SPAILGAug 15, 2024

Federated Sequence-to-Sequence Learning for Load Disaggregation from Unbalanced Low-Resolution Smart Meter Data

arXiv:2409.00007v1h-index: 1
AI Analysis

This addresses energy monitoring for households using common smart meter data, but it is incremental as it builds on existing sequence-to-sequence and federated learning methods.

The paper tackles load disaggregation from low-resolution smart meter data by proposing a federated learning model that uses weather data to improve performance for 12 appliances, achieving significant improvements in Non-Intrusive Load Monitoring.

The importance of Non-Intrusive Load Monitoring (NILM) has been increasingly recognized, given that NILM can enhance energy awareness and provide valuable insights for energy program design. Many existing NILM methods often rely on specialized devices to retrieve high-sampling complex signal data and focus on the high consumption appliances, hindering their applicability in real-world applications, especially when smart meters only provide low-resolution active power readings for households. In this paper, we propose a new approach using easily accessible weather data to achieve load disaggregation for a total of 12 appliances, encompassing both high and low consumption, in scenarios with very low sampling rates (hourly). Moreover, We develop a federated learning (FL) model that builds upon a sequence-to-sequence model to fulfil load disaggregation without data sharing. Our experiments demonstrate that the FL framework - L2GD can effectively handle statistical heterogeneity and avoid overfitting problems. By incorporating weather data, our approach significantly improves the performance of NILM.

Foundations

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