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System Reduced by Using Residue of Pole in Pole Clustering Technique and Differential Method

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Computing Algorithms with Applications in Engineering

Part of the book series: Algorithms for Intelligent Systems ((AIS))

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Abstract

A mixed method for model order reduction of a linear, single-input single-output system is presented. The denominator of the original system is reduced by using the residue of a pole in modified pole clustering techniques. The differential method has been used for reducing the numerator of a higher order transfer function. Then the result has been compared with original and reduction techniques without a change of stability.

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Gupta, M.K., Bhasker, R. (2020). System Reduced by Using Residue of Pole in Pole Clustering Technique and Differential Method. In: Giri, V., Verma, N., Patel, R., Singh, V. (eds) Computing Algorithms with Applications in Engineering. Algorithms for Intelligent Systems. Springer, Singapore. https://doi.org/10.1007/978-981-15-2369-4_32

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