학술논문

An Object Detection Model for Electric Power Operation Sites Based on Federated Self-supervised Learning
Document Type
Conference
Source
2023 Panda Forum on Power and Energy (PandaFPE) Power and Energy (PandaFPE), 2023 Panda Forum on. :1706-1710 Apr, 2023
Subject
Power, Energy and Industry Applications
Signal Processing and Analysis
Training
Visualization
Image edge detection
Computational modeling
Distributed databases
Object detection
Self-supervised learning
electric power operation sites
object detection
federated self-supervised learning
Language
Abstract
In the various edge cloud devices within the power system, a large amount of discrete data is generated, with the most significant amount being image data captured by each construction site. However, due to distance, privacy protection, transmission loss, and other issues, it is difficult to gather these data together for use, resulting in the waste of valuable data resources. Even if these data are collected, annotating them one by one is challenging, leading to limited training effectiveness for the model. As a result, supervision of electric power operation sites still depends on manual remote viewing of surveillance video, which is inefficient and error-prone. To address these issues, this paper proposes the use of Federated Self-supervised learning for object detection at electric power operation sites. This method effectively utilizes limited visual data in each terminal scene to jointly train a neural network model, improving the model's recognition accuracy under a distributed learning framework, increasing data utilization, and ensuring data security. The proposed approach has the potential to enhance the efficiency of electric power production.