| Literature DB >> 36212087 |
Yue Wang1, Mingsheng Liu2, Yongjian Huang3, Haifeng Zhou4, Xianhui Wang4, Senzhang Wang5, Haohua Du1.
Abstract
The pressure prediction technology whereby represents the rock pressure law in the excavation is fundamental to safety in production and industrial intelligentization. A growing number of researchers dedicate that machine learning is used to accurate prediction of underground pressure changes. However, the existing research which based on the classical machine learning rarely considers the cause between inducement of underground pressure and the underground pressure change. In this paper, we propose a novel Reinforced and Causal Graph Neural Network, namely RC-GNN, for the prediction task, to overcome the shortage of causal logic. First, we build a causal graph by considering internal relations between inducement and display of pressure and employ prior knowledge to erect the early and properties of the graph. Second, we construct the prediction network for underground pressure by graph convolutional networks and long short-term memory. Finally, we use the performance index of underground pressure prediction to design a reinforcement learning algorithm, which achieves optimization of the causal graph. Compared to six representative methods, experimental results with 18-60% increases in performance on the real prediction task.Entities:
Keywords: Graph convolutional network; Reinforcement learning; Time series prediction; Underground pressure prediction
Year: 2022 PMID: 36212087 PMCID: PMC9527076 DOI: 10.1007/s13042-022-01650-3
Source DB: PubMed Journal: Int J Mach Learn Cybern ISSN: 1868-8071 Impact factor: 4.377
Fig. 1There is an example of coal mining in which human mining activity causes the change of natural states. Workers shift hydraulic support for collecting coal, and then cause the collapse of the immediate roof, which results in the change of underground pressure
Fig. 2Knowledge-based and data-driven underground pressure forcasting framework diagram
Fig. 3Causality graph modeling
Fig. 4Decision making mechanism based on reinforcement learning
Fig. 5The mining location
Environmental mining conditions
| Mining conditions | Value |
|---|---|
| Burial depth | 1164 m |
| Mining height | 6.5 m |
| Coal seam hardness | 1 |
| Unit weight of coal | 1.3t/ |
| Strike length of workface | 330.9 m |
| Advance length of workface | 1510 m |
| Elevation of coal seam floor | 1045.55 m |
| Compressive strength of main roof | 24.95Mpa |
| Compressive strength of immediate roof | 21.09Mpa |
| Protodyakonov coefficient of main roof | 4.57 |
| Protodyakonov coefficient of immediate roof | 2.56 |
The characteristics of coal seam roof
| Roof | Lithology | Thickness/m |
|---|---|---|
| Mian roof | Siltite | 2.06 |
| Coal seam | Coal | 4.51 |
| Immediate roof | Sandy mudstone | 1.71 |
| Unconsolidated formation | Unconsolidated formation | 53.8 |
Fig. 6RMSE of 100 times underground pressure predictions
Fig. 7MAE of 100 times underground pressure predictions
RMSE and MAE of one hundred times underground pressure predictions
| Model | RMSE | MAE |
|---|---|---|
| SLSTM | 1.33715 | 0.26534 |
| BP | 0.98549 | 0.18802 |
| GRU | 0.94907 | 0.19753 |
| RNN | 0.84617 | 0.16512 |
| LSTM | 0.80498 | 0.16115 |
| RC-GNN | 0.58703 | 0.10561 |
Fig. 8Experimental results of different predicted step sizes
RMSE and MAE of single-scaffold prediction results under ten-step ten-scaffold condition
| Hydraulic support | RMSE | MAE |
|---|---|---|
| HS155 | 0.54012 | 0.46086 |
| HS156 | 0.21758 | 0.09674 |
| HS157 | 0.46555 | 0.36236 |
| HS158 | 1.10440 | 0.86070 |
| HS159 | 0.54433 | 0.39770 |
| HS160 | 0.96625 | 0.73762 |
| HS161 | 0.30512 | 0.06086 |
| HS162 | 0.44170 | 0.08030 |
| HS163 | 0.33718 | 0.06524 |
| HS164 | 0.99393 | 0.81537 |
Experimental results of different predicted step sizes
| Model | RMSE | MAE | |
|---|---|---|---|
| Set 5 | SLSTM | 0.88765 | 0.16270 |
| GRU | 0.96542 | 0.15556 | |
| RNN | 0.96035 | 0.15164 | |
| LSTM | 0.79716 | 0.14327 | |
|
| |||
| Set 10 | SLSTM | 1.33715 | 0.26534 |
| GRU | 0.94907 | 0.19753 | |
| RNN | 0.84617 | 0.16512 | |
| LSTM | 0.80498 | 0.16115 | |
|
| |||
| Set 15 | SLSTM | 1.19280 | 0.24858 |
| GRU | 1.19280 | 0.24759 | |
| RNN | 1.43936 | 0.22439 | |
| LSTM | 1.34394 | 0.26993 | |
|
|
Fig. 9Experimental results of different numbers of hydraulic supports
Experimental results of different numbers of hydraulic supports
| Model | RMSE | MAE | |
|---|---|---|---|
| Single support | SLSTM | 0.57783 | 0.49672 |
| GRU | 0.66803 | 0.513393 | |
| RNN | 1.74432 | 0.38064 | |
| LSTM | 0.58556 | 0.50204 | |
| Five support | SLSTM | 0.60970 | 0.18549 |
| GRU | 0.64718 | 0.19545 | |
| RNN | 1.20924 | 0.30911 | |
| LSTM | 0.74617 | 0.16512 | |
| Ten supports | SLSTM | 1.33715 | 0.26534 |
| GRU | 0.94907 | 0.19753 | |
| RNN | 0.84617 | 0.16512 | |
| LSTM | 0.80498 | 0.16115 | |
The difference between the predicted results of known prior parameters and unknown prior parameters
| Known | 0.58703 | 0.10561 | 9h11min |
| prior knowledge | |||
| Unknown | 0.665294 | 0.098039 | 47h53min |
| prior knowledge |
Fig. 10Diagram of multi-step underground pressure prediction error
| Symbol | Definition |
|---|---|
| The velocity value of a fully-mechanized face in the i-th step | |
| The underground pressure value in the i-th step | |
| The mining height value in the i-th step | |
| The burial depth value in the i-th step | |
| The rupture of overburden strata in the i-th step | |
| The degree of the surrounding rock deforma-tion and the fracturation in the i-th step | |
| The degree of sag of the main roof | |
| The degree of unconsolidated formation | |
| Other characteristics of the rock stratum |