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Evolving Prediction Models with Genetic Algorithm to Forecast Vehicle Volume in a Service Station (Best Application Paper)

机译:遗传算法的进化预测模型预测加油站的车辆流量(最佳应用论文)

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In the service industry, having an efficient resource plan is of utmost importance for operational efficiency. An accurate forecast of demand is crucial in obtaining a resource plan which is efficient. In this paper, we present a real world application of an AI forecasting model for vehicle volumes forecasting in service stations. We improve on a previously proposed approach by intelligently tuning the hyper parameters of the prediction model, taking into account the variability of the vehicle volume data in a service station. In particular, we build a Genetic algorithm based model to find the topology of the neural network and also to tune additional parameters of the prediction model that is related to data filtration, correction and feature selection. We compare our results with the results from ad hoc parameter settings of the model from previous work and show that the combined genetic algorithm and neural network based approach further improves forecasting accuracy which helps service stations better manage their resource requirements.
机译:在服务行业,制定有效的资源计划对于运营效率至关重要。准确的需求预测对于获得有效的资源计划至关重要。在本文中,我们介绍了AI预测模型在加油站中的车辆数量预测的实际应用。考虑到服务站中车辆数据的可变性,我们通过智能地调​​整预测模型的超参数来改进先前提出的方法。特别是,我们建立了一个基于遗传算法的模型,以查找神经网络的拓扑结构,并调整与数据过滤,校正和特征选择有关的预测模型的其他参数。我们将我们的结果与先前工作中模型的临时参数设置的结果进行了比较,结果表明,基于遗传算法和神经网络相结合的方法进一步提高了预测准确性,有助于服务站更好地管理其资源需求。

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