Renewable energy projects, such as large offshore wind farms, are critical to achieving low-emission targets set by governments. Stochastic computer models allow us to explore future scenarios to aid decision making whilst considering the most relevant uncertainties. Complex stochastic computer models can be prohibitively slow and thus an emulator may be constructed and deployed to allow for efficient computation. We present a novel heteroscedastic Gaussian Process emulator which exploits cheap approximations to a stochastic offshore wind farm simulator. We also conduct a probabilistic sensitivity analysis to understand the influence of key parameters in the wind farm model which will help us to plan a probability elicitation in the future.
翻译:大型离岸风力农场等可再生能源项目对于实现政府设定的低排放目标至关重要。 触摸式计算机模型允许我们探索未来情景,以便在考虑最相关的不确定性的同时帮助决策。 复杂的随机计算机模型可能过于缓慢,因此可以建造和部署一个模拟器,以便高效计算。 我们展示了一个新颖的超rosdistic Gaussian进程模拟器,该模拟器将廉价近似物用于一个随机型离岸风力农场模拟器。 我们还进行了概率敏感度分析,以了解风力农场模型中关键参数的影响,这将有助于我们规划未来的概率推断。