DECIDE Graduate School, Alpen Adria Universitaet Klagenfurt, 9020 Klagenfurt, Austria.
Institute for Informatics Systems, Alpen Adria Universitaet Klagenfurt, 9020 Klagenfurt, Austria.
Sensors (Basel). 2022 Feb 9;22(4):1322. doi: 10.3390/s22041322.
Supporting the elderly to maintain their independence, safety, and well-being through Active Assisted Living (AAL) technologies, is gaining increasing momentum. Recently, Non-intrusive Load Monitoring (NILM) approaches have become the focus of these technologies due to their non-intrusiveness and reduced price. Whilst some research has been carried out in this respect; it still is challenging to design systems considering the heterogeneity and complexity of daily routines. Furthermore, scholars gave little attention to evaluating recent deep NILM models in AAL applications. We suggest a new interactive framework for activity monitoring based on custom user-profiles and deep NILM models to address these gaps. During evaluation, we consider four different deep NILM models. The proposed contribution is further assessed on two households from the REFIT dataset for a period of one year, including the influence of NILM on activity monitoring. To the best of our knowledge, the current study is the first to quantify the error propagated by a NILM model on the performance of an AAL solution. The results achieved are promising, particularly when considering the UNET-NILM model, a multi-task convolutional neural network for load disaggregation, that revealed a deterioration of only 10% in the f1-measure of the framework's overall performance.
通过主动辅助生活 (AAL) 技术支持老年人保持独立、安全和幸福,这一趋势日益增强。最近,由于非侵入性和降低的价格,非侵入性负载监测 (NILM) 方法成为这些技术的焦点。虽然已经对此进行了一些研究,但考虑到日常生活的异质性和复杂性,设计系统仍然具有挑战性。此外,学者们很少关注评估 AAL 应用中最近的深度 NILM 模型。我们建议了一种新的基于定制用户档案和深度 NILM 模型的活动监测交互框架来解决这些差距。在评估过程中,我们考虑了四个不同的深度 NILM 模型。所提出的贡献还在 REFIT 数据集的两个家庭中进行了评估,为期一年,包括 NILM 对活动监测的影响。据我们所知,目前的研究首次量化了 NILM 模型对 AAL 解决方案性能的传播误差。所取得的结果很有希望,特别是当考虑到用于负载分解的多任务卷积神经网络 UNET-NILM 模型时,该模型的整体性能的 f1 测度仅恶化了 10%。