Fault detection and estimation of a lithium-ion battery system using an adaptive observer
Abstract
Nowadays, we are dealing with the increasing complexity of industrial systems, which are often equipped with a large number of sensors and actuators. Industrial processes are usually complex and consequently vulnerable. The likelihood of multiple failures and resulting economic losses also increases. Therefore, fault estimation is gaining more and more attention from a practical point of view and is an important aspect in modern fault diagnosis (FD), which can provide knowledge about the detection, isolation and identification of the faults. In this paper a novel fault detection and estimation adaptive based observer approach for the Takagi-Sugeno (T-S) system is proposed.
Keywords: Fault Diagnosis, Fault Detection, Fault Estimation, Adaptive Observer
DOI: 10.54941/ahfe1004293
Cite this paper
More from this volume
- Applying Human Factors Principles and Analyses to Design an Instructional Display for Dynamic Breathing Threat Training
- A Human-Centered Approach to Artificial Intelligence Applications in Naval Aviation
- Comparison of Backpacks with Air Mesh Back Panels and Curved Boards in Standing Position
- Effects of Filtered Air- and Bone-conduction Sounds’ Presentation in Mastication on Food Texture
- Computer mimetics in visible performance: the late work of the Portuguese experimental poet Ernesto Melo e Castro
- Design for Sustainability Tools: Categories of classification towards practical use
- Exploring Correlations of PCMI Metrics in Museum Creativity through Line Chart
- The Characteristics and Influencing Factors of the Colour of the Cizhou Kiln Porcelain
- The User Interface Interaction Design of Central Bank Digital Currency: An Empirical Study
- Effects of Diabetic Sole Design with Auxetic Structure on Reducing Plantar Peak Pressure
- Multidisciplinary Framework for Creating the Next-generation of Human-centered Design Guidelines
- Visual Narrative Design of Text in Augmented Reality Interactive Experience


AHFE Open Access