Case Study

Real-time Conveyor Belt Anomaly Detection

Anomaly Detection for Conveyor Belts

Our client, a leading company in the beverage manufacturing industry, aimed to convert its production floors into state-of-the-art intelligent factories. As part of their digital transformation strategy, the client recognized the need to target real-time conveyor belt anomaly detection to enhance operational efficiency, reduce costs, and improve safety outcomes.

The Problem

Necessity for a robust solution capable of real-time conveyor belt anomaly detection.

The client’s production process heavily relies on conveyor belt systems to move raw materials and finished products through various manufacturing stages. Unexpected failures in these conveyor belts could lead to significant disruptions, including production stoppages, increased maintenance costs, and even hazardous situations. These challenges highlighted the necessity for a robust solution capable of real-time conveyor belt anomaly detection.

The primary objectives were to:

Minimize unplanned downtime: Early detection of potential issues to maintain continuous production.
Reduce maintenance costs: Predict maintenance approach, only conducting repairs when anomalies are detected.
Enhance safety: Prevent hazardous incidents by detecting malfunctions in real-time, ensuring a safer work environment.

The Solution

We designed and implemented an advanced Data and AI-driven system for real-time conveyor belt anomaly detection. The solution was built using Microsoft’s Azure ecosystem.

Key components of the solution included:

IoT Sensors: The sensors across the conveyor belt systems monitored critical parameters such as belt speed, motor temperature, vibration, and load in real-time. 

Data Processing and Storage: The data collected from the IoT sensors was ingested via Azure IoT Hub. Azure Data Factory facilitated the seamless flow of data into Azure Data Lake, where it was stored and prepared for further analysis. Azure Databricks was used to clean, transform, and prepare the data, ensuring it was ready for accurate anomaly detection.

Anomaly Detection with Azure Machine Learning: The core of the solution was built using Azure Machine Learning. We developed and trained machine learning models specifically designed for real-time conveyor belt anomaly detection. These models analyzed both historical and real-time data to identify any deviations from normal operating conditions.

Real-Time Visualization and Alerts: The processed data and anomaly detection results were visualized in Power BI. Custom dashboards provided the client with real-time insights into their conveyor belt operations, displaying key performance indicators (KPIs) and immediately highlighting any detected anomalies. Automated alerts were set up to notify the maintenance team in real time.

Technology Stack: Azure IoT Hub, Azure Data Factory, Azure Data Lake, Azure Databricks, Azure Machine Learning, Power BI

The Results

30% downtime reduction, 25% reduction in maintenance costs

The deployment of the real-time conveyor belt anomaly detection system resulted in significant benefits for the client:

Reduction in Downtime: The proactive detection of potential issues before they escalated into failures resulted in a 30% reduction in unplanned downtime, ensuring a more consistent and efficient production process.

Cost Savings: By adopting a predictive maintenance approach facilitated by real-time anomaly detection, the client achieved a 25% reduction in maintenance costs, as repairs and replacements were performed only when necessary.

Improved Operational Efficiency: Real-time insights provided by Power BI dashboards allowed the client to optimize their conveyor belt operations, leading to overall improvements in production efficiency.

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