Bibliographic Details
| Title: |
Assessment of the Operation Process of Wind Power Plant's Equipment with the Use of an Artificial Neural Network. |
| Authors: |
Duer, Stanisław |
| Source: |
Energies (19961073); 5/15/2020, Vol. 13 Issue 10, p2437, 1p, 4 Diagrams, 4 Graphs |
| Subject Terms: |
ARTIFICIAL neural networks, COMPUTER performance, WIND power plants, SIMULATION software |
| Abstract: |
In this article, a description is presented of simulation investigations concerning the quality of regeneration effects of a technical object in an intelligent system with an artificial neural network. All repairable technical objects used are subject to a cyclic (random) process of damages and repairs in the time of their operation. A reduction of the parameters connected with the use of objects is the fundamental feature of this process. This results in the need of a regeneration (technical maintenance) of this object. Regeneration of an object in an intelligent system with an artificial neural network constitutes an effective approach to this problem. The problem of qualitative assessments of a maintenance process organized in this manner is the focus of this article. For this purpose, a program of simulation investigations is presented. The research program consists of a description of the models of the operation processes of technical objects, determination of the input data to the investigations that are the quantities of the operation time of a technical object being the summary duration time of the regeneration (repairs) and the use of objects and the determination of the indexes of a qualitative assessment of the regeneration of an object in the operation process. The results of the study were justified with an example of simulation investigations concerning the effects of the operation process with the regeneration of a technical object in an intelligent system with an artificial neural network. [ABSTRACT FROM AUTHOR] |
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| Database: |
Complementary Index |