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A Machine Learning-based Soft Sensor for Laundry Load Fabric Typology Estimation in Household Washer-Dryers

机译:基于机器学习的软传感器,用于家用洗衣机-烘干机的洗衣负载织物类型估计

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Fabric care manufactures are striving to make more energy efficient and more user-friendly products. The aim of this work is to develop a Soft Sensor (SS) for a household Washer-Dryer (WD) that is able to distinguish between different fabrics loaded in the machine; the knowledge of load composition may lead to a more accurate drying, faster processed and lower energy consumption without increasing the production costs. Moreover, automatic classification of load fabric will lead to an enhanced user experience, since user will be required to provide less information to the WD to obtain optimal drying processes. The SS developed in this work exploits sensors already in place in a commercial WD and, on an algorithmic point of view, it exploits regularization methods and Random Forests for classification. The efficacy of the proposed approach has been tested on real data in heterogeneous conditions.
机译:织物护理制造商正在努力制造更节能,更人性化的产品。这项工作的目的是为家用洗衣机(WD)开发一种软​​传感器(SS),该传感器能够区分机器中装载的不同织物。负载组成的知识可能会导致更准确的干燥,更快的处理速度和更低的能耗,而不会增加生产成本。此外,由于需要用户向WD提供较少的信息以获得最佳的干燥过程,因此负载织物的自动分类将导致增强的用户体验。在这项工作中开发的SS利用了商用WD中已经存在的传感器,并且从算法的角度来看,它利用了正则化方法和随机森林进行分类。所提出的方法的有效性已在异构条件下的真实数据上进行了测试。

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