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Supervisory and optimal control of central chiller plants using simplified adaptive models and genetic algorithm

机译:使用简化的自适应模型和遗传算法对中央冷水机组进行监督和最优控制

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This paper presents a model-based supervisory and optimal control strategy for central chiller plants to enhance their energy efficiency and control performance. The optimal strategy is formulated using simplified models of major components and the genetic algorithm (GA). The simplified models are used as the performance predictors to estimate the system energy performance and response to the changes of control settings and working conditions. Since the accuracy of the models has significant impacts on the overall prediction results, the models used are linear in the parameters and the recursive least squares (RLS) estimation technique with exponential forgetting is used to identify and update the model parameters online. That is to ensure that the linear models can provide reliable and accurate estimates when working condition changes. The GA, as a global optimization tool, is used to solve the optimization problem and search for globally optimal control settings. The performance of this strategy is tested and evaluated in a simulated virtual system representing the actual central chiller plant in a super high-rise building under various working conditions. The results showed that this strategy can save about 0.73-2.55% daily energy of the system studied, as compared to a reference strategy using conventional settings.
机译:本文提出了一种基于模型的中央冷却器厂监督和最佳控制策略,以提高其能效和控制性能。使用主要组成部分的简化模型和遗传算法(GA)制定最佳策略。简化的模型用作性能预测器,以估计系统的能源性能以及对控制设置和工作条件变化的响应。由于模型的准确性对整体预测结果有重大影响,因此所使用的模型在参数上是线性的,并且具有指数遗忘的递归最小二乘(RLS)估计技术用于在线识别和更新模型参数。这是为了确保线性模型可以在工作条件发生变化时提供可靠而准确的估计。遗传算法作为一种全局优化工具,用于解决优化问题并搜索全局最优控制设置。该策略的性能在模拟虚拟系统中进行了测试和评估,该虚拟系统代表了在各种工作条件下超高层建筑中实际的中央冷水机组。结果表明,与使用常规设置的参考策略相比,该策略每天可以节省所研究系统的0.73-2.55%的每日能量。

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