Liu Shiyang, Gao Ming, Feng Yang, Sheng Li
College of Control Science and Engineering, China University of Petroleum (East China), Qingdao 266580, China.
College of Control Science and Engineering, China University of Petroleum (East China), Qingdao 266580, China.
ISA Trans. 2023 Nov;142:478-491. doi: 10.1016/j.isatra.2023.08.018. Epub 2023 Aug 22.
This paper is concerned with the fault detection problem for the rotary steerable drilling tool system under unknown vibrations and limited computational resources. Firstly, the drilling tool system can be modeled by a nonlinear stochastic system with unknown time-varying noise covariances. Then, the dynamic event-triggered mechanism is introduced to save computational resources, and the caused transmission error is completely decoupled by nonuniform sampling. Subsequently, a novel unscented Kalman filter is proposed by combining the expectation maximization method to estimate states when noise covariances are unknown. A residual and an evaluation function are constructed to detect faults. Finally, a numerical simulation and an experiment on a drilling tool prototype validate the superior performance of the proposed fault detection scheme, which has lower missed alarm rates and consumes less time than existing methods.
本文关注未知振动和有限计算资源条件下旋转导向钻井工具系统的故障检测问题。首先,钻井工具系统可由具有未知时变噪声协方差的非线性随机系统建模。然后,引入动态事件触发机制以节省计算资源,并且通过非均匀采样将引起的传输误差完全解耦。随后,结合期望最大化方法提出一种新颖的无迹卡尔曼滤波器,用于在噪声协方差未知时估计状态。构建残差和评估函数来检测故障。最后,对钻井工具原型进行数值模拟和实验,验证了所提出故障检测方案的优越性能,该方案具有比现有方法更低的漏报率且耗时更少。