Abstract
In this chapter, variations of Cohort Intelligence (CI) algorithm have been applied for the minimization of cutting forces in \({\text{x}},\;{\text{y }}\;{\text{and }}\;{\text{z }}\) directions induced in micro drilling of carbon fiber reinforced plastic (CFPR) composite materials for aerospace applications.
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Shastri, A., Nargundkar, A., Kulkarni, A.J. (2021). Optimization of Micro Drilling of CFRP Composites for Aerospace Applications. In: Socio-Inspired Optimization Methods for Advanced Manufacturing Processes. Springer Series in Advanced Manufacturing. Springer, Singapore. https://doi.org/10.1007/978-981-15-7797-0_8
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