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Spatiotemporal Optimization Through Gaussian Process-Based Model Predictive Control: A Case Study in Airborne Wind Energy

机译:基于高斯过程的模型预测控制的时空优化:以机载风能为例

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摘要

This brief presents a model predictive control (MPC)-based spatiotemporal optimization strategy that is applied to the problem of optimizing the altitude of a type of airborne wind energy (AWE) system, specifically a buoyant airborne turbine. Altitude optimization for AWE systems represents a challenging problem under which the wind speed varies with both time and altitude, is only instantaneously observable at the altitude where the AWE system is operating, and dictates the net power produced by the system. The proposed MPC strategy avoids the need for a computationally expensive Markov process model for characterizing the wind speed and is structured in a way that the need for instantaneous power maximization (termed exploitation) is balanced with the need to maintain an accurate map of wind speed versus altitude (termed exploration). The MPC strategy is calibrated through a Gaussian process regression framework. Real wind speed versus altitude data have been used to validate the strategy.
机译:本摘要介绍了一种基于模型预测控制(MPC)的时空优化策略,该策略适用于优化一种类型的机载风能(AWE)系统(尤其是浮力机载涡轮机)的高度的问题。 AWE系统的海拔高度优化是一个具有挑战性的问题,在该问题中,风速随时间和海拔高度变化,仅在AWE系统正在运行的海拔高度才能瞬时观察到,并决定了系统产生的净功率。提出的MPC策略避免了需要用于表征风速的计算量大的Markov过程模型,并且其结构使得对瞬时功率最大化(称为“利用”)的需求与维持准确的风速与高度(称为探索)。 MPC策略通过高斯过程回归框架进行校准。实际风速与高度的数据已用于验证该策略。

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