LGMLApr 21

Heterogeneity-Aware Personalized Federated Learning for Industrial Predictive Analytics

arXiv:2604.1945126.0
AI Analysis

For industrial prognostics, this work addresses the practical challenge of heterogeneous degradation patterns in federated settings, enabling personalized models while preserving data privacy.

This paper proposes a personalized federated learning model for industrial predictive analytics that handles heterogeneous degradation processes across clients, enabling tailored prognostic models. The method achieves superior failure time prediction performance, validated through simulations and the NASA turbofan engine dataset.

Federated prognostics enable clients (e.g., companies, factories, and production lines) to collaboratively develop a failure time prediction model while keeping each client's data local and confidential. However, traditional federated models often assume homogeneity in the degradation processes across clients, an assumption that may not hold in many industrial settings. To overcome this, this paper proposes a personalized federated prognostic model designed to accommodate clients with heterogeneous degradation processes, allowing them to build tailored prognostic models. The prognostic model iteratively facilitates the underlying pairwise collaborations between clients with similar degradation patterns, which enhances the performance of personalized federated learning. To estimate parameters jointly using decentralized datasets, we develop a federated parameter estimation algorithm based on proximal gradient descent. The proposed approach addresses the limitations of existing federated prognostic models by simultaneously achieving model personalization, preserving data privacy, and providing comprehensive failure time distributions. The superiority of the proposed model is validated through extensive simulation studies and a case study using the turbofan engine degradation dataset from the NASA repository.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes