Existing active strategies for training surrogate models yield accurate structural reliability estimates by aiming at design space regions in the vicinity of a specified limit state function. In many practical engineering applications, various damage conditions, e.g. repair, failure, should be probabilistically characterized, thus demanding the estimation of multiple performance functions. In this work, we investigate the capability of active learning approaches for efficiently selecting training samples under a limited computational budget while still preserving the accuracy associated with multiple surrogated limit states. Specifically, PC-Kriging-based surrogate models are actively trained considering a variance correction derived from leave-one-out cross-validation error information, whereas the sequential learning scheme relies on U-function-derived metrics. The proposed active learning approaches are tested in a highly nonlinear structural reliability setting, whereas in a more practical application, failure and repair events are stochastically predicted in the aftermath of a ship collision against an offshore wind substructure. The results show that a balanced computational budget administration can be effectively achieved by successively targeting the specified multiple limit state functions within a unified active learning scheme.
翻译:具体地说,PC-Krigging的代用模型正在积极接受培训,以考虑从放假一出交叉校准错误信息中得出的差异校正,而顺序学习计划则依赖U-功能生成的衡量标准。 拟议的主动学习方法是在高度非线性结构可靠性设置中测试的,而在更实际的应用中,在船舶与离岸风子结构碰撞后,对故障和修理事件进行了严格预测。结果显示,通过在统一主动学习计划中连续定位特定多功能状态功能,可以有效地实现平衡的计算预算管理。