Hot Water Demand Prediction Method for Operational Planning of Residential Fuel Cell System

Yuta Tsuchiya, Y. Hayashi, Y. Fujimoto, Akira Yoshida, Y. Amano
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引用次数: 1

Abstract

This study proposes a hot water demand prediction method for operational planning of polymer electrolyte fuel cell cogeneration systems (PEFC-CGSs). PEFC-CGSs provide hot water by utilizing waste heat produced in the electricity generation process. An optimal operational plan according to household demand leads to further energy saving. Therefore, operational planning methods based on household demand prediction have received intense focus. In particular, the prediction of the amount of hot water demand is important for efficient operation. The authors have attempted to improve the hot water prediction method based on multivariate random forest (MRF), which uses the average of many decision trees' outputs as the prediction result. However, some experimental results show that a prediction strategy based on averaging the outputs of decision trees does not always lead to the best solution. In this study, the authors propose a novel prediction method utilizing the quantile of the estimation results derived in MRF. By setting the appropriate quantile, we can evade the demand underestimation, which has a higher negative impact on operational efficiency than overestimation. The usefulness of the proposed approach is evaluated via numerical simulations using real-world demand data.
住宅燃料电池系统运行规划的热水需求预测方法
本文提出了一种用于聚合物电解质燃料电池热电联产系统(PEFC-CGSs)运行规划的热水需求预测方法。PEFC-CGSs利用发电过程中产生的余热提供热水。根据家庭需求制定优化的操作方案,进一步节约能源。因此,基于家庭需求预测的运营规划方法受到了广泛关注。特别是,热水需求量的预测对高效运行非常重要。作者尝试改进基于多元随机森林(MRF)的热水预测方法,该方法使用多个决策树输出的平均值作为预测结果。然而,一些实验结果表明,基于平均决策树输出的预测策略并不总是导致最佳解决方案。在这项研究中,作者提出了一种新的预测方法,利用在MRF中得到的估计结果的分位数。通过设置适当的分位数,我们可以避免需求低估,这比高估对运营效率的负面影响更大。通过使用实际需求数据的数值模拟来评估所提出方法的有效性。
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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