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Rapid Establishment Method of a Personalized Thermal Comfort Prediction Model *

机译:个性化热舒适性预测模型的快速建立方法 *

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In this paper, we address the challenge of predicting occupants’ different thermal states (cold-uncomfortable, comfortable and hot-uncomfortable) with high accuracy and high flexibility. At present, most solutions are based on traditional average models or traditional personalized models, which generally fail to guarantee accuracy and flexibility at the same time. To address this issue, we introduce a rapid establishment method of a personalized thermal comfort model by using environmental and physiological parameters as inputs. When a model is being built for a new occupant based on pre-collected data of other occupants, the weights of the training data will be changed personally by quantifying the thermal sensation similarities between the target occupant and the occupants in the data set. In order to validate the method, 14 healthy subjects were recruited for experiments, during which four environmental and physiological parameters (air temperature, skin temperature, skin humidity, skin conductance) and their gradients were recorded. The model is based on LightGBM classifier and achieves an average weighted F1 score of 0.893 with a small amount of personal data. The results clarify the effectiveness of this method and also shows the possibility of applying this method to thermal environment control with wearable sensing technology.
机译:在本文中,我们解决了以高精度和高灵活性预测乘员的不同热状态(冷不舒服,舒适和热不舒服)的挑战。当前,大多数解决方案基于传统的平均模型或传统的个性化模型,它们通常不能同时保证准确性和灵活性。为了解决这个问题,我们通过使用环境和生理参数作为输入,介绍了一种个性化热舒适模型的快速建立方法。当基于其他乘员的预先收集的数据为新乘员建立模型时,训练数据的权重将通过量化目标乘员与数据集中乘员之间的热感相似性来亲自更改。为了验证该方法,招募了14名健康受试者进行实验,在此期间记录了四个环境和生理参数(气温,皮肤温度,皮肤湿度,皮肤电导率)及其梯度。该模型基于LightGBM分类器,使用少量个人数据即可达到0.893的平均加权F1分数。结果阐明了该方法的有效性,并显示了将该方法应用于可穿戴传感技术进行热环境控制的可能性。

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