A Multi-Head Convolutional Neural Network Based Non-Intrusive Load Monitoring Algorithm Under Dynamic Grid Voltage Conditions
Himanshu Grover, Lokesh Panwar, Ashu Verma, B. K. Panigrahi, T. S., Bhatti

TL;DR
This paper introduces an advanced multi-head CNN-based NILM algorithm that effectively estimates appliance power consumption under dynamic grid voltage conditions, improving accuracy and robustness in smart building energy management.
Contribution
The paper presents a novel multi-head CNN with an attention layer for NILM, specifically designed to handle dynamic grid voltage variations, which is a significant advancement over existing methods.
Findings
The proposed model accurately identifies appliances and their power consumption.
It performs well under dynamic grid voltage conditions in laboratory and real-world data.
The model outperforms existing NILM techniques in accuracy and robustness.
Abstract
In recent times, non-intrusive load monitoring (NILM) has emerged as an important tool for distribution-level energy management systems owing to its potential for energy conservation and management. However, load monitoring in smart building environments is challenging due to high variability of real-time load and varied load composition. Furthermore, as the volume and dimensionality of smart meters data increases, accuracy and computational time are key concerning factors. In view of these challenges, this paper proposes an improved NILM technique using multi-head (Mh-Net) convolutional neural network (CNN) under dynamic grid voltage conditions. An attention layer is introduced into the proposed CNN model, which helps in improving estimation accuracy of appliance power consumption. The performance of the developed model has been verified on an experimental laboratory setup for multiple…
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Taxonomy
TopicsSmart Grid Energy Management · Energy Load and Power Forecasting · Building Energy and Comfort Optimization
