Redirigiendo al acceso original de articulo en 24 segundos...
Inicio  /  Applied Sciences  /  Vol: 11 Par: 5 (2021)  /  Artículo
ARTÍCULO
TITULO

Energy Investment Risk Assessment for Nations along China?s Belt & Road Initiative: A Deep Learning Method

Panning Liang    
Mingyang Yu and Lincheng Jiang    

Resumen

In 2013, China proposed the ?Belt & Road Initiative? which aims to invest the ?Belt & Road? countries so as to help them develop their infrastructure and economy. China consumes the largest part of fossil energy of the whole world, so it is China?s priority to consider its energy supplying security. Therefore, it becomes urgent for China to invest the ?Belt & Road? countries? energy facilities. There comes a question: how to evaluate the overseas energy investment risk? To answer this question, this paper proposes a deep learning method to assess such risk of the 50 ?Belt & Road? countries. Specifically, this paper first proposes an indicator system in which 6 main factors are separated into 36 sub-factors. This paper makes use of hierarchical convolution neural networks (CNN) to encode the historical statistics. The hierarchical structure could help CNN handle the long historical statistics more effectively and efficiently. Afterward, this paper leverages the self-attention layer to calculate the weights of each sub-factor. It could be observed that the resource potential is the most important indicator, while ?years of China?s diplomatic relations? is the most important sub-indicator. Finally, we use a conditional random field (CRF) layer and softmax layer to compute the assessment scores of each country. Based on the experimental results, this paper suggests Russia, United Arab Emirates (UAE), Malaysia, Saudi Arabia, Pakistan, Indonesia, and Kazakhstan to be China?s most reliable choices for energy investment.

 Artículos similares

       
 
Carlos Oliveira, José Baptista and Adelaide Cerveira    
With excess energy use from non-renewable sources, new energy generation solutions must be adopted to make up for this excess. In this sense, the integration of renewable energy sources in high-rise buildings reduces the need for energy from the national... ver más
Revista: Algorithms

 
Jan Spriet, Ajeet Pratap Singh, Brian Considine, Madhu K. Murali and Aonghus McNabola    
This paper assesses the performance of waste heat recovery from commercial kitchen wastewater in practice. A pilot study of heat recovery from the kitchen at Penrhyn Castle, a tourist attraction in North Wales (UK), is outlined. The pilot heat recovery s... ver más
Revista: Water

 
Zhengke Liu, Xiaolei Ma, Xiaohan Liu, Gonçalo Homem de Almeida Correia, Ruifeng Shi and Wenlong Shang    
Optimizing battery swapping station (BSS) configuration is essential to enhance BSS?s energy savings and economic feasibility, thereby facilitating energy refueling efficiency of electric taxis (ETs). This study proposes a novel modular battery swapping ... ver más
Revista: Applied Sciences

 
Zhipeng Du, Qinan Chen, Cong Guan and Hui Chen    
Advances in power and propulsion and energy management improvements can significantly contribute to reducing emissions. The International Maritime Organization (IMO) Marpol regulations impose increasingly stringent restrictions on ship?s emission. Accord... ver más

 
German Francisco Barreto-Parra, Brandon Cortés-Caicedo and Oscar Danilo Montoya    
This paper proposes an interconnection of the MATLAB and GAMS software interfaces, which were designed based on a master-slave methodology, to solve the mixed-integer nonlinear programming (MINLP) model problem associated with the problem regarding the o... ver más
Revista: Algorithms