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Local Polynomial Regression Models for Average Traffic Speed Estimation and Forecasting in Linear Constraint Databases

机译:线性约束数据库中平均交通速度估计和预测的局部多项式回归模型

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Constraint databases have the specific advantage of being able to represent infinite temporal relations by linear equations, linear inequalities, polynomial equations, and so on. This advantage can store a continuous time-line that naturally connects with other traffic attributes, such as traffic speed. In most cases, vehicle speed varies over time, that is, the speed is often nonlinear. However, the infinite representations allowed in current constraint database systems are only linear. Our article presents a new approach to estimate and forecast continuous average speed using linear constraint database systems. Our new approach to represent and query the nonlinear average traffic speed is based on a combination of local polynomial regression and piecewise-linear approximation algorithm. Experiments using the MLPQ constraint database system and queries show that our method has a high accuracy in predicting the average traffic speed. The actual accuracy is controllable by a parameter. We compared the local linear regression model with the local cubic model by using a field experiment. It was found that the local cubic model follows more closely the raw data than the linear model follows.
机译:约束数据库的特殊优势是能够通过线性方程,线性不等式,多项式方程等来表示无限的时间关系。此优势可以存储连续的时间线,该时间线自然地与其他流量属性(例如流量速度)相关联。在大多数情况下,车速会随时间变化,也就是说,速度通常是非线性的。但是,当前约束数据库系统中允许的无限表示形式只是线性的。我们的文章提出了一种使用线性约束数据库系统估计和预测连续平均速度的新方法。我们表示和查询非线性平均交通速度的新方法是基于局部多项式回归和分段线性逼近算法的组合。使用MLPQ约束数据库系统和查询进行的实验表明,我们的方法在预测平均流量速度方面具有很高的准确性。实际精度可由参数控制。我们通过现场实验将局部线性回归模型与局部三次模型进行了比较。结果发现,与三次线性模型相比,局部三次模型更接近原始数据。

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