Developed an expert system for analysis of covid-19 affected

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Shashank Mishra
Shivam Yadav
Mukul Aggarwal
Yashika Sharma
Rini Muzayanah

Abstract

The expert system solves problems within a specific area of the knowledge base. Prolog is a logical programming language which works on its knowledge base and effectively can be used to develop an expert system. Covid 19 is a pandemic deices and an expert system can be developed to diagnose this disease with the help of its symptoms that can be used as a knowledge base in Prolog. This expert system can make a fast diagnosis process for the covid 19 which is important to prevent the spread of the virus. Here we developed an expert system using prolog for diagnosis purposes. Like humans, these systems can get better with time as they gain more experience. Expert systems combine their experiences and expertise into a knowledge base that is then used by an inference or rules engine, a set of rules that the software employs, to apply to certain scenarios. Prolog is ideal for use with intelligent systems for a few reasons. Prolog can be viewed as a straightforward theorem prover or inference engine that derives from predefined rules. With the help of Prolog's built-in search and backtracking techniques, simple expert systems can be created.

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[1]
S. Mishra, S. Yadav, M. . Aggarwal, Y. Sharma, and R. Muzayanah, “Developed an expert system for analysis of covid-19 affected”, J. Soft Comput. Explor., vol. 4, no. 1, Jan. 2023.
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