A Robust Approach for the Decomposition of High-Energy-Consuming Industrial Loads with Deep Learning
Jia Cui, Yonghui Jin, Renzhe Yu, Martin Onyeka Okoye, Yang Li, Junyou, Yang, Shunjiang Wang

TL;DR
This paper presents a robust deep learning-based method for decomposing high-energy industrial loads, improving accuracy and stability over traditional approaches by combining denoising and advanced neural network techniques.
Contribution
It introduces a novel three-algorithm model integrating IVMD, CNN, and SRU for effective load decomposition in industrial settings.
Findings
Outperforms conventional decomposition methods in accuracy.
Effectively denoises data using IVMD.
Accurately captures load characteristics with CNN and SRU.
Abstract
The knowledge of the users' electricity consumption pattern is an important coordinating mechanism between the utility company and the electricity consumers in terms of key decision makings. The load decomposition is therefore crucial to reveal the underlying relationship between the load consumption and its characteristics. However, load decomposition is conventionally performed on the residential and commercial loads, and adequate consideration has not been given to the high-energy-consuming industrial loads leading to inefficient results. This paper thus focuses on the load decomposition of the industrial park loads (IPL). The commonly used parameters in a conventional method are however inapplicable in high-energy-consuming industrial loads. Therefore, a more robust approach is developed comprising a three-algorithm model to achieve this goal on the IPL. First, the improved…
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Taxonomy
MethodsSigmoid Activation · Highway Layer · SRU · Iterative Pseudo-Labeling
