A1 Refereed original research article in a scientific journal

Unveiling the Black Box: A Unified XAI Framework for Signal-Based Deep Learning Models




AuthorsShojaeinasab, A.; Jalayer, M.; Baniasadi, A.; Najjaran, H.

PublisherMultidisciplinary Digital Publishing Institute (MDPI)

Publication year2024

JournalMachines

Journal name in sourceMachines

Article number121

Volume12

Issue2

eISSN2075-1702

DOIhttps://doi.org/10.3390/machines12020121


Abstract
Condition monitoring (CM) is essential for maintaining operational reliability and safety in complex machinery, particularly in robotic systems. Despite the potential of deep learning (DL) in CM, its ‘black box’ nature restricts its broader adoption, especially in mission-critical applications. Addressing this challenge, our research introduces a robust, four-phase framework explicitly designed for DL-based CM in robotic systems. (1) Feature extraction utilizes advanced Fourier and wavelet transformations to enhance both the model’s accuracy and explainability. (2) Fault diagnosis employs a specialized Convolutional Long Short-Term Memory (CLSTM) model, trained on the features to classify signals effectively. (3) Model refinement uses SHAP (SHapley Additive exPlanation) values for pruning nonessential features, thereby simplifying the model and reducing data dimensionality. (4) CM interpretation develops a system offering insightful explanations of the model’s decision-making process for operators. This framework is rigorously evaluated against five existing fault diagnosis architectures, utilizing two distinct datasets: one involving torque measurements from a robotic arm for safety assessment and another capturing vibration signals from an electric motor with multiple fault types. The results affirm our framework’s superior optimization, reduced training and inference times, and effectiveness in transparently visualizing fault patterns.



Last updated on 2025-27-01 at 19:19