Data partitioning and association mining for identifying VRF energy consumption patterns under various part loads and refrigerant charge conditions
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Miao Sun | Min Hu | Huanxin Chen | Jiangyan Liu | Guannan Li | Yabin Guo | Yunpeng Hu | Haorong Li | Shaobo Sun | Huanxin Chen | Yabin Guo | Haorong Li | Jiangyan Liu | Guannan Li | Yunpeng Hu | Min Hu | Shaobo Sun | Miao Sun
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