利用基于人工智能的机器人技术替代模型推进核工业的远程处理能力

IF 2 3区 工程技术 Q1 NUCLEAR SCIENCE & TECHNOLOGY
Akhtar Zeb , Petteri Kokkonen , Mikko Tahkola , William Brace , Ferdinando Milella
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引用次数: 0

摘要

尖端机器人技术的开发和部署对于提高核工业在密闭和危险环境中的远程处理能力至关重要。这些进步在最大限度地减少工人的辐射暴露,提高运行安全性以及优化核设施在其整个生命周期中的维护效率方面发挥着至关重要的作用。准确预测机器人关键部件(如旋转关节和执行器支架)的变形,对于实现复杂和精密设备(包括聚变反应堆中的繁殖毯)的精确可靠处理至关重要。本研究的重点是通过使用基于机器学习的代理模型开发参数化功能模型单元(fmu)来设计这些组件。研究了两种情况:一种涉及旋转关节,另一种涉及作动器支架。fmu的输入和输出参数经过精心选择,以确保无缝集成到潜在的系统级模型中。有限元分析(FEA)模拟使用不同的采样策略,包括全因子、简单随机和拉丁超立方体采样。在有限元生成的数据集上训练的多个代理模型在测试数据集上显示出较高的准确性和计算效率。生成的代理模型被封装为fmu,作为基于物理的仿真中的模块化组件,有效地表示机器人系统中的类似关节和支架。这些参数化fmu促进了有效的仿真驱动的参数化设计、预测控制和试验台设备的状态监测,模拟了聚变反应堆远程维护机器人的功能和操作条件。这项研究为具有挑战性的核应用推进了机器人技术,为增强核聚变工业中机器人系统的设计和操作提供了有价值的工具和见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancing remote handling capabilities in the nuclear industry with AI-based surrogate models for robotic technologies
The development and deployment of cutting-edge robotic technologies are crucial for enhancing remote handling capabilities in confined and hazardous environments within the nuclear industry. These advancements play a vital role in minimising radiation exposure to workers, improving operational safety, and optimising the efficiency of maintaining nuclear facilities throughout their lifecycle. Accurate prediction of deformations in key robotic components, such as revolute joints and actuator brackets, is essential for achieving precise and reliable handling of complex and delicate equipment, including breeding blankets in fusion reactors. This study focuses on designing such components by developing parametric Functional Mock-up Units (FMUs) using machine learning-based surrogate models. Two scenarios are explored: one involving a revolute joint and the other an actuator bracket. Input and output parameters for the FMUs were carefully selected to ensure seamless integration into potential system-level models. Finite Element Analysis (FEA) simulations were conducted using diverse sampling strategies, including full factorial, simple random, and Latin hypercube sampling. Multiple surrogate models trained on FEA-generated datasets demonstrated high accuracy and computational efficiency on testing datasets. The resulting surrogate models were encapsulated as FMUs to serve as modular components in physics-based simulations, effectively representing similar joints and brackets in robotic systems. These parametric FMUs facilitate efficient simulation-driven parametric design, predictive control, and condition monitoring of test rig devices, emulating the functionality and operating conditions of fusion reactor remote maintenance robots. This research advances robotic technologies for challenging nuclear applications, offering valuable tools and insights to enhance the design and operation of robotic systems in the fusion industry.
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来源期刊
Fusion Engineering and Design
Fusion Engineering and Design 工程技术-核科学技术
CiteScore
3.50
自引率
23.50%
发文量
275
审稿时长
3.8 months
期刊介绍: The journal accepts papers about experiments (both plasma and technology), theory, models, methods, and designs in areas relating to technology, engineering, and applied science aspects of magnetic and inertial fusion energy. Specific areas of interest include: MFE and IFE design studies for experiments and reactors; fusion nuclear technologies and materials, including blankets and shields; analysis of reactor plasmas; plasma heating, fuelling, and vacuum systems; drivers, targets, and special technologies for IFE, controls and diagnostics; fuel cycle analysis and tritium reprocessing and handling; operations and remote maintenance of reactors; safety, decommissioning, and waste management; economic and environmental analysis of components and systems.
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