"background": "The reliability assessment of industrial machinery fleets in developing economies is often hampered by sparse, heterogeneous, and censored failure data, leading to imprecise maintenance planning and resource allocation. ", "purpose and objectives": "This paper develops and validates a novel Bayesian hierarchical modelling framework to robustly estimate the reliability of heterogeneous machinery fleets operating in Tanzania, aiming to provide a methodology for data-scarce contexts. ", "methodology": "A Bayesian hierarchical Weibull model is proposed, explicitly modelling unit-to-unit variability within fleets. The core reliability model for the i-th unit is Ri (t) = \ (- (t/\) ^{\), where parameters \ and \ᵢ are drawn from fleet-wide hyper-distributions. Inference was performed using Hamiltonian Monte Carlo, with data from multiple industrial sites. ", "findings": "The model successfully pooled information across fleets, significantly reducing uncertainty in reliability estimates for individual units. For a critical fleet, the 95% credible interval for mean time between failures narrowed from 120, 450 hours under a non-hierarchical model to 210, 310 hours, demonstrating enhanced precision. Operational environment was identified as the dominant factor influencing the shape parameter. ", "conclusion": "The Bayesian hierarchical approach provides a statistically rigorous and practically useful framework for reliability assessment where data are limited and heterogeneous, offering superior inference compared to conventional methods. ", "recommendations": "Industry practitioners should adopt hierarchical modelling for fleet reliability analysis to enable data-sharing across assets. Further research should integrate covariate data, such as maintenance logs and operator skill, directly into the hierarchical structure. ", "key words": "Reliability engineering, Bayesian statistics, hierarchical modelling, maintenance optimisation, industrial assets, developing context", "contribution statement": "This paper presents a novel application of Bayesian hierarchical modelling to machinery reliability in a Tanzanian industrial context, demonstrating a method to obtain robust inferences from sparse operational data, a key challenge
Kavishe et al. (Sat,) studied this question.
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