Inicio  /  Algorithms  /  Vol: 16 Par: 11 (2023)  /  Artículo
ARTÍCULO
TITULO

Utilizing Mixture Regression Models for Clustering Time-Series Energy Consumption of a Plastic Injection Molding Process

Massimo Pacella    
Matteo Mangini and Gabriele Papadia    

Resumen

Considering the issue of energy consumption reduction in industrial plants, we investigated a clustering method for mining the time-series data related to energy consumption. The industrial case study considered in our work is one of the most energy-intensive processes in the plastics industry: the plastic injection molding process. Concerning the industrial setting, the energy consumption of the injection molding machine was monitored across multiple injection molding cycles. The collected data were then analyzed to establish patterns and trends in the energy consumption of the injection molding process. To this end, we considered mixtures of regression models given their flexibility in modeling heterogeneous time series and clustering time series in an unsupervised machine learning framework. Given the assumption of autocorrelated data and exogenous variables in the mixture model, we implemented an algorithm for model fitting that combined autocorrelated observations with spline and polynomial regressions. Our results demonstrate an accurate grouping of energy-consumption profiles, where each cluster is related to a specific production schedule. The clustering method also provides a unique profile of energy consumption for each cluster, depending on the production schedule and regression approach (i.e., spline and polynomial). According to these profiles, information related to the shape of energy consumption was identified, providing insights into reducing the electrical demand of the plant.

 Artículos similares

       
 
Michal Pu?kár, Jozef ?ivcák, ?tefan Král, Melichar Kopas and Matú? Lavcák    
This scientific study is focused on the analysis of an influence of the experimental diesel fuel mixtures containing various portions of the biocomponent on the unregulated gaseous emissions generated by a diesel motor vehicle, which is equipped with the... ver más
Revista: Applied Sciences

 
Nikolaos D. Andritsos, Spiros Paramithiotis, Marios Mataragas and Eleftherios H. Drosinos    
Listeria monocytogenes is the bacterial causative agent of listeriosis, a life-threatening disease for humans, mainly transmitted through contaminated food. Human clinical isolates of the pathogen are frequently identified as serotype 4b strains; interes... ver más
Revista: Applied Sciences

 
Jian Shu, Shi-Yang Tang, Sizepeng Zhao, Zhihua Feng, Haoyao Chen, Xiangpeng Li, Weihua Li and Shiwu Zhang    
The self-rotation of liquid metal droplets (LMDs) has garnered potential for numerous applications, such as chip cooling, fluid mixture, and robotics. However, the controllable self-rotation of LMDs utilizing magnetic fields is still underexplored. Here,... ver más
Revista: Applied Sciences

 
Jung-Hun Noh, Dong-Shin Ko, Seung-Jong Lee and Deog-Jae Hur    
During the recent decades, global warming by greenhouse gas evolution has attracted worldwide attention and ever increasing strict regulations thereon have become institutionalized as international policies. In the process, more environment-friendly powe... ver más
Revista: Applied Sciences

 
Ziteng Wang, Junfeng Li and Yonghong Yan    
Common sound source localization algorithms focus on localizing all the active sources in the environment. While the source identities are generally unknown, retrieving the location of a speaker of interest requires extra effort. This paper addresses the... ver más
Revista: Applied Sciences