Forecasting the total building energy based on its architectural features using a combination of CatBoost and meta-heuristic algorithms

Xiaoyu Qu, Ziheng Liu
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Abstract

This research examines the overall energy usage in residential buildings, focusing on architectural characteristics. The study utilizes a combination of the CatBoost method and meta-heuristic algorithms for analysis. The main approach of this research is based on the accuracy defects of individual models, which leads to the employment of CatBoost as a group model. Due to the lack of enough examinations while utilizing CatBoost method, this model and its hyperparameters are optimized using various meta-heuristic methods, including Phasor Particle Swarm Optimization (PPSO), Slime Mould Algorithm (SMA), Sparrow Search Algorithm (SSA), Ant Lion Optimizer (ALO), Artificial Bee Colony (ABC), and Grey Wolf Optimizer (GWO). Eventually, the performance of all models is compared by conduction of a case study, using diverse statistical examination indexes divided by the dwelling types i.e., (1) Standard efficiency upgraded dwellings (D1), (2) High efficiency upgraded dwellings (D2), and (3) Ultra high efficiency upgraded dwellings (D3). The results show that the hybrid proposed method has a proper ability to investigate the total site energy. The results show that for the D1 dwelling and according to the test dataset, the integrated CatBoost-SMA model indicates the most desired performance in predicting the total site energy. But for D2 and D3 dwellings and referring to the test dataset, the statistical evaluation indexes emphasize that the integrated CatBoost-PPSO method shows the most reliable performance.
使用 CatBoost 和元启发式算法组合,根据建筑特征预测建筑总能耗
本研究以建筑特点为重点,考察了住宅建筑的总体能源使用情况。研究结合使用了 CatBoost 方法和元启发式算法进行分析。本研究的主要方法是基于单个模型的准确性缺陷,从而采用 CatBoost 作为群体模型。由于在使用 CatBoost 方法时缺乏足够的检验,因此使用各种元启发式方法对该模型及其超参数进行了优化,包括相位粒子群优化(PPSO)、粘液模算法(SMA)、麻雀搜索算法(SSA)、蚁狮优化器(ALO)、人工蜂群(ABC)和灰狼优化器(GWO)。最后,通过进行案例研究,使用不同的统计检验指标对所有模型的性能进行了比较,这些指标按住宅类型分为:(1) 标准效率升级住宅(D1),(2) 高效率升级住宅(D2),(3) 超高效率升级住宅(D3)。结果表明,所提出的混合方法具有调查场地总能耗的适当能力。结果表明,对于 D1 住宅,根据测试数据集,CatBoost-SMA 集成模型在预测场地总能耗方面的表现最为理想。但对于 D2 和 D3 住宅,根据测试数据集,统计评估指标强调了综合 CatBoost-PPSO 方法显示了最可靠的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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