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Energy Efficiency Optimization of Central Air Conditioning System by GBA-GA Algorithm

机译:GBA-GA算法能效优化中央空调系统

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In order to improve the energy efficiency ratio (EER) of central air conditioning system in buildings under different operating conditions, a new hybrid algorithm was established to optimize the key operating parameters of a central air conditioning system in this paper. The new hybrid algorithm includes the following: key operating parameters on the EER of a central air conditioning system are selected by Grey Relational Analysis (GRA); an energy efficiency prediction model between key operating parameters and EER is established by a BP Neural Network (BPNN); association rules among the key operating parameters are obtained through the Apriori Association Rule Algorithm (AARA); the energy efficiency prediction model will be used as the fitness function of Genetic Algorithm (GA), while association rules as chromosome constraints in GA. The proposed hybrid algorithm is thus called GBA-GA algorithm. The key operation parameters of central air conditioning system are optimized by GBA-GA algorithm and an ordinary GA algorithm respectively. The results show that the EER optimized by the GBA-GA algorithm is 2.16%-6.89% higher than that by the GA algorithm under different load rates.
机译:为了提高在不同操作条件下建筑物中央空调系统的能效比(EER),建立了一种新的混合算法,以优化本文中央空调系统的关键操作参数。新的混合算法包括以下内容:通过灰色关系分析(GRA)选择中心空调系统的eer上的键操作参数;通过BP神经网络(BPNN)建立关键操作参数和eer之间的能量效率预测模型;通过APRIORI关联规则算法(AARA)获得关键操作参数中的关联规则;能效预测模型将用作遗传算法(GA)的适应性函数,而关联规则作为GA的染色体约束。因此,所提出的混合算法称为GBA-GA算法。中央空调系统的关键操作参数分别通过GBA-GA算法和普通的GA算法进行了优化。结果表明,GBA-GA算法优化的eer比不同负载率下的GA算法高2.16%-6.89%。

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