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arxiv: 1908.09034 · v2 · pith:QY723CNN · submitted 2019-08-23 · math.OC · cs.SY· eess.SY

Stochastic Dynamic Programming for Wind Farm Power Maximization

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classification math.OC cs.SYeess.SY
keywords controlwindfarmoptimalstochasticcapturedistributionsdynamic
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Wind farms can increase annual energy production (AEP) with advanced control algorithms by coordinating the set points of individual turbine controllers across the farm. However, it remains a significant challenge to achieve performance improvements in practice because of the difficulty of utilizing models that capture pertinent complex aerodynamic phenomena while remaining amenable to control design. We formulate a multi-stage stochastic optimal control problem for wind farm power maximization and show that it can be solved analytically via dynamic programming. In particular, our model incorporates state- and input-dependent multiplicative noise whose distributions capture stochastic wind fluctuations. The optimal control policies and value functions explicitly incorporate the moments of these distributions, establishing a connection between wind flow data and optimal feedback control. We illustrate the results with numerical experiments that demonstrate the advantages of our approach over existing methods based on deterministic models.

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