Sustainable Operation and Maintenance Modeling and Application of Building Infrastructures Combined with Digital Twin Framework
Abstract
:1. Introduction
2. Literature Review
2.1. Operation Management of Building Infrastructures
2.2. Intelligent Operation and Maintenance and DT
2.3. Sustainable Operations
3. Sustainable Operation and Maintenance Process of Building Infrastructures Based on DT
4. Establishment of a Sustainable Operation Model for Building Infrastructures
4.1. DT Framework of Building Infrastructures
4.2. Establishment of DT Model of Building Infrastructures
4.3. Digital Twinning and Visualization for Building Infrastructure
4.3.1. DT Data Acquisition Method
4.3.2. DT Data Processing
4.3.3. DT Data Visualization
4.4. Event Prediction
4.5. Energy Consumption Prediction
5. Model Application Verification
5.1. Background of the Experiment
5.2. Data Collection
5.3. Data Sorting and Analysis
5.3.1. Data Collation
5.3.2. Preliminary Data Analysis
5.3.3. Event Prediction Application
Personnel Type (P) | p1 Student | p2 Social personnel |
Weather (W) | w1 Fine weather | w2 Bad weather |
Social Activities (S) | s1 Active | s2 No activity |
Campus activities (C) | c1 Campus activities | c2 No campus activities |
Time (T) | t1 Non-working hours | t2 Working hours |
Equipment Status (E) | e1 Good equipment | e2 Equipment abnormality |
Using the Playground NO.1 (U) | u1 Use | u2 Not in use |
6. Verification and Discussion
6.1. Three Groups of Tests
- Classify the energy consumption according to the monthly average energy consumption level and use random forest to sort the weight of influencing factors.
- 2.
- Bring the specific value of energy consumption into the random forest algorithm for result operation:
- 3.
- Detect abnormal states using the prediction results of random forest energy consumption.
6.2. Discussion and Suggestions
- (1)
- In the aspect of building energy conservation, the start-stop adjustment of equipment should be carried out in combination with possible activity events to avoid unnecessary energy waste.
- (2)
- In the process of building operation and maintenance, the automatic inspection of equipment through computers and other equipment can quickly and accurately query the abnormal state, assist the operation and maintenance personnel in finding the specific abnormal reasons in time, and should be more comprehensively promoted and enabled.
- (3)
- We can make full use of the computer’s ability to process data to conduct reverse queries on the influencing factors of operation and maintenance. Even if the influencing factors of the operation and maintenance process are adjusted, the auxiliary operation and maintenance personnel can better carry out the operation and maintenance work in combination with the latest influencing factors to make the operation and maintenance system sustainable.
7. Conclusions
- (1)
- By considering the structural attributes, functional attributes, environmental factors, event factors, and energy consumption characteristics of building infrastructures, combined with the digital twin model, Bayesian network and random forest algorithm, the framework makes the correlation factors between data clear.
- (2)
- The DT prediction model is divided into two parts: event prediction and energy consumption prediction. Therefore, the model can continuously reveal the influencing factors. Optimizing the prediction performance through experimental verification, combined with 146 days of measured data to verify, the model AUC of ROC is 0.89, indicating that the model is reliable. In the energy consumption prediction stage, the minimum absolute error percentage is 0.38%, and the average accuracy rate is 95.6%, predicting good results. During the exception event tracking phase, all six hidden test exception data were discovered; the model has excellent event mining capabilities.
- (3)
- Since the prediction of events is added to the model, the model can reverse the known energy consumption to deduce which events may occur and assist the daily operation or safety monitoring of the stadium. The ability of event backtracking and factor expansion makes the model an evolutionary model that can be iterated and upgraded.
- (1)
- There could be more types of event factors and operation and maintenance processes of energy consumption, benefits and other factors associated with the relationship between mining.
- (2)
- The method of event data collection could further expand and improve the level of automatic voice.
- (3)
- Digital twin systems could better predict the results of simulation display and improve the practical application effect.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Environment | Equipment | ||||
---|---|---|---|---|---|
Maximum air temperature | Tem_H | float (preserves 1 decimal place) | Air conditioning status | AirCon_1 AirCon_2 …… | int (0 start no fault, 1 start minor fault, does not affect use, 2 start and serious fault, 3 not start) |
Minimum air temperature | Tem_L | float (preserves 1 decimal place) | Light status | Light_1 Light_2 …… | |
Wind level | Wind | int | Heating status | HeatEqu_1 HeatEqu_2 …… | |
Weather types | Weather | int (0 sunny, 1 cloudy, 2 cloudy, 3 light snow, 4 medium snow, 5 heavy snow, 6 blowing sand, 7 light rain, 8 sleet) | |||
Event | Energy Consumption | ||||
Medical prevention and control | Prevent | int (0 normal, 1 area control pedestrian flow, 2 strict control of access, 3 closed management) | Electrical energy (kW·h) | Elec | float (preserves 1 decimal place) |
Social activities | Act_Soc | int (0 no, 1 yes) | Water resources (t) | Water | float (preserves 1 decimal place) |
Is there a holiday? | Holiday | int (0 not on holiday, 1 on holiday) | Personnel factors | ||
Activities in region | Act_Reg | int (0 no, 1 yes) | personnel gender | Gender | int (0 female, 1 male) |
Working day | Work | int (0 non working day, 1 working day) | Age of personnel | Age | int retains age integers |
Experimental Subjects | Test Method | Data Type | Comparison of Results |
---|---|---|---|
Service hall of Olympic Badminton Stadium | Take a piece of data for a period of time as the data set, randomly select about 70% of the overall data as the training set, and randomly select 30% as the verification set. The digital twin model is used for simulation, and the training set data are used to predict the future lighting, temperature, air supply, and other parameters, and predict the energy consumption change in each period. | 1. Main data: Power consumption, temperature and humidity, number of personnel, weather, and equipment startup status. 2. Auxiliary data: Sound, wind speed, data of opening and closing windows, data of opening and closing doors, and activity. | 1. The prediction value is compared with the prediction of the validation set and if the accuracy of the overall prediction value is more than 80% then the prediction model is feasible. 2. Set the energy-saving regulation prediction and compare the prediction results with the verification set data again. Find the difference, compare the data of each dimension at this time, and achieve energy-saving improvement measures. |
Sensor Name | Type | Function |
---|---|---|
Temperature and humidity sensor | DHT11 | Collect temperature and humidity data in the space. |
Vibration sensor | UltiRobot | Detect the vibration in the activity site. |
Air Ultrasonic Ceramic Transducers | URM04 RS485 | Monitor the distance between the window and the window frame to judge the window opening value. |
Light sensor | —— | Read indoor and outdoor light intensity. |
Sound sensor | —— | Monitor sound loudness. |
Air flow sensor | —— | Monitor air flow. |
Human infrared sensor | —— | Monitor the flow of people in and out of the door. |
Camera | Sentry2 k210 | Capture the number of indoor personnel. |
Wi-Fi module | ESP8266 | Connect all data collection terminals to form an IoT system. |
Multi-function electric meters | Three-phase guide rail | Monitor the power consumption of each circuit. |
Number | Corresponding Content | Probability of Someone Playing | Probability of Using Site 1 |
---|---|---|---|
1 | Working period | 0.33 | 0.5 |
2 | The outdoor weather is good | 0.7 | 0.3 |
3 | Major badminton competitions are being held | 0.1 | 0.5 |
4 | There are competitions in the school | 0.5 | 0.7 |
5 | Students use probability | 0.3 | 0.3 |
6 | The site environment and relevant equipment are in good condition | 0.95 | 0.7 |
Number | Feature | Influence Weight |
---|---|---|
0 | Maximum temperature of the day | 0.359321 |
1 | Minimum temperature of the day | 0.229884 |
2 | Weather condition | 0.051107 |
3 | Condition of equipment | 0.089802 |
4 | Wind level | 0.019261 |
5 | Medical protection control | 0.059630 |
6 | Whether it is a working day | 0.048962 |
7 | Winter vacation or not | 0.115273 |
8 | There are related large-scale activities in society | 0.010520 |
9 | Campus activities | 0.016242 |
Number | Feature | Influence Weight |
---|---|---|
0 | Maximum temperature of the day | 0.61 |
1 | Minimum temperature of the day | 0.166 |
2 | Weather conditions | 0.022 |
3 | Equipment situation | 0.086 |
4 | Wind level | 0.018 |
5 | Epidemic control | 0.045 |
6 | Workday | 0.031 |
7 | Is there a holiday | 0.007 |
8 | Large social events | 0.009 |
9 | On-campus activities | 0.007 |
Data Number | Date | Power Consumption (kWh/day) | Predicted Power Consumption (kWh/day) | Error Magnitude | Mean Percentage Error | Abnormal Cause Tracing |
---|---|---|---|---|---|---|
10 | 22 January 2022 | 267.1 | 308 | 40.9 | 0.153126 | Snowy and non-working days |
26 | 7 February 2022 | 253.2 | 302 | 48.8 | 0.192733 | Unknown |
33 | 14 February 2022 | 457 | 340 | −117 | 0.256018 | Serious equipment anomalies |
38 | 19 February 2022 | 177 | 264 | 87 | 0.491525 | Serious equipment anomalies |
47 | 28 February 2022 | 232.8 | 278 | 45.2 | 0.194158 | Serious equipment anomalies |
48 | 1 March 2022 | 322.3 | 272 | −50.3 | 0.156066 | Serious equipment anomalies |
109 | 1 May 2022 | 107.5 | 129 | 21.5 | 0.2 | First week of strict epidemic control |
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Jiao, Z.; Du, X.; Liu, Z.; Liu, L.; Sun, Z.; Shi, G. Sustainable Operation and Maintenance Modeling and Application of Building Infrastructures Combined with Digital Twin Framework. Sensors 2023, 23, 4182. https://doi.org/10.3390/s23094182
Jiao Z, Du X, Liu Z, Liu L, Sun Z, Shi G. Sustainable Operation and Maintenance Modeling and Application of Building Infrastructures Combined with Digital Twin Framework. Sensors. 2023; 23(9):4182. https://doi.org/10.3390/s23094182
Chicago/Turabian StyleJiao, Zedong, Xiuli Du, Zhansheng Liu, Liang Liu, Zhe Sun, and Guoliang Shi. 2023. "Sustainable Operation and Maintenance Modeling and Application of Building Infrastructures Combined with Digital Twin Framework" Sensors 23, no. 9: 4182. https://doi.org/10.3390/s23094182
APA StyleJiao, Z., Du, X., Liu, Z., Liu, L., Sun, Z., & Shi, G. (2023). Sustainable Operation and Maintenance Modeling and Application of Building Infrastructures Combined with Digital Twin Framework. Sensors, 23(9), 4182. https://doi.org/10.3390/s23094182