论文标题
用贝叶斯神经网络识别灰色盒热模型
Identifying Grey-box Thermal Models with Bayesian Neural Networks
论文作者
论文摘要
智能恒温器是最普遍的家庭自动化产品之一。他们学习乘员的偏好和时间表,并利用准确的热模型来减少加热和冷却设备的能源利用,同时保持温度以最大程度的舒适度。尽管对于智能恒温器的操作具有准确的热模型的重要性,但该模型的快速可靠识别仍然是一个开放的问题。在本文中,我们探讨了使用智能恒温器生成的时间序列数据建立合适的热模型的各种技术。我们表明,如果有足够的训练数据,贝叶斯神经网络可用于估计灰色盒热模型的参数,并且该模型在温度预测准确性方面优于几个黑盒模型。利用来自配备智能恒温器的8,884户房屋的真实数据,我们讨论了如何利用有关模型参数的先验知识来快速为在同一气候区域中具有相似地板面积和年龄的另一个房屋建立准确的热模型。此外,我们研究了如何使用本赛季收集的少量数据适应另一个季节为同一房屋建造的模型。我们的结果证实,仅维持少量预训练的热模型就足以快速为许多其他家庭建立准确的热模型,而1〜天智能恒温器数据可以显着提高另一个季节转移模型的准确性。
Smart thermostats are one of the most prevalent home automation products. They learn occupant preferences and schedules, and utilize an accurate thermal model to reduce the energy use of heating and cooling equipment while maintaining the temperature for maximum comfort. Despite the importance of having an accurate thermal model for the operation of smart thermostats, fast and reliable identification of this model is still an open problem. In this paper, we explore various techniques for establishing a suitable thermal model using time series data generated by smart thermostats. We show that Bayesian neural networks can be used to estimate parameters of a grey-box thermal model if sufficient training data is available, and this model outperforms several black-box models in terms of the temperature prediction accuracy. Leveraging real data from 8,884 homes equipped with smart thermostats, we discuss how the prior knowledge about the model parameters can be utilized to quickly build an accurate thermal model for another home with similar floor area and age in the same climate zone. Moreover, we investigate how to adapt the model originally built for the same home in another season using a small amount of data collected in this season. Our results confirm that maintaining only a small number of pre-trained thermal models will suffice to quickly build accurate thermal models for many other homes, and that 1~day smart thermostat data could significantly improve the accuracy of transferred models in another season.