Overhead distribution lines play a vital role in distributing electricity, however, their freestanding nature makes them vulnerable to extreme weather conditions and resultant disruption of supply. The current UK regulation of power networks means preemptive mitigation of disruptions avoids financial penalties for distribution companies, making accurate fault predictions of direct financial importance. Here we present predictive models developed for a UK network based on gradient-boosted location, scale, and shape models, providing spatio-temporal predictions of faults based on forecast weather conditions. The models presented are based on (a) tree base learners or (b) penalised smooth and linear base learners -- leading to a Generalised Additive Model (GAM) structure, with the latter category of models providing best performance in terms of out-of-sample log-likelihood. The models are fitted to fifteen years of fault and weather data and are shown to provide good accuracy over multi-day forecast windows, giving tangible support to power restoration.
翻译:然而,高架分配线在分配电力方面发挥着关键作用,但其独立性质使其易受极端天气条件和由此造成的供应中断的影响。目前英国对电力网络的监管意味着先发制人地减少电力网络的中断,从而避免了对分销公司的财政处罚,对直接的财务重要性作出准确的错误预测。这里我们介绍了基于梯度加速的位置、规模和形状模型为英国网络开发的预测模型,根据预测天气条件对故障作出时空预测。提出的模型基于(a) 树底学习者或(b) 惩罚的平滑和线性基础学习者 -- -- 导致普遍化的Additive模型(GAM)结构,后一类模型在超模类原木类方面提供最佳的性能。这些模型适合15年的断层和天气数据,并显示在多日预报窗口上提供准确的准确性,为恢复电力提供切实的支持。