Verhagen, Alexandra (author)
Accurate capacity planning is essential to ensure uninterrupted services and network stability through peak hours for the transport core network of KPN. This involves a trade-off between minimizing the risks of capacity shortages and costs of capacity expansions. High network loads are occurring more frequently and their magnitude is increasing. Th...
Gao, Zhenyu Chen, Jinyue Wang, Guoqiang Ren, Shilong Fang, Lei Yinglan, A Wang, Qiao
Published in
Journal of contaminant hydrology
Intelligent prediction of water quality plays a pivotal role in water pollution control, water resource protection, emergency decision-making for sudden water pollution incidents, tracking and evaluation of water quality changes in river basins, and is crucial to ensuring water security. The primary methodology employed in this paper for water qual...
Sun, Yifei Yan, Xuefeng Jiang, Qingchao Wang, Guan Zhuang, Yingping Wang, Xueting
Published in
Bioprocess and biosystems engineering
The quality prediction of batch processes is an important task in the field of biological fermentation. However, dynamic nonlinearity, unequal sampling intervals, uneven duration, and multiple features of a batch process make this task challenging. Thus, the multiple-feature fusion transformer (MFFT) model is proposed for the time series quality pr...
Gourimate, Aymane
L'uni longitudinal caractérise l'écart entre le profil longitudinal théorique de la chaussée et celui de sa surface réelle. Ainsi, l'uni de la chaussée qualifie les dégradations de sa surface qui interfèrent avec la sécurité et le confort de ses passagers. Toutefois, cette notion reste difficilement maîtrisable surtout dans le cadre d'une réhabilit...
Wan, Xiong Shen, Jialing Kong, Yanru Huang, Xinjian Lao, Yinyin Ji, Xuechun
Published in
Journal of Physics: Conference Series
In view of the shortcomings of manual operation mode and passive anomaly perception in the current dispatching automation system, this paper provides a time series prediction method for the metrics of the dispatching automation system based on the artificial intelligence platform. Firstly, based on the collected metrics of the dispatching automatio...
Melin, Patricia Sánchez, Daniela Monica, Julio Cesar Castillo, Oscar
Published in
Soft computing
In this paper, the latest global COVID-19 pandemic prediction is addressed. Each country worldwide has faced this pandemic differently, reflected in its statistical number of confirmed and death cases. Predicting the number of confirmed and death cases could allow us to know the future number of cases and provide each country with the necessary inf...
Ju, Jie Liu, Ke'nan Liu, Fang'ai
Published in
Neural processing letters
Sulphur dioxide is one of the most common air pollutants, forming acid rain and other harmful substances in the atmosphere, which can further damage our ecosystem and cause respiratory diseases in humans. Therefore, it is essential to monitor the concentration of sulphur dioxide produced in industrial processes in real-time to predict the concentra...
Wen, Tao Chen, Huiling Cheong, Kang Hao
Published in
Nonlinear Dynamics
The analysis of time series and images is significant across different fields due to their widespread applications. In the past few decades, many approaches have been developed, including data-driven artificial intelligence methods, mechanism-driven physical methods, and hybrid mechanism and data-driven models. Complex networks have been used to mo...
Wang, Yue Liu, Mingsheng Huang, Yongjian Zhou, Haifeng Wang, Xianhui Wang, Senzhang Du, Haohua
Published in
International Journal of Machine Learning and Cybernetics
The pressure prediction technology whereby represents the rock pressure law in the excavation is fundamental to safety in production and industrial intelligentization. A growing number of researchers dedicate that machine learning is used to accurate prediction of underground pressure changes. However, the existing research which based on the class...
Huang, Jianying Yang, Seunghyeok Li, Jinhui Oh, Jeill Kang, Hoon
Published in
The Journal of Supercomputing
Sanitary sewer overflows caused by excessive rainfall derived infiltration and inflow is the major challenge currently faced by municipal administrations, and therefore, the ability to correctly predict the wastewater state of the sanitary sewage system in advance is especially significant. In this paper, we present the design of the Sparse Autoenc...