FUZZY INFERENCE MODEL OF CARBON DIOXIDE CONSUMPTION FOR CALCIUM CARBONATES PRODUCTION

Main Article Content

ZAHID H. KHOKHAR

Abstract

Experiments performed of calcium carbonate production by passing carbon dioxide through within calcium hydroxide mixture prepared in deionized water are considered at low to high temperature each at a time. In this paper, a built fuzzy interface model of inputs pH, time and temperature with output reaction conversion is constructed. Considering a constant temperature, fuzzy inference of carbon dioxide consumption is orderly inference. Various membership functions, each at a time, are placed to find representation with the process output. Broader shoulder membership function response is found closing.

Keywords:
Gas, carbon dioxide, calcium carbonate, fuzzy interface modeling, engineering; control.

Article Details

How to Cite
KHOKHAR, Z. H. (2019). FUZZY INFERENCE MODEL OF CARBON DIOXIDE CONSUMPTION FOR CALCIUM CARBONATES PRODUCTION. Journal of Basic and Applied Research International, 25(6), 373–375. Retrieved from http://ikprress.org/index.php/JOBARI/article/view/4850
Section
Short Communication

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