主成分和相关性分析在热泵系统运行数据挖掘中的融合应用

The Integrated Application of Principal Component Analysis and Correlation Analysis in Data Mining of Heat Pump System Operation

  • 摘要: 空气源热泵系统作为一种高效节能的供暖和制冷设备,在我国广泛应用。然而,其运行数据复杂多变,如何有效分析这些数据并挖掘关键信息,对于提高热泵系统的运行效率至关重要。论文采用主成分分析(PCA)和相关性分析,对空气源热泵系统的运行数据进行深入挖掘。PCA分析提取了热泵系统在温度变化、功率消耗、电气性能、换热效率和环境因素等方面的特征;皮尔逊线性相关分析表明,输入功率与相电流呈强相关性,换热量与换热器出口温差密切相关,性能系数(COP)与换热量也表现出显著关联,进一步凸显了传热强化对能效提升的重要性;Spearman秩相关分析中,输入功率与相电流、换热量与换热器出口温差的秩相关系数高于0.8,性能系数与换热量的秩相关系数高于0.7,高秩相关系数表明,即使在复杂的非线性系统中,这些参数间的关联程度依然显著。研究结果表明,PCA和相关性分析为热泵系统的关键信息提取提供了有效工具,能够显著提高性能预测和故障诊断的效率与准确性。

     

    Abstract: The air-source heat pump system, known for its high energy efficiency and low environmental impact, is widely used in China for heating and cooling applications. However, the operational data of such systems is complex and variable that make it crucial to effectively analyze and extract key information in order to enhance the system's operational efficiency. This study employed Principal Component Analysis (PCA) and correlation analysis to deeply mine the operational data of the air-source heat pump system. PCA was used to extract the key features of the system, including temperature variation, power consumption, electrical performance, heat exchange efficiency, and environmental factors. The analysis helped identify the most influential factors affecting the system’s performance. The results of Pearson linear correlation analysis revealed strong correlations between input power and phase current, as well as a close relationship between heat exchange and the temperature difference at the heat exchanger outlet. Furthermore, the Coefficient of Performance (COP) showed a significant correlation with the heat exchange process, emphasizing the importance of enhancing heat transfer to improve energy efficiency. Spearman rank correlation analysis was also conducted, revealing that the rank correlation coefficients between input power and phase current, as well as between heat exchange rate and the temperature difference at the heat exchanger outlet, were both greater than 0.8. Additionally, the rank correlation coefficient for COP and heat exchange rate exceeded 0.7. These high rank correlation coefficients indicated that, even within a complex and nonlinear system, the relationships between these parameters remained highly significant. The results of this research demonstrate that PCA and correlation analysis are effective tools for extracting key information from the operational data of the air-source heat pump system. These techniques can significantly improve the efficiency and accuracy of performance prediction and fault diagnosis, providing valuable insights for the optimization and maintenance of the system. Today, these methods continue to play a crucial role in enhancing the performance and reliability of air-source heat pump systems.

     

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