论文标题
改进的正常边界交叉算法:智能建筑中能量优化策略的一种方法
Improved normal-boundary intersection algorithm: a method for energy optimization strategy in smart buildings
论文作者
论文摘要
随着分布式能源的广泛使用,智能建筑的优势比传统建筑物变得越来越明显。随后,其能量最佳调度和多目标优化变得越来越复杂,需要紧急解决。本文提出了一种新的方法,可以优化智能建筑中的能源利用。首先,将多个转移比率(TRR)参数添加到分布式可再生能源的评估中。其次,通过自适应重量总和,调节均匀轴法和玛哈拉氏症距离改善了正常结合的交叉点(NBI)算法,以形成改进的正常结合交叉点(INBI)算法。智能建筑物中的多目标优化问题由参数TRR和INBI算法解决,以提高调节效率。为了响应具有评估指标的决策者的需求,与以前的情况相比,平均偏差降低了60%。数值示例表明,根据三个优化目标,所提出的方法优于现有技术。这些目标包括设备成本降低8.2%,电源成本降低7.6%,居住者舒适性提高了1.6%。
With the widespread use of distributed energy sources, the advantages of smart buildings over traditional buildings are becoming increasingly obvious. Subsequently, its energy optimal scheduling and multi-objective optimization have become more and more complex and need to be solved urgently. This paper presents a novel method to optimize energy utilization in smart buildings. Firstly, multiple transfer-retention ratio (TRR) parameters are added to the evaluation of distributed renewable energy. Secondly, the normal-boundary intersection (NBI) algorithm is improved by the adaptive weight sum, the adjust uniform axes method, and Mahalanobis distance to form the improved normal-boundary intersection (INBI) algorithm. The multi-objective optimization problem in smart buildings is solved by the parameter TRR and INBI algorithm to improve the regulation efficiency. In response to the needs of decision-makers with evaluation indicators, the average deviation is reduced by 60% compared with the previous case. Numerical examples show that the proposed method is superior to the existing technologies in terms of three optimization objectives. The objectives include 8.2% reduction in equipment costs, 7.6% reduction in power supply costs, and 1.6% improvement in occupants' comfort.