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Model-Based Self-Tuning PI Control of Bolt-Nut Tightening for Wind Turbine Bearing Assembly

机译:基于模型的风轮机轴承组件螺栓螺母拧紧自整定PI控制

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摘要

One of the core steps of the assembly of wind turbines is the assembly of the bearings on the wind turbine hub. The hub can contain up to 128 bolt connections to install the bearing blades: nuts need to be precisely tightened to ensure a uniformly distributed clamping force as well as avoiding assembly errors, e.g. nut misalignments. The bolt-nut connection is a non-linear system with uncertainties making it difficult to design a numerical model and PI Gains. This paper presents a novel two-stage Proportional-Integral (PI) controller with assembly error detection capability for bolt tightening process. It is based on the combination of a numerical model (offline training) and a genetic algorithm (GA) for online training on the physical bolt system. Since the model does not include all non-linearity and uncertainties of the physical plant (here the bolt-nut connection), it is used at first to estimate the range of the PI values, followed by a fine tuning of the values online by the GA.
机译:风力涡轮机组装的核心步骤之一是将轴承组装到风力涡轮机轮毂上。轮毂最多可包含128个螺栓连接以安装轴承叶片:需要精确地拧紧螺母,以确保均匀分布的夹紧力并避免组装错误,例如螺母未对准。螺栓螺母连接是具有不确定性的非线性系统,因此很难设计数值模型和PI增益。本文提出了一种新颖的两阶段比例积分(PI)控制器,具有用于螺栓紧固过程的装配错误检测功能。它基于数值模型(脱机训练)和遗传算法(GA)的组合,用于物理螺栓系统的在线训练。由于该模型不包括物理设备的所有非线性和不确定性(此处为螺栓螺母连接),因此首先使用它来估算PI值的范围,然后由模型在线微调值。 GA。

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