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Stochastic predictive control of battery energy storage for wind farm dispatching: Using probabilistic wind power forecasts

机译:风电场调度中电池能量存储的随机预测控制:使用概率风能预测

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The limited dispatchability of wind energy poses a challenge to its increased penetration. One technically feasible solution to this challenge is to integrate a battery energy storage system (BESS) with a wind farm. This highlights the importance of a BESS control strategy. In view of this, a stochastic model predictive control scheme is proposed in this paper. Based on the forecasted wind power distributions, the proposed scheme ensures the optimal operation of BESS in the presence of practical system constraints, thus bringing the wind-battery combined power output to the desired dispatch levels. The salient feature of the proposed scheme is that it takes into account the non-Gaussian wind power uncertainties. In this scheme, a probabilistic wind power forecasting model is employed as the prediction model, which quantifies the non-Gaussian uncertainties in wind power forecasts. Using chance constraints, the quantified uncertainties are incorporated into the controller design, thus forming a chance constrained stochastic programming problem. Using warping function, this problem is recast as a convex quadratic optimization problem, which is tractable both theoretically and practically. This way, the proposed control scheme handles the non-Gaussian uncertainties in wind power forecasts. The simulation results on actual data demonstrate the effectiveness of the proposed scheme. The data used in the simulation are obtained in the real operation of a wind farm in China. (C) 2015 Elsevier Ltd. All rights reserved.
机译:风能有限的可调度性对其普及率提出了挑战。解决这一挑战的技术上可行的解决方案是将电池储能系统(BESS)与风电场集成在一起。这突出了BESS控制策略的重要性。有鉴于此,本文提出了一种随机模型预测控制方案。基于预测的风电分布,该建议方案可在实际系统约束下确保BESS的最佳运行,从而使风电池组合发电输出达到所需的调度水平。提出的方案的显着特征是它考虑了非高斯风电的不确定性。在该方案中,采用概率风电功率预测模型作为预测模型,该模型量化了风电功率预测中的非高斯不确定性。使用机会约束,将量化的不确定性纳入控制器设计中,从而形成机会约束的随机编程问题。使用翘曲函数,将此问题重铸为凸二次优化问题,这在理论上和实践上都是可以解决的。这样,所提出的控制方案处理了风电预测中的非高斯不确定性。实际数据的仿真结果证明了该方案的有效性。模拟中使用的数据是在中国风电场的实际运行中获得的。 (C)2015 Elsevier Ltd.保留所有权利。

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