Journal of Computing and Natural Science


The Characteristics, Methods, Trends and Applications of Intelligent Systems



Journal of Computing and Natural Science

Received On : 20 August 2022

Revised On : 16 September 2022

Accepted On : 28 November 2022

Published On : 05 April 2023

Volume 03, Issue 02

Pages : 091-102


Abstract


Interaction between intelligent systems and their human operators in dynamic, shifting, and unpredictable natural and social settings is novel area of study within the topic of intelligent computing systems. Robots of the past were not effective at making decisions on their own; instead, they routinely carried out the same set of actions in the same situations because they believed that the world was predictable. Nowadays, decisions may be made quickly and effectively by intelligent systems in practical settings. Modern intelligent systems include characteristics such as intelligent search and optimization, artificial evolution, and autonomous decision support that are unavailable in a traditional information system. An in-depth analysis of the methods used to create intelligent systems is presented in this paper. These techniques are often categorized as either artificial intelligence or soft computing. Some examples include the use of a neural network, fuzzy logic, a hybrid system, or a swarm of intelligent insects. In addition, this article gives an overview of two applications of intelligent systems and technologies such as Geothermal Heat Pumps (GHPs) and Heat exchangers (HEXs).


Keywords


Intelligent System, Intelligent Agent, Traditional Computer Systems, Neural Network, Fuzzy Logic.


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Cite this article


Arulmurugan Ramu and Anandakumar Haldorai, “The Characteristics, Methods, Trends and Applications of Intelligent Systems”, Journal of Computing and Natural Science, vol.3, no.2, pp. 091-102, April 2023. doi: 10.53759/181X/JCNS202303009.


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© 2023 Arulmurugan Ramu and Anandakumar Haldorai. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.