6 Visual AI Use Cases for Utilities from Easy to Advanced
In the rapidly evolving landscape of AI, utilities are increasingly turning to Visual AI technologies to streamline operations and enhance efficiency. However, not all AI applications are created equal—some are simpler to implement, while others demand more advanced resources and expertise. In this article, 6 Visual AI Use Cases for Utilities from Easy to Advanced, we’ll rank use cases by difficulty, helping you understand which projects offer quick wins and which ones may require more substantial investment. This approach allows utilities to adopt AI strategically, starting with easier solutions and progressively tackling more complex use cases.
1. Analog Control Recognition (Easy)
Analog control recognition is one of the simplest use cases. It involves using AI to automatically read analog gauges, dials, and meters—common in older infrastructure. These readings can be automatically captured and integrated into digital systems for monitoring and analysis.
Could this be you?
Utility Alpha automated the reading of analog controls in its older substations by implementing AI-driven image recognition. Cameras were installed to capture real-time data from gauges, and an AI model converted this data into a digital format, reducing manual site visits by 70% and improving data accuracy. This solution saved thousands of labor hours annually and allowed for quicker detection of equipment issues, leading to improved operational efficiency.
2. Image Quality Assessment (Easy)
Image quality assessment ensures that captured visuals are sufficient for their intended purpose by checking images for focus, obstructions, lighting, resolution, and contrast.
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Utility Beta automated the detection of blurry images during drone inspections of its wind turbines. Cameras on the drones captured real-time data from the turbine blades and towers, and an AI model assessed the image sharpness, flagging blurry or unusable photos before they were uploaded for analysis. This solution reduced the need for drone operators to return to inspection sites by 80%, saving significant labor hours and ensuring consistent image quality for defect detection.
3. Object Detection (Moderate)
Object detection involves identifying objects within captured images, such as equipment, vehicles, or personnel in utility facilities. Object detection can be applied to monitor critical infrastructure or ensure safety protocols are followed.
Difficulty of Image Acquisition: Moderate. Acquiring images can vary depending on the environment. Fixed cameras, such as those used for security monitoring, generally face few challenges. Images captured during ground inspections can have significant obstructions or difficult angles. Aerial image capture requires drones or helicopters along with trained operators.
Modeling Complexity: Moderate. AI models must be trained to recognize specific objects in diverse environments. This includes accounting for differences in size, shape, orientation and background, making the modeling process more complex than simpler image tasks like quality assessment.
User Acceptance of Automated Solution: Moderate to High. Users are already familiar with object detection through everyday apps that identify common items like pets or landmarks in photos. The widespread use in personal settings sets the stage for easier acceptance in industry-specific tasks.
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Utility Delta automated the identification of bird nests on transmission towers. Drones captured tens of thousands of images, and the AI model flagged images with a high probability of containing bird nests for human review. By filtering out low-probability images, the utility saved hundreds of labor hours, allowing human reviewers to focus only on likely positive cases.
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4. Defect Detection (Moderate/Difficult)
Defect detection aims to identify issues such as cracks, corrosion, or other signs of wear on equipment. It can also be used to find if parts that should be present are missing.
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Utility Gamma automated the detection of missing discs in insulators along its high-voltage transmission lines using AI-driven defect detection. Drones were deployed to capture detailed images of the insulator strings, and the AI model flagged any potential defects, such as missing or damaged discs, for human inspectors to review. By using a human-in-the-loop approach, the utility allowed its professional inspectors to focus on likely defects while building confidence in the AI’s accuracy. This solution saved significant labor hours and improved maintenance response times, ultimately enhancing grid reliability.
5. Distance Assessment (Moderate/Difficult)
Distance assessment evaluates whether trees, vegetation, or other objects are too close to critical electrical infrastructure, such as transmission lines, substations, or transformers for safety or regulatory purposes.
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Utility Epsilon automated the assessment of ground vegetation encroachment near its transmission lines. Drones captured overhead images of transmission corridors, and the AI model evaluated whether trees or bushes were growing too close to the infrastructure according to safety codes. By analyzing the growth rate across time-stamped images, the AI could predict when vegetation would likely encroach upon transmission lines, allowing the utility to schedule trimming and maintenance before it became a safety hazard.
6. Orientation Assessment (Difficult)
Orientation assessment involves determining the exact position and alignment of objects, which is critical for ensuring proper installation or detecting misalignments in infrastructure.
Could this be you?
Utility Zeta partnered with organizations that regularly drive the city’s streets—such as police vehicles and city bus services—to automate the detection of leaning utility poles using AI-driven orientation assessment. By utilizing street-level cameras installed on these vehicles, the utility gathered continuous, real-time images of poles from multiple angles. The AI model processed these images, assessing each pole’s orientation and flagging any that appeared to be leaning beyond acceptable limits. This partnership reduced the need for dedicated image capture and allowed the utility to address potential hazards before they became critical in the urban portion of its service area.
Where to Begin
When determining where to begin with Visual AI, it’s essential to consider your organization’s current capabilities, resources, and goals. For utilities just starting with AI, beginning with easier use cases like analog control recognition or image quality assessment can deliver quick wins and help build confidence in the technology. These projects tend to have lower complexity and require fewer resources, allowing teams to gain valuable experience. As your team becomes more familiar with AI tools and workflows, you can progress to moderate or difficult use cases, such as defect detection or orientation assessment, where the potential for operational impact is higher but also more challenging to achieve. Start where the return on investment is clearest, and scale up as your expertise grows.
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Data Analyst | AI Expert | Transforming Data into Growth Strategies at Noorano
3moThis newsletter offers valuable insights into the diverse range of Visual AI applications in the utilities sector. It’s great to see a focus on both entry-level solutions, like analog control recognition, and more advanced uses, such as automated defect detection. These applications highlight how AI can drive efficiency and transformation in utility operations. A must-read for any organization looking to leverage AI for practical impact!
Corporate Commodity Director (Metals) & Local Purchasing Director at FICOSA
4mo{This Article} Implications of Possible implementation areas in automotive : 1. Plant Maintenance : Converting analog controls into digital signals. It helps to detect anomalies and create warning signals way before the problem happens and create one digital control centre. 2. Garbage In - Garbage Out : Make sure that your quality control visuals are not garbage. 3. OHSE : Make sure that within interest of area, everyone uses safety equipment. 4. Maintenance : Visual continous screenening mechanical parts and detect cracks as soon as they emerged. There are many areas that Visual AI may help and all of it fits within Digital Plant / Industry 4.0 aims.