预测符合欧洲标准的电池电动汽车和自动驾驶汽车累计销量的预测模型框架

Anas Alatawneh , Adam Torok
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引用次数: 0

摘要

随着先进汽车技术的出现和消费者偏好的不断变化,汽车行业面临着转型时期。本研究采用预测模型来预测欧盟 27 个成员国和英国采用欧 6d 和欧 7 兼容汽车、电池电动汽车 (BEV) 和自动驾驶汽车 (AV) 的情况。本研究利用修正高斯模型和逻辑模型对这些技术的未来发展轨迹进行了深入的预测和比较分析。修正的高斯模型预测了所有车辆类型相对急剧的增长曲线,表明最初的快速采用随后会达到饱和。与此相反,逻辑模型描绘了更为渐进和持续的增长模式,表明随着时间的推移,市场兴趣将持续增长。对比分析凸显了每种模型的独特优势和局限性。事实证明,修正的高斯模型可有效识别早期市场反应和关键干预点,而逻辑模型则有助于长期战略规划和趋势预测。然而,模型之间的差异显示了预测汽车市场动态的复杂性,强调了对多方面框架和方法的需求。因此,通过完善模型和整合更多变量来提高预测准确性,对于驾驭新兴汽车技术的动态格局至关重要。本研究采用分析方法预测未来市场动态,为政策制定者和行业利益相关者提供了宝贵的指导,帮助他们为即将到来的技术变革制定战略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A predictive modeling framework for forecasting cumulative sales of euro-compliant, battery-electric and autonomous vehicles

The automotive industry faces a transformative time with the advent of advanced vehicle technologies and evolving consumer preferences. This research employs predictive modeling to forecast the adoption of Euro 6d and Euro 7 compliant vehicles, Battery Electric Vehicles (BEVs), and Autonomous Vehicles (AVs) in the European Union’s 27 member states and the United Kingdom. This study provides insightful projections and comparative analyses of these technologies’ future trajectories using the modified Gaussian and Logistic models. The modified Gaussian model projected relatively sharp growth curves for all vehicle types, signaling rapid initial adoption followed by saturation. Conversely, the Logistic model depicted more gradual and continuous growth patterns, suggesting sustained market interest over time. Comparative analyses highlight the unique strengths and limitations of each model. The modified Gaussian model proves effective for identifying early market responses and pivotal intervention points, while the Logistic model aids in strategic long-term planning and trend anticipation. However, disparities between the models show the complexity of forecasting automotive market dynamics, emphasizing the need for multifaceted frameworks and approaches. Thus, enhancing predictive accuracy by refining models and integrating additional variables will be pivotal in navigating the dynamic landscape of emerging automotive technologies. This research stands out for its approach to applying analytical methods to predict future market dynamics, offering valuable guidance for policymakers and industry stakeholders in strategizing for the forthcoming technological shift.

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