FedIFL: A federated cross-domain diagnostic framework for motor-driven systems with inconsistent fault modes
Journal:
arXiv
Published Date:
May 12, 2025
Abstract
Due to the scarcity of industrial data, individual equipment users,
particularly start-ups, struggle to independently train a comprehensive fault
diagnosis model; federated learning enables collaborative training while
ensuring data privacy, making it an ideal solution. However, the diversity of
working conditions leads to variations in fault modes, resulting in
inconsistent label spaces across different clients. In federated diagnostic
scenarios, label space inconsistency leads to local models focus on
client-specific fault modes and causes local models from different clients to
map different failure modes to similar feature representations, which weakens
the aggregated global model's generalization. To tackle this issue, this
article proposed a federated cross-domain diagnostic framework termed Federated
Invariant Features Learning (FedIFL). In intra-client training, prototype
contrastive learning mitigates intra-client domain shifts, subsequently,
feature generating ensures local models can access distributions of other
clients in a privacy-friendly manner. Besides, in cross-client training, a
feature disentanglement mechanism is introduced to mitigate cross-client domain
shifts, specifically, an instance-level federated instance consistency loss is
designed to ensure the instance-level consistency of invariant features between
different clients, furthermore, a federated instance personalization loss and
an orthogonal loss are constructed to distinguish specific features that from
the invariant features. Eventually, the aggregated model achieves promising
generalization among global label spaces, enabling accurate fault diagnosis for
target clients' Motor Driven Systems (MDSs) with inconsistent label spaces.
Experiments on real-world MDSs validate the effectiveness and superiority of
FedIFL in federated cross-domain diagnosis with inconsistent fault modes.