多目标楼宇设施控制优化的Pareto前上转换

Naru Okumura, Tomoaki Takagi, Yoshihiro Ohta, Hiroyuki Sato
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引用次数: 0

摘要

利用已知解,验证了监督多目标优化算法(SMOA)对Pareto前表示进行上转换的效果。此外,还提出了几种评估SMOA中有希望的候选解的抽样方法,并进行了比较。进化变异,如涉及随机性的交叉和突变,在实际场景中不受欢迎,特别是当目标函数的计算成本很高时。为了抑制得到劣解,SMOA利用已知解构建Pareto前估计模型和Pareto集估计模型,对有希望的候选解进行采样,并对其进行评价。据报道,在人工测试问题中,与有限解评估的进化变异相比,SMOA可以有效地生成上转换Pareto前表示的分布良好的解。研究了具有15个已知解的建筑设施控制问题,结果表明,与进化变异相比,SMOA能有效地改进Pareto前表示。结果表明,考虑已知解分布的基于拥挤距离的一次性抽样方法在本文所比较的抽样方法中具有最佳的Pareto front逼近性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pareto Front Upconvert on Multi-objective Building Facility Control Optimization
This paper verified the effects of a supervised multi-objective optimization algorithm (SMOA) efficiently upconverting the Pareto front representation by utilizing known solutions on a real-world multi-objective building facility control optimization problem. Also, several sampling methods for evaluating promising candidate solutions in SMOA were proposed and compared. Evolutionary variations, such as crossover and mutation involving randomness, are not preferred in practical scenarios, particularly when the objective functions are computationally expensive. In order to suppress obtaining inferior solutions, SMOA constructs the Pareto front and Pareto set estimation models using known solutions, samples promising candidate solutions, and evaluates them. It was reported that SMOA could efficiently generate well-distributed solutions that upconvert the Pareto front representation compared to evolutionary variations with limited solution evaluations in artificial test problems. This paper focuses on the real-world building facility control problem with 15 known solutions, and results show that SMOA can efficiently improve the Pareto front representation compared to evolutionary variations. Also, results show that crowding distance-based one-time sampling considering the distribution of the known solutions achieved the best Pareto front approximation performance in the sampling methods compared in this paper.
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