BEGIN:VCALENDAR
VERSION:2.0
PRODID:-//EE - ECPv5.10.0//NONSGML v1.0//EN
CALSCALE:GREGORIAN
METHOD:PUBLISH
X-WR-CALNAME:EE
X-ORIGINAL-URL:https://ee.iisc.ac.in
X-WR-CALDESC:Events for EE
BEGIN:VTIMEZONE
TZID:Asia/Kolkata
BEGIN:STANDARD
TZOFFSETFROM:+0530
TZOFFSETTO:+0530
TZNAME:IST
DTSTART:20230101T000000
END:STANDARD
END:VTIMEZONE
BEGIN:VEVENT
DTSTART;TZID=Asia/Kolkata:20230630T110000
DTEND;TZID=Asia/Kolkata:20230630T130000
DTSTAMP:20260421T151931
CREATED:20230626T033835Z
LAST-MODIFIED:20230626T033835Z
UID:240780-1688122800-1688130000@ee.iisc.ac.in
SUMMARY:[EE Seminar] - Prof. Saikat Chatterjee\, KTH - {Data-driven Non-linear State Estimation of Model-free Process in Unsupervised Learning}\, Friday\, June 30th\, 11am\, MMCR\, EE.
DESCRIPTION:The IEEE Signal Processing Society\, Bangalore Chapter\, and the Electrical Engineering\, IISc are happy to host the following talk\,\n \nVenue : MMCR (C241)\, EE\, IISc\nTime : 11am-12noon\nDate : 30-June-2023\nSpeaker : Prof. Saikat Chatterjee (KTH)\n \n================\n\nTitle:        DANSE: Data-driven Non-linear State Estimation of Model-free Process in Unsupervised Learning Setup\nAbstract:\nWe address the tasks of Bayesian state estimation and forecasting for a model-free process in an unsupervised learning setup. In the seminar\, we discuss our new method called DANSE – Data-driven Nonlinear State Estimation method. DANSE provides a closed-form posterior of the state of the model- free process\, given linear measurements of the state. In addition it provides a closed-form posterior for forecasting. We show how data-driven recurrent neural networks (RNNs) are used in the DANSE to provide closed-form prior of the state and posterior. The training of DANSE\, mainly learning the parameters of RNN\, is executed in an unsupervised learning approach. In unsupervised learning\, we have access to a training dataset consisting of only a set of measurement data trajectories\, but we do not have any access to the state trajectories. Therefore\, DANSE does not have access to state information in training data and can not use supervised learning. Using simulated linear and non- linear process models (Lorenz attractor and Chen attractor)\, we evaluate the unsupervised learning- based DANSE. We show that the proposed DANSE\, without knowledge of the process model and without supervised learning\, provides a competitive performance against model-driven methods\, such as Kalman filter (KF)\, extended KF (EKF) and unscented KF (UKF)\, and a recently proposed hybrid method called KalmanNet.\nPreprint of the paper: https://arxiv.org/abs/2306.03897\nBio:\nSaikat Chatterjee is associate professor at School of Electrical Engineering and Computer Science\, KTH-Royal Institute of Technology\, Sweden. He received a Ph.D. degree from Indian Institute of Science\, India. His website: https://www.kth.se/profile/sach\n\n=================\n\n\n\n​All are welcome\,
URL:https://ee.iisc.ac.in/event/ee-seminar-prof-saikat-chatterjee-kth-data-driven-non-linear-state-estimation-of-model-free-process-in-unsupervised-learning-friday-june-30th-11am-mmcr-ee/
END:VEVENT
END:VCALENDAR