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Industrial IoT – Collecting Data from Manufacturing Lines Within Minutes
技术
- 平台即服务 (PaaS) - 连接平台
适用功能
- 离散制造
用例
- 工厂可见化与智能化
- 预测性维护
服务
- 云规划/设计/实施服务
挑战
Blackbird, a company that provides solutions for manufacturers to digitalize their production lines, was facing challenges with their existing telecom provider. They were in need of a better connectivity provider that specializes in M2M communication, facilitates reliable and secure data collection, provides real-time data about device location and connectivity, is available globally, provides flexible IoT data plans, and offers mobile connectivity. The company was also looking for a technology that can be easily integrated into existing production lines and is reliable enough to allow customers to monitor critical business processes uninterrupted.
关于客户
Blackbird is a company based in Denmark with a workforce of 11-50 employees. They provide solutions that allow manufacturers to digitalize their production lines, helping them become more efficient and competitive. Blackbird developed Factbird, an innovative IoT device that can be easily integrated into existing production lines. Factbird devices measure various sorts of data like the number of units used in a certain timeframe or the temperature of materials. This data enables real-time line efficiency analysis that helps to optimize production processes. Blackbird has deployed thousands of devices in production lines with customers in 16 countries and 4 continents.
解决方案
Blackbird partnered with EMnify, a global carrier that focuses on and understands the challenges of IoT Enterprises. EMnify offers real-time data in the Connectivity Management platform and its Rest-API is integrated into Blackbird's application, allowing Blackbird customers to see and blacklist networks. EMnify perfectly integrates Blackbird’s cloud infrastructure into their AWS environment and its dynamic Regional Internet Breakout (RIB) infrastructure enables data transfers while significantly reducing the ping time. EMnify also provides flexible traffic pooling capabilities which is cost effective.
运营影响
数量效益
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