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Chiller system performance management with market basket analysis

机译:Chiller系统绩效管理与市场篮分析

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Purpose - This study aims to apply association rule mining (ARM) to uncover specific associations between operating components of a chiller system and improve its coefficient of performance (COP), hence reducing the electricity use of buildings with central air conditioning. Design/methodology/approach - First, 13 operating variables were identified, comprising measures of temperatures and flow rates of system components and their switching statuses. The variables were grouped into four bins before carrying out ARM. Strong rules were produced to associate the variables and switching statuses with different COP classes. Findings - The strong rules explain existing constraints on practising chiller sequencing and prioritise variables for optimisation. Based on strong rules for the highest COP class, the optimal operating strategy involves rescheduling chillers and their associated components in pairs during a high load operation. Resetting the chilled water supply temperature is the next best strategy, followed by resetting the condenser water entering temperature, subject to operating constraints. Research limitations/implications - This study considers the even frequency method with four bins only. Replication work can be done with other discretisation methods and different numbers of classes to compare potential differences in the bin ranges of the optimised variables. Practical implications - The strong rules identified by ARM highlight associations between variables and high or low COPs. This supports the selection of critical variables and the operating status of system components to maximise the COP. Tailor-made optimisation strategies and the associated electricity savings can be further evaluated. Originality/value - Previous studies applied ARM for chiller fault detection but without considering system performance under the interaction of different components. The novelty of this study is its demonstration of ARM's intelligence at discovering associations in past operating data. This enables the identification of tailor-made energy management opportunities, which are essential for all engineering systems. ARM is free from the prediction errors of typical regression and black-box models.
机译:目的 - 本研究旨在申请关联规则挖掘(ARM)来揭示冷却器系统的运营组件之间的特定关联,并提高其性能系数(COP),从而减少了中央空调建筑物的电力使用。设计/方法/方法 - 首先,确定了13个操作变量,包括系统组件的温度和流速的测量及其开关状态。在进行臂之前将变量分为四个垃圾箱。生成强规则以将变量和切换状态与不同的COP类相关联。调查结果 - 强大规则解释了对练习冷却器测序和优先级的优化变量的现有约束。基于最高COP类的强规则,最佳操作策略在高负载操作期间涉及成对重新安排冷却器及其相关组件。重置冷冻供水温度是下一个最佳策略,然后重置冷凝器水进入温度,受运营约束。研究限制/影响 - 本研究仅考虑具有四个垃圾箱的偶数频率方法。复制工作可以采用其他自行设定方法和不同数量的类来比较优化变量的箱子范围内的潜在差异。实际意义 - ARM突出的变量和高或低警察之间识别的强规则。这支持选择临界变量和系统组件的运行状态,以最大化COP。可以进一步评估量身定制的优化策略和相关的电力节省。原创性/价值 - 以前的研究应用了冷却器故障检测的臂,但不考虑不同组件的交互下的系统性能。本研究的新颖性是它在发现过去的运营数据中的关联时掌握了ARM智慧的演示。这使得能够识别量身定​​制的能源管理机会,这对于所有工程系统至关重要。 ARM没有典型回归和黑盒式型号的预测误差。

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