RETRACTED ARTICLE: Multimodal transport path optimization model and algorithm considering carbon emission multitask

The globalization of the economy and trade has made the transportation industry flourish, and the traffic demand is growing. Under this trend, energy consumption is increasing and environmental pollution is becoming more and more serious, so the development of “low-carbon transportation” is inevitab...

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Veröffentlicht in:The Journal of supercomputing 2020, Vol.76 (12), p.9355-9373
Hauptverfasser: Li, HuiFang, Su, Luan
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container_title The Journal of supercomputing
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creator Li, HuiFang
Su, Luan
description The globalization of the economy and trade has made the transportation industry flourish, and the traffic demand is growing. Under this trend, energy consumption is increasing and environmental pollution is becoming more and more serious, so the development of “low-carbon transportation” is inevitable. Intermodality is a green transportation method that reduces transportation costs, shortens transportation time, improves transportation quality, reduces road congestion and is environmentally friendly. It can reduce carbon emissions and noise pollution while improving energy efficiency. Therefore, strengthening the use of intermodality can significantly reduce carbon dioxide emissions, thereby reducing the greenhouse effect. In the present study, carbon emissions are added to the intermodality route study, and an intermodality path selection model in a low-carbon environment is established. Through the use of genetic algorithms and step-by-step method to solve this problem, we find the best low-carbon transportation methods and routes. It has practical application value, enabling decision makers to balance the economic interests of the company while making decisions and to meet the government’s carbon dioxide emission limitations.
doi_str_mv 10.1007/s11227-019-03103-1
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subjects Carbon
Compilers
Computer Science
Emissions control
Energy consumption
Globalization
Greenhouse effect
Greenhouse gases
Interpreters
Multimodal transportation systems
Noise pollution
Noise reduction
Optimization models
Processor Architectures
Programming Languages
Transportation industry
title RETRACTED ARTICLE: Multimodal transport path optimization model and algorithm considering carbon emission multitask
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