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Optimal sizing of combined cooling, heating, and power system based on cluster analysis

机译:基于聚类分析的组合冷却,加热和电力系统的最佳施胶

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Accurate prediction of the performance of the key devices in combined cooling, heating, and power systems, especially prime mover under off-design operations, plays a key role in determining the flexibilities and the overall techno-economic performance of the system. Although a variety of optimization methods can be applied to size a prime mover based on a representative performance curve, the optimized capacity may not be available in the marketplace and the real performance curve for the optimized size may deviate the representative curve. The present study aims to provide a comparative analysis to elucidate the effects of the clustering of the potential prime movers on the sizing of the key devices in the combined cooling, heating, and power system. Case study results show that compared to the method with 31 individual performance curves of the real-world potential prime movers, the clustering method effectively produces accurate representative performance curves and thus sizing results. Furthermore, the optimization process is significantly accelerated by using the clustering method.
机译:精确预测在组合冷却,加热和电力系统中的关键设备的性能,特别是在非设计操作中的主要动力,在确定系统的灵活性和整体技术经济性能方面起着关键作用。尽管基于代表性曲线可以应用各种优化方法,但是在市场上可能不可用优化的容量,并且优化尺寸的实际性能曲线可以偏离代表性曲线。本研究旨在提供比较分析,以阐明潜在素移动器集群对组合冷却,加热和电力系统中的关键装置的施胶的影响。案例研究结果表明,与具有现实世界潜在势乘器的31个单独性能曲线的方法相比,聚类方法有效地产生了准确的代表性曲线,从而产生了尺寸的结果。此外,通过使用聚类方法,优化过程显着加速。

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