Abstract
Electricity networks are critical infrastructure, delivering vital energy services. Due to the significant number, variety and distribution of electrical network overhead line assets, energy network operators spend millions annually on inspection and maintenance programmes. Currently, inspection involves acquiring and manually analysing aerial images. This is labour intensive and subjective. Along with costs associated with helicopter or drone operations, data analysis represents a significant financial burden to network operators. We propose an approach to automating assessment of the condition of electrical towers. Importantly, we train machine learning tower classifiers without using condition labels for individual components of interest. Instead, learning is supervised using only condition labels for towers in their entirety. This enables us to use a real-world industry dataset without needing costly additional human labelling of thousands of individual components. Our prototype first detects instances of components in multiple images of each tower, using Mask R-CNN or RetinaNet. It then predicts tower condition ratings using one of two approaches: (i) component instance classifiers trained using class labels transferred from towers to each of their detected component instances, or (ii) multiple instance learning classifiers based on bags of detected instances. Instance or bag class predictions are aggregated to obtain tower condition ratings. Evaluation used a dataset with representative tower images and associated condition ratings covering a range of component types, scenes, environmental conditions, and viewpoints. We report experiments investigating classification of towers based on the condition of their multiple insulator and U-bolt components. Insulators and their U-bolts were detected with average precision of 96.7 and 97.9, respectively. Tower classification achieved areas under ROC curves of 0.94 and 0.98 for insulator condition and U-bolt condition ratings, respectively. Thus we demonstrate that tower condition classifiers can be trained effectively without labelling the condition of individual components.
Highlights
T RANSMISSION and distribution of electricity are critical energy services for communities globally, underpinning vital services such as telecommunications, water services, transport and education
WORK Electricity networks overhead Line (OHL) assets represent critical infrastructure which must be supported by cost effective asset management
Automating the inspection of overhead line (OHL) assets is a challenging task requiring multiple image processing steps to detect the components of interest and their failure modes from cluttered backgrounds
Summary
T RANSMISSION and distribution of electricity are critical energy services for communities globally, underpinning vital services such as telecommunications, water services, transport and education. Electrical network overhead line (OHL) assets are inspected regularly for failures or conditions that might lead to faults. This is done for safety and economic reasons, and because it is required by law. Electrical towers are inspected against parameters that encompass the condition of their various component parts such as insulators, conductors and U-bolts, as well as factors such as bird nesting and accumulation of droppings, and encroachment of vegetation. Efforts to improve inspection quality and safety, and reduce costs and risks of failure, focus on exploiting optical aerial
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have
Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.