首页> 外文会议>IFAC World Congress >A Toolbox for Analysis and Design of Model Based Diagnosis Systems for Large Scale Models
【24h】

A Toolbox for Analysis and Design of Model Based Diagnosis Systems for Large Scale Models

机译:基于大型模型模型诊断系统的分析和设计工具箱

获取原文

摘要

To facilitate the use of advanced fault diagnosis analysis and design techniques to industrial sized systems, there is a need for computer support. This paper describes a Matlab toolbox and evaluates the software on a challenging industrial problem, air-path diagnosis in an automotive engine. The toolbox includes tools for analysis and design of model based diagnosis systems for large-scale differential algebraic models. The software package supports a complete tool-chain from modeling a system to generating C-code for residual generators. Major design steps supported by the tool are modeling, fault diagnosability analysis, sensor selection, residual generator analysis, test selection, and code generation. Structural methods based on efficient graph theoretical algorithms are used in several steps. In the automotive diagnosis example, a diagnosis system is generated and evaluated using measurement data, both in fault-free operation and with faults injected in the control-loop. The results clearly show the benefit of the toolbox in a model-based design of a diagnosis system. Latest version of the toolbox can be downloaded at faultdiagnosistoolbox.github.io.
机译:为便于使用先进的故障诊断分析和设计技术向工业尺寸系统,需要计算机支持。本文介绍了MATLAB工具箱,并在充满挑战的产业问题,汽车发动机中的空程诊断中评估软件。该工具箱包括用于大型差分代数模型的基于模型诊断系统的分析和设计工具。软件包支持完整的工具链,从建模系统到生成残余发电机的C代码。该工具支持的主要设计步骤是建模,故障诊断性分析,传感器选择,剩余发电机分析,测试选择和代码生成。基于有效图的结构方法在几个步骤中使用了理论算法。在汽车诊断示例中,使用无故障操作和控制循环中注入的故障来生成和评估诊断系统。结果清楚地显示了工具箱在诊断系统的模型设计中的好处。最新版本的工具箱可以在FaultDiagnosistoolbox.github.io下载。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号