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A Forecasting Framework Based on Kalman Filter Integrated Multivariate Local Polynomial Regression: Application to Urban Water Demand

机译:基于卡尔曼滤波器集成多元局部多项式回归的预测框架:城市水需求的应用

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摘要

In this study, a forecasting framework for daily urban water demand has been proposed. It was developed based on the extended Kalman filter (EKF) which consists of state estimation, forecasting and error correction. The forecasting and error correction models can be substituted. As an example, a multivariate local polynomial regression (MLPR) was used to linearize the complex system which is essential for EKF. A correctional prediction of residual based on relevance vector regression was employed to update and substitute error estimation value in the EKF. To improve the precision of the forecasts, the historical data series was decomposed into low- and high-frequency subseries using discrete wavelet transformation. Five category forecasts with the lead time of 1-day were assessed in comparison of the proposed model: MLPR, multi-scale relevance vector regression, autoregressive moving average, Back Propagation neural network and multiple linear regression. According to the performance criteria, the MLPR is slightly beneficial in capturing the basic dynamics of the daily urban water demand in the short term, but the state estimation and error correction can greatly improve the results. The proposed model obtains better forecasting performances than existing models, which is attributed to good state estimation from the Kalman transmission gain and favorable feature learning performance using MLPR.
机译:在本研究中,提出了日常城市需求的预测框架。它是基于扩展的卡尔曼滤波器(EKF)开发,由状态估计,预测和纠错组成。预测和纠错模型可以替换。作为示例,使用多元局部多项式回归(MLPR)来线性化对EKF至关重要的复杂系统。基于相关矢量回归的残差校正预测来更新和替换EKF中的误差估计值。为了提高预测的精度,历史数据系列使用离散小波变换分解成低频和高频率的子系统。与拟议模型的比较:MLPR,多尺度相关性矢量回归,自回归移动平均,后传播神经网络和多个线性回归的五个类别的预报。根据性能标准,MLPR在短期内捕获日常城市需求的基本动态略有益处,但国家估算和纠错可以大大提高结果。所提出的模型比现有模型获得更好的预测性能,其归因于使用MLPR的卡尔曼传输增益和有利的特征学习性能的良好状态估计。

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