Optimal design of multiple accelerated life testing for generalized half-normal distribution under type-I censoring

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Abstract

This article uses three optimality criteria to conclude the optimal allocation of multiple accelerated life testing for the generalized half-normal model under type-I censoring. We derive the maximum likelihood estimates of the parameters and their Fisher information matrix. Numerical and simulations examples are used to demonstrate the effectiveness of the optimal allocation. A sensitivity analysis of the optimal allocation to misspecification of the model parameters is conducted.

Keywords

Accelerated life testing
Optimal design
Fisher information matrix
Generalized half-normal distribution
Type-I censoring
Simulation study

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