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Interval quadratic programming for day-ahead dispatch of uncertain predicted demand

机译:不确定的预测需求提前调度的间隔二次规划

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In this paper, we propose an interval quadratic programming method for the day-ahead scheduling of power generation and battery charge cycles, where the prediction uncertainty of power consumption and photovoltaic power generation is described as a parameter vector lying in an interval box. The interval quadratic programming is formulated as the problem of finding the tightest box, i.e., interval hull, that encloses the image of a function of the minimizer in parametric quadratic programming. To solve this problem in a computationally efficient manner, we take a novel approach based on a monotonicity analysis of the minimizer in the parametric quadratic programming. In particular, giving a tractable parameterization of the minimizer on the basis of the Karush-Kuhn-Tucker condition, we show that the monotonicity analysis with respect to the parameter vector can be relaxed to the sign pattern analysis of an oblique projection matrix. The monotonicity of the minimizer is found to be essential in the day-ahead dispatch problem, where uncertain predicted demand, described by a parameter vector, is dispatched to power generation and battery charge cycles while the economic cost is minimized. Finally, we verify the efficiency of the proposed method numerically, using experimental and predicted data for power consumption and photovoltaic power generation. (C) 2015 Elsevier Ltd. All rights reserved.
机译:在本文中,我们提出了一种用于发电和电池充电周期的日前调度的区间二次规划方法,该方法将电能和光伏发电的预测不确定性描述为间隔框中的参数向量。间隔二次编程被公式化为寻找最紧的盒子(即间隔船体)的问题,该盒子在参数二次编程中包围了最小化函数的图像。为了以计算有效的方式解决此问题,我们采用了基于参数二次规划中最小化器单调性分析的新颖方法。特别地,基于Karush-Kuhn-Tucker条件给出极小值的易于处理的参数化,我们表明,相对于参数向量的单调性分析可以放宽到倾斜投影矩阵的符号模式分析。发现最小化器的单调性在提前调度问题中至关重要,在该调度问题中,将由参数向量描述的不确定的预测需求调度到发电和电池充电周期,同时将经济成本最小化。最后,我们使用实验数据和预测数据进行功耗和光伏发电的数值验证,验证了该方法的有效性。 (C)2015 Elsevier Ltd.保留所有权利。

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