通过机器学习预测全球先进空中交通的采用

Standards Pub Date : 2023-03-16 DOI:10.3390/standards3010007
R. Bridgelall
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摘要

先进空中交通(AAM)是一项可持续的航空倡议,通过电动无人机在城市和地区运送货物和乘客。普遍的期望是,全球采用AAM将有助于减少污染,降低运输成本,增加可达性,并实现更可靠和更有弹性的供应链。然而,大多数国家缺乏使AAM合法化的法规。分散的管理办法阻碍了商业勘探者和关心人类福利的国际组织的进展。因此,在高度不确定性的情况下,了解能够预测AAM采用倾向的指标将有助于国家和组织制定无人机使用计划。这项研究通过收集204个国家的36个经济、社会、环境、治理、土地利用、技术和交通指标的独特数据集来找到预测指标。随后,从12个不同的机器学习模型中选出最佳模型对指标的预测重要性进行排名。国内生产总值(GDP)和全球治理指标(WGI)项目制定的监管质量指数(RQI)是两个最重要的预测指标。同样重要的是,较差的预测指标如下:由社会进步迫切需要编制的社会进步指数、WGI法治指数、土地利用特征(如农村和城市比例)、开放水道边界、人口密度、技术可及性(如电力和手机)、二氧化碳排放水平、航空交通、港口交通、游客人数和道路死亡人数。
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Predicting Advanced Air Mobility Adoption Globally by Machine Learning
Advanced air mobility (AAM) is a sustainable aviation initiative to deliver cargo and passengers in urban and regional locations by electrified drones. The widespread expectation is that AAM adoption worldwide will help to reduce pollution, reduce transport costs, increase accessibility, and enable a more reliable and resilient supply chain. However, most countries lack regulations that legalize AAM. A fragmented regulatory approach hampers the progress of business prospectors and international organizations concerned with human welfare. Therefore, amidst high uncertainty, knowledge of indicators that can predict the propensity for AAM adoption will help nations and organizations plan for drone use. This research finds predictive indicators by assembling a unique dataset of 36 economic, social, environmental, governance, land use, technology, and transportation indicators for 204 nations. Subsequently, the best of 12 different machine learning models ranks the predictive importance of the indicators. The gross domestic product (GDP) and the regulatory quality index (RQI) developed by the Worldwide Governance Indicators (WGI) project were the two top predictors. Just as importantly, the poor predictors were as follows: the social progress index developed by the Social Progress Imperative, the WGI rule-of-law index, land use characteristics such as rural and urban proportions, borders on open waterways, population density, technology accessibility such as electricity and cell phones, carbon dioxide emission level, aviation traffic, port traffic, tourist arrivals, and roadway fatalities.
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