我为人人,人人为我:一个可扩展的决策框架的需求响应与区域冷却厂

S. Nagarathinam, H. Muralidharan, Arunchandar Vasan, V. Sarangan, S. Narayana, A. Sivasubramaniam
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引用次数: 0

摘要

在需求响应事件期间,公用事业客户通常独立于其他客户做出减少自己负载的决定。在采用集中冷却装置的区域供冷情况下,由于冷却装置选择的设定值影响建筑物的消耗,因此建筑物和区域供冷装置的控制决策是耦合的,反之亦然。以往的需求响应工作主要针对的是建筑供暖和供冷系统的控制,而在区域供冷的情况下,对这类系统的控制却没有受到太多的关注。我们考虑的问题是在满足减少需求的目标的同时,尽量减少建筑物的不适。具体来说,我们确定了建筑物和区域供冷系统的最佳设定值,即使服从区域供冷系统和建筑物之间的非线性耦合热力学约束。本文提出了一种利用领域知识将复杂的非线性优化问题转化为一系列可常规求解的二次规划问题的求解策略。我们通过将其与小数据集上的组合蛮力解决方案进行比较来验证所提出策略的性能。我们还评估了我们的策略在由区域冷却厂提供服务的416栋建筑物的真实数据集上的性能。结果表明,将区域电厂纳入需求响应并解决耦合约束,可以使公用事业公司在相同的舒适水平下实现更高的目标减排。此外,与传统的优化求解器相比,所提出的解决方案策略既快速(至少4倍)又可扩展(35倍)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
One for all, All for one: a scalable decision-making framework for demand response with a district cooling plant
During demand response events, utility customers typically make decisions to reduce their own load independent of other customers. In the presence of district cooling with a centralized cooling plant, the control decisions of buildings and the district cooling plant become coupled, since the setpoints chosen by the cooling plant affect the consumption of the buildings and vice versa. While past works on demand response address control of building-level heating and cooling systems, control of such systems in the presence of district cooling has not received much attention. We consider the problem of minimizing the discomfort of buildings while meeting the target demand reduction. Specifically, we identify the optimal setpoints for the buildings and district cooling plant, even while obeying the non-linear, coupled thermodynamic constraints between the district cooling plant and buildings. We propose a novel solution strategy using domain knowledge that transforms the complex non-linear optimization problem to a series of quadratic programming which can be then solved conventionally. We validate the performance of the proposed strategy by comparing it with a combinatorial brute-force solution on a small data set. We also evaluate the performance of our strategy on a real-world data set of 416 buildings that are served by a district cooling plant. The results indicate that including the district plant in demand response and solving with the coupled constraints, allows the utility to meet higher target reductions for the same comfort levels. Also, the proposed solution strategy is both fast (at least 4x) and scalable (35x) when compared with conventional optimization solvers.
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