Intelligent Real-Time Risk Analysis for Machines and Process Devices

Automatic fault detection with condition and stress indices enables reliable condition monitoring to be combined with process control. Useful information on different faults can be obtained by selecting suitable features. Generalised norms can be defined by the order of derivation, the order of the moment and sample time. These norms have the same dimensions as the corresponding signals. The nonlinear scaling used in the linguistic equation approach extends the idea of dimensionless indices to nonlinear systems. The Wohler curve is represented by a linguistic equation (LE) model. The contribution of the stress is calculated in each sample time, which is taken as a fraction of the cycle time. The cumulative sum of the contributions indicates the degrading of condition and the simulated sums can be used to predict failure time. To avoid high stress situations, the statistical process control (SPC) is extended to nonlinear and non-Gaussian data: the new generalised SPC is suitable for a large set of statistical distributions. It operates without interruptions in short run cases and adapts to the changing process requirements. The scaling functions are updated recursively, which is triggered by a fast increase of the deviation indices. The higher levels, which are rough estimates in the beginning, are gradually refined.

[1]  Uday Kumar,et al.  Fusion of maintenance and control data: A need for the process , 2012 .

[2]  Esko Juuso Generalised statistical process control (GSPC) in stress monitoring , 2015 .

[3]  Esko Juuso,et al.  Advanced signal processing and fault diagnosis in condition monitoring , 2007 .

[4]  Uday Kumar,et al.  Hybrid Prognosis for Railway Health Assessment: an Information Fusion Approach for Phm Deployment , 2013 .

[5]  Esko Juuso,et al.  Tuning of Large-Scale Linguistic Equation (LE) Models with Genetic Algorithms , 2009, ICANNGA.

[6]  Esko Juuso,et al.  Signal processing and feature extraction by using real order derivatives and generalised norms. Part 2: Applications , 2011 .

[7]  Marcantonio Catelani,et al.  Context awareness for maintenance decision making: A diagnosis and prognosis approach , 2015 .

[8]  José Manuel Benítez,et al.  Feature Selection for Time Series Forecasting: A Case Study , 2008, 2008 Eighth International Conference on Hybrid Intelligent Systems.

[9]  Esko Juuso,et al.  Integration of intelligent systems in development of smart adaptive systems , 2004, Int. J. Approx. Reason..

[10]  Esko Juuso,et al.  Intelligent performance measures for condition‐based maintenance , 2013 .

[11]  K Karioja,et al.  Generalised spectral norms – a new method for condition monitoring , 2016 .

[12]  O. Marichev,et al.  Fractional Integrals and Derivatives: Theory and Applications , 1993 .

[13]  Esko Juuso,et al.  Signal processing and feature extraction by using real order derivatives and generalised norms. Part 1: Methodology , 2011 .