Optimization study on competence of power plant using gas/steam fluid material parameters by machine learning techniques

Revathy, G. and Zuhair Affan, Syed and Suriya, M. and Sathish Kumar, P. and Rajendran, V. (2021) Optimization study on competence of power plant using gas/steam fluid material parameters by machine learning techniques. Materials Today: Proceedings, 37. pp. 1713-1720. ISSN 22147853

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Abstract

The power plant significance is to envisage the complete load electric power production of a permanent
load on a power supply to increase the yield from the accessible megawatts hours (MW hrs). This power
plant productivity may rely upon conservation variables like pressure, temperature and humidity. Here,
the preliminary way to increase overall efficiency can be precise by the combination of two thermody
namic cycles powered by gas and steam that reduces fuel costs also. In this proposal, machine learning
techniques such as principal component analysis for reducing dimensions in the dataset where data
points are plotted and K-Means, agglomerative for clustering method to predict the cluster for each data
point, finally calculating the cluster center also. By statistical analysis, statistics of complete dataset can
be done through features such as ambient pressure, relative humidity, ambient variable temperature, exhaust vacuum, power output. The foremost aspire of power plant is to accomplish overall efficiency carried through each and every components comes under power plant. These tremendous precise fore casts produce an upgrade production inventory that overestimates effectiveness and productivity of
power station

Item Type: Article
Subjects: Electronics and Communication Engineering > Fiber-Optic Communication
Divisions: Electronics and Communication Engineering
Depositing User: Mr IR Admin
Date Deposited: 10 Sep 2024 09:42
Last Modified: 10 Sep 2024 09:42
URI: https://ir.vistas.ac.in/id/eprint/5442

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