- Architecting the Industrial Internet
- Shyam Nath Robert Stackowiak Carla Romano
- 214字
- 2021-07-02 23:59:26
Computational deployment patterns
The Industrial Internet encompasses many topologies of assets, and sensor and computational distributions. Traditional control systems typically disperse computational power close to the physical systems, in the network periphery, and are performed at the controller level. Traditional data centers perform centralized computations. The Industrial Internet requires a combination of both of these. Smart sensors and devices perform dispersed computations to enable localized control and decision making, while concentrated computation placed throughout the network supports higher-level decision making.
Network connectivity is critical for communication between the periphery and the concentrated capabilities. Concentrated computational capabilities enable a wider and deeper spectrum of analytics using data integrated throughout the industrial system, including traditional applications data.
The placement of computational capabilities in relation to the periphery requires architectural choices to be made. If the assets are high in number and widely dispersed to remote areas, a strong peripheral computation capacity is necessary, especially if latency, local control, and resilience are critical. Functions performing higher-level computations that incorporate data from multiple systems, but do not depend on strict latency requirements, can be performed by a concentrated computational capability. Generally, IIoT systems use a combination of peripheral and concentrated computational patterns. Distributed computational concentration is most resilient, while concentrated computation has the potential for more robust analytics.
- Extending Jenkins
- Computer Vision for the Web
- INSTANT OpenCV Starter
- Debian 7:System Administration Best Practices
- 深入淺出Java虛擬機:JVM原理與實戰
- 華為HMS生態與應用開發實戰
- 碼上行動:零基礎學會Python編程(ChatGPT版)
- Xamarin.Forms Projects
- Scala編程實戰(原書第2版)
- 計算機應用基礎實踐教程
- 21天學通C++(第5版)
- R語言:邁向大數據之路(加強版)
- Mastering jQuery Mobile
- 數據分析與挖掘算法:Python實戰
- JavaScript前端開發基礎教程