Evaluating the Performance of Newly Integrated Model in Nonlinear Chemical Process Against Missing Measurements

2019 ◽  
Vol 14 (4) ◽  
Author(s):  
Vivianna Maria Mickel ◽  
Wan Sieng Yeo ◽  
Agus Saptoro

Abstract Application of data-driven soft sensors in manufacturing fields, for instance, chemical, pharmaceutical, and bioprocess have rapidly grown. The issue of missing measurements is common in chemical processing industries that involve data-driven soft sensors. Locally weighted Kernel partial least squares (LW-KPLS) algorithm has recently been proposed to develop adaptive soft sensors for nonlinear processes. This algorithm generally works well for complete datasets; however, it is unable to cope well with any datasets comprising missing measurements. Despite the above issue, limited studies can be found in assessing the effects of incomplete data and their treatment method on the predictive performances of LW-KPLS. To address these research gaps, therefore, a trimmed scores regression (TSR) based missing data imputation method was integrated to LW-KPLS to formulate trimmed scores regression assisted locally weighted Kernel partial least squares (TSR-LW-KPLS) model. In this study, this proposed TSR-LW-KPLS was employed to deal with missing measurements in nonlinear chemical process data. The performances of TSR-LW-KPLS were evaluated using three case studies having different percentages of missing measurements varying from 5 % to 40 %. The obtained results were then compared to the results from singular value decomposition assisted locally weighted Kernel partial least squares (SVD-LW-KPLS) model. SVD-LW-KPLS was also proposed by incorporating a singular value decomposition (SVD) based missing data treatment method into LW-KPLS. From the comparative studies, it is evident that the predictive accuracies of TSR-LW-KPLS are superior compared to the ones from SVD-LW-KPLS.

2021 ◽  
Vol 2021 ◽  
pp. 1-16
Author(s):  
Maroua Said ◽  
Okba Taouali

We suggest in this article a dynamic reduced algorithm in order to enhance the monitoring abilities of nonlinear processes. Dynamic fault detection using data-driven methods is among the key technologies, which shows its ability to improve the performance of dynamic systems. Among the data-driven techniques, we find the kernel partial least squares (KPLS) which is presented as an interesting method for fault detection and monitoring in industrial systems. The dynamic reduced KPLS method is proposed for the fault detection procedure in order to use the advantages of the reduced KPLS models in online mode. Furthermore, the suggested method is developed to monitor the time-varying dynamic system and also update the model of reduced reference. The reduced model is used to minimize the computational cost and time and also to choose a reduced set of kernel functions. Indeed, the dynamic reduced KPLS allows adaptation of the reduced model, observation by observation, without the risk of losing or deleting important information. For each observation, the update of the model is available if and only if a further normal observation that contains new pertinent information is present. The general principle is to take only the normal and the important new observation in the feature space. Then the reduced set is built for the fault detection in the online phase based on a quadratic prediction error chart. Thereafter, the Tennessee Eastman process and air quality are used to precise the performances of the suggested methods. The simulation results of the dynamic reduced KPLS method are compared with the standard one.


2016 ◽  
Vol 22 (87) ◽  
pp. 50
Author(s):  
رباب عبد الرضا صالح

المستخلص تعد طريقة المركبات الرئيسة والمربعات الصغرى الجزئية من الطرائق المهمة في تحليل الانحدار حيث ان الاثنان تستعملان لتحويل مجموعه من المتغيرات ذات الارتباط العالي الى مجموعة من المتغيرات المستقلة  الجديدة تعرف بالمركبات وتكون هذه المركبات خطية  متعامدة مستقلة بعضها عن البعض الاخر باستعمال تحويلات خطية ويستعمل الاثنان ايضا في تخفيض الابعاد . تم في هذا البحث استعمال طريقة المربعات الصغرى الجزئية باستعمال خوارزمية التكرار غير الخطي للمربعات الصغرى الجزئية Non-linear Iterative partial least squares NIPALS(PLS1)  وطريقة انحدار المركبات الرئيسية بخوارزمية تجزئة القيم المفردة  ((SVD) Singular value decomposition ). اذ تم اجراء  المقارنة للطريقتين المذكورتين آنفا من خلال تجارب المحاكاة  عندما يتوزع الخطأ توزيعا طبيعيا لحجوم عينات وابعاد متغيرات مختلفة ،  واتضح من خلال المقارنة  ان طريقة المربعات الصغرى الجزئية افضل من طريقة المركبات الرئيسية في حالة كون عدد المشاهدات اكبر من عدد المتغيرات وكذلك في حالة كون عدد المتغيرات اكبر من عدد المشاهدات.   .


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