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Non-parametric Prediction Interval Estimate for Uncertainty Quantification of the Prediction of Road Pavement Deterioration

机译:非参数预测区间估计对路面恶化预测的不确定性量化

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Road pavements need to be efficiently maintained under budget constraints. A pavement management system supports a road administrator's decision making based on the prediction of pavement deterioration. However, the prediction of pavement deterioration is complicated and uncertain because there are many unobservable variables, and the highly accurate prediction of deterioration is difficult. For pavement administrators to use such predictions in decision making, it is necessary to quantify the reliability of prediction. This paper proposes a prediction interval estimation method by applying the bootstrap method with a reduced computational cost to the deterioration prediction model using a neural network. The proposed method is applied to the rutting depth prediction in the inspection history of road pavement surface, and the estimation accuracy of the prediction interval is verified. In the prediction model, because the inspection history is time-series data, a recurrent neural network model that extends neural networks to time series prediction is used. Verification shows that not only is the computational cost reduced but also the accuracy of the prediction interval is higher than that of the conventional method.
机译:需要在预算约束下有效地维护路面。路面管理系统基于路面退化的预测来支持道路管理员的决策。但是,由于存在许多无法观察到的变量,因此路面劣化的预测是复杂且不确定的,并且难以高精度地预测劣化。为了使路面管理者在决策过程中使用这种预测,必须量化预测的可靠性。本文提出了一种预测间隔估计方法,该方法将具有降低的计算成本的自举方法应用于使用神经网络的劣化预测模型。将该方法应用于路面检验历史中的车辙深度预测,验证了预测区间的估计精度。在预测模型中,由于检查历史是时间序列数据,因此使用将神经网络扩展到时间序列预测的递归神经网络模型。验证表明,与传统方法相比,不仅降低了计算成本,而且预测间隔的准确性也更高。

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