论文标题

通过同型反优化预测建筑物池的价格响应

Forecasting the Price-Response of a Pool of Buildings via Homothetic Inverse Optimization

论文作者

Fernández-Blanco, Ricardo, Morales, Juan Miguel, Pineda, Salvador

论文摘要

本文着重于对配备恒温控制负载的智能建筑物池的总预测。我们首先通过使用几何方法提出了其功率轨迹的骨料行为的建模。具体而言,我们假设总功率是原型建筑的同型,其物理和技术参数被选择为池中的均值。这使我们能够保留游泳池的建筑热动力学。然后,我们应用逆优化来估计具有双重编程的同构参数。较低层是通过一组边缘效用曲线和原型建筑物的同源物来表征集合的价格响应,这又在高层问题中推断出来。上层可以最大程度地减少训练样本中的平均绝对误差。该双重程序被转变为正规化的非线性问题,该问题是通过有效的启发式程序给出的解决方案初始化的。这种启发式措施在于解决两个线性程序,其解决方案被认为是针对原始二线问题的合适代理。结果已与最先进的方法进行了比较。

This paper focuses on the day-ahead forecasting of the aggregate power of a pool of smart buildings equipped with thermostatically-controlled loads. We first propose the modeling of the aggregate behavior of its power trajectory by using a geometric approach. Specifically, we assume that the aggregate power is a homothet of a prototype building, whose physical and technical parameters are chosen to be the mean of those in the pool. This allows us to preserve the building thermal dynamics of the pool. We then apply inverse optimization to estimate the homothetic parameters with bilevel programming. The lower level characterizes the price-response of the ensemble by a set of marginal utility curves and a homothet of the prototype building, which, in turn, are inferred in the upper-level problem. The upper level minimizes the mean absolute error over a training sample. This bilevel program is transformed into a regularized nonlinear problem that is initialized with the solution given by an efficient heuristic procedure. This heuristic consists in solving two linear programs and its solution is deemed a suitable proxy for the original bilevel problem. The results have been compared to state-of-the-art methodologies.

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