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IJSTR >> Volume 8 - Issue 7, July 2019 Edition



International Journal of Scientific & Technology Research  
International Journal of Scientific & Technology Research

Website: http://www.ijstr.org

ISSN 2277-8616



Multi Objective Optimization Of Two Stage Operational Amplifiers Using Antlion Optimization

[Full Text]

 

AUTHOR(S)

Telugu Maddileti, S. Govindarajulu, S. Chandra Mohan Reddy

 

KEYWORDS

Multi-Objective Optimization, Simulation based technique, Multi Objective Ant lions Optimization, Two Stage CMOS Op- amp, Power Dissipation, Device Dimensions

 

ABSTRACT

Major Prominent strategy involved in the formulating of assorted category circuits will be the requirement of competent along with involuntary method of formulation.Upsurging difficulty involved in the formulation analog circuits requires appropriate handling utilizing the strategies for difficulty existed in formulation of integrated circuits design requiresfor dealing by means of suitablestrategies for determining the best solutions along with precise explanation with respect toprototypes of formulation for the purpose of accomplishment of stipulated constrains in the formulation assuring nil faults. Characteristic issues existed in the formulation of integrated circuits that might be analog in nature will be involved in difficulty in processing along with the need of managing the many contradictory, along withpurposescontaining sturdyunproportionally inter relationship. The work establishes the strategy in identification of dimensions of equipmentwith respect to integrated circuits that might be analog in nature that adopts the strategy of determining the best solutions with multiple amount of motivations. For the purpose of assessing the suitability with respect to stipulations provided in the formulation of the circuit utilization of meta- heuristic strategy is established. Development of issue into complex one while motivations might be contradictory with respect to one another which is involved in providing the best solution will be dissimilarwith respect to additional. For determining the solutions to mentioned may or may not contain the restrictions, the mentioned strategies involved in provision of compensatory solutions, famously called to be Pareto-optimal solutions. Here utilization of multi-objective ant lion optimization is suggested for designing two stage Operational amplifier which produces better results than single objective Chaotic Grey wolf Algorithm along with Salp Swarm Optimization Algorithm.

 

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