A Fast Operation Method for Predicting Stress in Nonlinear Boom Structures Based on RS–XGBoost–RF Model
Abstract
:1. Introduction
- (1)
- A criterion for model fusion is proposed to address the challenge of balancing prediction accuracy and efficiency when employing machine learning models for stress prediction in concrete pump truck boom structures. The criterion sets a fitting accuracy threshold r based on the user’s requirements. If the prediction accuracy of a single model achieves the threshold, only the RF model is utilized. Otherwise, model fusion is employed.
- (2)
- To mitigate the detrimental effects of poor-quality sample data, high feature dimensions, and nonlinear conditions on stress prediction accuracy, an intelligent prediction algorithm based on the RS–XGBoost–RF model is introduced. This algorithm combines the random search algorithm (RS), random forest (RF), and extreme gradient boosting tree (XGBoost), leveraging their complementary strengths.
- (3)
- Addressing the challenges associated with search instability, inefficiency, and incompleteness in traditional intelligent optimization algorithms used for hyperparameter optimization, the RS–XGBoost prediction model is proposed for the hyperparameter optimization of the RF model. This model capitalizes on the synergy between search and prediction mechanisms.
2. Background and Related Works
2.1. Current Technical Specifications and Related Standards for Pump Trucks
2.2. Methods of Stress Analysis and Testing
2.3. Related Technologies for Machine Learning
3. Methodology
3.1. Random Forest (RF)
3.2. Extreme Gradient Boosting Tree (XGBoost)
3.3. Random Search (RS)
3.4. Model Evaluations
4. Data Sources and Analyses
4.1. Data Acquisition
4.2. Data Preprocessing
- (1)
- Data aggregation
- (2)
- Data Cleaning [43]
- (3)
- Data after cleaning and aggregation
Acquisition Time | 20191229 12:20:33:32 | 20191229 13:54:53:44 | 20191231 22:56:11:85 | 20200118 03:00:11:16 | 20200118 03:00:11:43 | 20200106 19:11:06:23 | |
---|---|---|---|---|---|---|---|
Pressure in chamber of boom/kN | Rod | 28.89 | 25.75 | 0.85 | 18.12 | 18.12 | 32.12 |
Non-rod | 12.23 | 2.08 | 6.62 | 3.78 | 3.79 | 17.97 | |
Pumping pressure/kN | 3.7 | 14.44 | 0 | 5.01 | 4.99 | 4.62 | |
Rotation angle/° | −145 | −143 | −70 | −204 | −204 | −250 | |
The tiltangle of boom/° | 1 | 42 | 35 | 2 | 72 | 72 | 38 |
2 | 32 | −33 | −175 | 4 | 6 | 36 | |
3 | −11 | 31 | 4 | −25 | −25 | −3 | |
4 | −21 | −28 | −176 | −32 | −32 | −19 | |
5 | −83 | −79 | 1 | −123 | −123 | −47 | |
6 | −82 | −81 | 1 | −123 | −123 | −49 | |
Strain value/με | M1C1 | 3484 | −120.1 | 3101.8 | −331.6 | −331.9 | −178.9 |
M1C2 | −562.3 | −672.1 | −0.9 | −364.3 | −364.1 | −555.1 | |
M1C3 | 518.6 | 661.9 | −303.8 | 361.4 | 361.2 | 491.6 | |
M1C4 | −773 | −723.8 | 96.9 | −428.8 | −428.8 | −601.5 | |
M2C1 | 292.1 | 407.5 | 121.9 | 233.4 | 233.3 | 253.6 | |
M2C2 | −406.4 | −554.7 | 135.0 | −250.4 | −251.8 | −300.8 | |
M2C3 | −452.8 | −593.1 | 190.9 | −369.6 | −369.7 | −409.4 | |
M2C4 | 335.8 | 403.9 | −120.1 | 359.8 | 359.8 | 350.3 | |
M4C1 | 52.0 | 132.4 | −4.9 | −358.6 | −357.1 | −162 | |
M4C3 | −2.2 | 469.3 | 38.1 | 545.7 | 545.5 | 484.1 |
- (4)
- Data conversion
5. Stress Prediction for Nonlinear Boom Structures of Pump Trucks
5.1. RS–XGBoost–RF Model
- (1)
- Fusion condition
- (2)
- Model selection
- (3)
- Model fusion methods
5.2. Implementation Process of Stress Prediction Based on RS–XGBoost–RF Model
6. Results and Discussion
6.1. Stress Prediction Results
6.2. Sensitivity Analysis
6.3. Convergence Test
6.4. Method Comparison and Discussion
- (1)
- Longitudinal comparison
- (2)
- Horizontal comparison
- (3)
- Comparison with other methods
7. Conclusions
- (1)
- Based on the user’s requirements, the decision criterion for model fusion is based on prediction efficiency. If the fitting accuracy of the RF model reaches the threshold r, the prediction results can be directly outputted. Otherwise, model fusion is initiated. Despite the fused model being more complex than the single RF model, it offers improved prediction accuracy within acceptable engineering practice standards. Therefore, establishing model fusion judgment conditions holds practical significance.
- (2)
- In line with the model fusion concept, the RS algorithm, RF model, and XGBoost model are selected for fusion. It results in four combinations, RS–XGBoost–RF, RS–RF–RF, RS–RF–XGBoost, and RS–XGBoost–XGBoost models. Comparative analysis reveals that all fusion models outperform the original RF model in terms of prediction effectiveness. Additionally, considering the inherent strengths and weaknesses of each model and their compatibility with sample data, it is determined that the RS–XGBoost–RF model exhibits the most superior prediction performance.
- (3)
- A novel RS–XGBoost prediction model for hyperparameter optimization of RF models is introduced, leveraging the synergy between search and prediction mechanisms. This model predicts optimal hyperparameter combinations through random search. The model achieves accurate and efficient hyperparameter optimization for RF models compared to single RS and PSO algorithms. It overcomes issues related to incomplete, unstable, and inefficient search. Utilizing the optimal RS–XGBoost–RF model, the fit of M4C1 is improved to 0.9303, while the fit of other measurement points remains above 0.955. Furthermore, the errors of mean absolute error (MAE) and root mean square error (RMSE) concerning stress values are constrained within the ranges of 2.22% to 3.91% and 4.79% to 7.85%, respectively. Overall, these errors are minimal, indicating high efficiency.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
- Jiang, S.; Zhang, W.; Chen, X.; Cao, G.; Tan, Y.; Xiao, X.; Liu, S.; Yu, Q.; Tong, Z. CFD-DEM simulation research on optimization of spatial attitude of concrete pumping boom based on evaluation of minimum pressure loss. Powder Technol. 2022, 403, 117365. [Google Scholar] [CrossRef]
- Meiringer, M.; Kugi, A.; Kemmetmüller, W. Semi-autonomous operation of a mobile concrete pump. Autom. Constr. 2023, 156, 105079. [Google Scholar] [CrossRef]
- Yuying, S.; Wei, Z.; Jixin, W. A boom damage prediction framework of wheeled cranes combining hybrid features of acceleration and Gaussian process regression. Measurement 2023, 221, 113401. [Google Scholar]
- GB/T 3811-2008; Design Rules for Cranes. National Standards of the People’s Republic of China: Beijing, China, 2008.
- Wang, X.; Fan, W.; Gu, D. Applicability analysis of theoretical method for crane boom stress. Chin. J. Constr. Mach. 2018, 16, 389–393. [Google Scholar]
- Rantalainen, T.T.; Mikkola, A.M.; Moisio, S.M.; Marquis, G.B. A Method for Obtaining the Dynamic Stress History from a Flexible Multibody Simulation Using Sub-Modeling#. Mech. Based Des. Struct. Mach. 2013, 41, 316–336. [Google Scholar] [CrossRef]
- Hrabovský, L.; Čepica, D.; Frydrýšek, K. Detection of mechanical stress in the steel structure of a bridge crane. Theor. Appl. Mech. Lett. 2021, 11, 100299. [Google Scholar] [CrossRef]
- You, K.; Zhou, C.; Ding, L. Deep learning technology for construction machinery and robotics. Autom. Constr. 2023, 150, 104852. [Google Scholar] [CrossRef]
- Bertolini, M.; Mezzogori, D.; Neroni, M.; Zammori, F. Machine Learning for industrial applications: A comprehensive literature review. Expert Syst. Appl. 2021, 175, 114820. [Google Scholar] [CrossRef]
- Xu, B.; Deng, J.; Liu, X.; Chang, A.; Chen, J.; Zhang, D. A review on optimal design of fluid machinery using machine learning techniques. J. Mar. Sci. Eng. 2023, 11, 941. [Google Scholar] [CrossRef]
- GB/T 32542-2016; Building Construction Machinery and Equipment—Distributing Mast for Concert Pumps Principles of Calculation and Stability. National Standards of the People’s Republic of China: Beijing, China, 2016.
- GB/T 39757-2021; Building Construction Machinery and Equipment—Code of Practice for the Safe Use of Concrete Pumps and Mobile Concrete Pumps with Boom. National Standards of the People’s Republic of China: Beijing, China, 2021.
- GB/T 41495-2022; Specification for Truck-Mounted Concrete Pump Maintenance, Repair and Scrap. National Standards of the People’s Republic of China: Beijing, China, 2022.
- QC/T 718-2013; Truck Mounted Concrete Pump. National Standards of the People’s Republic of China: Beijing, China, 2013.
- ISO 21573-2:2020; Building Construction Machinery and Equipment—Concrete Pumps—Part 2: Procedure for Examination of Technical Parameters. ISO: Geneva, Switzerland, 2020.
- BS EN 12001:2012; Conveying, Spraying and Placing Machines for Concrete and Mortar—Safety Requirements. BSI Standards Publication: London, UK, 2012.
- Ren, W.; Zhang, Z.; Wu, Y. Mobile concrete pump boom multibody kinematics simulation and experimental research. Comput. Eng. Appl. 2014, 50, 233–237. [Google Scholar]
- Chen, Z.; Guo, G.; Wu, L.; Tian, X. Dynamic characteristics analysis of concrete pump truck boom under concrete impact load. Mach. Des. Manuf. 2021, 10, 110–113. [Google Scholar]
- Wu, Y.; Li, W.; Liu, Y. Fatigue life prediction for boom structure of concrete pump truck. Eng. Fail. Anal. 2016, 60, 176–187. [Google Scholar] [CrossRef]
- Huang, H.; Zhang, X. Reliability analysis of concrete pump truck boom. Mach. Des. Manuf. 2021, 9, 42–46+50. [Google Scholar]
- Zhao, E.; Lu, Y.; Cheng, K.; Zhou, L.; Sun, W.; Meng, G. Buckling failure analysis of swing outrigger used in pump truck. Eng. Fail. Anal. 2019, 105, 555–565. [Google Scholar] [CrossRef]
- Pan, D.; Xing, J.; Wang, B. Static analysis and dynamic simulation of concrete pump truck boom. J. Chongqing Univ. Technol. (Nat. Sci.) 2018, 32, 86 91+123. [Google Scholar]
- Taşcı, B.; Omar, A.; Ayvaz, S. Remaining useful lifetime prediction for predictive maintenance in manufacturing. Comput. Ind. Eng. 2023, 184, 109566. [Google Scholar] [CrossRef]
- Cheng, M.; Jiao, L.; Yan, P.; Feng, L.; Qiu, T.; Wang, X.; Zhang, B. Prediction of surface residual stress in end milling with Gaussian process regression. Measurement 2021, 178, 109333. [Google Scholar] [CrossRef]
- Hussain, M.; Ye, Z.; Chi, H.-L.; Hsu, S.-C. Predicting degraded lifting capacity of aging tower cranes: A digital twin-driven approach. Adv. Eng. Inform. 2024, 59, 102310. [Google Scholar] [CrossRef]
- Li, W.; Liang, Y.; Liu, Y. Failure load prediction and optimization for adhesively bonded joints enabled by deep learning and fruit fly optimization. Adv. Eng. Inform. 2022, 54, 101817. [Google Scholar] [CrossRef]
- Mahmoodzadeh, A.; Nejati, H.R.; Mohammadi, M.; Ibrahim, H.H.; Rashidi, S.; Ibrahim, B.F. Forecasting face support pressure during EPB shield tunneling in soft ground formations using support vector regression and meta-heuristic optimization algorithms. Rock Mech. Rock Eng. 2022, 55, 6367–6386. [Google Scholar] [CrossRef]
- Seghier, M.E.A.B.; Plevris, V.; Solorzano, G. Random forest-based algorithms for accurate evaluation of ultimate bending capacity of steel tubes. Structures 2022, 44, 261–273. [Google Scholar] [CrossRef]
- Wang, Z.; Zhou, T.; Zhang, S.; Sun, C.; Li, J.; Tan, J. Bo-LSTM based cross-sectional profile sequence progressive prediction method for metal tube rotate draw bending. Adv. Eng. Inform. 2023, 58, 102152. [Google Scholar] [CrossRef]
- Xie, Y.; Gao, S.; Zhang, C.; Liu, J. Tool wear state recognition and prediction method based on laplacian eigenmap with ensemble learning model. Adv. Eng. Inform. 2024, 60, 102382. [Google Scholar] [CrossRef]
- Li, H.; Song, D.; Kong, J. Evaluation of hyperparameter optimization techniques for traditional machine learning models. Comput. Sci. 2023, 2023, 1–24. Available online: http://kns.cnki.net/kcms/detail/50.1075.TP.20231201.0853.002.html (accessed on 1 December 2023).
- Breiman, L. Random forests. Mach. Learn. 2001, 45, 5–32. [Google Scholar] [CrossRef]
- Liao, M.; Wen, H.; Yang, L.; Wang, G.; Xiang, X.; Liang, X. Improving the model robustness of flood hazard mapping based on hyperparameter optimization of random forest. Expert Syst. Appl. 2024, 241, 122682. [Google Scholar] [CrossRef]
- Chen, T.; Guestrin, C. Xgboost: A scalable tree boosting system. In Proceedings of the 22nd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, San Francisco, CA, USA, 13–17 August 2016; pp. 785–794. [Google Scholar]
- Lei, X.; Feng, R.; Dong, Y.; Zhai, C. Bayesian-optimized interpretable surrogate model for seismic demand prediction of urban highway bridges. Eng. Struct. 2024, 301, 117307. [Google Scholar] [CrossRef]
- Xie, S.; Lin, H.; Chen, Y.; Duan, H.; Liu, H.; Liu, B. Prediction of shear strength of rock fractures using support vector regression and grid search optimization. Mater. Today Commun. 2023, 36, 106780. [Google Scholar] [CrossRef]
- Sharma, N.; Malviya, L.; Jadhav, A.; Lalwani, P. A hybrid deep neural net learning model for predicting coronary heart disease using randomized search cross-validation optimization. Decis. Anal. J. 2023, 9, 100331. [Google Scholar] [CrossRef]
- Ma, L.Y.; Yu, S.L.; Zhao, S.Y.; Sun, J.M. Superheated steam temperature prediction models based on XGBoost optimized with random search algorithm. J. North China Electr. Power Univ. 2021, 48, 99–105. [Google Scholar]
- Wang, H.; Li, B.; Gong, J.; Xuan, F.-Z. Machine learning-based fatigue life prediction of metal materials: Perspectives of physics-informed and data-driven hybrid methods. Eng. Fract. Mech. 2023, 284, 109242. [Google Scholar] [CrossRef]
- Xu, G. Design of Metal Structure for Mechanical Equipment, 3rd ed; China Machine Press: Beijing, China, 2018. [Google Scholar]
- Kuang, Y.; Lu, Z.; Li, L.; Chen, Z.; Cui, Y.; Wang, F. Robust constrained kalman filter algorithm considering time registration for GNSS/Acoustic joint positioning. Appl. Ocean Res. 2021, 107, 102435. [Google Scholar] [CrossRef]
- Li, L. Application of time registration of the least aquare method in measurement data fusion. Instrum. Technol. 2017, 12, 35 36+49. [Google Scholar]
- Farhangi, F. Investigating the role of data preprocessing, hyperparameters tuning, and type of machine learning algorithm in the improvement of drowsy EEG signal modeling. Intell. Syst. Appl. 2022, 15, 200100. [Google Scholar] [CrossRef]
- Vocke, M.; Bingham, C.; Riches, G.; Martinuzzi, R.; Morton, C. Lagrangian interpolation algorithm for PIV data. Int. J. Heat Fluid Flow 2020, 86, 108733. [Google Scholar] [CrossRef]
- Teng, T.-P.; Chen, W.-J. Using Pearson correlation coefficient as a performance indicator in the compensation algorithm of asynchronous temperature-humidity sensor pair. Case Stud. Therm. Eng. 2024, 53, 103924. [Google Scholar] [CrossRef]
- Ni, S.; Chen, J.; Cheng, C.K.; He, S.; Zhao, J. An efficient method for processing high-speed infrared images of nucleate boiling on thin heaters at low heat flux. Appl. Therm. Eng. 2023, 234, 121313. [Google Scholar] [CrossRef]
- Gao, Z.; Ding, L.; Xiong, Q.; Gong, Z.; Xiong, C. Image compressive sensing reconstruction based on z-score standardized group sparse representation. IEEE Access 2019, 7, 90640–90651. [Google Scholar] [CrossRef]
- Anandan, B.; Manikandan, M. Machine learning approach with various regression models for predicting the ultimate tensile strength of the friction stir welded AA 2050-T8 joints by the K-Fold cross-validation method. Mater. Today Commun. 2023, 34, 105286. [Google Scholar] [CrossRef]
- Choi, J.-H.; Kim, D.; Ko, M.-S.; Lee, D.-E.; Wi, K.; Lee, H.-S. Compressive strength prediction of ternary-blended concrete using deep neural network with tuned hyperparameters. J. Build. Eng. 2023, 75, 107004. [Google Scholar] [CrossRef]
- Hanifi, S.; Cammarono, A.; Zare-Behtash, H. Advanced hyperparameter optimization of deep learning models for wind power prediction. Renew. Energy 2024, 221, 119700. [Google Scholar] [CrossRef]
- Punitha, A.; Geetha, V. Automated climate prediction using pelican optimization based hybrid deep belief network for Smart Agriculture. Meas. Sens. 2023, 27, 100714. [Google Scholar] [CrossRef]
- Hu, C.; Zeng, S.; Li, C. Scalable GP with hyperparameters sharing based on transfer learning for solving expensive optimization problems. Appl. Soft Comput. 2023, 148, 110866. [Google Scholar] [CrossRef]
- Sun, L.; Ji, Y.; Zhu, X.; Peng, T. Process knowledge-based random forest regression for model predictive control on a nonlinear production process with multiple working conditions. Adv. Eng. Inform. 2022, 52, 101561. [Google Scholar] [CrossRef]
- Sun, Y.; Cheng, H.; Zhang, S.; Mohan, M.K.; Ye, G.; De Schutter, G. Prediction & optimization of alkali-activated concrete based on the random forest machine learning algorithm. Constr. Build. Mater. 2023, 385, 131519. [Google Scholar] [CrossRef]
- Yan, X.; Chen, C.; Wang, N.; Chen, M. Predicting desulfurization ratio during LF refining process based on random research and AdaBoost model. J. Mater. Metall. 2023, 22, 430–443. [Google Scholar]
- Zhang, X.; Liu, C.-A. Model averaging prediction by K-fold cross-validation. J. Econom. 2023, 235, 280–301. [Google Scholar] [CrossRef]
- Li, H. Prediction of Heart Failure Based on Random Forest Algorithm. Master’s Thesis, Chongqing University, Chongqing, China, 2022. [Google Scholar]
Type | Hyperparameter Name | Notation |
---|---|---|
Hyperparameters of Bagging | n_estimators | number of decision trees |
OBB_score | out-of-bag score | |
criterion | characteristic evaluation criteria | |
Hyperparameters of Decision tree | max_feature | maximum number of features |
max_depth | maximum depth | |
min_samples_leaf | minimum number of samples for leaf nodes | |
min_samples_split | minimum number of samples required for leaf node splitting | |
min_weight_fraction_leaf | minimum sample weights for fraction of leaf nodes | |
max_leaf_nodes | maximum number of leaf nodes | |
min_impurity_split | minimum impurity split |
Date | Running Dataset Number | Running Dataset Characteristics | Data Volume/Group | Strain Dataset Number | Strain Dataset Characteristics | Data Volume/Group |
---|---|---|---|---|---|---|
20211229 | Pump-Data [2021122911.db3] | Pressure in the rod chamber of the boom Pressure in the non-rod chamber of the boom Pumping pressure Rotation angle Tilt angles of boom 1, boom 2, boom 3, boom 4, boom 5, and boom 6 Data time | 12,601 | Strain-Data [2021122911.db3] | Detection points M1C1, M1C2, M1C3, M1C4, M2C1, M2C2, M2C3, M2C4, M4C1, and M4C2 Pumping state Data time | 24,694 |
Pump-Data [2021122912.db3] | 62,635 | Strain-Data_ [2021122912.db3] | 125,766 | |||
20211231 | Pump-Data [2021123121.db3] | 99,516 | Strain-Data_ [2021123121.db3] | 199,566 | ||
20220101 | Pump-Data [2022010100.db3] | 36,233 | Strain-Data_ [2022010100.db3] | 72,905 | ||
20220105 | Pump-Data [2022010500.db3] | 35,692 | Strain-Data_ [2022010500.db3] | 71,901 | ||
20220106 | Pump-Data [2022010613.db3] | 159,937 | Strain-Data_ [2022010613.db3] | 320,501 | ||
Pump-Data [2022010618.db3] | 40,783 | Strain-Data_ [2022010618.db3] | 81,762 | |||
20220107 | Pump-Data [2022010708.db3] | 32,622 | Strain-Data_ [2022010708.db3] | 64,670 | ||
Pump-Data [2022010710.db3] | 151,635 | Strain-Data_ [2022010710.db3] | 304,882 | |||
20220118 | Pump-Data [2022011803.db3] | 36,764 | Strain-Data_ [2022011803.db3] | 74,092 | ||
Pump-Data [2022011804.db3] | 35,248 | Strain-Data_ [2022011804.db3] | 71,055 | |||
Pump-Data [2022011805.db3] | 35,844 | Strain-Data_ [2022011805.db3] | 71,893 | |||
Pump-Data [2022011815.db3] | 144,335 | Strain-Data_ [2022011815.db3] | 290,221 |
Acquisition Time of Functional Parameters | Pressure in Chamber of Boom/kN | Pumping Pressure/kN | Rotation Angle/° | Tilt Angle of Boom/° | ||||||
---|---|---|---|---|---|---|---|---|---|---|
Rod | Non-Rod | 1 | 2 | 3 | 4 | 5 | 6 | |||
20191229, 12:20:33:24 | 28.89 | 12.24 | 3.7 | −145 | 42 | 32 | −11 | −21 | −83 | −82 |
20191229, 12:20:33:34 | 28.89 | 12.23 | 3.7 | −145 | 42 | 32 | −11 | −21 | −83 | −82 |
20191229, 12:20:33:44 | 28.89 | 12.23 | 3.7 | −145 | NULL | NULL | −11 | −21 | −83 | −82 |
20191229, 12:20:33:54 | 28.89 | 12.22 | 3.7 | −145 | NULL | NULL | −11 | −21 | −83 | −82 |
… | ||||||||||
20191229, 13:54:53:39 | 25.82 | 2.08 | 14.11 | −142 | 35 | −33 | 32 | −28 | −78 | −81 |
20191229, 13:54:53:14 | 25.79 | 2.09 | 14.55 | −142 | 35 | −33 | 31 | −28 | −78 | −81 |
20191229, 13:54:53:24 | 25.78 | 2.08 | 14.51 | −142 | 35 | −33 | 31 | −28 | −79 | −81 |
20191229, 13:54:53:44 | 25.75 | 2.08 | 14.44 | −143 | 35 | −33 | 31 | −28 | −79 | −82 |
… | ||||||||||
20191231, 22:56:11:75 | 0.85 | 6.62 | 0 | −70 | −2 | −179 | 0 | −180 | −3 | −3 |
20191231, 22:56:11:85 | 0.85 | 6.63 | 0 | −70 | −2 | −179 | 0 | −180 | −3 | −3 |
20191231, 22:56:11:95 | 0.84 | 6.63 | 0 | −70 | −2 | −179 | 0 | −180 | −3 | −3 |
… | ||||||||||
20200118, 03:00:11:13 | 18.13 | 3.78 | 5.03 | −204 | 72 | 1 | −25 | −32 | −123 | −123 |
20200118, 03:00:11:18 | 18.12 | 3.78 | 5.01 | −204 | 72 | 4 | −25 | −32 | −123 | −123 |
20200118, 03:00:11:23 | 18.12 | 3.79 | 5 | −204 | 72 | 6 | −25 | −32 | −123 | −123 |
… | ||||||||||
20200-06, 19:11:06:18 | 32.13 | 18.00 | 4.65 | −250 | 38 | 36 | −3 | −19 | −47 | −49 |
20200106, 19:11:06:23 | 32.12 | 17.97 | 4.62 | −250 | 38 | 36 | −3 | −19 | −47 | −49 |
20200106, 19:11:06:28 | 32.11 | 17.95 | 4.60 | −250 | 38 | 36 | −3 | −19 | −47 | −49 |
Acquisition Time of Performance Indicators | State | Strain Value/με | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
M1C1 | M1C2 | M1C3 | M1C4 | M2C1 | M2C2 | M2C3 | M2C4 | M4C1 | M4C3 | ||
20191229, 12:20:33:29 | 1 | 3484 | −562.3 | 518.7 | −773.0 | 292.1 | −406.3 | −452.7 | 335.8 | 52 | −2.2 |
20191229, 12:20:33:34 | 1 | 3484 | −562.3 | NULL | −773.0 | 292.1 | −406.4 | NULL | 335.8 | 52 | −2.2 |
20191229, 12:20:33:39 | 1 | 3484 | −562.3 | 518.6 | −773.0 | 292.1 | −406.4 | −452.8 | 335.8 | 52 | −2.1 |
20191229, 12:20:33:44 | 1 | 3484 | −562.4 | 518.6 | −773.1 | 292.1 | −406.3 | −452.7 | 335.8 | 52 | −2.2 |
… | |||||||||||
20191229, 13:54:53:41 | 1 | −120.6 | −672.6 | 662.3 | −724.4 | 405.2 | −556.0 | −593.4 | 404.8 | 125.1 | 480.3 |
20191229, 13:54:53:14 | 1 | −121.1 | −672.4 | 661.3 | −724.1 | 404.0 | −555.8 | NULL | 404.5 | 126.8 | 482.4 |
20191229, 13:54:53:24 | 1 | −120.4 | −671.9 | 662.7 | −722.8 | 408.0 | −557.1 | NULL | 404.2 | 129.8 | 476.9 |
20191229, 13:54:53:44 | 1 | −120.1 | −672.1 | 661.9 | −723.8 | 407.5 | −554.7 | NULL | 403.9 | 132.4 | 469.3 |
… | |||||||||||
20191231, 22:56:11:76 | 0 | 3102 | −0.9 | −303.8 | 96.9 | 121.9 | −134.9 | 190.9 | −120.1 | −4.8 | 38.2 |
20191231, 22:56:11:86 | 0 | 3102 | −0.9 | −303.8 | 96.9 | 121.9 | −135.0 | 190.9 | −120.1 | −4.9 | 38.1 |
20191231, 22:56:11:96 | 0 | 3102 | −0.9 | −303.9 | 96.9 | 121.9 | −135.1 | 190.8 | −120.1 | −4.9 | 38.1 |
… | |||||||||||
20200118, 03:00:11:15 | 1 | −331.6 | −364.3 | 361.4 | −428.8 | 233.4 | −250.4 | −369.6 | 359.8 | −358.6 | 545.7 |
20200118, 03:00:11:25 | 1 | −331.9 | −364.1 | 361.2 | −428.8 | 233.3 | −251.8 | −369.7 | 359.8 | −357.1 | 545.2 |
20200118, 03:00:11:35 | 1 | −331.2 | −364.5 | 361.6 | −429.7 | 233.5 | −249.8 | −368.3 | 360.1 | −358.4 | 544.2 |
… | |||||||||||
20200106, 19:11:06:27 | 1 | −179.0 | −555.2 | 491.6 | −601.5 | 253.6 | −300.7 | −409.4 | 350.3 | −162.0 | 484.1 |
20200106, 19:11:06:13 | 1 | −179.0 | −555.1 | 491.6 | −601.4 | 253.6 | −300.8 | −409.4 | 350.3 | −162.0 | 484.1 |
20200106, 19:11:06:23 | 1 | −178.9 | −555.1 | 491.6 | −601.5 | 253.6 | −300.8 | −409.4 | 350.3 | −162.0 | 484.1 |
Hyperparameter | Settings | Hyperparameter | Settings | Hyperparameter | Settings |
---|---|---|---|---|---|
n_estimators | To be optimized | max_depth | None | min_weight_ fraction_leaf | 0 |
OBB_score | True | min_samples_leaf | 1 | max_leaf_nodes | None |
criterion | MSE | min_samples_split | 2 | min_impurity_split | None |
max_features | To be optimized |
Models | M1C2 | M1C4 | M2C1 | M2C2 | M2C4 | M4C1 | M4C3 |
---|---|---|---|---|---|---|---|
RF | 6.1 s | 4.9 s | 5.3 s | 6.6 s | 5.9 s | 6.1 s | 6.4 s |
RS-RF | 28.9 s | 30.2 s | 27.2 s | 28.4 s | 28.3 s | 28.6 s | 27.5 s |
RS–XGBoost–RF | 19 min 48 s | 20 min 5 s | 16 min 27 s | 19 min 33 s | 16 min 22 s | 13 min 13 s | 14 min 8 s |
Models | M1C2 | M1C4 | M2C1 | M2C2 | M2C4 | M4C1 | M4C3 |
---|---|---|---|---|---|---|---|
RS–XGBoost–RF | 19 min 48 s | 20 min 5 s | 16 min 27 s | 19 min 33 s | 16 min 22 s | 13 min 13 s | 14 min 8 s |
RS–RF–RF | 17 min 34 s | 17 min 6 s | 13 min 27 s | 16 min 10 s | 14 min 29 s | 14 min 46 s | 15 min 37 s |
RS–RF–XGBoost | 2 min 32 s | 2 min 48 s | 2 min 43 s | 2 min 25 s | 2 min 33 s | 2 miin 39 s | 2 min 38 s |
RS–XGBoost–XGBoost | 2 min 25 s | 2 min 34 s | 2 min 36 s | 2 min 27 s | 2 min 18 s | 2 min 45 s | 2 min 47 s |
Model | Stress Detection Points | RMSE | MAE | R2 | Learning Time | Model | Stress Detection Points | RMSE | MAE | R2 | Learning Time |
---|---|---|---|---|---|---|---|---|---|---|---|
PSO-RF | M1C2 | 9.0813 | 4.3663 | 0.9545 | 62 min 12 s | RS–XGBoost–RF | M1C2 | 6.5802 | 3.0359 | 0.9732 | 19 min 48 s |
M1C4 | 11.0836 | 5.3968 | 0.9567 | 49 min 17 s | M1C4 | 9.2753 | 4.2724 | 0.9701 | 20 min 5 s | ||
M2C1 | 7.0128 | 3.7218 | 0.9483 | 35 min 12 s | M2C1 | 5.2586 | 2.3532 | 0.969 | 16 min 27 s | ||
M2C2 | 9.9472 | 4.4697 | 0.9332 | 123 min 46 s | M2C2 | 6.2874 | 2.8722 | 0.9693 | 19 min 33 s | ||
M2C4 | 7.9967 | 3.9708 | 0.9496 | 14 min 8 s | M2C4 | 5.809 | 2.3221 | 0.9729 | 16 min 22 s | ||
M4C1 | 13.6351 | 7.5705 | 0.8875 | 105 min 29 s | M4C1 | 10.7905 | 4.3278 | 0.9303 | 13 min 13 s | ||
M4C3 | 14.1459 | 7.3841 | 0.9346 | 135 min 41 s | M4C3 | 10.9124 | 5.1809 | 0.9632 | 14 min 8 s |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2024 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Dong, Q.; Su, Y.; Xu, G.; She, L.; Chang, Y. A Fast Operation Method for Predicting Stress in Nonlinear Boom Structures Based on RS–XGBoost–RF Model. Electronics 2024, 13, 2742. https://doi.org/10.3390/electronics13142742
Dong Q, Su Y, Xu G, She L, Chang Y. A Fast Operation Method for Predicting Stress in Nonlinear Boom Structures Based on RS–XGBoost–RF Model. Electronics. 2024; 13(14):2742. https://doi.org/10.3390/electronics13142742
Chicago/Turabian StyleDong, Qing, Youcheng Su, Gening Xu, Lingjuan She, and Yibin Chang. 2024. "A Fast Operation Method for Predicting Stress in Nonlinear Boom Structures Based on RS–XGBoost–RF Model" Electronics 13, no. 14: 2742. https://doi.org/10.3390/electronics13142742
APA StyleDong, Q., Su, Y., Xu, G., She, L., & Chang, Y. (2024). A Fast Operation Method for Predicting Stress in Nonlinear Boom Structures Based on RS–XGBoost–RF Model. Electronics, 13(14), 2742. https://doi.org/10.3390/electronics13142742