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Statistical Analysis of Water Purification (Using Vinyl Chloride) Data

Author

Listed:
  • Aqsa Rafique
  • Naz Saud
  • Naila Amjad
  • Muhammad Ijaz
  • Fastel Chipepa
  • Mahmoud El-Morshedy
  • A. M. Bastos Pereira

Abstract

Water is important to live because of its impacts on food supply and the natural environment for all living things. Approximately 0.3 percent of water resources are usable in the world. Groundwater is the principal source of drinking water but the air, sea, land, rivers, lakes, ocean, and wells are also the essential sources of water. Many statistical models have been used to analyze the water data set so that to make predictions in a better way with limited resources of water. In this paper, a new approach is offered to model the data of water purification using vinyl chloride data. Various statistical properties of the proposed model have been derived. Maximum likelihood estimation is used to estimate the model parameters. Monte Carlo simulations are used to show the consistency of parameters. Using water purification using vinyl chloride, the suggested model application is studied and compared with that of other existing models such as EGF, GF, and F. The results showed that our model provides a much better fit while modeling this data set rather than EGF, GF, and F distributions.

Suggested Citation

  • Aqsa Rafique & Naz Saud & Naila Amjad & Muhammad Ijaz & Fastel Chipepa & Mahmoud El-Morshedy & A. M. Bastos Pereira, 2022. "Statistical Analysis of Water Purification (Using Vinyl Chloride) Data," Mathematical Problems in Engineering, Hindawi, vol. 2022, pages 1-11, June.
  • Handle: RePEc:hin:jnlmpe:4410615
    DOI: 10.1155/2022/4410615
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