4.6 Article

Multi-directional gated recurrent unit and convolutional neural network for load and energy forecasting: A novel hybridization

期刊

AIMS MATHEMATICS
卷 8, 期 9, 页码 19993-20017

出版社

AMER INST MATHEMATICAL SCIENCES-AIMS
DOI: 10.3934/math.20231019

关键词

load and energy forecasting; multi-directional gated recurrent unit (MD-GRU); convolutional neural networks; spatial and temporal; high dimensionality; long term dependencies

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Energy operations and schedules are greatly influenced by load and energy forecasting systems. An effective system is necessary for a sustainable and fair environment. Advanced techniques, such as deep learning, have been used to predict energy consumption and learn long-term dependencies. In this study, a fusion of multi-directional gated recurrent unit (MD-GRU) with convolutional neural network (CNN) using global average pooling (GAP) is proposed for load and energy forecasting, showing improved accuracy compared to traditional methods.
Energy operations and schedules are significantly impacted by load and energy forecasting systems. An effective system is a requirement for a sustainable and equitable environment. Additionally, a trustworthy forecasting management system enhances the resilience of power systems by cutting power and load-forecast flaws. However, due to the numerous inherent nonlinear properties of huge and diverse data, the classical statistical methodology cannot appropriately learn this non-linearity in data. Energy systems can appropriately evaluate data and regulate energy consumption because of advanced techniques. In comparison to machine learning, deep learning techniques have lately been used to predict energy consumption as well as to learn long-term dependencies. In this work, a fusion of novel multi-directional gated recurrent unit (MD-GRU) with convolutional neural network (CNN) using global average pooling (GAP) as hybridization is being proposed for load and energy forecasting. The spatial and temporal aspects, along with the high dimensionality of the data, are addressed by employing the capabilities of MD-GRU and CNN integration. The obtained results are compared to baseline algorithms including CNN, Long Short-Term Memory (LSTM), Bidirectional Long Short-Term Memory (Bi-LSTM), Gated Recurrent Unit (GRU), and Bidirectional Gated Recurrent Unit (Bi-GRU). The experimental findings indicate that the proposed approach surpasses conventional approaches in terms of accuracy, Mean Absolute Percentage Error (MAPE), and Root Mean Square Error (RSME).

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