CIPCaD-Bench: Continuous Industrial Process datasets for benchmarking Causal Discovery methods

08/02/2022
by   Giovanni Menegozzo, et al.
0

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 from an ultra-processed food manufacturing plant, and it includes a description of the plant, as well as multiple ground truths. These datasets are used to propose a benchmarking procedure based on different metrics and evaluated on a wide selection of CD algorithms. This work allows testing CD methods in realistic conditions enabling the selection of the most suitable method for specific target applications. The datasets are available at the following link: https://github.com/giovanniMen

READ FULL TEXT

page 1

page 7

research
06/19/2023

: Generating Realistic Production Data for Benchmarking Causal Discovery

Algorithms for causal discovery have recently undergone rapid advances a...
research
04/27/2023

The Structurally Complex with Additive Parent Causality (SCARY) Dataset

Causal datasets play a critical role in advancing the field of causality...
research
09/27/2021

An IIoT machine model for achieving consistency in product quality in manufacturing plants

Consistency in product quality is of critical importance in manufacturin...
research
11/30/2021

gCastle: A Python Toolbox for Causal Discovery

is an end-to-end Python toolbox for causal structure learning. It provi...
research
04/30/2020

A Framework for Plant Topology Extraction Using Process Mining and Alarm Data

Industrial plants are prone to faults. To notify the operator of a fault...
research
11/01/2019

PtLnc-BXE: Prediction of plant lncRNAs using a Bagging-XGBoost-ensemble method with multiple features

Motivation: Long non-coding RNAs (lncRNAs) are a diverse class of RNA mo...
research
01/17/2019

Proposition of an implementation framework enabling benchmarking of Holonic Manufacturing Systems

Performing an overview of the benchmarking initiatives oriented towards ...

Please sign up or login with your details

Forgot password? Click here to reset