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JEMS Maritime Sci. Ahead of Print: JEMS-00236 | |||
State Estimation and Control for a Model Scale Passenger Ship with LQG ApproachFerdi Cakici1, Ahmad Irham Jambak2, EMRE KAHRAMANOGLU3, Ahmet Kaan Karabüber4, Bünyamin Ustali5, MEHMET UTKU ÖĞÜR6, Fuat Peri7, Ömer Sinan ŞAHİN8, Mehmet Akif Uğur4, Afsin Baran Bayazit91Department of Naval Architecture and Marine Engineering, Yildiz Technical University, Istanbul, Turkey2Department of Mechatronics Engineering, Istanbul Technical University, Istanbul, Turkey 3Department of Marine Engineering, Istanbul Technical University, Istanbul, Turkey 4Department of Control and Automation Engineering, Yildiz Technical University, Istanbul, Turkey 5Department of Mechatronics Engineering, Yildiz Technical University, Istanbul, Turkey 6Department of Civil Engineering, Yildiz Technical University, Istanbul, Turkey 7Department of Naval Architecture and Marine Engineering, Istanbul Technical University, Istanbul, Turkey 8Department of Marine Engineering, Recep Tayyip Erdogan University, Rize, Turkey 9Departmen of Shipbuilding and Ocean Engineering, Istanbul Technical University, Istanbul, Turkey Reducing the roll response of ships in between irregular waves is an important issue for operational requirements. This study presents a roll dynamics model for a passenger ship equipped with active fins. In the paper, a Kalman Filter (KF) is applied to accurately estimate all states from the measurement of total roll motion and roll velocity (based on fins and waves), even in the presence of measurement noise. Synchronously, a linear quadratic gaussian (LQG) controller actively drives the fins to minimize roll motion and velocity by taking the fin amplitude and rate saturations together. Two different sea state severity are modelled for the simulation purpose. Results demonstrate the success of the state estimation approach and the remarkable potential of the LQG strategy for roll reduction. Keywords: Roll Stabilization, Kalman Filter, LQGCorresponding Author: Ferdi Cakici, Türkiye |
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