首页> 外文会议>5th IFAC Symposium on Fault Detection, Supervision and Safety of Technical Processes 2003 (Safeprocess 2003) Vol.3; Jun 9-11, 2003; Washington, D.C., USA >NEURAL APPROXIMATORS FOR FAULT DETECTION OF ACTUATORS IN THE PRESENCE OF FRICTION: THE CASE OF THE DAMADICS BENCHMARK PROBLEM
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NEURAL APPROXIMATORS FOR FAULT DETECTION OF ACTUATORS IN THE PRESENCE OF FRICTION: THE CASE OF THE DAMADICS BENCHMARK PROBLEM

机译:存在摩擦的执行器故障检测的神经近似方法:以达马克基准问题为例

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摘要

The problem of actuator fault detection (FD) for mechanical systems with friction phenomena is addressed. A novel methodology based on an on-line neural approximation scheme is applied to the DAMADICS benchmark problem. The FD algorithm is based on the well known dynamic LuGrc model characterizing mechanical friction effects. This friction model is suitable for use in the simulation model of the DAMADICS benchmark which is developed in order to approximate the industrial process in a sugar factory located in Lublin (Poland). The approximation scheme makes it possible to evaluate on line suitable thresholds for the detection of incipient or abrupt faults regarding the friction and the spring models of the considered actuator.
机译:解决了具有摩擦现象的机械系统的执行器故障检测(FD)问题。一种基于在线神经逼近方案的新颖方法被应用于DAMADICS基准问题。 FD算法基于表征机械摩擦效果的众所周知的动态LuGrc模型。该摩擦模型适用于DAMADICS基准测试的仿真模型,该模型的开发目的是为了近似位于卢布林(波兰)的制糖厂的工业过程。近似方案使得可以在线评估合适的阈值,以检测与所考虑的致动器的摩擦和弹簧模型有关的初期或突然故障。

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