Lecture

Stability of Newmark-B Method

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Description

This lecture covers the stability analysis of the Newmark-B method, comparing the implicit and explicit schemes. It discusses the Courant-Friedrichs-Lewy condition, critical time step, and implementation details for time integration with external forces.

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