Zhang Jianzhuo, Chen Ce, Ding Xiaoyu, Wang Tao, Wan Chuanxu, Li Wenliang
School of Mechanical Engineering, Liaoning Technical University, Fuxin City, Liaoning, China.
Zoucheng Yicheng machinery Co., LTD, Zoucheng City, Shandon, China.
PLoS One. 2025 Aug 18;20(8):e0330291. doi: 10.1371/journal.pone.0330291. eCollection 2025.
Aiming at the problems of high safety risks, economic costs, and inefficiency in experimental research on boom-type roadheaders, this study proposes a virtual-real fusion experimental system for the cutting module. This system incorporates functions including digital modeling of coal-rock, simulation of mechanical properties of the cutting unit, and integration of virtual and physical experiments. To address the challenge of obtaining cutting tooth loads at coal-rock interfaces, a discretized digital coal-rock volume construction method is proposed. For rapid mechanical performance simulation of the cutting unit, a chain-type digital mapping body construction method is developed. Through deep learning, numerical simulation, and digital twin technologies, a virtual-real fusion platform was established, enabling virtual experiments to dominate the calibration of physical experiments. The system is capable of simulating pose variation and vibration trends of the entire machine during cutting. The minimum average error for stress at the cylinder base is 4.44 MPa, with a virtual-real system connection period under 100 ms. Based on this system, a reinforcement learning training environment was developed. Using Deep Deterministic Policy Gradient (DDPG), the control of the cutting unit was optimized to achieve low-stress state cutting, verifying the system's feasibility.
针对悬臂式掘进机实验研究中存在的安全风险高、经济成本高和效率低等问题,本研究提出了一种截割部虚实融合实验系统。该系统集成了煤岩数字建模、截割部力学性能仿真以及虚拟与物理实验一体化等功能。为解决获取煤岩界面截齿载荷的难题,提出了一种离散化数字煤岩体构建方法。为实现截割部力学性能的快速仿真,开发了一种链式数字映射体构建方法。通过深度学习、数值模拟和数字孪生技术,建立了虚实融合平台,使虚拟实验主导物理实验的标定。该系统能够模拟整机截割过程中的姿态变化和振动趋势。油缸底座应力的最小平均误差为4.44MPa,虚实系统连接周期在100ms以内。基于该系统,开发了强化学习训练环境。采用深度确定性策略梯度(DDPG)对截割部控制进行优化,实现低应力状态截割,验证了系统的可行性。