This application claims the priority benefit of China application serial no. 202211287681.5, filed on Oct. 20, 2022. The entirety of the above-mentioned patent application is hereby incorporated by reference herein and made a part of this specification.
The present disclosure relates to the technical field of computer artificial intelligence, relates to comprehensive processing of urban energy data, and provides a transformer-architecture-based method and system for IoT for and smart control of urban integrated energy.
The deep learning technology is a data processing technology with a process in which a huge amount of original data is mined for underlying and valuable information. It can be learned from the definition that original data must be real, objective, and noisy, while information and knowledge finally obtained should be what users can be interested in, is acceptable, and is understandable for them and should further be useful in real life. After the decomposition of acquired and processed data into diversified data sets, an effective analysis tool or algorithm is selected to perform in-depth mining and analysis, providing users with underlying valuable information and knowledge.
The deep learning technology has been applied to various areas of industrial production, especially the data processing field, for example, urban integrated energy data processing. In conventional technologies, various types of data are acquired and uploaded to a workstation for unified processing, but in one hand, there are too many types of data format, which means too much workload for a server as well as high difficulty of system maintenance and cannot ensure desirable processing speed. In the other hand, for common energy prediction scenarios in energy management, in most existing energy prediction solutions, acquired numeric data, for example, energy output data and load data, is used for predicting energy demand, while urban integrated energy data includes not only textual data such as numeric data, but an energy event usually further includes other types of data, like picture or video. As a result, existing energy management systems cannot satisfy the needs to analyze and predict a plurality of types of data.
The problem to be solved in the present invention is that a quick and efficient data processing system is needed to satisfy a requirement on urban integrated energy data management and to facilitate control of urban integrated energy and energy prediction using a plurality of types of data.
The technical solution of the present invention is a transformer-architecture-based method for IoT for and smart control of urban integrated energy, where urban integrated energy IoT information acquired by a terminal from different areas is output to a server after being standardized into a sequence signal, the IoT information includes a processed text and audio data, energy prediction is performed through learning of a deep learning network configured on the server, a smart control network is configured and built by using the deep learning network after learning, real-time prediction processing is performed on the urban integrated energy IoT information acquired in real time, a result is uploaded to a workstation for reviewing, and how a staff member handles the data result is backed up on the server; and
The present invention further provides a system for IoT for and smart control of urban integrated energy, where the system includes a service layer, an information layer, and a physical layer, where a terminal is configured in the physical layer to acquire urban integrated energy IoT information from different areas, the foregoing deep learning network is configured in the information layer and is operated to implement the foregoing control method for data analysis and prediction, a service server records a processing status of the smart control system in different scenarios, and a cloud service platform is configured to review data recorded in the service server for data management.
Deep learning is utilized in the present invention to combine architecture technologies of IoT for and smart control of urban integrated energy to implement prediction of an energy-related event and prediction of a numerical value, thereby implementing unified IoT modeling of diversified urban integrated energy as well as safe and trusted interoperation of urban integrated energy. In this way, interconnection of urban integrated energy data as information is achieved to facilitate urban economy and optimization of an industrial energy use structure.
The present invention has the following beneficial technical effects:
The system of the present invention mainly includes a service layer, an information layer, and a physical layer. Deep learning is mainly fused in the information layer, and the physical layer feeds back data information that is fused and analyzed in the information layer through deep learning. While a requirement on different scenarios is satisfied, a risk in architecture control is effectively reduced, thereby ensuring an overall sound operation of an architecture.
The FFT-Attention-based transformer architecture implements fusion of FFT and a transformer, so that the transformer can take advantage of FFT to extract a periodicity component in energy information to ensure adequate utilization of the energy information and an accurate prediction of a result. Meanwhile, an original MHA module branch is retained, to adapt to prediction of a trend. Finally, two branches are added to implement prediction of the energy information.
The information layer uploads a deep learning processing result to the service layer, where the service layer includes a server and a cloud service platform, the server records a processing status of a smart control architecture in different scenarios and outputs a table of optimized control, and the table of optimized control in the server can be reviewed on the cloud platform, thereby facilitating review and management.
In the present invention, collaboration of a terminal, a server, a deep learning network, and a workstation, is utilized to achieve a unified and standardized model for urban integrated energy IoT information, output an output of the terminal after standardization that is then input to an FFT-Attention transformer architecture for learning based on acquired data, such that energy data can be obtained for prediction. The server verifies whether the standardization is in compliance with a requirement, such that trusted interoperation between different terminals is implemented. In the present invention, data is processed through deep learning, where a large amount of data is analyzed to dig up valuable information that is then used in data management, to build a reliable and effective smart control network and process data in real time, such that only a result is required to be uploaded to the workstation for review by a staff member, while a manner of handling is backed up on the server. In this way, the same or a similar problem appeared next time can be quickly solved. As there will be an increasingly larger amount of data, there will be more and more manners of handling, and there will be more and more solutions for handling anomalous data.
As shown in
For data fed back from a terminal system, the application, logical, and physical design of the control architecture is based on deep learning in a manner of data sharing, thereby implementing effective energy allocation and management, helping build an energy operation and management system, managing edge-end user exits and data interfaces, designing a system architecture and functions of a cloud platform, and forming an information-based expression of resources, connections, and control of urban integrated energy.
Based on the transformer architecture, with the encoder-decoder architecture of a transformer, the deep learning network is combined with a fast Fourier transform (FFT) algorithm and inverse fast Fourier transform on a sequence, and an FFT-Attention mechanism is proposed. Compared with a conventional transformer architecture, frequency domain information of a sequence is given more emphasis. As energy data acquired by a terminal has a specific trend and periodicity feature, to take adequate use of the trend and periodicity features, a transformer architecture based on multi-level discrete wavelet decomposition (MDWD) and discrete Fourier transform are proposed in the present invention.
As shown in
Further, a verification rule is configured in the server to verify whether a standardization result is in compliance with a requirement, to implement trusted interoperation of different terminals, and then data is processed through deep learning.
The present invention further provides a transformer-architecture-based system for IoT for and smart control of urban integrated energy, where the service, information, and physical design of the control architecture is based on data fed back from a terminal system by using a manner of data sharing. The control system includes a service layer, an information layer, and a physical layer. A terminal is configured in the physical layer to acquire urban integrated energy IoT information from different areas, where an operational status and information of the system is acquired mainly by a terminal acquisition device, for example, a sensor, to implement real-time acquisition and unified processing of information for a device and equipment. The foregoing deep learning network is configured in the information layer and is operated to implement the foregoing control method for data analysis and prediction. The service layer includes a service server and a cloud service platform. The service server records a processing status of the smart control system in different scenarios, and the cloud service platform is configured to review data recorded in the service server for data management. By using the system of the present invention, existing data can be analyzed for prediction and includes, but is not limited to, speech and word information. A probability of an energy-related event that may happen in the future, for example, an increase or drop of a future energy price, or an increase and decrease of a required amount, is predicted, to facilitate sound allocation of energy and achieve timely and real-time data transmission.
Number | Date | Country | Kind |
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202211287681.5 | Oct 2022 | CN | national |
Number | Date | Country | |
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20240134323 A1 | Apr 2024 | US |