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首页> 外文期刊>Computational intelligence and neuroscience >Fuzzy Temporal Logic Based Railway Passenger Flow Forecast Model
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Fuzzy Temporal Logic Based Railway Passenger Flow Forecast Model

机译:基于模糊时间逻辑的铁路客流预测模型

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Passenger flow forecast is of essential importance to the organization of railway transportation and is one of the most important basics for the decision-making on transportation pattern and train operation planning. Passenger flow of high-speed railway features the quasi-periodic variations in a short time and complex nonlinear fluctuation because of existence of many influencing factors. In this study, a fuzzy temporal logic based passenger flow forecast model (FTLPFFM) is presented based on fuzzy logic relationship recognition techniques that predicts the short-term passenger flow for high-speed railway, and the forecast accuracy is also significantly improved. An applied case that uses the real-world data illustrates the precision and accuracy of FTLPFFM. For this applied case, the proposed model performs better than thek-nearest neighbor (KNN) and autoregressive integrated moving average (ARIMA) models.
机译:客流预测对铁路运输的组织至关重要,是决策运输方式和列车运行计划的最重要基础之一。由于存在许多影响因素,高速铁路客流在短时间内具有准周期变化和复杂的非线性波动。在这项研究中,基于模糊逻辑关系识别技术,提出了一种基于模糊时间逻辑的客流预测模型(FTLPFFM),该模型预测了高速铁路的短期客流,并且预测准确性也得到了显着提高。一个使用实际数据的应用案例说明了FTLPFFM的精度和准确性。对于此应用案例,所提出的模型的性能优于近邻近邻(KNN)模型和自回归综合移动平均(ARIMA)模型。

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