Summary is AI-generated, newsdesk-reviewed
  • Leuze enhances optical sensor accuracy using AI, improving precision in industrial applications.
  • Neural network corrects measurement errors, adapting to varying surface textures and distances.
  • AI solution eliminates additional computing needs, boosting efficiency and robust performance.

Leuze has integrated artificial intelligence (AI) to enhance the performance of optical distance sensors, addressing the challenges faced in industrial environments.

By utilising AI, these sensors achieve heightened precision without the necessity for additional computing resources during active operation. The improvement is achieved through the application of a neural network.

Addressing surface-related challenges

Optical distance sensors employing time-of-flight (TOF) technology are noted for their ability to measure large distances efficiently. They function by timing the journey of emitted light to an object and back, using laser or LED pulses. While TOF sensors perform well, surface characteristics can affect their accuracy, especially when dealing with objects of varying reflectivity.

Dark surfaces can cause weaker signals and delayed echoes, while brighter surfaces enhance signal strength, resulting in premature detection. These discrepancies necessitate error corrections.

The role of polynomial functions

Traditional methods have used polynomial functions to address these errors, deriving correction values

Traditional methods have used polynomial functions to address these errors, deriving correction values from complex algorithms suited for different surfaces and distances.

These functions, while capable of producing stable error curves, struggle with complex surface variations due to their fixed parameters, which limits adaptability to changing conditions.

A shift to neural networks

In contrast, Leuze applies a neural network for calculating correction values. This advanced AI model mimics brain-like operations, consisting of interconnected neurons across multiple layers.

It processes input data through these layers, enabling the network to learn complex relationships beyond traditional calculations. The network's activation functions determine the flow of information between neurons, leading to precise outcomes.

Training through data

AI-driven solution is educated using data that captures how different brightness levels and surface textures

The AI-driven solution is educated using data that captures how different brightness levels and surface textures impact sensor measurements. This helps in refining corrections. During its training, the neural network processes initial distance values and pulse widths to create standardised correction outputs.

It collects extensive data during production from various surfaces and distances, informing the facility's control system which, in turn, adjusts the sensor based on learnt values, avoiding extra computational demands during use.

Achieving precision with five layers

The Leuze neural network employs five fully connected layers, with each neuron linked to every other within its layer, allowing for comprehensive data handling. The ReLU activation function ensures only positive values, facilitating stable learning without computational errors.

Ultimately, the output layer uses the 'tanh' activation function, confining results to a predictable range, guiding sensor adjustments for accurate distance readings.

Applications in industrial settings

AI-enhanced time-of-flight sensors are particularly advantageous in automation settings where accuracy is crucial. They are deployed in:

  • Robotics for navigation and collision avoidance
  • Materials handling to monitor positions on conveyor systems
  • Quality assurance, inspecting workpieces on varied surfaces
  • Automated Guided Vehicles (AGVs) for precise distance manoeuvring
  • Safety, ensuring proximity detection around machinery

In summary, Leuze's AI integration significantly reduces measurement errors, enhancing sensor performance amidst variable surfaces. The innovative approach fosters robust measurements without requiring additional operational efforts, offering a fitting solution for demanding industrial applications.

Advantages of Leuze's AI solution

  • Diminished measurement errors for greater accuracy
  • Versatile application across different sensor types and surfaces
  • Adaptive learning from real-world data, even with complex surface variations
  • No increase in computational load during use
  • Future-readiness through modern AI technology

Learn why leading casinos are upgrading to smarter, faster, and more compliant systems

In case you missed it

What are emerging applications for physical security in transportation?
What are emerging applications for physical security in transportation?

Transportation systems need robust physical security to protect human life, to ensure economic stability, and to maintain national security. Because transportation involves moving...

Gallagher & Fortified enhance perimeter security solutions
Gallagher & Fortified enhance perimeter security solutions

Global security manufacturer - Gallagher Security is proud to announce a strategic partnership with Fortified Security, a pioneering perimeter systems integrator with over 30 years...

Genetec: Data sovereignty in physical security
Genetec: Data sovereignty in physical security

Genetec Inc., the global pioneer in enterprise physical security software, highlights why data sovereignty has become a central concern for physical security leaders as more survei...