The present invention belongs to the field of digital twin, and specifically is a construction method of digital twin for structure performance of an intelligent excavator.
An intelligent excavator is a key device of open-pit mining and plays an important role in the mining of mineral resources. Due to a harsh working environment, high working intensity and long working time, there are potential structural failure risks. Moreover, once the structural failure occurs, it will bring great economic loss and even casualties. Therefore, in order to guarantee a safe and continuously stable operation of the intelligent excavator, it is necessary to conduct real-time monitoring for the structure performance of the intelligent excavator. With the rapid popularization and application of big data, Internet of Things, cloud computing and other new generation of information and communication technologies, the real application of the digital twin technology obtains a technical guarantee. The digital twin is a concept of virtuality and reality combination, and generally includes a physical entity, a virtual entity and connection there between. Using an idea of the digital twin, a system capable of high-fidelity description of a physical entity on multiple dimensions and time scales can be constructed, which can simulate, control and diagnose states and behaviors of the physical entity in a real environment in real time, and characterize some information that can not be directly observed. In order to conduct fusion of real dynamic operation data and virtual performance analysis data to realize the monitoring of a working state of the intelligent excavator during the operation, a digital twin system for real-time monitoring of the structure performance information on the intelligent excavator needs to be invented.
In the context of an increasing demand for the monitoring of structure performance of an intelligent excavator, the present invention proposes a monitoring method for the structure performance of the intelligent excavator based on a digital twin by comprehensively analyzing defects and deficiencies of a real-time calculation method of the existing structure performance, and by monitoring the structure performance of the intelligent excavator to construct the digital twin, integrates a physical geometry module, a communication module, an algorithm module and a real-time virtual display module, to realize the real-time monitoring display for the performance of parts of the intelligent excavator in the excavation process.
To achieve the above purpose, the present invention adopts the following technical solution:
a construction method of a digital twin for structure performance of an intelligent excavator, wherein the method is realized based on the combination of a digital twin system with a physical geometry module, a communication module, an algorithm module and a real-time virtual display module: firstly, in the physical geometry module, according to a real geometry of the intelligent excavator, planning each action unit of an excavation action, paying attention to space geometry positions and mutual cooperation relationship among parts, installing industrial sensors on the key monitored parts, and extracting input variables, to ensure the real-time capture of the excavation action; secondly, conducting data processing and fusion through a decoding system of the communication module, to conduct lightweight storage and transmission on the real-time motion data; once again, introducing data into an algorithm module to build a mathematical model, and constructing the corresponding mathematic relation between the physical motion information and the structure performance information; finally, introducing the structure performance information for rendering into the real-time virtual display module, to display the structure performance and an external motion behavior in the virtual twin on multiple terminal platforms; and storing the operating data via the data storage and management, to continuously correct the mathematical model in the algorithm module, thereby ensuring the high fidelity of the digital twin. The method comprises the following specific steps:
in a first step, for the intelligent excavator, a physical entity part of the digital twin system is constructed firstly via the physical geometry module. The physical geometry module contains a sensing unit, a control unit, a drive unit, and an action realization unit, specifically:
firstly, a working environment of the intelligent excavator is collected in real time. Through a three-dimensional (3D) scanner in the sensing unit, the three-dimensional solid model building of an excavated material pile is realized to facilitate the real-time observation of an excavating operation progress. Through the statics analysis on each key part of the intelligent excavator, such as bucket, big arm, gear, the key factors affecting the structure performance of the parts of the intelligent excavator are determined. The input variables of operation working conditions of the excavator in the excavation process and the performance information on a demand solution are extracted. Therefore, corresponding industrial sensors are arranged on the key parts to collect real-time operation working condition information.
Secondly, the excavation action is planned according to a concrete shape of the excavated material pile. The corresponding motion instruction is input into a single chip microcomputer of the control unit, the motion instruction plans the travel of a stepping motor and a rotary encoder in the drive unit, and the related parts in the action realization unit can be controlled to carry out the excavating operation according to the specified excavation tracks, to enable the intelligent excavator to excavate with smaller power consumption and larger fillability.
Finally, the monitoring of the three-dimensional space position and motion cooperation relationship of the entity model of each key part of the intelligent excavator in the excavating operation process is realized; and data information is provided for the model building in the subsequent real-time monitoring display module.
In a second step, the real-time operation working condition information on the key parts collected through the industrial sensors in the above physical geometry module is input into the communication module, and the real-time data collected by the industrial sensors are classified and distributed through various protocols and data cleaning and classification systems in the communication module. The intelligent excavator is equipped with an upper industrial personal computer with data storage, data processing and wireless communication functions, and the sensing unit, the control unit and the drive unit in the physical geometry module are in a wired connection with the upper industrial personal computer through a USB interface for storing the historical operating data and the real-time data collected through the industrial sensors into the upper industrial personal computer. The sensing unit, the control unit and the drive unit in the physical geometry module can be wirelessly connected with the upper industrial personal computer through a PC terminal. The above data are read, the data are processed through the data cleaning and classification system, and the data processed through different communication protocols are transmitted to different terminals, thereby realizing concise, lightweight and standardization transmission communication.
In a third step, a deep neural network method which has the advantage of accurate and fast prediction is selected through the algorithm module, to establish the correlation between the actual operation working conditions and the internal structure performance information on parts. Firstly, a training set and a test set required by a construction algorithm are selected to build a deep neural network model and test the precision of the deep neural network model respectively. The input working condition information determined by the static analysis in the physical geometry module is used as an input variable. An input working condition set representing the whole design space is uniformly selected, and the structural mechanics information corresponding to the input working condition set is solved by a finite element method to be used as an output variable. The deep neural network is built using the training set, and the correlation between the actual operation working conditions and the structural mechanics performance of the parts is constructed. The precision of the deep neural network model is tested by using the selected test set, and a determination coefficient R2 is selected as a model precision test index, to ensure the accuracy of the built model.
In a fourth step, the internal performance information on the parts is rapidly calculated according to the real-time operation working conditions transmitted by the communication module. On the basis of the deep neural network model in the third step, the operation working condition information on the intelligent excavator is collected in real time by using the industrial sensors arranged on the key parts, which is stored by the upper industrial personal computer arranged in the intelligent excavator through the communication module. At the PC terminal, wireless connection is used to communicate with the upper industrial personal computer. Through data cleaning and classification, the processed data is taken as input, the calculation is conducted by the deep neural network model, and the structural mechanics performance of the intelligent excavator under the current operation working conditions is solved. The data are connected with the real-time monitoring display module by using a Web Socket communication protocol.
In a fifth step, the three-dimensional rendering display is conducted on the performance information through the real-time monitoring display module. A browser is selected as a monitoring display platform, and a virtual three-dimensional scenario is constructed, to realize the intuitive and high-fidelity twin mapping of the structure performance of the intelligent excavator. Through a browser rendering engine, three. Js based on a WebGL standard is adopted as a scripting language for the three-dimensional rendering display, and the advantage is that underlying graphics hardware is used to speed up graphics rendering, achieving real-time display requirements, specifically:
firstly, the three-dimensional model of the parts is imported into the constructed virtual three-dimensional scenario in a GLTF format, and the three-dimensional space position of the parts in the physical geometry module and the information on the motion coordination among the parts are used to construct the initial three-dimensional display, realizing the motion synchronization between a virtual three-dimensional model and a real physical model.
Secondly, the structure performance information on the key parts is displayed, the model of the key parts is imported in a tetrahedral form, and the real-time performance information on the parts is calculated on a tetrahedral node through the deep neural network model of the algorithm module, to display the change to the structure performance in a three-dimensional cloud image form.
Finally, the UI interface planning of the real-time monitoring display module is realized, and operating limit positions of the parts are monitored in real time, thereby realizing timely warning and preventing accidents. Moreover, for the drawing of excavation tracks in the excavation process of the intelligent excavator, the virtual visualization excavating is realized.
The present invention has the following beneficial effects: the present invention realizes the real-time calculation of the internal structure mechanics performance of the parts by using a deep neural network algorithm and a sensor communication technology under multiple operation working conditions of the intelligent excavator, and evaluates, predicts and conducts feedback-based optimization for the performance of the intelligent excavator by combining the actual collected data. The present invention only uses a small amount of sensor information to realize the high-fidelity real-time display of the structure performance information on the intelligent excavator during the whole operating action period, and to realize the real-time monitoring for the performance of each key part of the intelligent excavator and prevent accidents.
In the figures: 1 rotary body, 2 A-shaped frame, 3 large arm, 4 gear, 5 head sheave, 6 bucket.
The technical solution of the present invention is further described below in detail in combination with the drawings and the specific embodiment which is described to only explain the present invention but not to limit the present invention.
The present invention builds a digital twin for structure performance of an intelligent excavator. Referring to
Referring to
The specific embodiments of the present invention will be further described below through the embodiments.
The establishment for the digital twin of the intelligent excavator is specifically taken as an example for illustration.
Taking the intelligent excavator as an object instance, referring to
The communication module of the intelligent excavator is completed around the upper industrial personal computer installed in the excavator. Referring to
Referring to
To sum up, by the related calculation information on the above physical geometry module and the algorithm module, the real-time virtual display module of the digital twin is built through data communication transmission in the communication module. In order to visually display the performance information of the intelligent excavator, a digital twin performance display platform is built by computer graphics technology. Referring to
Although the present invention is disclosed above through preferred embodiments, the above preferred embodiments are not used to limit the present invention. Any of those skilled in the art may make possible amendments and modifications to the above technical content of the present invention using the above disclosed method and technical contents without departing from the spirit and scope of the present invention. Thus, any simple amendment, equivalent change and modification made to the above embodiments according to the technical essence of the present invention without departing from the content of the technical solution of the present invention shall belong to the scope of the technical solutions of the present invention.
This description is merely the example of the implementation forms of the inventive concept. The protection scope of the present invention shall not be limited to the specific forms described in the embodiments, but shall also involve the equivalent technical means that can be contemplated by those skilled in the art according to the inventive concept.
Number | Date | Country | Kind |
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202110017331.6 | Jan 2021 | CN | national |
Filing Document | Filing Date | Country | Kind |
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PCT/CN2021/122532 | 10/8/2021 | WO |