Abstract

One of the basic conditions for the successful implementation of energy demand-side management (EDM) in smart grids is the monitoring of different loads with an electrical load monitoring system. Energy and sustainability concerns present a multitude of issues that can be addressed using approaches of data mining and machine learning. However, resolving such problems due to the lack of publicly available datasets is cumbersome. In this study, we first designed an efficient energy disaggregation (ED) model and evaluated it on the basis of publicly available benchmark data from the Residential Energy Disaggregation Dataset (REDD), and then we aimed to advance ED research in smart grids using the Turkey Electrical Appliances Dataset (TEAD) containing household electricity usage data. In addition, the TEAD was evaluated using the proposed ED model tested with benchmark REDD data. The Internet of things (IoT) architecture with sensors and Node-Red software installations were established to collect data in the research. In the context of smart metering, a nonintrusive load monitoring (NILM) model was designed to classify household appliances according to TEAD data. A highly accurate supervised ED is introduced, which was designed to raise awareness to customers and generate feedback by demand without the need for smart sensors. It is also cost-effective, maintainable, and easy to install, it does not require much space, and it can be trained to monitor multiple devices. We propose an efficient BERT-NILM tuned by new adaptive gradient descent with exponential long-term memory (Adax), using a deep learning (DL) architecture based on bidirectional encoder representations from transformers (BERT). In this paper, an improved training function was designed specifically for tuning of NILM neural networks. We adapted the Adax optimization technique to the ED field and learned the sequence-to-sequence patterns. With the updated training function, BERT-NILM outperformed state-of-the-art adaptive moment estimation (Adam) optimization across various metrics on REDD datasets; lastly, we evaluated the TEAD dataset using BERT-NILM training.

Highlights

  • To meet the ever-growing energy demand, it is essential to monitor electricity power consumption and moderate its usage while increasing the production capacity

  • With the updated training function, bidirectional encoder representations from transformers (BERT)-nonintrusive load monitoring (NILM) outperformed state-of-the-art adaptive moment estimation (Adam) optimization across various metrics on Residential Energy Disaggregation Dataset (REDD) datasets; lastly, we evaluated the Turkey Electrical Appliances Dataset (TEAD) dataset using BERT-NILM training

  • This study introduced energy disaggregation (ED) methods that track energy efficiency, using detailed energy data to take measures to reduce consumption through nonintrusive “energy awareness”, which can be activated if smart meters are already installed

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Summary

Introduction

To meet the ever-growing energy demand, it is essential to monitor electricity power consumption and moderate its usage while increasing the production capacity. Load and energy management are essential; demand-side management (DSM) with higher potentials and better results is more common. Controlling appliances such as cooling and heating devices with great power demand during peak hours by DSM would enable us to supply a minimum level of energy to a larger group of users. DSM [1] can help the user to understand the behavior of each device connected to the grid, facilitating both the grid and the user to better manage their energy use. The DSM intervention in large industries has yielded good results in the form of accurate control of the load during peak hours, maximum demand control, preventing illegal actions, and implementing more accurately tariffs [2]

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