Inicio  /  Applied Sciences  /  Vol: 12 Par: 24 (2022)  /  Artículo
ARTÍCULO
TITULO

Anomaly Monitoring of Process Based on Recurrent Timeliness Rules (AMP-RTR)

Zehua Liu    
Xuefeng Ding    
Jun Tang    
Yuming Jiang and Dasha Hu    

Resumen

At present, many manufacturing enterprises have business systems such as MES, SPC, etc. In the manufacturing process, a large amount of data with periodic time series will be generated. How to evaluate the timeliness of periodically generated data according to a large number of time series is important content in the field of data quality research. At the same time, it can solve the demand of abnormal monitoring of production process faced by manufacturing enterprises based on the regularity change for periodic data timeliness. Most of the existing data timeliness evaluation models are based on a single fixed time stamp, which is not suitable for effective evaluation of periodic data with time series. In addition, the existing data timeliness evaluation methods cannot be applied to the field of process anomaly monitoring. In this paper, the Anomaly Monitoring of Process based on Recurrent Timeliness Rules (AMP-RTR) is proposed to meet the needs of periodic data timeliness evaluation and production process anomaly monitoring. RTR is the Rules defined to evaluate the timeliness of periodically generated data. AMP is to infer the abnormality of the product production process through the abnormality of the regularity change for periodic data timeliness based on RTR. The AMP-RTR model evaluates the timeliness of data in each cycle according to the time series generated periodically. At the same time, after the updated data arrives, the initial timeliness score of the next cycle is calculated. There are two cases in which the evaluation value of timeliness is abnormal. The first case is that the timeliness score value is less than the lower limit after updating. The second case is that the number of times the timeliness score exceeds the upper limit meets the set threshold. The user can dynamically adjust the production process according to the abnormal warning of the model. Finally, in order to verify the applicability of the AMP-RTR, we conducted simulation experiments on synthetic datasets and semiconductor manufacturing datasets. The experimental results show that the AMP-RTR can effectively monitor the abnormal conditions of various production processes in the manufacturing industry by adjusting the parameters of the model.

 Artículos similares

       
 
George Papageorgiou, Vangelis Sarlis and Christos Tjortjis    
This study utilized advanced data mining and machine learning to examine player injuries in the National Basketball Association (NBA) from 2000?01 to 2022?23. By analyzing a dataset of 2296 players, including sociodemographics, injury records, and financ... ver más
Revista: Information

 
Andreas Döring, Markus Vogelbacher, Oliver Schneider, Jacob Müller, Stefan Hinz and Jörg Matthes    
Prestressed concrete bridges built between 1960 and 1990 no longer meet today?s requirements due to loads and increasing mileage of higher loads that have increased since the bridges were designed. Prestressed concrete bridges are representative of Germa... ver más
Revista: Infrastructures

 
Umberto Albertin, Giuseppe Pedone, Matilde Brossa, Giovanni Squillero and Marcello Chiaberge    
New technologies are developed inside today?s companies with the ascent of Industry 4.0 paradigm; Artificial Intelligence applied to Predictive Maintenance is one of these, helping factories automate their systems in detecting anomalies. The deviation of... ver más
Revista: Algorithms

 
João Nobre, E. J. Solteiro Pires and Arsénio Reis    
Currently, distributed software systems have evolved at an unprecedented pace. Modern software-quality requirements are high and require significant staff support and effort. This study investigates the use of a supervised machine learning model, a Multi... ver más
Revista: Applied Sciences

 
Wen Chen, Kaijun Ren, Yongchui Zhang, Yuyao Liu, Yu Chen, Lina Ma and Silin Chen    
The sound speed profile (SSP) is a necessary prerequisite for acoustic field computation and underwater target localization and monitoring. Due to the dynamic nature of the ocean, the reconstruction of SSPs with surface characteristics is a big challenge... ver más