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Gaussian processes modifier adaptation with uncertain inputs for distributed learning and optimization of wind farms 1

机译:高斯工艺改进剂适应性对分布式学习的不确定输入和风电场优化 1

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摘要

A modifier adaptation scheme based on Gaussian processes is presented to optimize the control inputs of a wind farm. Often an approximate model of the wind farm is available, however due to the high complexity of the process plant-model mismatch is prevalent. For example the mechanics of wakes is not well-understood, which may have a profound impact on the power production of wind farms. Therefore, Gaussian process (GP) regression is exploited to account for this deviation. A distributed learning approach is used to learn the plant-model mismatch of each individual turbine considering explicitly the uncertainty of the uncontrolled inputs, like the wind direction. Afterwards, a distributed optimization scheme using alternating direction method of multipliers is applied to iteratively attain the wind farm optimum despite the presence of plant-model mismatch.
机译:提出了一种基于高斯工艺的改进剂适应方案,以优化风电场的控制输入。通常,风电场的近似模型可用,但由于过程植物模型不匹配的高复杂性普遍存在。例如,醒来的机制不受欢迎,这可能对风电场的电力产生产生深远的影响。因此,利用高斯过程(GP)回归以解释这种偏差。分布式学习方法用于学习每个单独的涡轮机的植物模型不匹配,考虑到不受控制的输入的不确定性,如风向。之后,尽管存在植物模型不匹配,应用使用乘法器的交替方向方法的分布式优化方案应用于迭代地达到风电场。

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