论文标题

一种强大的方法,可以使高能消费的工业负载与深度学习

A Robust Approach for the Decomposition of High-Energy-Consuming Industrial Loads with Deep Learning

论文作者

Cui, Jia, Jin, Yonghui, Yu, Renzhe, Okoye, Martin Onyeka, Li, Yang, Yang, Junyou, Wang, Shunjiang

论文摘要

就关键决策而言,对用户电力消耗模式的了解是公用事业公司与电力消费者之间的重要协调机制。因此,负载分解对于揭示负载消耗及其特性之间的潜在关系至关重要。但是,负载分解通常是在住宅和商业负载上进行的,并且没有对高能消费的工业负载进行足够的考虑,从而导致结果效率低下。因此,本文着重于工业公园负载的负载分解(IPL)。然而,常规方法中常用的参数在高能耗尽的工业载荷中不可能。因此,开发了一种更健壮的方法,该方法包括一个三载模型,以在IPL上实现此目标。首先,提出了改进的变分模式分解(IVMD)算法,以降低IPL的训练数据并提高其稳定性。其次,卷积神经网络(CNN)和简单的复发单元(SRU)关节算法用于使用基于IPL特征的双层深度学习网络实现IPL的非侵入性和非侵入性分解过程。具体而言,CNN用于提取IPL数据特征,而改进的长期和短期内存(LSTM)网络SRU采用了开发分解模型并进一步训练负载数据。通过强大的分解过程,提取了负载消耗中的潜在关系。从数值示例中获得的结果表明,这种方法在常规分解过程中的表现优于最新方法。

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 variational mode decomposition (IVMD) algorithm is introduced to denoise the training data of the IPL and improve its stability. Secondly, the convolutional neural network (CNN) and simple recurrent units (SRU) joint algorithms are used to achieve a non-intrusive and non-invasive decomposition process of the IPL using a double-layer deep learning network based on the IPL characteristics. Specifically, CNN is used to extract the IPL data characteristics while the improved long and short-term memory (LSTM) network, SRU, is adopted to develop the decomposition model and further train the load data. Through the robust decomposition process, the underlying relationship in the load consumption is extracted. The results obtained from the numerical examples show that this approach outperforms the state-of-the-art in the conventional decomposition process.

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