2020 Virtual AIChE Annual Meeting
(195f) Stepping Towards the Industrial Sixth Sense
Authors
This contribution introduces the development of an intelligent monitoring and control framework for chemical process, integrating the advantages of Industry 4.0 technologies, cooperative control and fault detection via wireless sensor networks. The framework consists of four main components. The first one is a wireless sensors network, transmitting over a 5G communication network, that facilitates data management for improved fault detection. The second component is an efficient fault detection algorithm that can analyse the data and classify it in faulty or normal. The third component is a knowledge-based and a model-based fault detection monitoring system. For the fault-detection, a two-stage method based on a hybrid learning approach is applied, which utilises supervised and unsupervised learning. Finally, the fourth component is a cooperative model predictive control system that takes the required measures to ensure stable process information. Under the cooperative framework, the distributed controllers share information about their state with other controllers, thus interaction between processing units is not lost. Using information on the processâ structure and behaviour, equipment information, and expert knowledge, the system is able to detect faults. The integration with the monitoring system facilitates the detection and optimises the controllerâs actions. The chemical process is a mini-plant that produces sodium ion solution as sodium chloride for the fine chemical, the pharmaceutical and the food industry. The dataset used for simulations consists of over 10 million samples, with each sample having 43 variable measurements, including temperature, flows, pressures and levels, collected by deployed wireless sensors set up on the process units. The results indicate that the proposed approach achieve high fault detection accuracy based on plant measurements, while the cooperative controllers improve the control of the process.
- Natarajan, S., & Srinivasan, R., 2014, Computers and Chemical Engineering 60, pp. 182-196