Summary is AI-generated, newsdesk-reviewed
  • Leuze AI-based neural network boosts optical distance sensor accuracy in challenging industrial applications.
  • AI technology reduces measurement errors from surface and distance variations by over 50%.
  • No additional computing power needed, ideal for industrial automation and precise measurements.

Leuze has integrated artificial intelligence (AI) into optical distance sensors, enhancing measurement accuracy for complex industrial applications.

The innovation increases precision without additional operational computing resources, utilizing a neural network to make improvements.

Challenges with Object Surfaces

Optical distance sensors employing time-of-flight (TOF) technology offer considerable usage advantages by enabling quick, contactless measurement of wide-ranging distances, remaining unaffected by ambient light, and providing real-time data. The sensors measure distance based on the time it takes light to reach an object and return, typically using laser or LED pulses.

Despite these benefits, TOF technology faces accuracy limitations influenced by object surface characteristics. Dark surfaces may weaken the signal, causing delays as narrow pulses are detected later. Conversely, bright surfaces result in earlier, wider pulse detection, leading to measurement discrepancies that necessitate correction.

Polynomial Function Limitations

Traditionally, defined algorithms utilizing polynomial roles have been used for error correction

Traditionally, defined algorithms utilizing polynomial functions have been used for error correction.

These functions, while stable and suitable for continuous error curves, offer limited flexibility in managing complex surface reflections. As the parameters are fixed, they lack adaptability to changing environmental conditions.

Neural Networks for Enhanced Accuracy

Leuze has adopted a more advanced strategy with neural networks, a form of AI modeled on human brain functionality. The network comprises interconnected neurons across input, hidden, and output layers, processing input by passing through each layer sequentially.

This network design employs activation functions, enabling it to understand complex, non-linear scenarios beyond basic calculations.

Learning from Real Data

AI system developed by Leuze trains on sample data to understand how surface texture and brightness

The AI system developed by Leuze trains on sample data to understand how surface texture and brightness impact sensor readings. The neural network learns using raw distance values and pulse widths as inputs and standardized correction values as outputs.

This data originates during the production process, capturing information from varied surfaces and distances. The calculated correction values are then fed into the production system's neural network, requiring no additional computational effort from the sensor during actual operation.

Five-Step Precision Process

Leuze's neural network comprises five interconnected layers using a Rectified Linear Unit (ReLU) activation function to filter out negative values. This configuration enhances speed and prevents computing errors typical of other approaches.

The network's final layer employs a hyperbolic tangent (tanh) function, ensuring that correction values stay within a set range, guiding sensor adjustments for accurate distance readings.

Applications in Industrial Automation

AI-enhanced time-of-flight sensors are invaluable in industrial automation where accuracy is critical. Notable applications include:

  • Navigation and collision avoidance for robots and mobile platforms
  • Material handling, ensuring precise positioning and distance checks on conveyors
  • Quality assurance for distance checks on workpieces with challenging surfaces
  • Automated guided vehicle systems (AGVs) for precise parking and maneuvering
  • Safety applications involving proximity detection to machines and systems

Summary

With AI, Leuze elevates the precision of optical distance sensors, cutting measurement errors induced by surface and distance dependencies by more than half.

This AI-based correction provides more accurate and reliable measurements without extra operational effort, marking it as an effective solution for challenging industrial applications.

Key Advantages

  • Significant reduction in measurement errors
  • Versatile use across various sensor types and surfaces
  • Enhanced learning from real data, adaptable to complex scenarios
  • No additional computational burden during use
  • Modern AI ensures future-proofing

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