Smart Industrial Power

The industrial power and tools sector is amid the Fourth Industrial Revolution, which continues to drive the manufacturing industry towards greater efficiency and productivity. Power tools are crucial in this transformation as an integral part of the global manufacturing infrastructure. AI technologies, particularly TinyML and machine learning, play an increasingly significant role in this rapidly evolving landscape. They are helping engineers overcome challenges and opening new avenues for the intelligence and efficiency of power tools.

Nuvoton, a leading provider of semiconductor solutions, is a key player in this domain. Nuvoton is committed to providing affordable, energy-efficient, and reliable solutions that meet the diverse needs of power tools in sizes, costs, and performance characteristics. We offer a comprehensive hardware and software evaluation and development tools ecosystem and reference designs to help developers reduce time-to-market and lower development costs.

By integrating AI technologies with Nuvoton semiconductor solutions, engineers can create smarter, more efficient power tools that enable innovative approaches to manufacturing. This not only enhances the competitiveness of the manufacturing industry but also opens up new opportunities for sustainability and resource management. Thus, the convergence of AI and Nuvoton offerings brings new horizons and possibilities for the industrial power and tools sector.

Applicable development board  

NuMaker-HMI-MA35D1-S1

1. Anomaly detection

Example: Industrial equipment health monitoring

Use various sensors, such as vibration, temperature, and pressure, to monitor the operating status of industrial equipment.
MA35D1 processes the data from these sensors, detecting in real-time whether the equipment is operating normally or if there are any potential signs of failure.
The system can predict equipment failures, allowing maintenance to be scheduled in advance and reducing downtime.

 

2. Object detection

Example: Production line quality control

Cameras are installed on the production line, and MA35D1 processes the image data, detecting the appearance and assembly quality of the products.
It can identify product defects or assembly errors and provide real-time feedback to the production control system for adjustment.

 

3. Object classification

Example: Smart warehouse management

Cameras monitor items in a warehouse, and MA35D1 processes the image data, automatically classifying the stored items.
The system can identify different types of items, automatically update inventory information, and optimize inventory layout.

 

4. Real-time identification

Example: Energy consumption monitoring

Industrial facilities use various sensors to monitor energy usage, such as electricity, water, and gas consumption.
MA35D1 processes this data, identifying the patterns and trends of energy usage in real time, helping to optimize energy efficiency and reduce costs.

 

NuMaker-HMI-M467

NuMaker-IoT-M467

1. Vibration Detection

Example: Power Generator Health Monitoring

Vibration sensors are attached to a power generator to monitor its health.
A Cortex-M4 processes sensor data, analyzing vibration patterns to detect if the generator is operating normally or if signs of wear and tear require maintenance.
Early detection and maintenance can prevent costly breakdowns and downtime, improving power generation efficiency.

 

2. Sensor Fusion

Example: Smart Energy Management System

Power, temperature, and pressure sensors are combined in an industrial facility to monitor energy consumption and production processes.
A Cortex-M4 processes the combined data from these sensors, enabling energy consumption analysis and optimization, helping reduce energy costs and increase production efficiency.
Such a system can optimize energy usage, supporting sustainability initiatives.

NuMaker-M55M1

1. Vibration Monitoring
With the M55M1 board's high-precision analog-to-digital conversion and powerful data processing capabilities, it can accurately monitor the vibration of industrial power equipment. Vibration monitoring is crucial for the early identification of equipment faults and predictive maintenance. For example, abnormal vibration patterns may indicate mechanical wear or impending failure, and timely detection and maintenance can significantly reduce downtime and repair costs.

2. Sensor Fusion

The M55M1 board can simultaneously process data from multiple sensors, including temperature, current, voltage, and vibration. This sensor data fusion helps to obtain a comprehensive understanding of the industrial power supply status and provides more accurate diagnostic information. For example, by combining temperature and current data, the load and health status of the power supply equipment can be predicted more accurately.

3. Anomaly Detection

The M55M1 board's machine-learning capabilities enable it to detect real-time industrial power system anomalies. This includes identifying problems such as overloads, short circuits, and temperature abnormalities. Early identification and response to these issues can prevent severe equipment damage and production disruptions.

4. Object Detection and Classification

In intelligent industrial power management, object detection and classification functions can be used to identify and monitor different components in the power lines, such as transformers, switches, and junction boxes. This helps maintain the integrity of the power network and ensures that all components operate optimally.

 

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