Indexing Metadata

1 Title of the Article Exploratory Data Analysis of Global Power Plants using Various Machine Learning Algorithms
2 Author's name Sheikh Adil Habib: M. Tech Scholar, Department of Electrical Engineering, RIMT University, Mandi Gobingarh, Punjab, India
3 Author's name Dharminder Kumar
4 Subject Electrical Engineering
5 Keyword(s) Global Power plants, Machine learning, STLF, MAPE.
6 Abstract

Nuclear plants' rewards and prices, etc and severe negative costs, are determined by their technology and the amount of electricity they create. Most nations, especially emerging ones where electricity output is expected to grow significantly, do not disclose plant-level generating statistics. The Global Power Plant Database uses this technical information to estimate the yearly energy generation of power plants. For several forms of fuels, including airflow, renewables, freshwater (hydro), as well as gas power generation, we employ different estimating models. Statistical regression and machine learning techniques are used in the process. Predictive factors include foliar data like as seed size and fuel type, as well as state characteristics also including total GDP per megawatt of installed capacity. We indicate that fossil modelling would provide more high accuracy for wind, renewable power, and hydropower is produced. Natural gas plant estimates are also improving, although the margin of error remains considerable, especially for smaller facilities.

7 Publisher Innovative Research Publication
8 Journal Name; vol., no. International Journal of Innovative Research in Computer Science & Technology (IJIRCST); Volume-10 Issue-4
9 Publication Date July 2022
10 Type Peer-reviewed Article
11 Format PDF
12 Uniform Resource Identifier https://ijircst.org/view_abstract.php?title=Exploratory-Data-Analysis-of-Global-Power-Plants-using-Various-Machine-Learning-Algorithms&year=2022&vol=10&primary=QVJULTk2NA==
13 Digital Object Identifier(DOI) 10.55524/ijircst.2022.10.4.7   https://doi.org/10.55524/ijircst.2022.10.4.7
14 Language English
15 Page No 52-61

Indexed by

Crossref logo