Causal relationships are commonly examined in manufacturing processes to support faults investigations, perform interventions, and make strategic decisions. Industry 4.0 has made available an increasing amount of data that enable data-driven Causal Discovery (CD). Considering the growing number of recently proposed CD methods, it is necessary to introduce strict benchmarking procedures on publicly available datasets since they represent the foundation for a fair comparison and validation of different methods. This work introduces two novel public datasets for CD in continuous manufacturing processes. The first dataset employs the well-known Tennessee Eastman simulator for fault detection and process control. The second dataset is extracted ...
reservedPharmaceutical processes are undergoing a transition from traditional batch to continuous op...
By assessing the effect of hypothetical actions without the need to directly interact with the real ...
Accurate detection and diagnostics of faults in complex industrial plants are important for preventi...
In large-scale chemical processes, disturbances can easily propagate through the process units and t...
In manufacturing system management, the decisions are currently made on the base of ‘what if’ analys...
A Modified Random Forest algorithm (MRF)-based predictive model is proposed for use in man-ufacturin...
Discovering phase and causal dependencies on manufacturing processes. Keyword machine learning, caus...
In modern industrial plants, process units are strongly cross-linked with eachother, and disturbance...
The increasing complexity of Cyber-Physical Systems (CPS) makes industrial automation challenging. L...
In modern industrial plants, process units are strongly cross-linked with each other, and disturbanc...
2014-08-06A typical industrial process or plant operates with hundreds of control loops and those pr...
Distributed sensing networks (DSN), a system-wide deployment of different types of sensing devices i...
[ES] GfK owns the world’s largest retail panel within the tech and durable good industries. The pane...
Increasing complexity and high number of variables in the process industry have increased the inter...
Industrial systems are often subjected to abnormal conditions due to faulty operations or external d...
reservedPharmaceutical processes are undergoing a transition from traditional batch to continuous op...
By assessing the effect of hypothetical actions without the need to directly interact with the real ...
Accurate detection and diagnostics of faults in complex industrial plants are important for preventi...
In large-scale chemical processes, disturbances can easily propagate through the process units and t...
In manufacturing system management, the decisions are currently made on the base of ‘what if’ analys...
A Modified Random Forest algorithm (MRF)-based predictive model is proposed for use in man-ufacturin...
Discovering phase and causal dependencies on manufacturing processes. Keyword machine learning, caus...
In modern industrial plants, process units are strongly cross-linked with eachother, and disturbance...
The increasing complexity of Cyber-Physical Systems (CPS) makes industrial automation challenging. L...
In modern industrial plants, process units are strongly cross-linked with each other, and disturbanc...
2014-08-06A typical industrial process or plant operates with hundreds of control loops and those pr...
Distributed sensing networks (DSN), a system-wide deployment of different types of sensing devices i...
[ES] GfK owns the world’s largest retail panel within the tech and durable good industries. The pane...
Increasing complexity and high number of variables in the process industry have increased the inter...
Industrial systems are often subjected to abnormal conditions due to faulty operations or external d...
reservedPharmaceutical processes are undergoing a transition from traditional batch to continuous op...
By assessing the effect of hypothetical actions without the need to directly interact with the real ...
Accurate detection and diagnostics of faults in complex industrial plants are important for preventi...