The model-based fault detection technique, which needs to identify the system models, has been well established. The objective of this paper is to develop an alternative procedure instead of identifying the system models. In this paper, subspace method aided data-driven fault detection based on principal component analysis (PCA) is proposed. The basic idea is to use PCA to identify the system observability matrices from input and output data and construct residual generators. The advantage of the proposed method is that we just need to identify the parameterized matrices related to residuals rather than the system models, which reduces the computational steps of the system. The proposed approach is illustrated by a simulation study on the Tennessee Eastman process.
from #AlexandrosSfakianakis via Alexandros G.Sfakianakis on Inoreader http://ift.tt/2hVa8tl
via IFTTT
Εγγραφή σε:
Σχόλια ανάρτησης (Atom)
Δημοφιλείς αναρτήσεις
-
Introduction Crisis management is a critical organizational function. Failure can result in serious harm to stakeholders, losses for an orga...
-
Publication date: 1 July 2017 Source: Cancer Letters, Volume 397 Author(s): Makoto Sano, Yoshimi Ichimaru, Masahiro Kurita, Emiko Hayashi,...
-
Maritime Logistics • General Ship Knowledge • Seaborne Cargoes and Dangerous Goods • Cargo Planning • Marine Terminal Operations • Modal and...
-
136 Unit 6 • Cause-Effect Essays What is a great topic for a cause-effect essay? This type of essay may focus more on the causes or more on ...
-
Winners of the 13th Annual 2017 Info Security PG's Global Excellence Awards® from #AlexandrosSfakianakis via Alexandros G.Sfakianakis ...
-
918 quotes have been tagged as self-confidence: Edgar Allan Poe: ‘I have great faith in fools - self-confidence my friends will call it.’, R...
-
Apply to 39 Fifth Third Bank Personal Banker jobs in United States on LinkedIn. Sign-up today, leverage your professional network, and get h...
-
Publication date: Available online 7 April 2017 Source: Experimental Cell Research Author(s): Guoxing Li, Huiyang Song, Weihua Yang, Shans...
Δεν υπάρχουν σχόλια:
Δημοσίευση σχολίου