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A fuzzy logic-genetic algorithm approach to modelling public transport users' risk-taking behaviour

机译:公交使用者冒险行为建模的模糊逻辑遗传算法

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摘要

This paper seeks to determine the effects of uncertainty in out-of-vehicle times on route choice. Data were collected at two key interchanges in Auckland, New Zealand. Previous work modelled the data using a manual approach to fuzzy logic. This study extends that work by automating the process through defining a black-box function to match the survey data, then employing a genetic algorithm to fine-tune the fuzzy logic model. Results show that automation and the genetic algorithm improve the model's capability to more accurately predict ridership. The tuning of the membership functions is conducted twice, first using initial fuzzy rules and again after the fuzzy rules have been adjusted to reduce disparity between the output and survey data. The calibrated membership functions provided for operational (transfer waiting and walking time and delay) and physical attributes (safety and seat availability) can be used by practitioners to determine an estimated ridership.
机译:本文旨在确定车外时间不确定性对路线选择的影响。数据是在新西兰奥克兰的两个主要交汇处收集的。先前的工作使用手动方法对模糊逻辑进行数据建模。这项研究通过定义一个黑盒函数来匹配调查数据,然后使用一种遗传算法对模糊逻辑模型进行微调来使过程自动化来扩展这项工作。结果表明,自动化和遗传算法提高了模型的能力,可以更准确地预测乘车率。隶属函数的调整进行了两次,第一次使用初始模糊规则,第二次使用模糊规则进行调整以减小输出数据和测量数据之间的差异。从业人员可以使用为运行(中转等待和步行时间及延迟)和物理属性(安全性和座位可用性)提供的经过校准的成员资格功能,以确定估计的乘车人数。

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