Computer models are widely used in decision support for energy systems operation, planning and policy. A system of models is often employed, where model inputs themselves arise from other computer models, with each model being developed by different teams of experts. Gaussian Process emulators can be used to approximate the behaviour of complex, computationally intensive models and used to generate predictions together with a measure of uncertainty about the predicted model output. This paper presents a computationally efficient framework for propagating uncertainty within a network of models with high-dimensional outputs used for energy planning. We present a case study from a UK county council considering low carbon technologies to transform its infrastructure to reach a net-zero carbon target. The system model considered for this case study is simple, however the framework can be applied to larger networks of more complex models.
翻译:计算机模型被广泛用于能源系统操作、规划和政策的决策支助,经常使用模型系统,模型投入本身来自其他计算机模型,每个模型都由不同的专家小组开发。高斯过程模拟器可以用来估计复杂、计算密集模型的行为,并用来预测预测模型产出的不确定性。本文提供了一个计算高效的框架,用于在具有高维产出用于能源规划的模型网络中传播不确定性。我们介绍了英国州议会的案例研究,考虑采用低碳技术改造基础设施,以达到净-零碳目标。本案例研究所考虑的系统模型很简单,但这一框架可以适用于较复杂的模型的更大网络。