一种多层优化制冷机运行管理框架

Y. Ye, Ratnesh K. Sharma, F. Guo
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引用次数: 3

摘要

本文针对某大型校园建筑冷负荷的冷水机组运行管理进行了研究。为了在满足系统冷负荷的同时降低系统运行成本,提出了一种多层机组优化运行管理框架。第一层是前一天24小时制冷机运行规划层,优化多台制冷机排序和制冷机负荷。第二层实时调度层有效地解决了实时负荷预测的不确定性。通过两步方法分层求解了负荷不确定性。采用混合整数线性表达式,建立了高效准确的优化系统建模框架,降低了计算复杂度。该管理框架的有效性在大学校园冷水机组的实际运行中得到了验证。仿真分析表明,该方法能有效地解决不同程度的预测不确定性,降低运行成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multi-layer optimal chiller operation management framework
This work targets on the chiller plant operation management for a large campus building cooling load. In this paper a multi-layer optimal chiller operation management framework is proposed to operate various chiller units to meet the system cooling load while reduce the system operation cost. The first layer is the day-ahead 24-hour chiller operation planning layer which optimizes multiple chiller sequencing and chillers loading. The second real-time dispatching layer effectively addresses load forecasting uncertainties in real-time. The load uncertainty is solved hierarchically through two steps of approaches. An efficient and accurate system modeling framework for optimization is formulated with mixed-integer linear expressions to reduce the computational complexity. The effectiveness of this proposed management framework is demonstrated for an actual chiller plant operation in university campus. Simulation analyses validate that the proposed method can effectively address various levels of forecast uncertainty and reduce the operation cost.
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