Robust State and Fault Estimation in Mobile Robots under Dynamic Noise Environments using Hybrid LSTM-EKF with Adaptive Weighting

سال انتشار: 1405
نوع سند: مقاله ژورنالی
زبان: انگلیسی
مشاهده: 59

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شناسه ملی سند علمی:

JR_JACM-12-2_030

تاریخ نمایه سازی: 1 تیر 1405

چکیده مقاله:

This paper proposes an adaptive hybrid estimation framework combining a Long Short-Term Memory (LSTM) network and an Extended Kalman Filter (EKF) for simultaneous robot state estimation and actuator fault detection in mobile robots operating under uncertain conditions. The LSTM network learns temporal patterns and nonlinear relationships from sensor data, while the EKF provides model-based filtering with uncertainty quantification. A novel adaptive fusion mechanism dynamically balances these complementary approaches using a weighting factor derived from the estimation uncertainties of both components. The proposed method was extensively evaluated on a differential-drive robot model subject to various noise conditions and fault profiles, including progressive drift faults and abrupt jump faults. Simulation results demonstrate that our hybrid approach significantly outperforms standalone EKF and LSTM estimators, achieving up to ۷۴.۶% improvement in fault estimation accuracy and ۳۴.۵% reduction in position error under challenging high-noise conditions. The framework maintains consistent performance across diverse fault types, showing particular effectiveness in detecting gradual fault progression while remaining responsive to sudden fault events. These findings confirm that the adaptive LSTM-EKF fusion provides enhanced accuracy, robustness, and generalization capability compared to conventional approaches.

کلیدواژه ها:

Mobile robot localization ، state and fault estimation ، robustness in noisy environments ، adaptive fusion factor ، LSTM-EKF hybrid model

نویسندگان

Karim Khemiri

UR۲۲ES۱۲: Modelling, Optimization and Augmented Engineering, ISLAIB, University of Jendouba, Beja, ۹۰۰۰, Tunisia

Mokhtar Ferhi

UR۲۲ES۱۲: Modelling, Optimization and Augmented Engineering, ISLAIB, University of Jendouba, Beja, ۹۰۰۰, Tunisia

Noureddine Hidouri

Laboratoire de Recherche PEESE, Université de Gabès, Ecole Nationale d'Ingénieurs de Gabes, Gabes, Tunisie

Ridha Ennetta

Mechanical Modeling, Energy & Materials Laboratory, National School of Engineers, Gabes University, Zrig, ۶۰۲۹, Gabes, Tunisia

Ridha Djebali

UR۲۲ES۱۲: Modelling, Optimization and Augmented Engineering, ISLAIB, University of Jendouba, Beja, ۹۰۰۰, Tunisia

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