Predicting equipment failure is important because it could improve availability and cut down the operating budget. Previous literature has attempted to model failure rate with bathtub-formed function, Weibull distribution, Bayesian network, or AHP. But these models perform well with a sufficient amount of data and could not incorporate the two salient characteristics; imbalanced category and sharing structure. Hierarchical model has the advantage of partial pooling. The proposed model is based on Bayesian hierarchical B-spline. Time series of the failure rate of 99 Republic of Korea Naval ships are modeled hierarchically, where each layer corresponds to ship engine, engine type, and engine archetype. As a result of the analysis, the suggested model predicted the failure rate of an entire lifetime accurately in multiple situational conditions, such as prior knowledge of the engine.
翻译:预测设备故障很重要,因为它可以改善可用性并削减运营预算。以前的文献试图用浴缸式功能、Weibull分布、Bayesian网络或AHP来模拟故障率。但这些模型运行良好,数据数量充足,不能包含两个突出特征;分类和共享结构不平衡。等级模型具有部分集中的优势。拟议的模型以巴耶斯级B-S-spline为基础。99号大韩民国海军舰艇故障率的时间序列按等级制成模型,每一层都与船舶发动机、发动机类型和发动机型号相匹配。分析的结果是,建议的模型预测了在多种情况下整个寿命周期的故障率,如以前对发动机的了解。