复杂飞机生产系统的多输出极端空间模型 / Multi-output Extreme Spatial Model for Complex Aircraft Production Systems
1️⃣ 一句话总结
本文提出了一种专门针对飞机生产等复杂系统中罕见但代价高昂的极端事件进行预测和风险管理的多输出空间模型,通过将控制变量和测量位置的双线性函数与图辅助的复合似然估计方法结合,有效处理了高维输出之间的相关性,并在实际数据中展现了比传统模型更优的极端事件预测性能。
Problem definition: Data-driven models in machine learning have enabled efficient management of production systems. However, a majority of machine learning models are devoted to modeling the mean response or average pattern, which is inappropriate for studying abnormal extreme events that are often of primary interest in aircraft manufacturing. Since extreme events from heavy-tailed distributions give rise to prohibitive expenditures in system management, sophisticated extreme models are urgently needed to analyze complex extreme risks. Engineering applications of extreme models usually focus on individual extreme events, which is insufficient for complex systems with correlations. Methodology/results: We introduce an extreme spatial model for multi-output response control systems that efficiently captures the dynamics using a bilinear function on two spatial domains for control variables and measurement locations. Marginal parameter modeling and extremal dependence have been investigated. In addition, an efficient graph-assisted composite likelihood estimation and corresponding computational algorithms are developed to cope with high-dimensional outputs. The application to composite aircraft production shows that the proposed model enables comprehensive analyses with superior predictive performance on extreme events compared to canonical methods. Managerial implications: Our method shows how to use an extreme spatial model for predicting extreme events and managing extreme risks in complex production systems such as aircraft. This can help achieve better quality management and operation safety in aircraft production systems and beyond.
复杂飞机生产系统的多输出极端空间模型 / Multi-output Extreme Spatial Model for Complex Aircraft Production Systems
本文提出了一种专门针对飞机生产等复杂系统中罕见但代价高昂的极端事件进行预测和风险管理的多输出空间模型,通过将控制变量和测量位置的双线性函数与图辅助的复合似然估计方法结合,有效处理了高维输出之间的相关性,并在实际数据中展现了比传统模型更优的极端事件预测性能。
源自 arXiv: 2604.22548