ZA VYUŽITÍ METOD UMĚLÉ INTELIGENCE

BARČÁK, Tomáš, Zdeněk FRANĚK, Jan FAMFULÍK and Michal RICHTÁŘ

Basic information

Original name

ERP SYSTÉM JAKO ZDROJ DAT PRO PREDIKCE PROVOZNÍCH UKAZATELŮ ZA VYUŽITÍ METOD UMĚLÉ INTELIGENCE

Authors

BARČÁK, Tomáš (203 Czech Republic, guarantor, belonging to the institution), Zdeněk FRANĚK (203 Czech Republic, belonging to the institution), Jan FAMFULÍK (203 Czech Republic) and Michal RICHTÁŘ (203 Czech Republic)

Edition

Karviná, 4th International conference on Decision making for Small and Medium-Sized Enterprises. Conference proceedings. p. 11-17, 264 pp. 2023

Publisher

Silesian University in Opava, School of Business Administration in Karviná

Other information

Language

English

Type of outcome

Stať ve sborníku

Field of Study

10200 1.2 Computer and information sciences

Country of publisher

Czech Republic

Confidentiality degree

není předmětem státního či obchodního tajemství

Publication form

electronic version available online

References:

RIV identification code

RIV/47813059:19520/23:A0000418

Organization unit

School of Business Administration in Karvina

ISBN

978-80-7510-554-7

Keywords in English

Clouds; Enterprise Resource Planning; Neural Networks; Operational Indicator; Weibull Distribution;
Změněno: 1/4/2024 21:29, Miroslava Snopková

Abstract

V originále

The article shows an overview of the standard functions of the ERP (Enterprise Resource Planning) information system in manufacturing companies and deals with the ERP system data for the optimization of reliability, management and product quality process. A comprehensive approach to data collection, processing and their storage in the ERP system (cloud storage, data warehouses) is necessary for successful management of the production process. By using advanced statistical and artificial intelligence methods (neural networks, trees, logistic regression), it is possible to analyze the data and obtain additional knowledge and dependencies in the data. The application part of the article presents the prediction of reliability indicators. From the ERP system database, the data set of a time to failure has been obtained. This data for the creation of a parametric model, based on Weibull distribution, has been used. The article demonstrates the application of artificial neural networks for the prediction of reliability indicators, and a parametric model based on the Weibull distribution has been created from the input data.